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[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Yolo, California, USA, along the US50-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 21, 15, 19, 44, 98, 150, 156, 178, 208, 246, 248 and 257, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [263, 269, 262, 229, 221, 214, 152, 127, 100, 58, 38, 25]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the US50-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 23, 24, 42, 124, 250, 332, 296, 287, 307, 334, 359 and 376, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [381, 384, 366, 317, 282, 242, 194, 164, 111, 76, 46, 30]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the US50-E freeway, lane 3, direction of eastbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 11, 12, 15, 39, 91, 134, 138, 142, 166, 198, 212 and 226, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [242, 260, 264, 232, 191, 141, 112, 80, 58, 35, 21, 17]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Yolo, California, USA, along the US50-W freeway, lane 3, direction of westbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 33, 47, 85, 140, 195, 220, 222, 262, 304, 304, 326 and 315, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [326, 286, 284, 248, 228, 253, 231, 161, 116, 57, 35, 30]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in El Dorado, California, USA, along the US50-W freeway, lane 3, direction of westbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 19, 20, 30, 60, 105, 128, 138, 156, 158, 167, 167 and 165, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [162, 177, 163, 158, 126, 103, 85, 62, 50, 27, 16, 12]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR51-N freeway, lane 3, direction of northbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 42, 42, 62, 136, 254, 314, 330, 387, 577, 581, 581 and 616, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [646, 576, 488, 420, 385, 332, 256, 220, 155, 107, 69, 48]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR51-N freeway, lane 3, direction of northbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 34, 29, 36, 83, 164, 207, 205, 231, 279, 300, 320 and 332, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [342, 328, 314, 307, 269, 241, 188, 169, 112, 74, 47, 69]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR51-S freeway, lane 3, direction of southbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 56, 54, 71, 135, 250, 256, 267, 320, 350, 378, 404 and 371, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [378, 374, 359, 365, 344, 314, 246, 198, 136, 95, 68, 54]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Placer, California, USA, along the I80-W freeway, lane 3, direction of westbound. - Today's weather: Sunny. Temperature is 5.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 17, 19, 34, 65, 125, 157, 192, 238, 288, 356, 343 and 344, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [352, 340, 292, 291, 282, 271, 237, 202, 67, 35, 26, 19]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR99-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 35, 48, 78, 153, 272, 270, 278, 318, 370, 384, 384 and 400, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [408, 371, 335, 325, 296, 238, 190, 164, 120, 82, 54, 42]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR99-S freeway, lane 2, direction of southbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 46, 46, 49, 64, 90, 111, 122, 137, 141, 156, 164 and 163, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [160, 160, 156, 156, 151, 137, 116, 99, 78, 66, 52, 47]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 3 in Sacramento, California, USA, along the SR99-S freeway, lane 2, direction of southbound. - Today's weather: Sunny. Temperature is 5.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 9, 19, 40, 63, 103, 107, 94, 106, 112, 114, 119 and 117, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [112, 112, 116, 106, 95, 65, 49, 38, 22, 14, 11, 9]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Contra Costa, California, USA, along the SR24-W freeway, lane 4, direction of westbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 2, 2, 105, 218, 273, 228, 293, 337, 391, 361, 400 and 425, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [416, 378, 394, 377, 334, 264, 221, 193, 133, 17, 2, 1]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Solano, California, USA, along the I80-W freeway, lane 3, direction of westbound. - Today's weather: Sunny. Temperature is 6.0\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, educational areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 20, 18, 28, 79, 156, 244, 256, 228, 229, 250, 276 and 293, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [318, 294, 274, 288, 281, 229, 169, 144, 106, 64, 37, 23]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Santa Clara, California, USA, along the US101-N freeway, lane 4, direction of northbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 27, 38, 78, 146, 171, 166, 169, 202, 235, 259, 268 and 258, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [274, 272, 283, 293, 284, 288, 200, 