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[{'name': 'open-ai-product-endpoint', 'description': 'Open AI Product Endpoint. Query for products.'}], 'paths': {'/public/openai/v0/products': {'get': {'tags': ['open-ai-product-endpoint'], 'summary': 'API for fetching Klarna product information', 'operationId': 'productsUsingGET', 'parameters': [{'name': 'q', 'in': 'query', 'description': 'query, must be between 2 and 100 characters', 'required': True, 'schema': {'type': 'string'}}, {'name': 'size', 'in': 'query', 'description': 'number of products returned', 'required': False, 'schema': {'type': 'integer'}}, {'name': 'budget', 'in': 'query', 'description': 'maximum price of the matching product in local currency, filters results', 'required': False, 'schema': {'type': 'integer'}}], 'responses': {'200': {'description': 'Products found', 'content': {'application/json': {'schema': {'$ref': '#/components/schemas/ProductResponse'}}}}, '503': {'description': 'one or more services are unavailable'}}, 'deprecated': False}}}, 'components': {'schemas': {'Product': {'type': 'object', 'properties': {'attributes': {'type': 'array', 'items': {'type': 'string'}}, 'name': {'type': 'string'}, 'price': {'type': 'string'}, 'url': {'type': 'string'}}, 'title': 'Product'}, 'ProductResponse': {'type': 'object', 'properties': {'products': {'type': 'array', 'items': {'$ref': '#/components/schemas/Product'}}}, 'title': 'ProductResponse'}}}} Thought:I need to use the Klarna Shopping API to search for t shirts. Action: requests_get Action Input:
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use the Klarna Shopping API to search for t shirts. Action: requests_get Action Input: https://www.klarna.com/us/shopping/public/openai/v0/products?q=t%20shirts Observation: {"products":[{"name":"Lacoste Men's Pack of Plain T-Shirts","url":"https://www.klarna.com/us/shopping/pl/cl10001/3202043025/Clothing/Lacoste-Men-s-Pack-of-Plain-T-Shirts/?utm_source=openai","price":"$26.60","attributes":["Material:Cotton","Target Group:Man","Color:White,Black"]},{"name":"Hanes Men's Ultimate 6pk. Crewneck T-Shirts","url":"https://www.klarna.com/us/shopping/pl/cl10001/3201808270/Clothing/Hanes-Men-s-Ultimate-6pk.-Crewneck-T-Shirts/?utm_source=openai","price":"$13.82","attributes":["Material:Cotton","Target Group:Man","Color:White"]},{"name":"Nike Boy's Jordan Stretch T-shirts","url":"https://www.klarna.com/us/shopping/pl/cl359/3201863202/Children-s-Clothing/Nike-Boy-s-Jordan-Stretch-T-shirts/?utm_source=openai","price":"$14.99","attributes":["Material:Cotton","Color:White,Green","Model:Boy","Size (Small-Large):S,XL,L,M"]},{"name":"Polo Classic Fit Cotton V-Neck T-Shirts 3-Pack","url":"https://www.klarna.com/us/shopping/pl/cl10001/3203028500/Clothing/Polo-Classic-Fit-Cotton-V-Neck-T-Shirts-3-Pack/?utm_source=openai","price":"$29.95","attributes":["Material:Cotton","Target
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Group:Man","Color:White,Blue,Black"]},{"name":"adidas Comfort T-shirts Men's 3-pack","url":"https://www.klarna.com/us/shopping/pl/cl10001/3202640533/Clothing/adidas-Comfort-T-shirts-Men-s-3-pack/?utm_source=openai","price":"$14.99","attributes":["Material:Cotton","Target Group:Man","Color:White,Black","Neckline:Round"]}]} Thought:The available t shirts in Klarna are Lacoste Men's Pack of Plain T-Shirts, Hanes Men's Ultimate 6pk. Crewneck T-Shirts, Nike Boy's Jordan Stretch T-shirts, Polo Classic Fit Cotton V-Neck T-Shirts 3-Pack, and adidas Comfort T-shirts Men's 3-pack. Final Answer: The available t shirts in Klarna are Lacoste Men's Pack of Plain T-Shirts, Hanes Men's Ultimate 6pk. Crewneck T-Shirts, Nike Boy's Jordan Stretch T-shirts, Polo Classic Fit Cotton V-Neck T-Shirts 3-Pack, and adidas Comfort T-shirts Men's 3-pack. > Finished chain. "The available t shirts in Klarna are Lacoste Men's Pack of Plain T-Shirts, Hanes Men's Ultimate 6pk. Crewneck T-Shirts, Nike Boy's Jordan Stretch T-shirts, Polo Classic Fit Cotton V-Neck T-Shirts 3-Pack, and adidas Comfort T-shirts Men's 3-pack." previous Bing Search next Google Search By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/tools/examples/chatgpt_plugins.html
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.ipynb .pdf Custom LLM Agent Contents Set up environment Set up tool Prompt Template Output Parser Set up LLM Define the stop sequence Set up the Agent Use the Agent Adding Memory Custom LLM Agent# This notebook goes through how to create your own custom LLM agent. An LLM agent consists of three parts: PromptTemplate: This is the prompt template that can be used to instruct the language model on what to do LLM: This is the language model that powers the agent stop sequence: Instructs the LLM to stop generating as soon as this string is found OutputParser: This determines how to parse the LLMOutput into an AgentAction or AgentFinish object The LLMAgent is used in an AgentExecutor. This AgentExecutor can largely be thought of as a loop that: Passes user input and any previous steps to the Agent (in this case, the LLMAgent) If the Agent returns an AgentFinish, then return that directly to the user If the Agent returns an AgentAction, then use that to call a tool and get an Observation Repeat, passing the AgentAction and Observation back to the Agent until an AgentFinish is emitted. AgentAction is a response that consists of action and action_input. action refers to which tool to use, and action_input refers to the input to that tool. log can also be provided as more context (that can be used for logging, tracing, etc). AgentFinish is a response that contains the final message to be sent back to the user. This should be used to end an agent run. In this notebook we walk through how to create a custom LLM agent. Set up environment# Do necessary imports, etc. from langchain.agents import Tool, AgentExecutor, LLMSingleActionAgent, AgentOutputParser from langchain.prompts import StringPromptTemplate from langchain import OpenAI,
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langchain.prompts import StringPromptTemplate from langchain import OpenAI, SerpAPIWrapper, LLMChain from typing import List, Union from langchain.schema import AgentAction, AgentFinish import re Set up tool# Set up any tools the agent may want to use. This may be necessary to put in the prompt (so that the agent knows to use these tools). # Define which tools the agent can use to answer user queries search = SerpAPIWrapper() tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events" ) ] Prompt Template# This instructs the agent on what to do. Generally, the template should incorporate: tools: which tools the agent has access and how and when to call them. intermediate_steps: These are tuples of previous (AgentAction, Observation) pairs. These are generally not passed directly to the model, but the prompt template formats them in a specific way. input: generic user input # Set up the base template template = """Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools: {tools} Use the following format: Question: the input question you must answer Thought: you should always think about what to do Action: the action to take, should be one of [{tool_names}] Action Input: the input to the action Observation: the result of the action ... (this Thought/Action/Action Input/Observation can repeat N times) Thought: I now know the final answer Final Answer: the final answer to the original input question Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Arg"s Question:
