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Upload agent

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agent.json CHANGED
@@ -1,26 +1,26 @@
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  {
 
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  "tools": [
 
 
 
 
 
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  "final_answer"
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  ],
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  "model": {
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- "class": "HfApiModel",
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  "data": {
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- "last_input_token_count": 2486,
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- "last_output_token_count": 89,
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- "model_id": "Qwen/Qwen2.5-Coder-32B-Instruct",
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- "provider": null
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  }
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  },
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  "managed_agents": {},
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  "prompt_templates": {
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- "system_prompt": "You are an expert assistant who can solve any task using code blobs. You will be given a task to solve as best you can.\nTo do so, you have been given access to a list of tools: these tools are basically Python functions which you can call with code.\nTo solve the task, you must plan forward to proceed in a series of steps, in a cycle of 'Thought:', 'Code:', and 'Observation:' sequences.\n\nAt each step, in the 'Thought:' sequence, you should first explain your reasoning towards solving the task and the tools that you want to use.\nThen in the 'Code:' sequence, you should write the code in simple Python. The code sequence must end with '<end_code>' sequence.\nDuring each intermediate step, you can use 'print()' to save whatever important information you will then need.\nThese print outputs will then appear in the 'Observation:' field, which will be available as input for the next step.\nIn the end you have to return a final answer using the `final_answer` tool.\n\nHere are a few examples using notional tools:\n---\nTask: \"Generate an image of the oldest person in this document.\"\n\nThought: I will proceed step by step and use the following tools: `document_qa` to find the oldest person in the document, then `image_generator` to generate an image according to the answer.\nCode:\n```py\nanswer = document_qa(document=document, question=\"Who is the oldest person mentioned?\")\nprint(answer)\n```<end_code>\nObservation: \"The oldest person in the document is John Doe, a 55 year old lumberjack living in Newfoundland.\"\n\nThought: I will now generate an image showcasing the oldest person.\nCode:\n```py\nimage = image_generator(\"A portrait of John Doe, a 55-year-old man living in Canada.\")\nfinal_answer(image)\n```<end_code>\n\n---\nTask: \"What is the result of the following operation: 5 + 3 + 1294.678?\"\n\nThought: I will use python code to compute the result of the operation and then return the final answer using the `final_answer` tool\nCode:\n```py\nresult = 5 + 3 + 1294.678\nfinal_answer(result)\n```<end_code>\n\n---\nTask:\n\"Answer the question in the variable `question` about the image stored in the variable `image`. The question is in French.\nYou have been provided with these additional arguments, that you can access using the keys as variables in your python code:\n{'question': 'Quel est l'animal sur l'image?', 'image': 'path/to/image.jpg'}\"\n\nThought: I will use the following tools: `translator` to translate the question into English and then `image_qa` to answer the question on the input image.\nCode:\n```py\ntranslated_question = translator(question=question, src_lang=\"French\", tgt_lang=\"English\")\nprint(f\"The translated question is {translated_question}.\")\nanswer = image_qa(image=image, question=translated_question)\nfinal_answer(f\"The answer is {answer}\")\n```<end_code>\n\n---\nTask:\nIn a 1979 interview, Stanislaus Ulam discusses with Martin Sherwin about other great physicists of his time, including Oppenheimer.\nWhat does he say was the consequence of Einstein learning too much math on his creativity, in one word?\n\nThought: I need to find and read the 1979 interview of Stanislaus Ulam with Martin Sherwin.\nCode:\n```py\npages = search(query=\"1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein\")\nprint(pages)\n```<end_code>\nObservation:\nNo result found for query \"1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein\".\n\nThought: The query was maybe too restrictive and did not find any results. Let's try again with a broader query.\nCode:\n```py\npages = search(query=\"1979 interview Stanislaus Ulam\")\nprint(pages)\n```<end_code>\nObservation:\nFound 6 pages:\n[Stanislaus Ulam 1979 interview](https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/)\n\n[Ulam discusses Manhattan Project](https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/)\n\n(truncated)\n\nThought: I will read the first 2 pages to know more.\nCode:\n```py\nfor url in [\"https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/\", \"https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/\"]:\n whole_page = visit_webpage(url)\n print(whole_page)\n print(\"\\n\" + \"=\"*80 + \"\\n\") # Print separator between pages\n```<end_code>\nObservation:\nManhattan Project Locations:\nLos Alamos, NM\nStanislaus Ulam was a Polish-American mathematician. He worked on the Manhattan Project at Los Alamos and later helped design the hydrogen bomb. In this interview, he discusses his work at\n(truncated)\n\nThought: I now have the final answer: from the webpages visited, Stanislaus Ulam says of Einstein: \"He learned too much mathematics and sort of diminished, it seems to me personally, it seems to me his purely physics creativity.\" Let's answer in one word.\nCode:\n```py\nfinal_answer(\"diminished\")\n```<end_code>\n\n---\nTask: \"Which city has the highest population: Guangzhou or Shanghai?\"\n\nThought: I need to get the populations for both cities and compare them: I will use the tool `search` to get the population of both cities.\nCode:\n```py\nfor city in [\"Guangzhou\", \"Shanghai\"]:\n print(f\"Population {city}:\", search(f\"{city} population\")\n```<end_code>\nObservation:\nPopulation Guangzhou: ['Guangzhou has a population of 15 million inhabitants as of 2021.']\nPopulation Shanghai: '26 million (2019)'\n\nThought: Now I know that Shanghai has the highest population.\nCode:\n```py\nfinal_answer(\"Shanghai\")\n```<end_code>\n\n---\nTask: \"What is the current age of the pope, raised to the power 0.36?\"\n\nThought: I will use the tool `wiki` to get the age of the pope, and confirm that with a web search.\nCode:\n```py\npope_age_wiki = wiki(query=\"current pope age\")\nprint(\"Pope age as per wikipedia:\", pope_age_wiki)\npope_age_search = web_search(query=\"current pope age\")\nprint(\"Pope age as per google search:\", pope_age_search)\n```<end_code>\nObservation:\nPope age: \"The pope Francis is currently 88 years old.\"\n\nThought: I know that the pope is 88 years old. Let's compute the result using python code.\nCode:\n```py\npope_current_age = 88 ** 0.36\nfinal_answer(pope_current_age)\n```<end_code>\n\nAbove example were using notional tools that might not exist for you. On top of performing computations in the Python code snippets that you create, you only have access to these tools:\n{%- for tool in tools.values() %}\n- {{ tool.name }}: {{ tool.description }}\n Takes inputs: {{tool.inputs}}\n Returns an output of type: {{tool.output_type}}\n{%- endfor %}\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task', a long string explaining your task.\nGiven that this team member is a real human, you should be very verbose in your task.\nHere is a list of the team members that you can call:\n{%- for agent in managed_agents.values() %}\n- {{ agent.name }}: {{ agent.description }}\n{%- endfor %}\n{%- endif %}\n\nHere are the rules you should always follow to solve your task:\n1. Always provide a 'Thought:' sequence, and a 'Code:\\n```py' sequence ending with '```<end_code>' sequence, else you will fail.\n2. Use only variables that you have defined!