173, 120, 76, 52, 36]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in San Mateo, California, USA, along the US101-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 8.3\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 44, 66, 126, 237, 322, 384, 410, 456, 495, 496, 539 and 532, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [530, 518, 518, 491, 448, 406, 402, 371, 252, 148, 99, 58]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Marin, California, USA, along the US101-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 81, 68, 70, 87, 120, 187, 245, 278, 319, 349, 349 and 350, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [355, 364, 352, 330, 285, 244, 216, 190, 164, 120, 98, 81]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Santa Clara, California, USA, along the US101-S freeway, lane 4, direction of southbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 15, 14, 25, 66, 118, 176, 180, 176, 175, 185, 196 and 197, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [218, 212, 209, 207, 204, 172, 137, 115, 86, 60, 35, 19]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Marin, California, USA, along the US101-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 70, 73, 89, 126, 211, 239, 250, 288, 307, 325, 311 and 324, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [316, 331, 356, 328, 279, 216, 177, 158, 120, 91, 75, 68]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in San Mateo, California, USA, along the I280-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 8.3\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 34, 26, 33, 76, 158, 228, 270, 305, 377, 402, 395 and 413, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [434, 470, 520, 452, 375, 318, 285, 255, 194, 130, 86, 53]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Alameda, California, USA, along the I580-W freeway, lane 4, direction of westbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 28, 24, 38, 106, 208, 324, 342, 303, 306, 333, 367 and 390, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [424, 393, 365, 384, 375, 306, 226, 191, 142, 85, 49, 31]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Alameda, California, USA, along the I680-N freeway, lane 3, direction of northbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 58, 62, 74, 110, 157, 182, 195, 213, 229, 237, 240 and 244, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [246, 247, 234, 228, 208, 190, 165, 134, 105, 81, 66, 57]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Contra Costa, California, USA, along the I680-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 140, 137, 162, 196, 278, 382, 449, 498, 622, 682, 732 and 750, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [810, 803, 809, 699, 607, 532, 478, 420, 341, 304, 229, 219]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Santa Clara, California, USA, along the I680-S freeway, lane 4, direction of southbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 26, 25, 49, 109, 160, 185, 226, 273, 335, 352, 368 and 373, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [414, 399, 403, 383, 370, 292, 247, 205, 161, 96, 48, 29]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Contra Costa, California, USA, along the I680-S freeway, lane 6, direction of southbound. - Today's weather: Sunny. Temperature is 7.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 80, 79, 119, 193, 278, 337, 350, 404, 455, 456, 466 and 470, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [478, 492, 484, 433, 386, 325, 288, 232, 188, 128, 94, 74]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Santa Clara, California, USA, along the I880-N freeway, lane 6, direction of northbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 73, 77, 95, 176, 246, 298, 313, 380, 448, 514, 561 and 572, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [601, 597, 584, 573, 514, 486, 394, 321, 229, 170, 104, 70]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 4 in Alameda, California, USA, along the I880-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 8.1\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 44, 48, 96, 186, 280, 282, 308, 384, 418, 497, 470 and 475, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [468, 453, 452, 430, 370, 310, 262, 216, 168, 112, 69, 40]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 5 in Santa Cruz, California, USA, along the SR17-N freeway, lane 3, direction of northbound. - Today's weather: Rain. Temperature is 8.4\\u00b0C, and visibility reaches 10.0 miles. - Region information: including commercial areas, transportation areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 10, 10, 31, 76, 117, 126, 0, 102, 244, 258, 263 and 276, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [300, 308, 300, 280, 52, 0, 0, 0, 10, 26, 15, 8]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 6 in Kern, California, USA, along the SR99-S freeway, lane 3, direction of southbound. - Today's weather: Sunny. Temperature is 9.9\\u00b0C, and visibility reaches 9.9 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 30, 38, 61, 165, 210, 146, 145, 147, 190, 212, 216 and 258, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [260, 278, 284, 226, 190, 142, 114, 83, 76, 46, 49, 29]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR2-W freeway, lane 4, direction of westbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 90, 94, 114, 186, 263, 285, 306, 315, 302, 314, 332 and 305, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [328, 343, 364, 339, 284, 217, 176, 171, 139, 112, 98, 80]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR2-W freeway, lane 4, direction of westbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 8, 11, 30, 86, 173, 208, 204, 196, 182, 170, 167 and 178, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [185, 226, 226, 197, 156, 107, 75, 70, 48, 27, 16, 9]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I5-S freeway, lane 5, direction of southbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 55, 62, 132, 378, 552, 572, 542, 513, 506, 508, 521 and 530, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [560, 575, 572, 568, 522, 440, 338, 306, 238, 153, 99, 74]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I10-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 40, 44, 91, 262, 414, 482, 456, 399, 390, 397, 412 and 423, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [457, 476, 481, 482, 437, 358, 267, 238, 185, 117, 77, 58]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 227, 254, 352, 390, 390, 418, 414, 428, 449, 454, 404 and 453, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [464, 448, 465, 458, 436, 386, 304, 270, 228, 195, 174, 160]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR47-S freeway, lane 2, direction of southbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, commercial areas and transportation areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 20, 11, 6, 15, 38, 54, 60, 56, 60, 84, 61 and 69, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [82, 87, 114, 86, 70, 52, 43, 51, 32, 23, 19, 18]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR60-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 72, 78, 126, 222, 297, 364, 346, 353, 408, 438, 492 and 501, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [489, 478, 478, 510, 446, 405, 339, 279, 214, 143, 101, 61]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR60-E freeway, lane 5, direction of eastbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 150, 177, 231, 299, 374, 450, 472, 450, 487, 505, 541 and 560, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [573, 564, 556, 588, 531, 448, 416, 358, 305, 227, 187, 149]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR60-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 99, 115, 184, 278, 357, 434, 452, 453, 476, 469, 504 and 537, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [544, 460, 488, 480, 465, 424, 388, 348, 286, 198, 164, 117]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR60-E freeway, lane 4, direction of eastbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 54, 68, 111, 212, 318, 379, 364, 351, 366, 392, 411 and 459, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [480, 488, 508, 495, 440, 381, 350, 300, 228, 144, 93, 65]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR91-W freeway, lane 4, direction of westbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 40, 44, 91, 262, 414, 482, 456, 399, 390, 397, 412 and 423, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [457, 476, 481, 482, 437, 358, 267, 238, 185, 117, 77, 52]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the US101-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 10.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 33, 37, 80, 174, 298, 391, 365, 385, 460, 453, 471 and 462, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [439, 475, 472, 452, 391, 327, 289, 253, 183, 110, 67, 36]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the US101-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, commercial areas and transportation areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 140, 138, 138, 254, 323, 295, 322, 372, 398, 400, 392 and 378, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [372, 371, 376, 392, 363, 346, 344, 342, 282, 200, 137, 89]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I110-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 12.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 124, 134, 218, 408, 454, 449, 466, 498, 504, 504, 462 and 441, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [482, 452, 487, 493, 476, 466, 414, 387, 295, 236, 173, 118]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR134-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 38, 37, 55, 124, 256, 324, 338, 392, 462, 469, 480 and 486, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [466, 453, 421, 419, 406, 381, 303, 261, 194, 123, 74, 38]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the SR134-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 88, 83, 92, 132, 200, 290, 304, 310, 324, 358, 356 and 354, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [358, 358, 374, 364, 333, 300, 248, 208, 174, 133, 112, 84]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I210-E freeway, lane 5, direction of eastbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 77, 75, 99, 174, 306, 424, 440, 500, 551, 597, 610 and 563, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [632, 628, 602, 590, 526, 473, 372, 311, 225, 164, 114, 72]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 85, 102, 240, 500, 515, 552, 551, 574, 680, 674, 688 and 655, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [673, 712, 649, 673, 636, 551, 485, 424, 311, 200, 126, 80]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 123, 144, 261, 513, 543, 567, 557, 566, 658, 659, 684 and 651, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [671, 675, 662, 680, 628, 537, 488, 426, 330, 233, 160, 119]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 12.