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to speak as a pirate when giving your final answer. Use lots of "Arg"s Question: {input} {agent_scratchpad}""" # Set up a prompt template class CustomPromptTemplate(StringPromptTemplate): # The template to use template: str # The list of tools available tools: List[Tool] def format(self, **kwargs) -> str: # Get the intermediate steps (AgentAction, Observation tuples) # Format them in a particular way intermediate_steps = kwargs.pop("intermediate_steps") thoughts = "" for action, observation in intermediate_steps: thoughts += action.log thoughts += f"\nObservation: {observation}\nThought: " # Set the agent_scratchpad variable to that value kwargs["agent_scratchpad"] = thoughts # Create a tools variable from the list of tools provided kwargs["tools"] = "\n".join([f"{tool.name}: {tool.description}" for tool in self.tools]) # Create a list of tool names for the tools provided kwargs["tool_names"] = ", ".join([tool.name for tool in self.tools]) return self.template.format(**kwargs) prompt = CustomPromptTemplate( template=template, tools=tools, # This omits the `agent_scratchpad`, `tools`, and
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# This omits the `agent_scratchpad`, `tools`, and `tool_names` variables because those are generated dynamically # This includes the `intermediate_steps` variable because that is needed input_variables=["input", "intermediate_steps"] ) Output Parser# The output parser is responsible for parsing the LLM output into AgentAction and AgentFinish. This usually depends heavily on the prompt used. This is where you can change the parsing to do retries, handle whitespace, etc class CustomOutputParser(AgentOutputParser): def parse(self, llm_output: str) -> Union[AgentAction, AgentFinish]: # Check if agent should finish if "Final Answer:" in llm_output: return AgentFinish( # Return values is generally always a dictionary with a single `output` key # It is not recommended to try anything else at the moment :) return_values={"output": llm_output.split("Final Answer:")[-1].strip()}, log=llm_output, ) # Parse out the action and action input regex = r"Action: (.*?)[\n]*Action Input:[\s]*(.*)" match = re.search(regex, llm_output, re.DOTALL) if not match:
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if not match: raise ValueError(f"Could not parse LLM output: `{llm_output}`") action = match.group(1).strip() action_input = match.group(2) # Return the action and action input return AgentAction(tool=action, tool_input=action_input.strip(" ").strip('"'), log=llm_output) output_parser = CustomOutputParser() Set up LLM# Choose the LLM you want to use! llm = OpenAI(temperature=0) Define the stop sequence# This is important because it tells the LLM when to stop generation. This depends heavily on the prompt and model you are using. Generally, you want this to be whatever token you use in the prompt to denote the start of an Observation (otherwise, the LLM may hallucinate an observation for you). Set up the Agent# We can now combine everything to set up our agent # LLM chain consisting of the LLM and a prompt llm_chain = LLMChain(llm=llm, prompt=prompt) tool_names = [tool.name for tool in tools] agent = LLMSingleActionAgent( llm_chain=llm_chain, output_parser=output_parser, stop=["\nObservation:"], allowed_tools=tool_names ) Use the Agent# Now we can use it! agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("How many people live in canada as of 2023?") > Entering new AgentExecutor chain... Thought: I need to find out the population of Canada in 2023 Action: Search Action Input: Population of Canada
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out the population of Canada in 2023 Action: Search Action Input: Population of Canada in 2023 Observation:The current population of Canada is 38,658,314 as of Wednesday, April 12, 2023, based on Worldometer elaboration of the latest United Nations data. I now know the final answer Final Answer: Arrr, there be 38,658,314 people livin' in Canada as of 2023! > Finished chain. "Arrr, there be 38,658,314 people livin' in Canada as of 2023!" Adding Memory# If you want to add memory to the agent, you’ll need to: Add a place in the custom prompt for the chat_history Add a memory object to the agent executor. # Set up the base template template_with_history = """Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools: {tools} Use the following format: Question: the input question you must answer Thought: you should always think about what to do Action: the action to take, should be one of [{tool_names}] Action Input: the input to the action Observation: the result of the action ... (this Thought/Action/Action Input/Observation can repeat N times) Thought: I now know the final answer Final Answer: the final answer to the original input question Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Arg"s Previous conversation history: {history} New question: {input} {agent_scratchpad}""" prompt_with_history = CustomPromptTemplate( template=template_with_history, tools=tools, # This omits the `agent_scratchpad`, `tools`, and `tool_names` variables because those are generated dynamically # This includes
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and `tool_names` variables because those are generated dynamically # This includes the `intermediate_steps` variable because that is needed input_variables=["input", "intermediate_steps", "history"] ) llm_chain = LLMChain(llm=llm, prompt=prompt_with_history) tool_names = [tool.name for tool in tools] agent = LLMSingleActionAgent( llm_chain=llm_chain, output_parser=output_parser, stop=["\nObservation:"], allowed_tools=tool_names ) from langchain.memory import ConversationBufferWindowMemory memory=ConversationBufferWindowMemory(k=2) agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True, memory=memory) agent_executor.run("How many people live in canada as of 2023?") > Entering new AgentExecutor chain... Thought: I need to find out the population of Canada in 2023 Action: Search Action Input: Population of Canada in 2023 Observation:The current population of Canada is 38,658,314 as of Wednesday, April 12, 2023, based on Worldometer elaboration of the latest United Nations data. I now know the final answer Final Answer: Arrr, there be 38,658,314 people livin' in Canada as of 2023! > Finished chain. "Arrr, there be 38,658,314 people livin' in Canada as of 2023!" agent_executor.run("how about in mexico?") > Entering new AgentExecutor chain... Thought: I need to find out how many people live in Mexico. Action: Search Action Input: How many people live in Mexico as of 2023? Observation:The current population of Mexico is 132,679,922 as of Tuesday, April 11,
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current population of Mexico is 132,679,922 as of Tuesday, April 11, 2023, based on Worldometer elaboration of the latest United Nations data. Mexico 2020 ... I now know the final answer. Final Answer: Arrr, there be 132,679,922 people livin' in Mexico as of 2023! > Finished chain. "Arrr, there be 132,679,922 people livin' in Mexico as of 2023!" previous Custom Agent next Custom LLM Agent (with a ChatModel) Contents Set up environment Set up tool Prompt Template Output Parser Set up LLM Define the stop sequence Set up the Agent Use the Agent Adding Memory By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_llm_agent.html