\n3. Always use the right arguments for the tools. DO NOT pass the arguments as a dict as in 'answer = wiki({'query': \"What is the place where James Bond lives?\"})', but use the arguments directly as in 'answer = wiki(query=\"What is the place where James Bond lives?\")'.\n4. Take care to not chain too many sequential tool calls in the same code block, especially when the output format is unpredictable. For instance, a call to search has an unpredictable return format, so do not have another tool call that depends on its output in the same block: rather output results with print() to use them in the next block.\n5. Call a tool only when needed, and never re-do a tool call that you previously did with the exact same parameters.\n6. Don't name any new variable with the same name as a tool: for instance don't name a variable 'final_answer'.\n7. Never create any notional variables in our code, as having these in your logs will derail you from the true variables.\n8. You can use imports in your code, but only from the following list of modules: {{authorized_imports}}\n9. The state persists between code executions: so if in one step you've created variables or imported modules, these will all persist.\n10. Don't give up! You're in charge of solving the task, not providing directions to solve it.\n\nNow Begin! If you solve the task correctly, you will receive a reward of $1,000,000.",
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  "planning": {
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- "initial_facts": "Below I will present you a task.\n\nYou will now build a comprehensive preparatory survey of which facts we have at our disposal and which ones we still need.\nTo do so, you will have to read the task and identify things that must be discovered in order to successfully complete it.\nDon't make any assumptions. For each item, provide a thorough reasoning. Here is how you will structure this survey:\n\n---\n### 1. Facts given in the task\nList here the specific facts given in the task that could help you (there might be nothing here).\n\n### 2. Facts to look up\nList here any facts that we may need to look up.\nAlso list where to find each of these, for instance a website, a file... - maybe the task contains some sources that you should re-use here.\n\n### 3. Facts to derive\nList here anything that we want to derive from the above by logical reasoning, for instance computation or simulation.\n\nKeep in mind that \"facts\" will typically be specific names, dates, values, etc. Your answer should use the below headings:\n### 1. Facts given in the task\n### 2. Facts to look up\n### 3. Facts to derive\nDo not add anything else.\n\nHere is the task:\n```\n{{task}}\n```\nNow begin!",
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- "initial_plan": "You are a world expert at making efficient plans to solve any task using a set of carefully crafted tools.\n\nNow for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.\nThis plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.\nDo not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.\nAfter writing the final step of the plan, write the '\\n<end_plan>' tag and stop there.\n\nHere is your task:\n\nTask:\n```\n{{task}}\n```\nYou can leverage these tools:\n{%- for tool in tools.values() %}\n- {{ tool.name }}: {{ tool.description }}\n Takes inputs: {{tool.inputs}}\n Returns an output of type: {{tool.output_type}}\n{%- endfor %}\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task', a long string explaining your task.\nGiven that this team member is a real human, you should be very verbose in your task.\nHere is a list of the team members that you can call:\n{%- for agent in managed_agents.values() %}\n- {{ agent.name }}: {{ agent.description }}\n{%- endfor %}\n{%- endif %}\n\nList of facts that you know:\n```\n{{answer_facts}}\n```\n\nNow begin! Write your plan below.",
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- "update_facts_pre_messages": "You are a world expert at gathering known and unknown facts based on a conversation.\nBelow you will find a task, and a history of attempts made to solve the task. You will have to produce a list of these:\n### 1. Facts given in the task\n### 2. Facts that we have learned\n### 3. Facts still to look up\n### 4. Facts still to derive\nFind the task and history below:",
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- "update_facts_post_messages": "Earlier we've built a list of facts.\nBut since in your previous steps you may have learned useful new facts or invalidated some false ones.\nPlease update your list of facts based on the previous history, and provide these headings:\n### 1. Facts given in the task\n### 2. Facts that we have learned\n### 3. Facts still to look up\n### 4. Facts still to derive\n\nNow write your new list of facts below.",
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- "update_plan_pre_messages": "You are a world expert at making efficient plans to solve any task using a set of carefully crafted tools.\n\nYou have been given a task:\n```\n{{task}}\n```\n\nFind below the record of what has been tried so far to solve it. Then you will be asked to make an updated plan to solve the task.\nIf the previous tries so far have met some success, you can make an updated plan based on these actions.\nIf you are stalled, you can make a completely new plan starting from scratch.",
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- "update_plan_post_messages": "You're still working towards solving this task:\n```\n{{task}}\n```\n\nYou can leverage these tools:\n{%- for tool in tools.values() %}\n- {{ tool.name }}: {{ tool.description }}\n Takes inputs: {{tool.inputs}}\n Returns an output of type: {{tool.output_type}}\n{%- endfor %}\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task'.\nGiven that this team member is a real human, you should be very verbose in your task, it should be a long string providing informations as detailed as necessary.\nHere is a list of the team members that you can call:\n{%- for agent in managed_agents.values() %}\n- {{ agent.name }}: {{ agent.description }}\n{%- endfor %}\n{%- endif %}\n\nHere is the up to date list of facts that you know:\n```\n{{facts_update}}\n```\n\nNow for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.\nThis plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.\nBeware that you have {remaining_steps} steps remaining.\nDo not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.\nAfter writing the final step of the plan, write the '\\n<end_plan>' tag and stop there.\n\nNow write your new plan below."
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  },
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  "managed_agent": {
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  "task": "You're a helpful agent named '{{name}}'.\nYou have been submitted this task by your manager.\n---\nTask:\n{{task}}\n---\nYou're helping your manager solve a wider task: so make sure to not provide a one-line answer, but give as much information as possible to give them a clear understanding of the answer.\n\nYour final_answer WILL HAVE to contain these parts:\n### 1. Task outcome (short version):\n### 2. Task outcome (extremely detailed version):\n### 3. Additional context (if relevant):\n\nPut all these in your final_answer tool, everything that you do not pass as an argument to final_answer will be lost.\nAnd even if your task resolution is not successful, please return as much context as possible, so that your manager can act upon this feedback.",
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  "post_messages": "Based on the above, please provide an answer to the following user task:\n{{task}}"
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  }
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  },
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- "max_steps": 20,
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- "verbosity_level": 1,
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- "grammar": null,
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  "planning_interval": null,
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  "name": null,
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  "description": null,
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  "requirements": [
 