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 43, 44, 80, 187, 288, 275, 312, 333, 367, 362, 364 and 374, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [387, 309, 315, 312, 337, 322, 309, 266, 230, 161, 101, 52]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 10.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 153, 141, 161, 254, 363, 446, 497, 562, 604, 614, 620 and 648, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [637, 633, 639, 597, 565, 550, 506, 446, 393, 306, 232, 146]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 6, direction of northbound. - Today's weather: Sunny. Temperature is 10.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 96, 81, 104, 219, 365, 476, 536, 615, 682, 685, 714 and 763, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [752, 770, 739, 692, 669, 664, 567, 509, 411, 292, 197, 93]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 10.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 62, 51, 72, 160, 250, 346, 362, 370, 406, 448, 468 and 502, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [487, 418, 448, 456, 427, 404, 348, 307, 244, 178, 110, 56]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 12.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 54, 57, 120, 335, 478, 576, 560, 516, 506, 521, 550 and 561, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [550, 497, 458, 465, 457, 542, 464, 368, 282, 185, 127, 69]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I405-S freeway, lane 5, direction of southbound. - Today's weather: Sunny. Temperature is 12.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 94, 89, 149, 336, 575, 594, 624, 667, 693, 680, 702 and 699, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [672, 494, 528, 611, 637, 624, 574, 545, 455, 309, 198, 98]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I605-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 28, 36, 70, 166, 241, 308, 342, 378, 388, 424, 432 and 403, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [508, 523, 484, 523, 439, 326, 265, 234, 154, 82, 49, 32]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I605-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 77, 72, 126, 242, 382, 444, 457, 476, 495, 520, 534 and 552, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [547, 513, 542, 543, 488, 420, 379, 335, 259, 178, 116, 78]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I605-N freeway, lane 4, direction of northbound. - Today's weather: Sunny. Temperature is 11.2\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 44, 48, 80, 184, 282, 330, 332, 348, 378, 418, 448 and 434, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [370, 343, 354, 316, 285, 289, 254, 209, 157, 102, 68, 45]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I710-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 91, 93, 144, 272, 332, 324, 290, 304, 327, 338, 352 and 334, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [364, 380, 366, 383, 322, 287, 234, 225, 184, 140, 114, 81]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I710-S freeway, lane 6, direction of southbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 40, 44, 91, 262, 414, 481, 456, 399, 390, 397, 412 and 423, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [458, 476, 481, 482, 437, 358, 267, 238, 186, 117, 78, 52]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I710-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 40, 44, 91, 262, 414, 482, 456, 399, 390, 397, 412 and 423, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [457, 476, 481, 482, 437, 358, 267, 238, 185, 117, 77, 52]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 7 in Los Angeles, California, USA, along the I710-S freeway, lane 5, direction of southbound. - Today's weather: Sunny. Temperature is 12.