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.ipynb .pdf Custom LLM Agent (with a ChatModel) Contents Set up environment Set up tool Prompt Template Output Parser Set up LLM Define the stop sequence Set up the Agent Use the Agent Custom LLM Agent (with a ChatModel)# This notebook goes through how to create your own custom agent based on a chat model. An LLM chat agent consists of three parts: PromptTemplate: This is the prompt template that can be used to instruct the language model on what to do ChatModel: This is the language model that powers the agent stop sequence: Instructs the LLM to stop generating as soon as this string is found OutputParser: This determines how to parse the LLMOutput into an AgentAction or AgentFinish object The LLMAgent is used in an AgentExecutor. This AgentExecutor can largely be thought of as a loop that: Passes user input and any previous steps to the Agent (in this case, the LLMAgent) If the Agent returns an AgentFinish, then return that directly to the user If the Agent returns an AgentAction, then use that to call a tool and get an Observation Repeat, passing the AgentAction and Observation back to the Agent until an AgentFinish is emitted. AgentAction is a response that consists of action and action_input. action refers to which tool to use, and action_input refers to the input to that tool. log can also be provided as more context (that can be used for logging, tracing, etc). AgentFinish is a response that contains the final message to be sent back to the user. This should be used to end an agent run. In this notebook we walk through how to create a custom LLM agent. Set up environment# Do necessary imports, etc. from langchain.agents import Tool, AgentExecutor, LLMSingleActionAgent, AgentOutputParser from langchain.prompts import
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AgentExecutor, LLMSingleActionAgent, AgentOutputParser from langchain.prompts import BaseChatPromptTemplate from langchain import SerpAPIWrapper, LLMChain from langchain.chat_models import ChatOpenAI from typing import List, Union from langchain.schema import AgentAction, AgentFinish, HumanMessage import re Set up tool# Set up any tools the agent may want to use. This may be necessary to put in the prompt (so that the agent knows to use these tools). # Define which tools the agent can use to answer user queries search = SerpAPIWrapper() tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events" ) ] Prompt Template# This instructs the agent on what to do. Generally, the template should incorporate: tools: which tools the agent has access and how and when to call them. intermediate_steps: These are tuples of previous (AgentAction, Observation) pairs. These are generally not passed directly to the model, but the prompt template formats them in a specific way. input: generic user input # Set up the base template template = """Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools: {tools} Use the following format: Question: the input question you must answer Thought: you should always think about what to do Action: the action to take, should be one of [{tool_names}] Action Input: the input to the action Observation: the result of the action ... (this Thought/Action/Action Input/Observation can repeat N times) Thought: I now know the final answer Final Answer: the final answer to the original input question Begin!
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now know the final answer Final Answer: the final answer to the original input question Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Arg"s Question: {input} {agent_scratchpad}""" # Set up a prompt template class CustomPromptTemplate(BaseChatPromptTemplate): # The template to use template: str # The list of tools available tools: List[Tool] def format_messages(self, **kwargs) -> str: # Get the intermediate steps (AgentAction, Observation tuples) # Format them in a particular way intermediate_steps = kwargs.pop("intermediate_steps") thoughts = "" for action, observation in intermediate_steps: thoughts += action.log thoughts += f"\nObservation: {observation}\nThought: " # Set the agent_scratchpad variable to that value kwargs["agent_scratchpad"] = thoughts # Create a tools variable from the list of tools provided kwargs["tools"] = "\n".join([f"{tool.name}: {tool.description}" for tool in self.tools]) # Create a list of tool names for the tools provided kwargs["tool_names"] = ", ".join([tool.name for tool in self.tools]) formatted = self.template.format(**kwargs) return [HumanMessage(content=formatted)] prompt
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return [HumanMessage(content=formatted)] prompt = CustomPromptTemplate( template=template, tools=tools, # This omits the `agent_scratchpad`, `tools`, and `tool_names` variables because those are generated dynamically # This includes the `intermediate_steps` variable because that is needed input_variables=["input", "intermediate_steps"] ) Output Parser# The output parser is responsible for parsing the LLM output into AgentAction and AgentFinish. This usually depends heavily on the prompt used. This is where you can change the parsing to do retries, handle whitespace, etc class CustomOutputParser(AgentOutputParser): def parse(self, llm_output: str) -> Union[AgentAction, AgentFinish]: # Check if agent should finish if "Final Answer:" in llm_output: return AgentFinish( # Return values is generally always a dictionary with a single `output` key # It is not recommended to try anything else at the moment :) return_values={"output": llm_output.split("Final Answer:")[-1].strip()}, log=llm_output, ) # Parse out the action and action input regex = r"Action: (.*?)[\n]*Action Input:[\s]*(.*)"
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Input:[\s]*(.*)" match = re.search(regex, llm_output, re.DOTALL) if not match: raise ValueError(f"Could not parse LLM output: `{llm_output}`") action = match.group(1).strip() action_input = match.group(2) # Return the action and action input return AgentAction(tool=action, tool_input=action_input.strip(" ").strip('"'), log=llm_output) output_parser = CustomOutputParser() Set up LLM# Choose the LLM you want to use! llm = ChatOpenAI(temperature=0) Define the stop sequence# This is important because it tells the LLM when to stop generation. This depends heavily on the prompt and model you are using. Generally, you want this to be whatever token you use in the prompt to denote the start of an Observation (otherwise, the LLM may hallucinate an observation for you). Set up the Agent# We can now combine everything to set up our agent # LLM chain consisting of the LLM and a prompt llm_chain = LLMChain(llm=llm, prompt=prompt) tool_names = [tool.name for tool in tools] agent = LLMSingleActionAgent( llm_chain=llm_chain, output_parser=output_parser, stop=["\nObservation:"], allowed_tools=tool_names ) Use the Agent# Now we can use it! agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("How many people live in canada as of 2023?") > Entering new
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many people live in canada as of 2023?") > Entering new AgentExecutor chain... Thought: Wot year be it now? That be important to know the answer. Action: Search Action Input: "current population canada 2023" Observation:38,649,283Ahoy! That be the correct year, but the answer be in regular numbers. 'Tis time to translate to pirate speak. Action: Search Action Input: "38,649,283 in pirate speak" Observation:Brush up on your “Pirate Talk” with these helpful pirate phrases. Aaaarrrrgggghhhh! Pirate catch phrase of grumbling or disgust. Ahoy! Hello! Ahoy, Matey, Hello ...That be not helpful, I'll just do the translation meself. Final Answer: Arrrr, thar be 38,649,283 scallywags in Canada as of 2023. > Finished chain. 'Arrrr, thar be 38,649,283 scallywags in Canada as of 2023.' previous Custom LLM Agent next Custom MRKL Agent Contents Set up environment Set up tool Prompt Template Output Parser Set up LLM Define the stop sequence Set up the Agent Use the Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