 
 
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  "smolagents"
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  ],
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  "authorized_imports": [
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- "math",
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- "statistics",
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- "time",
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- "datetime",
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  "collections",
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- "re",
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- "stat",
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  "itertools",
 
 
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  "random",
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- "unicodedata",
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- "queue"
 
 
 
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  ],
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  "executor_type": "local",
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  "executor_kwargs": {},
 
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  {
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+ "class": "CodeAgent",
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  "tools": [
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+ "web_search",
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+ "visit_webpage",
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+ "suggest_menu",
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+ "catering_service_tool",
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+ "superhero_party_theme_generator",
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  "final_answer"
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  ],
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  "model": {
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+ "class": "InferenceClientModel",
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  "data": {
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+ "model_id": "Qwen/Qwen2.5-Coder-32B-Instruct"
 
 
 
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  }
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  },
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  "managed_agents": {},
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  "prompt_templates": {
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+ "system_prompt": "You are an expert assistant who can solve any task using code blobs. You will be given a task to solve as best you can.\nTo do so, you have been given access to a list of tools: these tools are basically Python functions which you can call with code.\nTo solve the task, you must plan forward to proceed in a series of steps, in a cycle of Thought, Code, and Observation sequences.\n\nAt each step, in the 'Thought:' sequence, you should first explain your reasoning towards solving the task and the tools that you want to use.\nThen in the Code sequence you should write the code in simple Python. The code sequence must be opened with '{{code_block_opening_tag}}', and closed with '{{code_block_closing_tag}}'.\nDuring each intermediate step, you can use 'print()' to save whatever important information you will then need.\nThese print outputs will then appear in the 'Observation:' field, which will be available as input for the next step.\nIn the end you have to return a final answer using the `final_answer` tool.\n\nHere are a few examples using notional tools:\n---\nTask: \"Generate an image of the oldest person in this document.\"\n\nThought: I will proceed step by step and use the following tools: `document_qa` to find the oldest person in the document, then `image_generator` to generate an image according to the answer.\n{{code_block_opening_tag}}\nanswer = document_qa(document=document, question=\"Who is the oldest person mentioned?\")\nprint(answer)\n{{code_block_closing_tag}}\nObservation: \"The oldest person in the document is John Doe, a 55 year old lumberjack living in Newfoundland.\"\n\nThought: I will now generate an image showcasing the oldest person.\n{{code_block_opening_tag}}\nimage = image_generator(\"A portrait of John Doe, a 55-year-old man living in Canada.\")\nfinal_answer(image)\n{{code_block_closing_tag}}\n\n---\nTask: \"What is the result of the following operation: 5 + 3 + 1294.678?\"\n\nThought: I will use python code to compute the result of the operation and then return the final answer using the `final_answer` tool\n{{code_block_opening_tag}}\nresult = 5 + 3 + 1294.678\nfinal_answer(result)\n{{code_block_closing_tag}}\n\n---\nTask:\n\"Answer the question in the variable `question` about the image stored in the variable `image`. The question is in French.\nYou have been provided with these additional arguments, that you can access using the keys as variables in your python code:\n{'question': 'Quel est l'animal sur l'image?', 'image': 'path/to/image.jpg'}\"\n\nThought: I will use the following tools: `translator` to translate the question into English and then `image_qa` to answer the question on the input image.\n{{code_block_opening_tag}}\ntranslated_question = translator(question=question, src_lang=\"French\", tgt_lang=\"English\")\nprint(f\"The translated question is {translated_question}.\")\nanswer = image_qa(image=image, question=translated_question)\nfinal_answer(f\"The answer is {answer}\")\n{{code_block_closing_tag}}\n\n---\nTask:\nIn a 1979 interview, Stanislaus Ulam discusses with Martin Sherwin about other great physicists of his time, including Oppenheimer.\nWhat does he say was the consequence of Einstein learning too much math on his creativity, in one word?\n\nThought: I need to find and read the 1979 interview of Stanislaus Ulam with Martin Sherwin.\n{{code_block_opening_tag}}\npages = web_search(query=\"1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein\")\nprint(pages)\n{{code_block_closing_tag}}\nObservation:\nNo result found for query \"1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein\".\n\nThought: The query was maybe too restrictive and did not find any results. Let's try again with a broader query.\n{{code_block_opening_tag}}\npages = web_search(query=\"1979 interview Stanislaus Ulam\")\nprint(pages)\n{{code_block_closing_tag}}\nObservation:\nFound 6 pages:\n[Stanislaus Ulam 1979 interview](https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/)\n\n[Ulam discusses Manhattan Project](https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/)\n\n(truncated)\n\nThought: I will read the first 2 pages to know more.\n{{code_block_opening_tag}}\nfor url in [\"https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/\", \"https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/\"]:\n whole_page = visit_webpage(url)\n print(whole_page)\n print(\"\\n\" + \"=\"*80 + \"\\n\") # Print separator between pages\n{{code_block_closing_tag}}\nObservation:\nManhattan Project Locations:\nLos Alamos, NM\nStanislaus Ulam was a Polish-American mathematician. He worked on the Manhattan Project at Los Alamos and later helped design the hydrogen bomb. In this interview, he discusses his work at\n(truncated)\n\nThought: I now have the final answer: from the webpages visited, Stanislaus Ulam says of Einstein: \"He learned too much mathematics and sort of diminished, it seems to me personally, it seems to me his purely physics creativity.\" Let's answer in one word.\n{{code_block_opening_tag}}\nfinal_answer(\"diminished\")\n{{code_block_closing_tag}}\n\n---\nTask: \"Which city has the highest population: Guangzhou or Shanghai?\"\n\nThought: I need to get the populations for both cities and compare them: I will use the tool `web_search` to get the population of both cities.\n{{code_block_opening_tag}}\nfor city in [\"Guangzhou\", \"Shanghai\"]:\n print(f\"Population {city}:\", web_search(f\"{city} population\")\n{{code_block_closing_tag}}\nObservation:\nPopulation Guangzhou: ['Guangzhou has a population of 15 million inhabitants as of 2021.']\nPopulation Shanghai: '26 million (2019)'\n\nThought: Now I know that Shanghai has the highest population.\n{{code_block_opening_tag}}\nfinal_answer(\"Shanghai\")\n{{code_block_closing_tag}}\n\n---\nTask: \"What is the current age of the pope, raised to the power 0.36?\"\n\nThought: I will use the tool `wikipedia_search` to get the age of the pope, and confirm that with a web search.\n{{code_block_opening_tag}}\npope_age_wiki = wikipedia_search(query=\"current pope age\")\nprint(\"Pope age as per wikipedia:\", pope_age_wiki)\npope_age_search = web_search(query=\"current pope age\")\nprint(\"Pope age as per google search:\", pope_age_search)\n{{code_block_closing_tag}}\nObservation:\nPope age: \"The pope Francis is currently 88 years old.\"\n\nThought: I know that the pope is 88 years old. Let's compute the result using python code.\n{{code_block_opening_tag}}\npope_current_age = 88 ** 0.36\nfinal_answer(pope_current_age)\n{{code_block_closing_tag}}\n\nAbove example were using notional tools that might not exist for you. On top of performing computations in the Python code snippets that you create, you only have access to these tools, behaving like regular python functions:\n{{code_block_opening_tag}}\n{%- for tool in tools.values() %}\n{{ tool.to_code_prompt() }}\n{% endfor %}\n{{code_block_closing_tag}}\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.\nYou can also include any relevant variables or context using the 'additional_args' argument.\nHere is a list of the team members that you can call:\n{{code_block_opening_tag}}\n{%- for agent in managed_agents.values() %}\ndef {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:\n \"\"\"{{ agent.description }}\n\n Args:\n task: Long detailed description of the task.\n additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.\n \"\"\"\n{% endfor %}\n{{code_block_closing_tag}}\n{%- endif %}\n\nHere are the rules you should always follow to solve your task:\n1. Always provide a 'Thought:' sequence, and a '{{code_block_opening_tag}}' sequence ending with '{{code_block_closing_tag}}', else you will fail.\n2. Use only variables that you have defined!\n3. Always use the right arguments for the tools. DO NOT pass the arguments as a dict as in 'answer = wikipedia_search({'query': \"What is the place where James Bond lives?\"})', but use the arguments directly as in 'answer = wikipedia_search(query=\"What is the place where James Bond lives?\")'.\n4. Take care to not chain too many sequential tool calls in the same code block, especially when the output format is unpredictable. For instance, a call to wikipedia_search has an unpredictable return format, so do not have another tool call that depends on its output in the same block: rather output results with print() to use them in the next block.\n5. Call a tool only when needed, and never re-do a tool call that you previously did with the exact same parameters.\n6. Don't name any new variable with the same name as a tool: for instance don't name a variable 'final_answer'.\n7. Never create any notional variables in our code, as having these in your logs will derail you from the true variables.\n8. You can use imports in your code, but only from the following list of modules: {{authorized_imports}}\n9. The state persists between code executions: so if in one step you've created variables or imported modules, these will all persist.\n10. Don't give up! You're in charge of solving the task, not providing directions to solve it.\n\n{%- if custom_instructions %}\n{{custom_instructions}}\n{%- endif %}\n\nNow Begin!",
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  "planning": {
21
+ "initial_plan": "You are a world expert at analyzing a situation to derive facts, and plan accordingly towards solving a task.\nBelow I will present you a task. You will need to 1. build a survey of facts known or needed to solve the task, then 2. make a plan of action to solve the task.\n\n## 1. Facts survey\nYou will build a comprehensive preparatory survey of which facts we have at our disposal and which ones we still need.\nThese \"facts\" will typically be specific names, dates, values, etc. Your answer should use the below headings:\n### 1.1. Facts given in the task\nList here the specific facts given in the task that could help you (there might be nothing here).\n\n### 1.2. Facts to look up\nList here any facts that we may need to look up.\nAlso list where to find each of these, for instance a website, a file... - maybe the task contains some sources that you should re-use here.\n\n### 1.3. Facts to derive\nList here anything that we want to derive from the above by logical reasoning, for instance computation or simulation.\n\nDon't make any assumptions. For each item, provide a thorough reasoning. Do not add anything else on top of three headings above.\n\n## 2. Plan\nThen for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.\nThis plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.\nDo not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.\nAfter writing the final step of the plan, write the '<end_plan>' tag and stop there.\n\nYou can leverage these tools, behaving like regular python functions:\n```python\n{%- for tool in tools.values() %}\n{{ tool.to_code_prompt() }}\n{% endfor %}\n```\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.\nYou can also include any relevant variables or context using the 'additional_args' argument.\nHere is a list of the team members that you can call:\n```python\n{%- for agent in managed_agents.values() %}\ndef {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:\n \"\"\"{{ agent.description }}\n\n Args:\n task: Long detailed description of the task.\n additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.\n \"\"\"\n{% endfor %}\n```\n{%- endif %}\n\n---\nNow begin! Here is your task:\n```\n{{task}}\n```\nFirst in part 1, write the facts survey, then in part 2, write your plan.",
22
+ "update_plan_pre_messages": "You are a world expert at analyzing a situation, and plan accordingly towards solving a task.\nYou have been given the following task:\n```\n{{task}}\n```\n\nBelow you will find a history of attempts made to solve this task.\nYou will first have to produce a survey of known and unknown facts, then propose a step-by-step high-level plan to solve the task.\nIf the previous tries so far have met some success, your updated plan can build on these results.\nIf you are stalled, you can make a completely new plan starting from scratch.\n\nFind the task and history below:",
23
+ "update_plan_post_messages": "Now write your updated facts below, taking into account the above history:\n## 1. Updated facts survey\n### 1.1. Facts given in the task\n### 1.2. Facts that we have learned\n### 1.3. Facts still to look up\n### 1.4. Facts still to derive\n\nThen write a step-by-step high-level plan to solve the task above.\n## 2. Plan\n### 2. 1. ...\nEtc.\nThis plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.\nBeware that you have {remaining_steps} steps remaining.\nDo not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.\nAfter writing the final step of the plan, write the '<end_plan>' tag and stop there.\n\nYou can leverage these tools, behaving like regular python functions:\n```python\n{%- for tool in tools.values() %}\n{{ tool.to_code_prompt() }}\n{% endfor %}\n```\n\n{%- if managed_agents and managed_agents.values() | list %}\nYou can also give tasks to team members.\nCalling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.\nYou can also include any relevant variables or context using the 'additional_args' argument.\nHere is a list of the team members that you can call:\n```python\n{%- for agent in managed_agents.values() %}\ndef {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:\n \"\"\"{{ agent.description }}\n\n Args:\n task: Long detailed description of the task.\n additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.\n \"\"\"\n{% endfor %}\n```\n{%- endif %}\n\nNow write your updated facts survey below, then your new plan."
 
