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image_index
int64
0
157k
qid
stringclasses
74 values
question_string
stringlengths
25
512
answer_bbox
stringlengths
2
1.32k
template
stringclasses
6 values
answer
stringlengths
1
142
answer_id
int64
0
1.48M
type
stringclasses
4 values
question_id
int64
0
2.17M
0
S7
How many different coloured dotlines are there ?
[]
structural
2
0
dot
0
0
S17
Is the number of dotlines equal to the number of legend labels ?
[]
structural
Yes
1
dot
1
0
D15
What is the percentage of female population who survived till age of 65 in 1993 ?
[]
data_retrieval
87.4244
505,570
dot
673,661
0
M4
Across all years, what is the maximum percentage of male population who survived till age of 65 ?
[]
min_max
82.0172
505,571
dot
2,645
0
M5
Across all years, what is the minimum percentage of male population who survived till age of 65 ?
[]
min_max
80.04612
505,572
dot
2,646
0
M6
In which year was the percentage of female population who survived till age of 65 maximum?
nan
min_max
1997
6
dot
2,647
0
M7
In which year was the percentage of male population who survived till age of 65 minimum?
nan
min_max
1993
363
dot
9,416
0
A4
What is the total percentage of male population who survived till age of 65 in the graph ?
[]
arithmetic
405.15830000000005
505,573
dot
2,649
0
A5
What is the difference between the percentage of female population who survived till age of 65 in 1996 and that in 1997 ?
[]
arithmetic
-0.329140000000023
505,574
dot
240,518
0
A6
What is the difference between the percentage of female population who survived till age of 65 in 1997 and the percentage of male population who survived till age of 65 in 1996?
[]
arithmetic
7.2165299999999775
505,575
dot
776,538
0
A7
What is the average percentage of male population who survived till age of 65 per year?
[]
arithmetic
81.03166000000002
505,576
dot
8,434
0
A8
In the year 1993, what is the difference between the percentage of male population who survived till age of 65 and percentage of female population who survived till age of 65 ?
[]
arithmetic
-7.378280000000004
505,577
dot
776,539
0
C4
In how many years, is the percentage of female population who survived till age of 65 greater than 16 %?
[]
comparison
5
53
dot
776,540
0
C5
What is the ratio of the percentage of male population who survived till age of 65 in 1995 to that in 1997?
[]
comparison
0.9879837399960001
505,578
dot
673,665
0
C6
Is the percentage of female population who survived till age of 65 in 1993 less than that in 1995 ?
[]
comparison
Yes
1
dot
776,541
0
CD5
Is the difference between the percentage of female population who survived till age of 65 in 1993 and 1997 greater than the difference between the percentage of male population who survived till age of 65 in 1993 and 1997 ?
[]
compound
Yes
1
dot
776,542
0
CD6
What is the difference between the highest and the second highest percentage of male population who survived till age of 65 ?
[]
compound
0.49276999999997806
505,579
dot
2,658
0
CD7
What is the difference between the highest and the lowest percentage of male population who survived till age of 65 ?
[]
compound
1.9710800000000002
505,580
dot
2,659
0
CD8
In how many years, is the percentage of male population who survived till age of 65 greater than the average percentage of male population who survived till age of 65 taken over all years ?
[]
compound
2
0
dot
13,765
0
CD10
Is the sum of the percentage of male population who survived till age of 65 in 1994 and 1996 greater than the maximum percentage of female population who survived till age of 65 across all years ?
[]
compound
Yes
1
dot
776,543
0
D6
Does the percentage of female population who survived till age of 65 monotonically increase over the years ?
[]
compound
Yes
1
dot
8,850
0
D17
Is the percentage of male population who survived till age of 65 strictly greater than the percentage of female population who survived till age of 65 over the years ?
[]
compound
No
17
dot
8,443
0
D18
Is the percentage of female population who survived till age of 65 strictly less than the percentage of male population who survived till age of 65 over the years ?
[]
compound
No
17
dot