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 24, 28, 57, 168, 277, 325, 302, 254, 244, 246, 253 and 258, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [286, 322, 337, 339, 287, 214, 158, 142, 109, 70, 48, 34]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 73, 109, 262, 302, 326, 370, 377, 416, 451, 468, 258 and 466, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [496, 474, 516, 492, 438, 358, 317, 275, 211, 154, 103, 81]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 73, 147, 339, 416, 433, 420, 378, 416, 464, 481, 482 and 459, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [488, 436, 418, 386, 365, 320, 279, 226, 145, 103, 67, 62]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 68, 103, 216, 298, 382, 349, 334, 367, 422, 436, 441 and 448, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [485, 466, 448, 409, 363, 302, 268, 221, 148, 106, 70, 60]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 60, 79, 165, 344, 433, 476, 500, 468, 469, 478, 491 and 506, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [551, 591, 570, 589, 500, 396, 335, 294, 233, 170, 112, 80]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in Riverside, California, USA, along the I10-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 9.8\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 95, 95, 104, 112, 146, 185, 214, 247, 274, 282, 294 and 290, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [282, 300, 284, 263, 212, 189, 174, 152, 134, 111, 98, 99]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in Riverside, California, USA, along the I15-N freeway, lane 4, direction of northbound. - Today's weather: Rain. Temperature is 9.8\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 117, 122, 138, 172, 216, 248, 287, 326, 372, 383, 355 and 348, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [353, 298, 306, 340, 368, 378, 269, 230, 195, 156, 128, 118]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I15-N freeway, lane 4, direction of northbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 109, 100, 120, 152, 194, 212, 229, 249, 264, 275, 284 and 313, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [344, 315, 327, 370, 335, 306, 260, 240, 208, 169, 150, 107]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I15-N freeway, lane 4, direction of northbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 41, 42, 64, 102, 143, 193, 209, 250, 290, 323, 327 and 366, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [384, 394, 418, 450, 352, 277, 238, 194, 155, 106, 80, 56]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in Riverside, California, USA, along the SR60-E freeway, lane 2, direction of eastbound. - Today's weather: Rain. Temperature is 9.8\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 36, 33, 55, 90, 136, 150, 176, 208, 244, 250, 244 and 242, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [254, 273, 214, 240, 241, 214, 186, 161, 125, 94, 63, 52]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the SR71-S freeway, lane 3, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 28, 32, 60, 116, 158, 206, 213, 209, 230, 246, 251 and 290, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [278, 284, 284, 319, 273, 215, 174, 147, 106, 60, 39, 26]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in Riverside, California, USA, along the SR91-W freeway, lane 3, direction of westbound. - Today's weather: Rain. Temperature is 9.8\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 54, 88, 182, 183, 270, 332, 316, 328, 350, 360, 364 and 374, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [386, 361, 365, 358, 336, 289, 256, 201, 156, 102, 66, 47]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I210-W freeway, lane 4, direction of westbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 70, 100, 234, 241, 272, 291, 291, 314, 329, 345, 364 and 378, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [374, 349, 348, 308, 327, 274, 238, 202, 161, 116, 68, 58]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I215-N freeway, lane 3, direction of northbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 29, 39, 73, 146, 220, 237, 254, 259, 286, 291, 303 and 318, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [336, 345, 338, 339, 284, 227, 190, 152, 119, 73, 49, 32]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I215-N freeway, lane 5, direction of northbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 62, 58, 92, 156, 207, 266, 289, 316, 343, 370, 410 and 440, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [480, 548, 548, 541, 429, 355, 274, 236, 180, 134, 93, 63]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in Riverside, California, USA, along the I215-S freeway, lane 3, direction of southbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 119, 131, 186, 179, 251, 273, 260, 266, 278, 294, 279 and 276, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [285, 284, 275, 300, 299, 258, 233, 210, 180, 153, 122, 110]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 8 in San Bernardino, California, USA, along the I215-S freeway, lane 2, direction of southbound. - Today's weather: Rain. Temperature is 12.3\\u00b0C, and visibility reaches 9.1 miles. - Region information: including transportation areas, educational areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 30, 40, 82, 172, 216, 238, 250, 234, 234, 239, 246 and 254, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [276, 296, 286, 295, 250, 198, 167, 147, 116, 86, 56, 40]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 10 in Merced, California, USA, along the I5-N freeway, lane 2, direction of northbound. - Today's weather: Sunny. Temperature is 6.7\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 41, 36, 34, 32, 39, 56, 