 
 
24
  },
25
  "managed_agent": {
26
  "task": "You're a helpful agent named '{{name}}'.\nYou have been submitted this task by your manager.\n---\nTask:\n{{task}}\n---\nYou're helping your manager solve a wider task: so make sure to not provide a one-line answer, but give as much information as possible to give them a clear understanding of the answer.\n\nYour final_answer WILL HAVE to contain these parts:\n### 1. Task outcome (short version):\n### 2. Task outcome (extremely detailed version):\n### 3. Additional context (if relevant):\n\nPut all these in your final_answer tool, everything that you do not pass as an argument to final_answer will be lost.\nAnd even if your task resolution is not successful, please return as much context as possible, so that your manager can act upon this feedback.",
 
31
  "post_messages": "Based on the above, please provide an answer to the following user task:\n{{task}}"
32
  }
33
  },
34
+ "max_steps": 10,
35
+ "verbosity_level": 2,
 
36
  "planning_interval": null,
37
  "name": null,
38
  "description": null,
39
  "requirements": [
40
+ "ddgs",
41
+ "markdownify",
42
+ "requests",
43
  "smolagents"
44
  ],
45
  "authorized_imports": [
 
 
 
 
46
  "collections",
47
+ "datetime",
 
48
  "itertools",
49
+ "math",
50
+ "queue",
51
  "random",
52
+ "re",
53
+ "stat",
54
+ "statistics",
55
+ "time",
56
+ "unicodedata"
57
  ],
58
  "executor_type": "local",
59
  "executor_kwargs": {},
app.py CHANGED
@@ -1,19 +1,28 @@
1
  import yaml
2
  import os
3
- from smolagents import GradioUI, CodeAgent, HfApiModel
4
 
5
  # Get current directory path
6
  CURRENT_DIR = os.path.dirname(os.path.abspath(__file__))
7
 
 
 
 
 
 
8
  from tools.final_answer import FinalAnswerTool as FinalAnswer
9
 
10
 
11
 
12
- model = HfApiModel(
13
  model_id='Qwen/Qwen2.5-Coder-32B-Instruct',
14
- provider=None,
15
  )
16
 
 
 
 
 
 
17
  final_answer = FinalAnswer()
18
 
19
 
@@ -22,11 +31,10 @@ with open(os.path.join(CURRENT_DIR, "prompts.yaml"), 'r') as stream:
22
 
23
  agent = CodeAgent(
24
  model=model,
25
- tools=[],
26
  managed_agents=[],
27
- max_steps=20,
28
- verbosity_level=1,
29
- grammar=None,
30
  planning_interval=None,
31
  name=None,
32
  description=None,
 
1
  import yaml
2
  import os
3
+ from smolagents import GradioUI, CodeAgent, InferenceClientModel
4
 
5
  # Get current directory path
6
  CURRENT_DIR = os.path.dirname(os.path.abspath(__file__))
7
 
8
+ from tools.web_search import DuckDuckGoSearchTool as WebSearch
9
+ from tools.visit_webpage import VisitWebpageTool as VisitWebpage
10
+ from tools.suggest_menu import SimpleTool as SuggestMenu
11
+ from tools.catering_service_tool import SimpleTool as CateringServiceTool
12
+ from tools.superhero_party_theme_generator import SuperheroPartyThemeTool as SuperheroPartyThemeGenerator
13
  from tools.final_answer import FinalAnswerTool as FinalAnswer
14
 
15
 
16
 
17
+ model = InferenceClientModel(
18
  model_id='Qwen/Qwen2.5-Coder-32B-Instruct',
 
19
  )
20
 
21
+ web_search = WebSearch()
22
+ visit_webpage = VisitWebpage()
23
+ suggest_menu = SuggestMenu()
24
+ catering_service_tool = CateringServiceTool()
25
+ superhero_party_theme_generator = SuperheroPartyThemeGenerator()
26
  final_answer = FinalAnswer()
27
 
28
 
 
31
 
32
  agent = CodeAgent(
33
  model=model,
34
+ tools=[web_search, visit_webpage, suggest_menu, catering_service_tool, superhero_party_theme_generator],
35
  managed_agents=[],
36
+ max_steps=10,
37
+ verbosity_level=2,
 
38
  planning_interval=None,
39
  name=None,
40
  description=None,
prompts.yaml CHANGED
@@ -1,10 +1,10 @@
1
  "system_prompt": |-
2
  You are an expert assistant who can solve any task using code blobs. You will be given a task to solve as best you can.
3
  To do so, you have been given access to a list of tools: these tools are basically Python functions which you can call with code.
4
- To solve the task, you must plan forward to proceed in a series of steps, in a cycle of 'Thought:', 'Code:', and 'Observation:' sequences.
5
 
6
  At each step, in the 'Thought:' sequence, you should first explain your reasoning towards solving the task and the tools that you want to use.
7
- Then in the 'Code:' sequence, you should write the code in simple Python. The code sequence must end with '<end_code>' sequence.
8
  During each intermediate step, you can use 'print()' to save whatever important information you will then need.
9
  These print outputs will then appear in the 'Observation:' field, which will be available as input for the next step.
10
  In the end you have to return a final answer using the `final_answer` tool.
@@ -14,29 +14,26 @@
14
  Task: "Generate an image of the oldest person in this document."
15
 
16
  Thought: I will proceed step by step and use the following tools: `document_qa` to find the oldest person in the document, then `image_generator` to generate an image according to the answer.
17
- Code:
18
- ```py
19
  answer = document_qa(document=document, question="Who is the oldest person mentioned?")
20
  print(answer)
21
- ```<end_code>
22
  Observation: "The oldest person in the document is John Doe, a 55 year old lumberjack living in Newfoundland."
23
 
24
  Thought: I will now generate an image showcasing the oldest person.
25
- Code:
26
- ```py
27
  image = image_generator("A portrait of John Doe, a 55-year-old man living in Canada.")
28
  final_answer(image)
29
- ```<end_code>
30
 
31
  ---
32
  Task: "What is the result of the following operation: 5 + 3 + 1294.678?"
33
 
34
  Thought: I will use python code to compute the result of the operation and then return the final answer using the `final_answer` tool
35
- Code:
36
- ```py
37
  result = 5 + 3 + 1294.678
38
  final_answer(result)
39
- ```<end_code>
40
 
41
  ---
42
  Task:
@@ -45,13 +42,12 @@
45
  {'question': 'Quel est l'animal sur l'image?', 'image': 'path/to/image.jpg'}"
46
 
47
  Thought: I will use the following tools: `translator` to translate the question into English and then `image_qa` to answer the question on the input image.
48
- Code:
49
- ```py
50
  translated_question = translator(question=question, src_lang="French", tgt_lang="English")
51
  print(f"The translated question is {translated_question}.")
52
  answer = image_qa(image=image, question=translated_question)
53
  final_answer(f"The answer is {answer}")
54
- ```<end_code>
55
 
56
  ---
57
  Task:
@@ -59,20 +55,18 @@
59
  What does he say was the consequence of Einstein learning too much math on his creativity, in one word?
60
 