2,664
0
S6
How many dotlines are there ?
[{'y': 39, 'x': 94, 'w': 13, 'h': 13}, {'y': 37, 'x': 330, 'w': 13, 'h': 13}, {'y': 35, 'x': 567, 'w': 13, 'h': 13}, {'y': 33, 'x': 803, 'w': 13, 'h': 13}, {'y': 31, 'x': 1040, 'w': 13, 'h': 13}, {'y': 84, 'x': 94, 'w': 13, 'h': 13}, {'y': 81, 'x': 330, 'w': 13, 'h': 13}, {'y': 78, 'x': 567, 'w': 13, 'h': 13}, {'y': 75, 'x': 803, 'w': 13, 'h': 13}, {'y': 72, 'x': 1040, 'w': 13, 'h': 13}]
structural
2
0
dot
23
0
S5
How many years are there in the graph ?
[{'y': 591, 'x': 93, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 330, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 566, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 803, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 1039, 'w': 14, 'h': 27.9375}]
structural
5
53
dot
24
0
D7
What is the difference between two consecutive major ticks on the Y-axis ?
[]
data_retrieval
20.0
171
dot
25
0
D8
Are the values on the major ticks of Y-axis written in scientific E-notation ?
[{'y': 573, 'x': 35, 'w': 6.984375, 'h': 14}, {'y': 451, 'x': 28, 'w': 13.96875, 'h': 14}, {'y': 328, 'x': 28, 'w': 13.96875, 'h': 14}, {'y': 206, 'x': 28, 'w': 13.96875, 'h': 14}, {'y': 84, 'x': 28, 'w': 13.96875, 'h': 14}]
data_retrieval
No
17
dot
26
0
S0
Does the graph contain any zero values ?
[]
structural
No
17
dot
27
0
S1
Does the graph contain grids ?
[]
structural
No
17
dot
28
0
S2
Where does the legend appear in the graph ?
nan
structural
bottom right
19
dot
29
0
S3
How many legend labels are there ?
[{'y': 596, 'x': 1128, 'w': 101, 'h': 20}, {'y': 619, 'x': 1128, 'w': 88, 'h': 20}]
structural
2
0
dot
30
0
S4
How are the legend labels stacked ?
[{'y': 596, 'x': 1103, 'w': 20, 'h': 20}, {'y': 619, 'x': 1103, 'w': 20, 'h': 20}]
structural
vertical
20
dot
31
0
D9
What is the title of the graph ?
nan
data_retrieval
Percent of total population of Singapore who survived till the age of 65 years
505,581
dot
32
0
D10
Does "ODA received" appear as one of the legend labels in the graph ?
[]
data_retrieval
No
17
dot
1,121
0
D11
What is the label or title of the X-axis ?
nan
data_retrieval
Year
22
dot
34
0
D12
What is the label or title of the Y-axis ?
nan
data_retrieval
Population(% of cohort)
1,674
dot
35
1
S7
How many different coloured dotlines are there ?
[]
structural
2
0
dot
0
1
S17
Is the number of dotlines equal to the number of legend labels ?
[]
structural
No
17
dot
1
1
D15
What is the amount earned by trading services in 2010 ?
[]
data_retrieval
0
69
dot
13,917
1
M4
Across all years, what is the maximum amount earned by trading services ?
[]
min_max
2834000000
12,416
dot
95,608
1
M5
Across all years, what is the minimum amount earned by trading goods ?
[]
min_max
0
69
dot
2,146
1
M6
In which year was the amount earned by trading services maximum?
nan
min_max
2012
378
dot
95,609
1
A4
What is the total amount earned by trading goods in the graph ?
[]
arithmetic
565400000
398,927
dot
14,471
1
A6
What is the difference between the amount earned by trading services in 2010 and the amount earned by trading goods in 2014?
[]
arithmetic
0
69
dot
776,544
1
A7
What is the average amount earned by trading goods per year?
[]
arithmetic
94233333.33333333
505,582
dot
2,149
1
A8
In the year 2012, what is the difference between the amount earned by trading goods and amount earned by trading services ?
[]
arithmetic
-2268600000
505,583
dot
776,545
1
C4
In how many years, is the amount earned by trading goods greater than 100000000 US$?
[]
comparison
1
16
dot
776,546
1
CD7
What is the difference between the highest and the lowest amount earned by trading goods ?
[]
compound
565400000
398,927
dot
114,078
1
CD8
In how many years, is the amount earned by trading services greater than the average amount earned by trading services taken over all years ?
[]
compound
1
16
dot
2,151
1
D6
Does the amount earned by trading goods monotonically increase over the years ?
[]
compound
No
17
dot
2,152
1
D17
Is the amount earned by trading services strictly greater than the amount earned by trading goods over the years ?
[]
compound
Yes
1
dot
13,920
1
D18
Is the amount earned by trading services strictly less than the amount earned by trading goods over the years ?