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.ipynb .pdf Custom MRKL Agent Contents Custom LLMChain Multiple inputs Custom MRKL Agent# This notebook goes through how to create your own custom MRKL agent. A MRKL agent consists of three parts: - Tools: The tools the agent has available to use. - LLMChain: The LLMChain that produces the text that is parsed in a certain way to determine which action to take. - The agent class itself: this parses the output of the LLMChain to determine which action to take. In this notebook we walk through how to create a custom MRKL agent by creating a custom LLMChain. Custom LLMChain# The first way to create a custom agent is to use an existing Agent class, but use a custom LLMChain. This is the simplest way to create a custom Agent. It is highly reccomended that you work with the ZeroShotAgent, as at the moment that is by far the most generalizable one. Most of the work in creating the custom LLMChain comes down to the prompt. Because we are using an existing agent class to parse the output, it is very important that the prompt say to produce text in that format. Additionally, we currently require an agent_scratchpad input variable to put notes on previous actions and observations. This should almost always be the final part of the prompt. However, besides those instructions, you can customize the prompt as you wish. To ensure that the prompt contains the appropriate instructions, we will utilize a helper method on that class. The helper method for the ZeroShotAgent takes the following arguments: tools: List of tools the agent will have access to, used to format the prompt. prefix: String to put before the list of tools. suffix: String to put after the list of tools. input_variables: List of input variables the final prompt will expect. For this exercise, we will give our agent access to Google Search, and we will customize it
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this exercise, we will give our agent access to Google Search, and we will customize it in that we will have it answer as a pirate. from langchain.agents import ZeroShotAgent, Tool, AgentExecutor from langchain import OpenAI, SerpAPIWrapper, LLMChain search = SerpAPIWrapper() tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events" ) ] prefix = """Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools:""" suffix = """Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Args" Question: {input} {agent_scratchpad}""" prompt = ZeroShotAgent.create_prompt( tools, prefix=prefix, suffix=suffix, input_variables=["input", "agent_scratchpad"] ) In case we are curious, we can now take a look at the final prompt template to see what it looks like when its all put together. print(prompt.template) Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools: Search: useful for when you need to answer questions about current events Use the following format: Question: the input question you must answer Thought: you should always think about what to do Action: the action to take, should be one of [Search] Action Input: the input to the action Observation: the result of the action ... (this Thought/Action/Action Input/Observation can repeat N times) Thought: I now know the final answer Final Answer: the final answer to the original input
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I now know the final answer Final Answer: the final answer to the original input question Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Args" Question: {input} {agent_scratchpad} Note that we are able to feed agents a self-defined prompt template, i.e. not restricted to the prompt generated by the create_prompt function, assuming it meets the agent’s requirements. For example, for ZeroShotAgent, we will need to ensure that it meets the following requirements. There should a string starting with “Action:” and a following string starting with “Action Input:”, and both should be separated by a newline. llm_chain = LLMChain(llm=OpenAI(temperature=0), prompt=prompt) tool_names = [tool.name for tool in tools] agent = ZeroShotAgent(llm_chain=llm_chain, allowed_tools=tool_names) agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("How many people live in canada as of 2023?") > Entering new AgentExecutor chain... Thought: I need to find out the population of Canada Action: Search Action Input: Population of Canada 2023 Observation: The current population of Canada is 38,610,447 as of Saturday, February 18, 2023, based on Worldometer elaboration of the latest United Nations data. Canada 2020 population is estimated at 37,742,154 people at mid year according to UN data. Thought: I now know the final answer Final Answer: Arrr, Canada be havin' 38,610,447 scallywags livin' there as of 2023! > Finished chain. "Arrr, Canada be havin' 38,610,447 scallywags livin' there as of 2023!" Multiple inputs# Agents can also
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scallywags livin' there as of 2023!" Multiple inputs# Agents can also work with prompts that require multiple inputs. prefix = """Answer the following questions as best you can. You have access to the following tools:""" suffix = """When answering, you MUST speak in the following language: {language}. Question: {input} {agent_scratchpad}""" prompt = ZeroShotAgent.create_prompt( tools, prefix=prefix, suffix=suffix, input_variables=["input", "language", "agent_scratchpad"] ) llm_chain = LLMChain(llm=OpenAI(temperature=0), prompt=prompt) agent = ZeroShotAgent(llm_chain=llm_chain, tools=tools) agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run(input="How many people live in canada as of 2023?", language="italian") > Entering new AgentExecutor chain... Thought: I need to find out the population of Canada in 2023. Action: Search Action Input: Population of Canada in 2023 Observation: The current population of Canada is 38,610,447 as of Saturday, February 18, 2023, based on Worldometer elaboration of the latest United Nations data. Canada 2020 population is estimated at 37,742,154 people at mid year according to UN data. Thought: I now know the final answer. Final Answer: La popolazione del Canada nel 2023 è stimata in 38.610.447 persone. > Finished chain. 'La popolazione del Canada nel 2023 è stimata in 38.610.447 persone.' previous Custom LLM Agent (with a ChatModel) next Custom MultiAction Agent Contents Custom LLMChain Multiple
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_mrkl_agent.html
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ChatModel) next Custom MultiAction Agent Contents Custom LLMChain Multiple inputs By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_mrkl_agent.html
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.ipynb .pdf Custom Agent Custom Agent# This notebook goes through how to create your own custom agent. An agent consists of three parts: - Tools: The tools the agent has available to use. - The agent class itself: this decides which action to take. In this notebook we walk through how to create a custom agent. from langchain.agents import Tool, AgentExecutor, BaseSingleActionAgent from langchain import OpenAI, SerpAPIWrapper search = SerpAPIWrapper() tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events", return_direct=True ) ] from typing import List, Tuple, Any, Union from langchain.schema import AgentAction, AgentFinish class FakeAgent(BaseSingleActionAgent): """Fake Custom Agent.""" @property def input_keys(self): return ["input"] def plan( self, intermediate_steps: List[Tuple[AgentAction, str]], **kwargs: Any ) -> Union[AgentAction, AgentFinish]: """Given input, decided what to do. Args: intermediate_steps: Steps the LLM has taken to date, along with observations **kwargs: User inputs. Returns: Action specifying what tool to use.