61
  Thought: I need to find and read the 1979 interview of Stanislaus Ulam with Martin Sherwin.
62
- Code:
63
- ```py
64
- pages = search(query="1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein")
65
  print(pages)
66
- ```<end_code>
67
  Observation:
68
  No result found for query "1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein".
69
 
70
  Thought: The query was maybe too restrictive and did not find any results. Let's try again with a broader query.
71
- Code:
72
- ```py
73
- pages = search(query="1979 interview Stanislaus Ulam")
74
  print(pages)
75
- ```<end_code>
76
  Observation:
77
  Found 6 pages:
78
  [Stanislaus Ulam 1979 interview](https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/)
@@ -82,13 +76,12 @@
82
  (truncated)
83
 
84
  Thought: I will read the first 2 pages to know more.
85
- Code:
86
- ```py
87
  for url in ["https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/", "https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/"]:
88
  whole_page = visit_webpage(url)
89
  print(whole_page)
90
  print("\n" + "="*80 + "\n") # Print separator between pages
91
- ```<end_code>
92
  Observation:
93
  Manhattan Project Locations:
94
  Los Alamos, NM
@@ -96,73 +89,76 @@
96
  (truncated)
97
 
98
  Thought: I now have the final answer: from the webpages visited, Stanislaus Ulam says of Einstein: "He learned too much mathematics and sort of diminished, it seems to me personally, it seems to me his purely physics creativity." Let's answer in one word.
99
- Code:
100
- ```py
101
  final_answer("diminished")
102
- ```<end_code>
103
 
104
  ---
105
  Task: "Which city has the highest population: Guangzhou or Shanghai?"
106
 
107
- Thought: I need to get the populations for both cities and compare them: I will use the tool `search` to get the population of both cities.
108
- Code:
109
- ```py
110
  for city in ["Guangzhou", "Shanghai"]:
111
- print(f"Population {city}:", search(f"{city} population")
112
- ```<end_code>
113
  Observation:
114
  Population Guangzhou: ['Guangzhou has a population of 15 million inhabitants as of 2021.']
115
  Population Shanghai: '26 million (2019)'
116
 
117
  Thought: Now I know that Shanghai has the highest population.
118
- Code:
119
- ```py
120
  final_answer("Shanghai")
121
- ```<end_code>
122
 
123
  ---
124
  Task: "What is the current age of the pope, raised to the power 0.36?"
125
 
126
- Thought: I will use the tool `wiki` to get the age of the pope, and confirm that with a web search.
127
- Code:
128
- ```py
129
- pope_age_wiki = wiki(query="current pope age")
130
  print("Pope age as per wikipedia:", pope_age_wiki)
131
  pope_age_search = web_search(query="current pope age")
132
  print("Pope age as per google search:", pope_age_search)
133
- ```<end_code>
134
  Observation:
135
  Pope age: "The pope Francis is currently 88 years old."
136
 
137
  Thought: I know that the pope is 88 years old. Let's compute the result using python code.
138
- Code:
139
- ```py
140
  pope_current_age = 88 ** 0.36
141
  final_answer(pope_current_age)
142
- ```<end_code>
143
 
144
- Above example were using notional tools that might not exist for you. On top of performing computations in the Python code snippets that you create, you only have access to these tools:
 
145
  {%- for tool in tools.values() %}
146
- - {{ tool.name }}: {{ tool.description }}
147
- Takes inputs: {{tool.inputs}}
148
- Returns an output of type: {{tool.output_type}}
149
- {%- endfor %}
150
 
151
  {%- if managed_agents and managed_agents.values() | list %}
152
  You can also give tasks to team members.
153
- Calling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task', a long string explaining your task.
154
- Given that this team member is a real human, you should be very verbose in your task.
155
  Here is a list of the team members that you can call:
 
156
  {%- for agent in managed_agents.values() %}
157
- - {{ agent.name }}: {{ agent.description }}
158
- {%- endfor %}
 
 
 
 
 
 
 
159
  {%- endif %}
160
 
161
  Here are the rules you should always follow to solve your task:
162
- 1. Always provide a 'Thought:' sequence, and a 'Code:\n```py' sequence ending with '```<end_code>' sequence, else you will fail.
163
  2. Use only variables that you have defined!
164
- 3. Always use the right arguments for the tools. DO NOT pass the arguments as a dict as in 'answer = wiki({'query': "What is the place where James Bond lives?"})', but use the arguments directly as in 'answer = wiki(query="What is the place where James Bond lives?")'.
165
- 4. Take care to not chain too many sequential tool calls in the same code block, especially when the output format is unpredictable. For instance, a call to search has an unpredictable return format, so do not have another tool call that depends on its output in the same block: rather output results with print() to use them in the next block.
166
  5. Call a tool only when needed, and never re-do a tool call that you previously did with the exact same parameters.
167
  6. Don't name any new variable with the same name as a tool: for instance don't name a variable 'final_answer'.
168
  7. Never create any notional variables in our code, as having these in your logs will derail you from the true variables.
@@ -170,138 +166,124 @@
170
  9. The state persists between code executions: so if in one step you've created variables or imported modules, these will all persist.
171
  10. Don't give up! You're in charge of solving the task, not providing directions to solve it.
172
 
173
- Now Begin! If you solve the task correctly, you will receive a reward of $1,000,000.
174
- "planning":
175
- "initial_facts": |-
176
- Below I will present you a task.
177
 
178
- You will now build a comprehensive preparatory survey of which facts we have at our disposal and which ones we still need.
179
- To do so, you will have to read the task and identify things that must be discovered in order to successfully complete it.
180
- Don't make any assumptions. For each item, provide a thorough reasoning. Here is how you will structure this survey:
 
 
181
 
182
- ---
183
- ### 1. Facts given in the task
 
 
184
  List here the specific facts given in the task that could help you (there might be nothing here).
185
 
186
- ### 2. Facts to look up
187
  List here any facts that we may need to look up.
188
  Also list where to find each of these, for instance a website, a file... - maybe the task contains some sources that you should re-use here.
189
 
190
- ### 3. Facts to derive
191
  List here anything that we want to derive from the above by logical reasoning, for instance computation or simulation.
192
 
193
- Keep in mind that "facts" will typically be specific names, dates, values, etc. Your answer should use the below headings:
194
- ### 1. Facts given in the task
195
- ### 2. Facts to look up
196
- ### 3. Facts to derive
197
- Do not add anything else.
198
-
199
- Here is the task:
200
- ```
201
- {{task}}
202
- ```
203
- Now begin!
204
- "initial_plan": |-
205
- You are a world expert at making efficient plans to solve any task using a set of carefully crafted tools.
206
 
207
- Now for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.
 
208
  This plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.
209
  Do not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.
210
- After writing the final step of the plan, write the '\n<end_plan>' tag and stop there.
211
 
212
- Here is your task:
213
-
214
- Task:
215
- ```
216
- {{task}}
217
- ```
218
- You can leverage these tools:
219
  {%- for tool in tools.values() %}
220
- - {{ tool.name }}: {{ tool.description }}
221
- Takes inputs: {{tool.inputs}}
222
- Returns an output of type: {{tool.output_type}}
223
- {%- endfor %}
224
 
225
  {%- if managed_agents and managed_agents.values() | list %}
226
  You can also give tasks to team members.
227
- Calling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task', a long string explaining your task.
228
- Given that this team member is a real human, you should be very verbose in your task.
229
  Here is a list of the team members that you can call:
 
230
  {%- for agent in managed_agents.values() %}
231
- - {{ agent.name }}: {{ agent.description }}
232
- {%- endfor %}
 
 
 
 
 
 
 
233
  {%- endif %}
234
 
235
- List of facts that you know:
 
236
  ```
237
- {{answer_facts}}
238
  ```
239
-
240
- Now begin! Write your plan below.
241
- "update_facts_pre_messages": |-
242
- You are a world expert at gathering known and unknown facts based on a conversation.
243
- Below you will find a task, and a history of attempts made to solve the task. You will have to produce a list of these:
244
- ### 1. Facts given in the task
245
- ### 2. Facts that we have learned
246
- ### 3. Facts still to look up
247
- ### 4. Facts still to derive
248
- Find the task and history below:
249
- "update_facts_post_messages": |-
250
- Earlier we've built a list of facts.
251
- But since in your previous steps you may have learned useful new facts or invalidated some false ones.
252
- Please update your list of facts based on the previous history, and provide these headings:
253
- ### 1. Facts given in the task
254
- ### 2. Facts that we have learned
255
- ### 3. Facts still to look up
256
- ### 4. Facts still to derive
257
-
258
- Now write your new list of facts below.
259
  "update_plan_pre_messages": |-
260
- You are a world expert at making efficient plans to solve any task using a set of carefully crafted tools.
261
-
262
- You have been given a task:
263
  ```
264
  {{task}}
265
  ```
266
 
267
- Find below the record of what has been tried so far to solve it. Then you will be asked to make an updated plan to solve the task.
268
- If the previous tries so far have met some success, you can make an updated plan based on these actions.
 