[]
compound
No
17
dot
2,154
1
S6
How many dotlines are there ?
[{'y': 484, 'x': 679, 'w': 13, 'h': 13}, {'y': 124, 'x': 679, 'w': 13, 'h': 13}]
structural
2
0
dot
23
1
S5
How many years are there in the graph ?
[{'y': 591, 'x': 136, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 317, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 498, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 679, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 860, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 1041, 'w': 14, 'h': 27.9375}]
structural
6
34
dot
24
1
D7
What is the difference between two consecutive major ticks on the Y-axis ?
[]
data_retrieval
500000000.0
109
dot
25
1
D8
Are the values on the major ticks of Y-axis written in scientific E-notation ?
[{'y': 573, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 494, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 415, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 335, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 256, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 177, 'x': 32, 'w': 54.109375, 'h': 14}, {'y': 97, 'x': 32, 'w': 54.109375, 'h': 14}]
data_retrieval
Yes
1
dot
26
1
S0
Does the graph contain any zero values ?
[]
structural
Yes
1
dot
27
1
S1
Does the graph contain grids ?
[{'y': 34, 'x': 141, 'w': 4, 'h': 546}, {'y': 34, 'x': 322, 'w': 4, 'h': 546}, {'y': 34, 'x': 503, 'w': 4, 'h': 546}, {'y': 34, 'x': 684, 'w': 4, 'h': 546}, {'y': 34, 'x': 865, 'w': 4, 'h': 546}, {'y': 34, 'x': 1046, 'w': 4, 'h': 546}, {'y': 499, 'x': 97, 'w': 996, 'h': 4}, {'y': 420, 'x': 97, 'w': 996, 'h': 4}, {'y': 340, 'x': 97, 'w': 996, 'h': 4}, {'y': 261, 'x': 97, 'w': 996, 'h': 4}, {'y': 182, 'x': 97, 'w': 996, 'h': 4}, {'y': 102, 'x': 97, 'w': 996, 'h': 4}]
structural
Yes
1
dot
28
1
S2
Where does the legend appear in the graph ?
nan
structural
center right
40
dot
29
1
S3
How many legend labels are there ?
[{'y': 303, 'x': 1128, 'w': 41, 'h': 20}, {'y': 326, 'x': 1128, 'w': 56, 'h': 20}]
structural
2
0
dot
30
1
S4
How are the legend labels stacked ?
[{'y': 303, 'x': 1103, 'w': 20, 'h': 20}, {'y': 326, 'x': 1103, 'w': 20, 'h': 20}]
structural
vertical
20
dot
31
1
D9
What is the title of the graph ?
nan
data_retrieval
Total earnings of Belarus by trading goods and services
505,584
dot
32
1
D10
Does "Techinal cooperation" appear as one of the legend labels in the graph ?
[]
data_retrieval
No
17
dot
5,094
1
D11
What is the label or title of the X-axis ?
nan
data_retrieval
Year
22
dot
34
1
D12
What is the label or title of the Y-axis ?
nan
data_retrieval
Total Trade (current US$)
1,353
dot
35
2
S7
How many different coloured dotlines are there ?
[]
structural
2
0
dot
0
2
S17
Is the number of dotlines equal to the number of legend labels ?
[]
structural
Yes
1
dot
1
2
D15
What is the amount of private funds spent in healthcare in 1996 ?
[]
data_retrieval
1.85061804849245
505,585
dot
776,547
2
M4
Across all years, what is the maximum amount of public funds spent in healthcare ?
[]
min_max
2.6334583335645
505,586
dot
8,575
2
M5
Across all years, what is the minimum amount of public funds spent in healthcare ?
[]
min_max
2.45374949283308
505,587
dot
4,763
2
M6
In which year was the amount of public funds spent in healthcare maximum?
nan
min_max
1999
124
dot
4,764
2
M7
In which year was the amount of private funds spent in healthcare minimum?
nan
min_max
1996
362
dot
5,218
2
A4
What is the total amount of public funds spent in healthcare in the graph ?
[]
arithmetic
12.84605278873792
505,588
dot
5,219
2
A5
What is the difference between the amount of public funds spent in healthcare in 1998 and that in 1999 ?
[]
arithmetic
-0.033492113442830006
505,589
dot
776,548
2
A6
What is the difference between the amount of private funds spent in healthcare in 1997 and the amount of public funds spent in healthcare in 1998?
[]
arithmetic
-0.66544453461725
505,590
dot
776,549
2
A7
What is the average amount of public funds spent in healthcare per year?
[]
arithmetic
2.569210557747584
505,591
dot
4,769
2
A8