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Returns: Action specifying what tool to use. """ return AgentAction(tool="Search", tool_input=kwargs["input"], log="") async def aplan( self, intermediate_steps: List[Tuple[AgentAction, str]], **kwargs: Any ) -> Union[AgentAction, AgentFinish]: """Given input, decided what to do. Args: intermediate_steps: Steps the LLM has taken to date, along with observations **kwargs: User inputs. Returns: Action specifying what tool to use. """ return AgentAction(tool="Search", tool_input=kwargs["input"], log="") agent = FakeAgent() agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("How many people live in canada as of 2023?") > Entering new AgentExecutor chain... Foo Fighters is an American rock band formed in Seattle in 1994. Foo Fighters was initially formed as a one-man project by former Nirvana drummer Dave Grohl. Following the success of the 1995 eponymous debut album, Grohl recruited a band consisting of Nate Mendel, William Goldsmith, and Pat Smear. > Finished chain. 'Foo Fighters is an American rock band formed in Seattle in 1994. Foo Fighters was initially formed as a one-man project by former Nirvana drummer Dave Grohl. Following the success of
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initially formed as a one-man project by former Nirvana drummer Dave Grohl. Following the success of the 1995 eponymous debut album, Grohl recruited a band consisting of Nate Mendel, William Goldsmith, and Pat Smear.' previous Agent Types next Custom LLM Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_agent.html
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.ipynb .pdf Custom Agent with Tool Retrieval Contents Set up environment Set up tools Tool Retriever Prompt Template Output Parser Set up LLM, stop sequence, and the agent Use the Agent Custom Agent with Tool Retrieval# This notebook builds off of this notebook and assumes familiarity with how agents work. The novel idea introduced in this notebook is the idea of using retrieval to select the set of tools to use to answer an agent query. This is useful when you have many many tools to select from. You cannot put the description of all the tools in the prompt (because of context length issues) so instead you dynamically select the N tools you do want to consider using at run time. In this notebook we will create a somewhat contrieved example. We will have one legitimate tool (search) and then 99 fake tools which are just nonsense. We will then add a step in the prompt template that takes the user input and retrieves tool relevant to the query. Set up environment# Do necessary imports, etc. from langchain.agents import Tool, AgentExecutor, LLMSingleActionAgent, AgentOutputParser from langchain.prompts import StringPromptTemplate from langchain import OpenAI, SerpAPIWrapper, LLMChain from typing import List, Union from langchain.schema import AgentAction, AgentFinish import re Set up tools# We will create one legitimate tool (search) and then 99 fake tools # Define which tools the agent can use to answer user queries search = SerpAPIWrapper() search_tool = Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events" ) def fake_func(inp: str) -> str: return "foo" fake_tools = [
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str) -> str: return "foo" fake_tools = [ Tool( name=f"foo-{i}", func=fake_func, description=f"a silly function that you can use to get more information about the number {i}" ) for i in range(99) ] ALL_TOOLS = [search_tool] + fake_tools Tool Retriever# We will use a vectorstore to create embeddings for each tool description. Then, for an incoming query we can create embeddings for that query and do a similarity search for relevant tools. from langchain.vectorstores import FAISS from langchain.embeddings import OpenAIEmbeddings from langchain.schema import Document docs = [Document(page_content=t.description, metadata={"index": i}) for i, t in enumerate(ALL_TOOLS)] vector_store = FAISS.from_documents(docs, OpenAIEmbeddings()) retriever = vector_store.as_retriever() def get_tools(query): docs = retriever.get_relevant_documents(query) return [ALL_TOOLS[d.metadata["index"]] for d in docs] We can now test this retriever to see if it seems to work. get_tools("whats the weather?") [Tool(name='Search', description='useful for when you need to answer questions about current events', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<bound method SerpAPIWrapper.run of SerpAPIWrapper(search_engine=<class 'serpapi.google_search.GoogleSearch'>, params={'engine': 'google', 'google_domain': 'google.com', 'gl': 'us', 'hl': 'en'},
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'google_domain': 'google.com', 'gl': 'us', 'hl': 'en'}, serpapi_api_key='c657176b327b17e79b55306ab968d164ee2369a7c7fa5b3f8a5f7889903de882', aiosession=None)>, coroutine=None), Tool(name='foo-95', description='a silly function that you can use to get more information about the number 95', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None), Tool(name='foo-12', description='a silly function that you can use to get more information about the number 12', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None), Tool(name='foo-15', description='a silly function that you can use to get more information about the number 15', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None)] get_tools("whats the number 13?") [Tool(name='foo-13', description='a silly function that you can use to get more information about the number 13', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None), Tool(name='foo-12', description='a silly function that you can use to get more information
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Tool(name='foo-12', description='a silly function that you can use to get more information about the number 12', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None), Tool(name='foo-14', description='a silly function that you can use to get more information about the number 14', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None), Tool(name='foo-11', description='a silly function that you can use to get more information about the number 11', return_direct=False, verbose=False, callback_manager=<langchain.callbacks.shared.SharedCallbackManager object at 0x114b28a90>, func=<function fake_func at 0x15e5bd1f0>, coroutine=None)] Prompt Template# The prompt template is pretty standard, because we’re not actually changing that much logic in the actual prompt template, but rather we are just changing how retrieval is done. # Set up the base template template = """Answer the following questions as best you can, but speaking as a pirate might speak. You have access to the following tools: {tools} Use the following format: Question: the input question you must answer Thought: you should always think about what to do Action: the action to take, should be one of [{tool_names}] Action Input: the input to the action Observation: the result of the action ... (this Thought/Action/Action Input/Observation can repeat N times) Thought: I now know the final answer Final Answer: the final answer to the original input question Begin! Remember to speak as a pirate