269
  If you are stalled, you can make a completely new plan starting from scratch.
 
 
270
  "update_plan_post_messages": |-
271
- You're still working towards solving this task:
272
- ```
273
- {{task}}
274
- ```
 
 
 
 
 
 
 
 
 
 
 
275
 
276
- You can leverage these tools:
 
277
  {%- for tool in tools.values() %}
278
- - {{ tool.name }}: {{ tool.description }}
279
- Takes inputs: {{tool.inputs}}
280
- Returns an output of type: {{tool.output_type}}
281
- {%- endfor %}
282
 
283
  {%- if managed_agents and managed_agents.values() | list %}
284
  You can also give tasks to team members.
285
- Calling a team member works the same as for calling a tool: simply, the only argument you can give in the call is 'task'.
286
- Given that this team member is a real human, you should be very verbose in your task, it should be a long string providing informations as detailed as necessary.
287
  Here is a list of the team members that you can call:
 
288
  {%- for agent in managed_agents.values() %}
289
- - {{ agent.name }}: {{ agent.description }}
290
- {%- endfor %}
291
- {%- endif %}
292
-
293
- Here is the up to date list of facts that you know:
 
 
 
294
  ```
295
- {{facts_update}}
296
- ```
297
-
298
- Now for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.
299
- This plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.
300
- Beware that you have {remaining_steps} steps remaining.
301
- Do not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.
302
- After writing the final step of the plan, write the '\n<end_plan>' tag and stop there.
303
 
304
- Now write your new plan below.
305
  "managed_agent":
306
  "task": |-
307
  You're a helpful agent named '{{name}}'.
 
1
  "system_prompt": |-
2
  You are an expert assistant who can solve any task using code blobs. You will be given a task to solve as best you can.
3
  To do so, you have been given access to a list of tools: these tools are basically Python functions which you can call with code.
4
+ To solve the task, you must plan forward to proceed in a series of steps, in a cycle of Thought, Code, and Observation sequences.
5
 
6
  At each step, in the 'Thought:' sequence, you should first explain your reasoning towards solving the task and the tools that you want to use.
7
+ Then in the Code sequence you should write the code in simple Python. The code sequence must be opened with '{{code_block_opening_tag}}', and closed with '{{code_block_closing_tag}}'.
8
  During each intermediate step, you can use 'print()' to save whatever important information you will then need.
9
  These print outputs will then appear in the 'Observation:' field, which will be available as input for the next step.
10
  In the end you have to return a final answer using the `final_answer` tool.
 
14
  Task: "Generate an image of the oldest person in this document."
15
 
16
  Thought: I will proceed step by step and use the following tools: `document_qa` to find the oldest person in the document, then `image_generator` to generate an image according to the answer.
17
+ {{code_block_opening_tag}}
 
18
  answer = document_qa(document=document, question="Who is the oldest person mentioned?")
19
  print(answer)
20
+ {{code_block_closing_tag}}
21
  Observation: "The oldest person in the document is John Doe, a 55 year old lumberjack living in Newfoundland."
22
 
23
  Thought: I will now generate an image showcasing the oldest person.
24
+ {{code_block_opening_tag}}
 
25
  image = image_generator("A portrait of John Doe, a 55-year-old man living in Canada.")
26
  final_answer(image)
27
+ {{code_block_closing_tag}}
28
 
29
  ---
30
  Task: "What is the result of the following operation: 5 + 3 + 1294.678?"
31
 
32
  Thought: I will use python code to compute the result of the operation and then return the final answer using the `final_answer` tool
33
+ {{code_block_opening_tag}}
 
34
  result = 5 + 3 + 1294.678
35
  final_answer(result)
36
+ {{code_block_closing_tag}}
37
 
38
  ---
39
  Task:
 
42
  {'question': 'Quel est l'animal sur l'image?', 'image': 'path/to/image.jpg'}"
43
 
44
  Thought: I will use the following tools: `translator` to translate the question into English and then `image_qa` to answer the question on the input image.
45
+ {{code_block_opening_tag}}
 
46
  translated_question = translator(question=question, src_lang="French", tgt_lang="English")
47
  print(f"The translated question is {translated_question}.")
48
  answer = image_qa(image=image, question=translated_question)
49
  final_answer(f"The answer is {answer}")
50
+ {{code_block_closing_tag}}
51
 
52
  ---
53
  Task:
 
55
  What does he say was the consequence of Einstein learning too much math on his creativity, in one word?
56
 
57
  Thought: I need to find and read the 1979 interview of Stanislaus Ulam with Martin Sherwin.
58
+ {{code_block_opening_tag}}
59
+ pages = web_search(query="1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein")
 
60
  print(pages)
61
+ {{code_block_closing_tag}}
62
  Observation:
63
  No result found for query "1979 interview Stanislaus Ulam Martin Sherwin physicists Einstein".
64
 
65
  Thought: The query was maybe too restrictive and did not find any results. Let's try again with a broader query.
66
+ {{code_block_opening_tag}}
67
+ pages = web_search(query="1979 interview Stanislaus Ulam")
 
68
  print(pages)
69
+ {{code_block_closing_tag}}
70
  Observation:
71
  Found 6 pages:
72
  [Stanislaus Ulam 1979 interview](https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/)
 
76
  (truncated)
77
 
78
  Thought: I will read the first 2 pages to know more.
79
+ {{code_block_opening_tag}}
 
80
  for url in ["https://ahf.nuclearmuseum.org/voices/oral-histories/stanislaus-ulams-interview-1979/", "https://ahf.nuclearmuseum.org/manhattan-project/ulam-manhattan-project/"]:
81
  whole_page = visit_webpage(url)
82
  print(whole_page)
83
  print("\n" + "="*80 + "\n") # Print separator between pages
84
+ {{code_block_closing_tag}}
85
  Observation:
86
  Manhattan Project Locations:
87
  Los Alamos, NM
 
89
  (truncated)
90
 
91
  Thought: I now have the final answer: from the webpages visited, Stanislaus Ulam says of Einstein: "He learned too much mathematics and sort of diminished, it seems to me personally, it seems to me his purely physics creativity." Let's answer in one word.
92
+ {{code_block_opening_tag}}
 
93
  final_answer("diminished")
94
+ {{code_block_closing_tag}}
95
 
96
  ---
97
  Task: "Which city has the highest population: Guangzhou or Shanghai?"
98
 
99
+ Thought: I need to get the populations for both cities and compare them: I will use the tool `web_search` to get the population of both cities.
100
+ {{code_block_opening_tag}}
 
101
  for city in ["Guangzhou", "Shanghai"]:
102
+ print(f"Population {city}:", web_search(f"{city} population")
103
+ {{code_block_closing_tag}}
104
  Observation:
105
  Population Guangzhou: ['Guangzhou has a population of 15 million inhabitants as of 2021.']
106
  Population Shanghai: '26 million (2019)'
107
 
108
  Thought: Now I know that Shanghai has the highest population.
109
+ {{code_block_opening_tag}}
 
110
  final_answer("Shanghai")
111
+ {{code_block_closing_tag}}
112
 
113
  ---
114
  Task: "What is the current age of the pope, raised to the power 0.36?"
115
 
116
+ Thought: I will use the tool `wikipedia_search` to get the age of the pope, and confirm that with a web search.
117
+ {{code_block_opening_tag}}
118
+ pope_age_wiki = wikipedia_search(query="current pope age")
 
119
  print("Pope age as per wikipedia:", pope_age_wiki)
120
  pope_age_search = web_search(query="current pope age")
121
  print("Pope age as per google search:", pope_age_search)
122
+ {{code_block_closing_tag}}
123
  Observation:
124
  Pope age: "The pope Francis is currently 88 years old."
125
 