70, 103, 111, 129, 152 and 172, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [198, 187, 202, 219, 223, 230, 225, 154, 138, 113, 76, 54]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 10 in San Joaquin, California, USA, along the I5-N freeway, lane 3, direction of northbound. - Today's weather: Sunny. Temperature is 7.7\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 35, 36, 46, 58, 58, 65, 74, 81, 97, 99, 112 and 113, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [134, 160, 130, 130, 115, 88, 87, 78, 64, 53, 45, 37]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 10 in Merced, California, USA, along the SR99-N freeway, lane 2, direction of northbound. - Today's weather: Sunny. Temperature is 6.7\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 24, 32, 49, 86, 106, 101, 116, 125, 150, 172, 179 and 191, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [184, 190, 196, 180, 151, 134, 112, 98, 75, 60, 46, 32]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 10 in Stanislaus, California, USA, along the SR99-N freeway, lane 3, direction of northbound. - Today's weather: Sunny. Temperature is 7.6\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 56, 89, 138, 216, 285, 246, 250, 269, 305, 326, 363 and 381, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [364, 353, 362, 361, 295, 258, 211, 176, 118, 78, 52, 50]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I5-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 62, 57, 63, 91, 147, 203, 236, 313, 364, 378, 379 and 371, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [378, 385, 361, 362, 338, 312, 295, 276, 167, 108, 76, 63]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I8-E freeway, lane 2, direction of eastbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including residential areas, transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 22, 21, 33, 28, 60, 96, 120, 118, 133, 135, 146 and 149, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [151, 145, 130, 126, 125, 81, 67, 51, 36, 23, 23, 18]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I8-E freeway, lane 4, direction of eastbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 29, 21, 38, 53, 120, 209, 259, 287, 319, 360, 392 and 427, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [476, 491, 446, 428, 360, 262, 222, 198, 145, 100, 50, 26]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I8-E freeway, lane 2, direction of eastbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 25, 28, 44, 101, 146, 178, 206, 228, 246, 256, 271 and 262, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [269, 267, 256, 228, 179, 140, 104, 72, 62, 46, 27, 22]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I15-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, educational areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 51, 64, 118, 327, 466, 454, 412, 425, 406, 441, 463 and 469, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [492, 498, 456, 430, 368, 288, 224, 189, 134, 96, 62, 44]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I15-S freeway, lane 6, direction of southbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, commercial areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 68, 68, 73, 137, 250, 375, 455, 486, 516, 572, 571 and 598, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [658, 669, 652, 615, 502, 387, 315, 256, 189, 131, 276, 204]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the SR52-E freeway, lane 2, direction of eastbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 11, 11, 21, 48, 96, 127, 138, 152, 170, 194, 206 and 225, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [262, 297, 269, 240, 178, 133, 103, 86, 58, 43, 24, 14]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I805-N freeway, lane 5, direction of northbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, educational areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 65, 94, 186, 414, 538, 494, 448, 466, 457, 446, 418 and 415, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [404, 393, 358, 358, 319, 257, 211, 180, 133, 104, 67, 50]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I805-S freeway, lane 5, direction of southbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, educational areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 41, 30, 34, 80, 175, 282, 301, 329, 392, 443, 500 and 556, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [694, 722, 648, 603, 497, 415, 347, 312, 243, 177, 96, 50]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 11 in San Diego, California, USA, along the I805-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 14.9\\u00b0C, and visibility reaches 10.0 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 30, 30, 38, 86, 202, 294, 304, 337, 390, 422, 457 and 474, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [550, 539, 485, 472, 375, 313, 254, 220, 170, 125, 72, 40]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the I5-S freeway, lane 5, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 93, 122, 296, 552, 678, 650, 618, 648, 660, 664, 654 and 680, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [685, 