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Answer: the final answer to the original input question Begin! Remember to speak as a pirate when giving your final answer. Use lots of "Arg"s Question: {input} {agent_scratchpad}""" The custom prompt template now has the concept of a tools_getter, which we call on the input to select the tools to use from typing import Callable # Set up a prompt template class CustomPromptTemplate(StringPromptTemplate): # The template to use template: str ############## NEW ###################### # The list of tools available tools_getter: Callable def format(self, **kwargs) -> str: # Get the intermediate steps (AgentAction, Observation tuples) # Format them in a particular way intermediate_steps = kwargs.pop("intermediate_steps") thoughts = "" for action, observation in intermediate_steps: thoughts += action.log thoughts += f"\nObservation: {observation}\nThought: " # Set the agent_scratchpad variable to that value kwargs["agent_scratchpad"] = thoughts ############## NEW ###################### tools = self.tools_getter(kwargs["input"]) # Create a tools variable from the list of tools provided kwargs["tools"] = "\n".join([f"{tool.name}: {tool.description}" for tool in tools]) # Create a list of tool names for the
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tool in tools]) # Create a list of tool names for the tools provided kwargs["tool_names"] = ", ".join([tool.name for tool in tools]) return self.template.format(**kwargs) prompt = CustomPromptTemplate( template=template, tools_getter=get_tools, # This omits the `agent_scratchpad`, `tools`, and `tool_names` variables because those are generated dynamically # This includes the `intermediate_steps` variable because that is needed input_variables=["input", "intermediate_steps"] ) Output Parser# The output parser is unchanged from the previous notebook, since we are not changing anything about the output format. class CustomOutputParser(AgentOutputParser): def parse(self, llm_output: str) -> Union[AgentAction, AgentFinish]: # Check if agent should finish if "Final Answer:" in llm_output: return AgentFinish( # Return values is generally always a dictionary with a single `output` key # It is not recommended to try anything else at the moment :) return_values={"output": llm_output.split("Final Answer:")[-1].strip()}, log=llm_output, ) # Parse out the action and action input regex =
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# Parse out the action and action input regex = r"Action: (.*?)[\n]*Action Input:[\s]*(.*)" match = re.search(regex, llm_output, re.DOTALL) if not match: raise ValueError(f"Could not parse LLM output: `{llm_output}`") action = match.group(1).strip() action_input = match.group(2) # Return the action and action input return AgentAction(tool=action, tool_input=action_input.strip(" ").strip('"'), log=llm_output) output_parser = CustomOutputParser() Set up LLM, stop sequence, and the agent# Also the same as the previous notebook llm = OpenAI(temperature=0) # LLM chain consisting of the LLM and a prompt llm_chain = LLMChain(llm=llm, prompt=prompt) tool_names = [tool.name for tool in tools] agent = LLMSingleActionAgent( llm_chain=llm_chain, output_parser=output_parser, stop=["\nObservation:"], allowed_tools=tool_names ) Use the Agent# Now we can use it! agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("What's the weather in SF?") > Entering new AgentExecutor chain... Thought: I need to find out what the weather is in SF Action: Search Action Input: Weather in SF Observation:Mostly cloudy skies early, then partly cloudy in the afternoon. High near
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SF Observation:Mostly cloudy skies early, then partly cloudy in the afternoon. High near 60F. ENE winds shifting to W at 10 to 15 mph. Humidity71%. UV Index6 of 10. I now know the final answer Final Answer: 'Arg, 'tis mostly cloudy skies early, then partly cloudy in the afternoon. High near 60F. ENE winds shiftin' to W at 10 to 15 mph. Humidity71%. UV Index6 of 10. > Finished chain. "'Arg, 'tis mostly cloudy skies early, then partly cloudy in the afternoon. High near 60F. ENE winds shiftin' to W at 10 to 15 mph. Humidity71%. UV Index6 of 10." previous Custom MultiAction Agent next Conversation Agent (for Chat Models) Contents Set up environment Set up tools Tool Retriever Prompt Template Output Parser Set up LLM, stop sequence, and the agent Use the Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_agent_with_tool_retrieval.html
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.ipynb .pdf Custom MultiAction Agent Custom MultiAction Agent# This notebook goes through how to create your own custom agent. An agent consists of three parts: - Tools: The tools the agent has available to use. - The agent class itself: this decides which action to take. In this notebook we walk through how to create a custom agent that predicts/takes multiple steps at a time. from langchain.agents import Tool, AgentExecutor, BaseMultiActionAgent from langchain import OpenAI, SerpAPIWrapper def random_word(query: str) -> str: print("\nNow I'm doing this!") return "foo" search = SerpAPIWrapper() tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events" ), Tool( name = "RandomWord", func=random_word, description="call this to get a random word." ) ] from typing import List, Tuple, Any, Union from langchain.schema import AgentAction, AgentFinish class FakeAgent(BaseMultiActionAgent): """Fake Custom Agent.""" @property def input_keys(self): return ["input"] def plan( self, intermediate_steps: List[Tuple[AgentAction, str]], **kwargs: Any ) -> Union[List[AgentAction], AgentFinish]: """Given input, decided what to do. Args:
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"""Given input, decided what to do. Args: intermediate_steps: Steps the LLM has taken to date, along with observations **kwargs: User inputs. Returns: Action specifying what tool to use. """ if len(intermediate_steps) == 0: return [ AgentAction(tool="Search", tool_input="foo", log=""), AgentAction(tool="RandomWord", tool_input="foo", log=""), ] else: return AgentFinish(return_values={"output": "bar"}, log="") async def aplan( self, intermediate_steps: List[Tuple[AgentAction, str]], **kwargs: Any ) -> Union[List[AgentAction], AgentFinish]: """Given input, decided what to do. Args: intermediate_steps: Steps the LLM has taken to date, along with observations **kwargs: User inputs. Returns:
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Returns: Action specifying what tool to use. """ if len(intermediate_steps) == 0: return [ AgentAction(tool="Search", tool_input="foo", log=""), AgentAction(tool="RandomWord", tool_input="foo", log=""), ] else: return AgentFinish(return_values={"output": "bar"}, log="") agent = FakeAgent() agent_executor = AgentExecutor.from_agent_and_tools(agent=agent, tools=tools, verbose=True) agent_executor.run("How many people live in canada as of 2023?") > Entering new AgentExecutor chain... Foo Fighters is an American rock band formed in Seattle in 1994. Foo Fighters was initially formed as a one-man project by former Nirvana drummer Dave Grohl. Following the success of the 1995 eponymous debut album, Grohl recruited a band consisting of Nate Mendel, William Goldsmith, and Pat Smear. Now I'm doing this! foo > Finished chain. 'bar' previous Custom MRKL Agent next Custom Agent with Tool Retrieval By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/custom_multi_action_agent.html