126
  Thought: I know that the pope is 88 years old. Let's compute the result using python code.
127
+ {{code_block_opening_tag}}
 
128
  pope_current_age = 88 ** 0.36
129
  final_answer(pope_current_age)
130
+ {{code_block_closing_tag}}
131
 
132
+ Above example were using notional tools that might not exist for you. On top of performing computations in the Python code snippets that you create, you only have access to these tools, behaving like regular python functions:
133
+ {{code_block_opening_tag}}
134
  {%- for tool in tools.values() %}
135
+ {{ tool.to_code_prompt() }}
136
+ {% endfor %}
137
+ {{code_block_closing_tag}}
 
138
 
139
  {%- if managed_agents and managed_agents.values() | list %}
140
  You can also give tasks to team members.
141
+ Calling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.
142
+ You can also include any relevant variables or context using the 'additional_args' argument.
143
  Here is a list of the team members that you can call:
144
+ {{code_block_opening_tag}}
145
  {%- for agent in managed_agents.values() %}
146
+ def {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:
147
+ """{{ agent.description }}
148
+
149
+ Args:
150
+ task: Long detailed description of the task.
151
+ additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.
152
+ """
153
+ {% endfor %}
154
+ {{code_block_closing_tag}}
155
  {%- endif %}
156
 
157
  Here are the rules you should always follow to solve your task:
158
+ 1. Always provide a 'Thought:' sequence, and a '{{code_block_opening_tag}}' sequence ending with '{{code_block_closing_tag}}', else you will fail.
159
  2. Use only variables that you have defined!
160
+ 3. Always use the right arguments for the tools. DO NOT pass the arguments as a dict as in 'answer = wikipedia_search({'query': "What is the place where James Bond lives?"})', but use the arguments directly as in 'answer = wikipedia_search(query="What is the place where James Bond lives?")'.
161
+ 4. Take care to not chain too many sequential tool calls in the same code block, especially when the output format is unpredictable. For instance, a call to wikipedia_search has an unpredictable return format, so do not have another tool call that depends on its output in the same block: rather output results with print() to use them in the next block.
162
  5. Call a tool only when needed, and never re-do a tool call that you previously did with the exact same parameters.
163
  6. Don't name any new variable with the same name as a tool: for instance don't name a variable 'final_answer'.
164
  7. Never create any notional variables in our code, as having these in your logs will derail you from the true variables.
 
166
  9. The state persists between code executions: so if in one step you've created variables or imported modules, these will all persist.
167
  10. Don't give up! You're in charge of solving the task, not providing directions to solve it.
168
 
169
+ {%- if custom_instructions %}
170
+ {{custom_instructions}}
171
+ {%- endif %}
 
172
 
173
+ Now Begin!
174
+ "planning":
175
+ "initial_plan": |-
176
+ You are a world expert at analyzing a situation to derive facts, and plan accordingly towards solving a task.
177
+ Below I will present you a task. You will need to 1. build a survey of facts known or needed to solve the task, then 2. make a plan of action to solve the task.
178
 
179
+ ## 1. Facts survey
180
+ You will build a comprehensive preparatory survey of which facts we have at our disposal and which ones we still need.
181
+ These "facts" will typically be specific names, dates, values, etc. Your answer should use the below headings:
182
+ ### 1.1. Facts given in the task
183
  List here the specific facts given in the task that could help you (there might be nothing here).
184
 
185
+ ### 1.2. Facts to look up
186
  List here any facts that we may need to look up.
187
  Also list where to find each of these, for instance a website, a file... - maybe the task contains some sources that you should re-use here.
188
 
189
+ ### 1.3. Facts to derive
190
  List here anything that we want to derive from the above by logical reasoning, for instance computation or simulation.
191
 
192
+ Don't make any assumptions. For each item, provide a thorough reasoning. Do not add anything else on top of three headings above.
 
 
 
 
 
 
 
 
 
 
 
 
193
 
194
+ ## 2. Plan
195
+ Then for the given task, develop a step-by-step high-level plan taking into account the above inputs and list of facts.
196
  This plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.
197
  Do not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.
198
+ After writing the final step of the plan, write the '<end_plan>' tag and stop there.
199
 
200
+ You can leverage these tools, behaving like regular python functions:
201
+ ```python
 
 
 
 
 
202
  {%- for tool in tools.values() %}
203
+ {{ tool.to_code_prompt() }}
204
+ {% endfor %}
205
+ ```
 
206
 
207
  {%- if managed_agents and managed_agents.values() | list %}
208
  You can also give tasks to team members.
209
+ Calling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.
210
+ You can also include any relevant variables or context using the 'additional_args' argument.
211
  Here is a list of the team members that you can call:
212
+ ```python
213
  {%- for agent in managed_agents.values() %}
214
+ def {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:
215
+ """{{ agent.description }}
216
+
217
+ Args:
218
+ task: Long detailed description of the task.
219
+ additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.
220
+ """
221
+ {% endfor %}
222
+ ```
223
  {%- endif %}
224
 
225
+ ---
226
+ Now begin! Here is your task:
227
  ```
228
+ {{task}}
229
  ```
230
+ First in part 1, write the facts survey, then in part 2, write your plan.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
231
  "update_plan_pre_messages": |-
232
+ You are a world expert at analyzing a situation, and plan accordingly towards solving a task.
233
+ You have been given the following task:
 
234
  ```
235
  {{task}}
236
  ```
237
 
238
+ Below you will find a history of attempts made to solve this task.
239
+ You will first have to produce a survey of known and unknown facts, then propose a step-by-step high-level plan to solve the task.
240
+ If the previous tries so far have met some success, your updated plan can build on these results.
241
  If you are stalled, you can make a completely new plan starting from scratch.
242
+
243
+ Find the task and history below:
244
  "update_plan_post_messages": |-
245
+ Now write your updated facts below, taking into account the above history:
246
+ ## 1. Updated facts survey
247
+ ### 1.1. Facts given in the task
248
+ ### 1.2. Facts that we have learned
249
+ ### 1.3. Facts still to look up
250
+ ### 1.4. Facts still to derive
251
+
252
+ Then write a step-by-step high-level plan to solve the task above.
253
+ ## 2. Plan
254
+ ### 2. 1. ...
255
+ Etc.
256
+ This plan should involve individual tasks based on the available tools, that if executed correctly will yield the correct answer.
257
+ Beware that you have {remaining_steps} steps remaining.
258
+ Do not skip steps, do not add any superfluous steps. Only write the high-level plan, DO NOT DETAIL INDIVIDUAL TOOL CALLS.
259
+ After writing the final step of the plan, write the '<end_plan>' tag and stop there.
260
 
261
+ You can leverage these tools, behaving like regular python functions:
262
+ ```python
263
  {%- for tool in tools.values() %}
264
+ {{ tool.to_code_prompt() }}
265
+ {% endfor %}
266
+ ```
 
267
 
268
  {%- if managed_agents and managed_agents.values() | list %}
269
  You can also give tasks to team members.
270
+ Calling a team member works similarly to calling a tool: provide the task description as the 'task' argument. Since this team member is a real human, be as detailed and verbose as necessary in your task description.
271
+ You can also include any relevant variables or context using the 'additional_args' argument.
272
  Here is a list of the team members that you can call:
273
+ ```python
274
  {%- for agent in managed_agents.values() %}
275
+ def {{ agent.name }}(task: str, additional_args: dict[str, Any]) -> str:
276
+ """{{ agent.description }}
277
+
278
+ Args:
279
+ task: Long detailed description of the task.
280
+ additional_args: Dictionary of extra inputs to pass to the managed agent, e.g. images, dataframes, or any other contextual data it may need.
281
+ """
282
+ {% endfor %}
283
  ```
284
+ {%- endif %}
 
 
 
 
 
 
 
285
 
286
+ Now write your updated facts survey below, then your new plan.
287
  "managed_agent":
288
  "task": |-
289
  You're a helpful agent named '{{name}}'.
requirements.txt CHANGED
@@ -1 +1,4 @@
 
 
 