In the year 1999, what is the difference between the amount of private funds spent in healthcare and amount of public funds spent in healthcare ?
[]
arithmetic
-0.54115193740224
505,592
dot
776,550
2
C4
In how many years, is the amount of public funds spent in healthcare greater than 1.5 %?
[]
comparison
5
53
dot
776,551
2
C5
What is the ratio of the amount of public funds spent in healthcare in 1999 to that in 2000?
[]
comparison
1.007920443503436
505,593
dot
306,638
2
C6
Is the amount of private funds spent in healthcare in 1998 less than that in 1999 ?
[]
comparison
No
17
dot
622,241
2
CD5
Is the difference between the amount of private funds spent in healthcare in 1998 and 2000 greater than the difference between the amount of public funds spent in healthcare in 1998 and 2000 ?
[]
compound
Yes
1
dot
5,227
2
CD6
What is the difference between the highest and the second highest amount of private funds spent in healthcare ?
[]
compound
0.013062871536989
505,594
dot
4,775
2
CD7
What is the difference between the highest and the lowest amount of public funds spent in healthcare ?
[]
compound
0.17970884073142002
505,595
dot
5,229
2
CD8
In how many years, is the amount of private funds spent in healthcare greater than the average amount of private funds spent in healthcare taken over all years ?
[]
compound
2
0
dot
4,777
2
CD10
Is the sum of the amount of public funds spent in healthcare in 1996 and 2000 greater than the maximum amount of private funds spent in healthcare across all years ?
[]
compound
Yes
1
dot
776,552
2
D6
Does the amount of public funds spent in healthcare monotonically increase over the years ?
[]
compound
No
17
dot
4,779
2
D17
Is the amount of private funds spent in healthcare strictly greater than the amount of public funds spent in healthcare over the years ?
[]
compound
No
17
dot
9,124
2
D18
Is the amount of private funds spent in healthcare strictly less than the amount of public funds spent in healthcare over the years ?
[]
compound
Yes
1
dot
4,781
2
S6
How many dotlines are there ?
[{'y': 196, 'x': 86, 'w': 13, 'h': 13}, {'y': 179, 'x': 263, 'w': 13, 'h': 13}, {'y': 144, 'x': 440, 'w': 13, 'h': 13}, {'y': 146, 'x': 617, 'w': 13, 'h': 13}, {'y': 170, 'x': 793, 'w': 13, 'h': 13}, {'y': 73, 'x': 86, 'w': 13, 'h': 13}, {'y': 54, 'x': 263, 'w': 13, 'h': 13}, {'y': 43, 'x': 440, 'w': 13, 'h': 13}, {'y': 36, 'x': 617, 'w': 13, 'h': 13}, {'y': 40, 'x': 793, 'w': 13, 'h': 13}]
structural
2
0
dot
23
2
S5
How many years are there in the graph ?
[{'y': 591, 'x': 85, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 262, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 439, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 616, 'w': 14, 'h': 27.9375}, {'y': 591, 'x': 793, 'w': 14, 'h': 27.9375}]
structural
5
53
dot
24
2
D7
What is the difference between two consecutive major ticks on the Y-axis ?
[]
data_retrieval
0.5
90
dot
25
2
D8
Are the values on the major ticks of Y-axis written in scientific E-notation ?
[{'y': 573, 'x': 39, 'w': 6.984375, 'h': 14}, {'y': 471, 'x': 29, 'w': 17.453125, 'h': 14}, {'y': 369, 'x': 39, 'w': 6.984375, 'h': 14}, {'y': 267, 'x': 29, 'w': 17.453125, 'h': 14}, {'y': 165, 'x': 39, 'w': 6.984375, 'h': 14}, {'y': 63, 'x': 29, 'w': 17.453125, 'h': 14}]
data_retrieval
No
17
dot
26
2
S0
Does the graph contain any zero values ?
[]
structural
No
17
dot
27
2
S1
Does the graph contain grids ?
[]
structural
No
17
dot
28
2
S2
Where does the legend appear in the graph ?
nan
structural
center right
40
dot
29
2
S3
How many legend labels are there ?
[{'y': 303, 'x': 870, 'w': 88, 'h': 20}, {'y': 326, 'x': 870, 'w': 82, 'h': 20}]
structural
2
0
dot
30
2
S4
How are the legend labels stacked ?
[{'y': 303, 'x': 845, 'w': 20, 'h': 20}, {'y': 326, 'x': 845, 'w': 20, 'h': 20}]
structural
vertical
20
dot
31
2
D9
What is the title of the graph ?
nan
data_retrieval
Expenditure on health care (as % of GDP) in Middle East & North Africa (all income levels)
505,596
dot
32
2
D10
Does "Register a business" appear as one of the legend labels in the graph ?
[]
data_retrieval
No
17
dot
9,090
2
D11
What is the label or title of the X-axis ?
nan
data_retrieval
Year
22
dot
34
End of preview. Expand in Data Studio