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.md .pdf Agent Types Contents zero-shot-react-description react-docstore self-ask-with-search conversational-react-description Agent Types# Agents use an LLM to determine which actions to take and in what order. An action can either be using a tool and observing its output, or returning a response to the user. Here are the agents available in LangChain. zero-shot-react-description# This agent uses the ReAct framework to determine which tool to use based solely on the tool’s description. Any number of tools can be provided. This agent requires that a description is provided for each tool. react-docstore# This agent uses the ReAct framework to interact with a docstore. Two tools must be provided: a Search tool and a Lookup tool (they must be named exactly as so). The Search tool should search for a document, while the Lookup tool should lookup a term in the most recently found document. This agent is equivalent to the original ReAct paper, specifically the Wikipedia example. self-ask-with-search# This agent utilizes a single tool that should be named Intermediate Answer. This tool should be able to lookup factual answers to questions. This agent is equivalent to the original self ask with search paper, where a Google search API was provided as the tool. conversational-react-description# This agent is designed to be used in conversational settings. The prompt is designed to make the agent helpful and conversational. It uses the ReAct framework to decide which tool to use, and uses memory to remember the previous conversation interactions. previous Agents next Custom Agent Contents zero-shot-react-description react-docstore self-ask-with-search conversational-react-description By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/agent_types.html
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.ipynb .pdf Self Ask With Search Self Ask With Search# This notebook showcases the Self Ask With Search chain. from langchain import OpenAI, SerpAPIWrapper from langchain.agents import initialize_agent, Tool from langchain.agents import AgentType llm = OpenAI(temperature=0) search = SerpAPIWrapper() tools = [ Tool( name="Intermediate Answer", func=search.run, description="useful for when you need to ask with search" ) ] self_ask_with_search = initialize_agent(tools, llm, agent=AgentType.SELF_ASK_WITH_SEARCH, verbose=True) self_ask_with_search.run("What is the hometown of the reigning men's U.S. Open champion?") > Entering new AgentExecutor chain... Yes. Follow up: Who is the reigning men's U.S. Open champion? Intermediate answer: Carlos Alcaraz won the 2022 Men's single title while Poland's Iga Swiatek won the Women's single title defeating Tunisian's Ons Jabeur. Follow up: Where is Carlos Alcaraz from? Intermediate answer: El Palmar, Spain So the final answer is: El Palmar, Spain > Finished AgentExecutor chain. 'El Palmar, Spain' previous ReAct next Toolkits By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/self_ask_with_search.html
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.ipynb .pdf MRKL Chat MRKL Chat# This notebook showcases using an agent to replicate the MRKL chain using an agent optimized for chat models. This uses the example Chinook database. To set it up follow the instructions on https://database.guide/2-sample-databases-sqlite/, placing the .db file in a notebooks folder at the root of this repository. from langchain import OpenAI, LLMMathChain, SerpAPIWrapper, SQLDatabase, SQLDatabaseChain from langchain.agents import initialize_agent, Tool from langchain.agents import AgentType from langchain.chat_models import ChatOpenAI llm = ChatOpenAI(temperature=0) llm1 = OpenAI(temperature=0) search = SerpAPIWrapper() llm_math_chain = LLMMathChain(llm=llm1, verbose=True) db = SQLDatabase.from_uri("sqlite:///../../../../notebooks/Chinook.db") db_chain = SQLDatabaseChain(llm=llm1, database=db, verbose=True) tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events. You should ask targeted questions" ), Tool( name="Calculator", func=llm_math_chain.run, description="useful for when you need to answer questions about math" ), Tool( name="FooBar DB", func=db_chain.run, description="useful for when you need to answer questions about FooBar. Input should be in the form of a question containing
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when you need to answer questions about FooBar. Input should be in the form of a question containing full context" ) ] mrkl = initialize_agent(tools, llm, agent=AgentType.CHAT_ZERO_SHOT_REACT_DESCRIPTION, verbose=True) mrkl.run("Who is Leo DiCaprio's girlfriend? What is her current age raised to the 0.43 power?") > Entering new AgentExecutor chain... Thought: The first question requires a search, while the second question requires a calculator. Action: ``` { "action": "Search", "action_input": "Who is Leo DiCaprio's girlfriend?" } ``` Observation: Camila Morrone Thought:For the second question, I need to use the calculator tool to raise her current age to the 0.43 power. Action: ``` { "action": "Calculator", "action_input": "22.0^(0.43)" } ``` > Entering new LLMMathChain chain... 22.0^(0.43) ```python import math print(math.pow(22.0, 0.43)) ``` Answer: 3.777824273683966 > Finished chain. Observation: Answer: 3.777824273683966 Thought:I now know the final answer. Final Answer: Camila Morrone, 3.777824273683966. > Finished chain. 'Camila Morrone, 3.777824273683966.' mrkl.run("What is the full name of the artist who recently released an album called 'The Storm Before the Calm' and are they in the FooBar database? If so, what albums of theirs are in the FooBar database?") > Entering new AgentExecutor chain... Question: What is the full name of the artist who recently released an album called 'The Storm Before the Calm' and are they in the
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artist who recently released an album called 'The Storm Before the Calm' and are they in the FooBar database? If so, what albums of theirs are in the FooBar database? Thought: I should use the Search tool to find the answer to the first part of the question and then use the FooBar DB tool to find the answer to the second part of the question. Action: ``` { "action": "Search", "action_input": "Who recently released an album called 'The Storm Before the Calm'" } ``` Observation: Alanis Morissette Thought:Now that I have the name of the artist, I can use the FooBar DB tool to find their albums in the database. Action: ``` { "action": "FooBar DB", "action_input": "What albums does Alanis Morissette have in the database?" } ``` > Entering new SQLDatabaseChain chain... What albums does Alanis Morissette have in the database? SQLQuery: /Users/harrisonchase/workplace/langchain/langchain/sql_database.py:141: SAWarning: Dialect sqlite+pysqlite does *not* support Decimal objects natively, and SQLAlchemy must convert from floating point - rounding errors and other issues may occur. Please consider storing Decimal numbers as strings or integers on this platform for lossless storage. sample_rows = connection.execute(command) SELECT Title FROM Album WHERE ArtistId IN (SELECT ArtistId FROM Artist WHERE Name = 'Alanis Morissette') LIMIT 5; SQLResult: [('Jagged Little Pill',)] Answer: Alanis Morissette has the album 'Jagged Little Pill' in the database. > Finished chain. Observation: Alanis Morissette has the album 'Jagged Little Pill' in the database. Thought:I have found the answer to both parts of the question. Final Answer: The artist who recently released an album called 'The Storm Before
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parts of the question. Final Answer: The artist who recently released an album called 'The Storm Before the Calm' is Alanis Morissette. The album 'Jagged Little Pill' is in the FooBar database. > Finished chain. "The artist who recently released an album called 'The Storm Before the Calm' is Alanis Morissette. The album 'Jagged Little Pill' is in the FooBar database." previous MRKL next ReAct By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/mrkl_chat.html