1
  smolagents
 
1
+ ddgs
2
+ markdownify
3
+ requests
4
  smolagents
tools/catering_service_tool.py ADDED
@@ -0,0 +1,27 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from smolagents import Tool
2
+ from typing import Any, Optional
3
+
4
+ class SimpleTool(Tool):
5
+ name = "catering_service_tool"
6
+ description = "This tool returns the highest-rated catering service in Gotham City."
7
+ inputs = {'query': {'type': 'string', 'description': 'A search term for finding catering services.'}}
8
+ output_type = "string"
9
+
10
+ def forward(self, query: str) -> str:
11
+ """
12
+ This tool returns the highest-rated catering service in Gotham City.
13
+
14
+ Args:
15
+ query: A search term for finding catering services.
16
+ """
17
+ # Example list of catering services and their ratings
18
+ services = {
19
+ "Gotham Catering Co.": 4.9,
20
+ "Wayne Manor Catering": 4.8,
21
+ "Gotham City Events": 4.7,
22
+ }
23
+
24
+ # Find the highest rated catering service (simulating search query filtering)
25
+ best_service = max(services, key=services.get)
26
+
27
+ return best_service
tools/suggest_menu.py ADDED
@@ -0,0 +1,23 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from smolagents import Tool
2
+ from typing import Any, Optional
3
+
4
+ class SimpleTool(Tool):
5
+ name = "suggest_menu"
6
+ description = "Suggests a menu based on the occasion."
7
+ inputs = {'occasion': {'type': 'string', 'description': 'The type of occasion for the party.'}}
8
+ output_type = "string"
9
+
10
+ def forward(self, occasion: str) -> str:
11
+ """
12
+ Suggests a menu based on the occasion.
13
+ Args:
14
+ occasion: The type of occasion for the party.
15
+ """
16
+ if occasion == "casual":
17
+ return "Pizza, snacks, and drinks."
18
+ elif occasion == "formal":
19
+ return "3-course dinner with wine and dessert."
20
+ elif occasion == "superhero":
21
+ return "Buffet with high-energy and healthy food."
22
+ else:
23
+ return "Custom menu for the butler."
tools/superhero_party_theme_generator.py ADDED
@@ -0,0 +1,22 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from typing import Any, Optional
2
+ from smolagents.tools import Tool
3
+
4
+ class SuperheroPartyThemeTool(Tool):
5
+ name = "superhero_party_theme_generator"
6
+ description = """
7
+ This tool suggests creative superhero-themed party ideas based on a category.
8
+ It returns a unique party theme idea."""
9
+ inputs = {'category': {'type': 'string', 'description': "The type of superhero party (e.g., 'classic heroes', 'villain masquerade', 'futuristic gotham')."}}
10
+ output_type = "string"
11
+
12
+ def forward(self, category: str):
13
+ themes = {
14
+ "classic heroes": "Justice League Gala: Guests come dressed as their favorite DC heroes with themed cocktails like 'The Kryptonite Punch'.",
15
+ "villain masquerade": "Gotham Rogues' Ball: A mysterious masquerade where guests dress as classic Batman villains.",
16
+ "futuristic gotham": "Neo-Gotham Night: A cyberpunk-style party inspired by Batman Beyond, with neon decorations and futuristic gadgets."
17
+ }
18
+
19
+ return themes.get(category.lower(), "Themed party idea not found. Try 'classic heroes', 'villain masquerade', or 'futuristic gotham'.")
20
+
21
+ def __init__(self, *args, **kwargs):
22
+ self.is_initialized = False
tools/visit_webpage.py ADDED
@@ -0,0 +1,55 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from typing import Any, Optional
2
+ from smolagents.tools import Tool
3
+ import markdownify
4
+ import re
5
+ import requests
6
+
7
+ class VisitWebpageTool(Tool):
8
+ name = "visit_webpage"
9
+ description = "Visits a webpage at the given url and reads its content as a markdown string. Use this to browse webpages."
10
+ inputs = {'url': {'type': 'string', 'description': 'The url of the webpage to visit.'}}
11
+ output_type = "string"
12
+
13
+ def __init__(self, max_output_length: int = 40000):
14
+ super().__init__()
15
+ self.max_output_length = max_output_length
16
+
17
+ def _truncate_content(self, content: str, max_length: int) -> str:
18
+ if len(content) <= max_length:
19
+ return content
20
+ return (
21
+ content[: max_length // 2]
22
+ + f"\n..._This content has been truncated to stay below {max_length} characters_...\n"
23
+ + content[-max_length // 2 :]
24
+ )
25
+
26
+ def forward(self, url: str) -> str:
27
+ try:
28
+ import re
29
+
30
+ import requests
31
+ from markdownify import markdownify
32
+ from requests.exceptions import RequestException
33
+ except ImportError as e:
34
+ raise ImportError(
35
+ "You must install packages `markdownify` and `requests` to run this tool: for instance run `pip install markdownify requests`."
36
+ ) from e
37
+ try:
38
+ # Send a GET request to the URL with a 20-second timeout
39
+ response = requests.get(url, timeout=20)
40
+ response.raise_for_status() # Raise an exception for bad status codes
41
+
42
+ # Convert the HTML content to Markdown
43
+ markdown_content = markdownify(response.text).strip()
44
+
45
+ # Remove multiple line breaks
46
+ markdown_content = re.sub(r"\n{3,}", "\n\n", markdown_content)
47
+
48
+ return self._truncate_content(markdown_content, self.max_output_length)
49
+
50
+ except requests.exceptions.Timeout:
51
+ return "The request timed out. Please try again later or check the URL."
52
+ except RequestException as e:
53
+ return f"Error fetching the webpage: {str(e)}"
54
+ except Exception as e:
55
+ return f"An unexpected error occurred: {str(e)}"
tools/web_search.py ADDED
@@ -0,0 +1,60 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from typing import Any, Optional
2
+ from smolagents.tools import Tool
3
+ import ddgs
4
+ import time
5
+
6
+ class DuckDuckGoSearchTool(Tool):
7
+ """Web search tool that performs searches using the DuckDuckGo search engine.
8
+
9
+ Args:
10
+ max_results (`int`, default `10`): Maximum number of search results to return.
11
+ rate_limit (`float`, default `1.0`): Maximum queries per second. Set to `None` to disable rate limiting.
12
+ **kwargs: Additional keyword arguments for the `DDGS` client.
13
+
14
+ Examples:
15
+ ```python
16
+ >>> from smolagents import DuckDuckGoSearchTool
17
+ >>> web_search_tool = DuckDuckGoSearchTool(max_results=5, rate_limit=2.0)
18
+ >>> results = web_search_tool("Hugging Face")
19
+ >>> print(results)
20
+ ```
21
+ """
22
+ name = "web_search"
23
+ description = "Performs a duckduckgo web search based on your query (think a Google search) then returns the top search results."
24
+ inputs = {'query': {'type': 'string', 'description': 'The search query to perform.'}}
25
+ output_type = "string"
26
+
27
+ def __init__(self, max_results: int = 10, rate_limit: float | None = 1.0, **kwargs):
28
+ super().__init__()
29
+ self.max_results = max_results
30
+ self.rate_limit = rate_limit
31
+ self._min_interval = 1.0 / rate_limit if rate_limit else 0.0
32
+ self._last_request_time = 0.0
33
+ try:
34
+ from ddgs import DDGS
35
+ except ImportError as e:
36
+ raise ImportError(
37
+ "You must install package `ddgs` to run this tool: for instance run `pip install ddgs`."
38
+ ) from e
39
+ self.ddgs = DDGS(**kwargs)
40
+
41
+ def forward(self, query: str) -> str:
42
+ self._enforce_rate_limit()
43
+ results = self.ddgs.text(query, max_results=self.max_results)
44
+ if len(results) == 0:
45
+ raise Exception("No results found! Try a less restrictive/shorter query.")
46
+ postprocessed_results = [f"[{result['title']}]({result['href']})\n{result['body']}" for result in results]
47
+ return "## Search Results\n\n" + "\n\n".join(postprocessed_results)
48
+
49
+ def _enforce_rate_limit(self) -> None:
50
+ import time
51
+
52
+ # No rate limit enforced
53
+ if not self.rate_limit:
54
+ return
55
+
56
+ now = time.time()
57
+ elapsed = now - self._last_request_time
58
+ if elapsed < self._min_interval:
59
+ time.sleep(self._min_interval - elapsed)
60
+ self._last_request_time = time.time()