696, 702, 692, 644, 570, 512, 449, 339, 226, 134, 82]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the I5-S freeway, lane 4, direction of southbound. - Today's weather: Sunny. Temperature is 13.9\\u00b0C, and visibility reaches 9.7 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 120, 137, 220, 404, 481, 506, 514, 514, 534, 524, 517 and 528, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [526, 567, 573, 556, 505, 438, 394, 352, 264, 199, 134, 105]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR55-N freeway, lane 4, direction of northbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, residential areas and commercial areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 36, 27, 62, 174, 310, 437, 446, 437, 484, 500, 509 and 497, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [406, 360, 376, 377, 410, 386, 341, 301, 237, 139, 63, 45]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR57-S freeway, lane 6, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 56, 86, 230, 478, 512, 546, 578, 588, 591, 606, 622 and 651, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [636, 649, 612, 600, 554, 445, 385, 326, 242, 151, 84, 62]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR73-N freeway, lane 3, direction of northbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 8, 6, 11, 29, 51, 105, 96, 101, 102, 103, 104 and 109, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [122, 143, 125, 112, 76, 52, 41, 22, 14, 10, 16, 14]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR73-S freeway, lane 4, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 2, 2, 5, 14, 35, 66, 88, 92, 94, 114, 111 and 128, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [138, 171, 224, 230, 144, 77, 55, 41, 25, 11, 5, 4]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR73-S freeway, lane 3, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, residential areas and educational areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 2, 2, 5, 16, 39, 66, 81, 81, 88, 106, 103 and 110, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [122, 150, 195, 196, 120, 72, 49, 39, 24, 12, 7, 4]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the SR91-W freeway, lane 5, direction of westbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 83, 155, 460, 514, 431, 461, 478, 525, 495, 472, 474 and 502, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [523, 484, 483, 463, 452, 381, 330, 312, 222, 142, 89, 68]}"
}
] |
[
{
"from": "system",
"value": "Role: You are an expert traffic volume prediction model, that can predict the future volume values according to spatial temporal information. We want you to perform the traffic volume prediction task, considering the nearby environment and historical traffic volume data. Context knowledge you could consider: - Traffic volume: the number of vehicles passing a specific region in an hour, usually ranging from 0 to 1000. - Traffic pattern characteristic: Traffic flow patterns in a city are influenced by various area attributes. Also, traffic volume has a periodic daily and weekly pattern. - Spatial temporal factors correlation: Traffic flow in an area will be affected by its nearby infrastructures, during specific periods for different areas. You should think about how the volume will change in a specific area, during a specific time. For examples, Airports, and train stations - increased volume on weekends and holidays. Residential areas - more activities during morning and evening rush hours. Commercial areas - busy during lunch hours and after-work periods. Educational locations - high volume during peak hours near schools. Think carefully about the following questions about how spatial-temporal factors affect traffic flow. - What is the attribute of this area and what is the predicted time zone located in special periods (like rush hours, weekdays, weekends, and holidays)? - What are the traffic patterns of this area, and what is the change in different time slots? - What is the historical temporal trend according to temporal information, considering the weekdays, around holidays?"
},
{
"from": "human",
"value": "Some important information is listed as follows: - Location: District 12 in Orange, California, USA, along the I405-S freeway, lane 5, direction of southbound. - Today's weather: Rain. Temperature is 13.5\\u00b0C, and visibility reaches 9.8 miles. - Region information: including transportation areas, commercial areas and residential areas within a range of 5 km. - Current Time: 1 PM, 2018-2-19, Monday, Washington's Birthday. - Traffic volume data in the past 12 hours were 87, 101, 172, 296, 483, 517, 466, 437, 430, 470, 465 and 488, respectively. According to the above information and careful reasoning, please predict traffic volumes in the next 12 hours (from 2 PM to 1 AM). Format the final answer in a single line as a JSON dictionary like: {Traffic volume data in the next 12 hours: [V1, V2, V3, V4, V5, V6, V7, V8, V9, V10, V11, V12]"
},
{
"from": "gpt",
"value": "{Traffic volume data in the next 12 hours: [530, 512, 522, 520, 458, 412, 362, 321, 227, 159, 116, 96]}"
}
] |
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