Plotqa V1

Dataset Description

This dataset was uploaded from a pandas DataFrame.

Dataset Structure

Overview

  • Total Examples: 5,733,893
  • Total Features: 9
  • Dataset Size: ~2805.4 MB
  • Format: Parquet files
  • Created: 2025-09-22 20:12:01 UTC

Data Instances

The dataset contains 5,733,893 rows and 9 columns.

Data Fields

  • image_index (int64): 0 null values (0.0%), Range: [0.00, 157069.00], Mean: 78036.26
  • qid (object): 0 null values (0.0%), 74 unique values
  • question_string (object): 0 null values (0.0%), 1,502,530 unique values
  • answer_bbox (object): 0 null values (0.0%), 798,805 unique values
  • template (object): 0 null values (0.0%), 6 unique values
  • answer (object): 0 null values (0.0%), 1,002,651 unique values
  • answer_id (int64): 0 null values (0.0%), Range: [0.00, 1481788.00], Mean: 185454.21
  • type (object): 0 null values (0.0%), 4 unique values
  • question_id (int64): 0 null values (0.0%), Range: [0.00, 2170651.00], Mean: 441648.27

Data Splits

Split Number of Examples
train 5,733,893

Dataset Creation

This dataset was created by uploading a pandas DataFrame to Hugging Face Hub using the datasets library.

Source Data

The data was processed and uploaded as parquet files for efficient storage and loading.

Usage

Loading the Dataset

from datasets import load_dataset

# Load the dataset
dataset = load_dataset("Abd223653/PlotQA_V1")

# Convert to pandas DataFrame
df = dataset["train"].to_pandas()

print(f"Dataset shape: {df.shape}")
print(f"Columns: {list(df.columns)}")

Streaming (Memory Efficient)

from datasets import load_dataset

# Load dataset in streaming mode
dataset = load_dataset("Abd223653/PlotQA_V1", streaming=True)
train_stream = dataset["train"]

# Process in batches
for batch in train_stream.iter(batch_size=1000):
    # Process your batch here
    print(f"Processing batch with {len(batch['column_name'])} examples")

Basic Data Analysis

import pandas as pd
from datasets import load_dataset

# Load and explore the dataset
dataset = load_dataset("Abd223653/PlotQA_V1")
df = dataset["train"].to_pandas()

# Basic statistics
print(df.info())
print(df.describe())

# Check for missing values
print("Missing values per column:")
print(df.isnull().sum())

Data Quality

Missing Values

  • Total missing values: 0
  • Columns with missing values: 0
  • Percentage of complete rows: 100.0%

Data Types

  • int64: 3 columns
  • object: 6 columns

Limitations and Considerations

  • This dataset is provided as-is without warranty
  • Users should validate data quality for their specific use cases
  • Consider the licensing terms when using this dataset
  • Large datasets may require streaming or chunked processing
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