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.ipynb .pdf ReAct ReAct# This notebook showcases using an agent to implement the ReAct logic. from langchain import OpenAI, Wikipedia from langchain.agents import initialize_agent, Tool from langchain.agents import AgentType from langchain.agents.react.base import DocstoreExplorer docstore=DocstoreExplorer(Wikipedia()) tools = [ Tool( name="Search", func=docstore.search, description="useful for when you need to ask with search" ), Tool( name="Lookup", func=docstore.lookup, description="useful for when you need to ask with lookup" ) ] llm = OpenAI(temperature=0, model_name="text-davinci-002") react = initialize_agent(tools, llm, agent=AgentType.REACT_DOCSTORE, verbose=True) question = "Author David Chanoff has collaborated with a U.S. Navy admiral who served as the ambassador to the United Kingdom under which President?" react.run(question) > Entering new AgentExecutor chain... Thought: I need to search David Chanoff and find the U.S. Navy admiral he collaborated with. Then I need to find which President the admiral served under. Action: Search[David Chanoff] Observation: David Chanoff is a noted author of non-fiction work. His work has typically involved collaborations with the principal protagonist of the work concerned. His collaborators have included; Augustus A. White, Joycelyn Elders, Đoàn Văn Toại, William J. Crowe, Ariel Sharon, Kenneth Good and Felix Zandman. He has also written about a wide range of subjects including literary history, education and
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Zandman. He has also written about a wide range of subjects including literary history, education and foreign for The Washington Post, The New Republic and The New York Times Magazine. He has published more than twelve books. Thought: The U.S. Navy admiral David Chanoff collaborated with is William J. Crowe. I need to find which President he served under. Action: Search[William J. Crowe] Observation: William James Crowe Jr. (January 2, 1925 – October 18, 2007) was a United States Navy admiral and diplomat who served as the 11th chairman of the Joint Chiefs of Staff under Presidents Ronald Reagan and George H. W. Bush, and as the ambassador to the United Kingdom and Chair of the Intelligence Oversight Board under President Bill Clinton. Thought: William J. Crowe served as the ambassador to the United Kingdom under President Bill Clinton, so the answer is Bill Clinton. Action: Finish[Bill Clinton] > Finished chain. 'Bill Clinton' previous MRKL Chat next Self Ask With Search By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/react.html
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.ipynb .pdf Conversation Agent (for Chat Models) Conversation Agent (for Chat Models)# This notebook walks through using an agent optimized for conversation, using ChatModels. Other agents are often optimized for using tools to figure out the best response, which is not ideal in a conversational setting where you may want the agent to be able to chat with the user as well. This is accomplished with a specific type of agent (chat-conversational-react-description) which expects to be used with a memory component. import os os.environ["LANGCHAIN_HANDLER"] = "langchain" from langchain.agents import Tool from langchain.memory import ConversationBufferMemory from langchain.chat_models import ChatOpenAI from langchain.utilities import SerpAPIWrapper from langchain.agents import initialize_agent from langchain.agents import AgentType search = SerpAPIWrapper() tools = [ Tool( name = "Current Search", func=search.run, description="useful for when you need to answer questions about current events or the current state of the world. the input to this should be a single search term." ), ] memory = ConversationBufferMemory(memory_key="chat_history", return_messages=True) llm=ChatOpenAI(temperature=0) agent_chain = initialize_agent(tools, llm, agent=AgentType.CHAT_CONVERSATIONAL_REACT_DESCRIPTION, verbose=True, memory=memory) agent_chain.run(input="hi, i am bob") > Entering new AgentExecutor chain... { "action": "Final Answer", "action_input": "Hello Bob! How can I assist you today?" } > Finished chain. 'Hello Bob! How can I assist you today?' agent_chain.run(input="what's my name?") > Entering new AgentExecutor chain... {
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my name?") > Entering new AgentExecutor chain... { "action": "Final Answer", "action_input": "Your name is Bob." } > Finished chain. 'Your name is Bob.' agent_chain.run("what are some good dinners to make this week, if i like thai food?") > Entering new AgentExecutor chain... { "action": "Current Search", "action_input": "Thai food dinner recipes" } Observation: 59 easy Thai recipes for any night of the week · Marion Grasby's Thai spicy chilli and basil fried rice · Thai curry noodle soup · Marion Grasby's ... Thought:{ "action": "Final Answer", "action_input": "Here are some Thai food dinner recipes you can make this week: Thai spicy chilli and basil fried rice, Thai curry noodle soup, and many more. You can find 59 easy Thai recipes for any night of the week on Marion Grasby's website." } > Finished chain. "Here are some Thai food dinner recipes you can make this week: Thai spicy chilli and basil fried rice, Thai curry noodle soup, and many more. You can find 59 easy Thai recipes for any night of the week on Marion Grasby's website." agent_chain.run(input="tell me the last letter in my name, and also tell me who won the world cup in 1978?") > Entering new AgentExecutor chain... ```json { "action": "Current Search", "action_input": "who won the world cup in 1978" } ``` Observation: The Argentina national football team represents Argentina in men's international football and is administered by the Argentine Football Association, the governing body for football in Argentina. Nicknamed La Albiceleste, they are the reigning world champions, having won the most recent World Cup in
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Albiceleste, they are the reigning world champions, having won the most recent World Cup in 2022. Thought:```json { "action": "Final Answer", "action_input": "The last letter in your name is 'b'. The Argentina national football team won the World Cup in 1978." } ``` > Finished chain. "The last letter in your name is 'b'. The Argentina national football team won the World Cup in 1978." agent_chain.run(input="whats the weather like in pomfret?") > Entering new AgentExecutor chain... { "action": "Current Search", "action_input": "weather in pomfret" } Observation: Mostly cloudy with gusty winds developing during the afternoon. A few flurries or snow showers possible. High near 40F. Winds NNW at 20 to 30 mph. Thought:{ "action": "Final Answer", "action_input": "The weather in Pomfret is mostly cloudy with gusty winds developing during the afternoon. A few flurries or snow showers are possible. High near 40F. Winds NNW at 20 to 30 mph." } > Finished chain. 'The weather in Pomfret is mostly cloudy with gusty winds developing during the afternoon. A few flurries or snow showers are possible. High near 40F. Winds NNW at 20 to 30 mph.' previous Custom Agent with Tool Retrieval next Conversation Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/chat_conversation_agent.html
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.ipynb .pdf Conversation Agent Conversation Agent# This notebook walks through using an agent optimized for conversation. Other agents are often optimized for using tools to figure out the best response, which is not ideal in a conversational setting where you may want the agent to be able to chat with the user as well. This is accomplished with a specific type of agent (conversational-react-description) which expects to be used with a memory component. from langchain.agents import Tool from langchain.agents import AgentType from langchain.memory import ConversationBufferMemory from langchain import OpenAI from langchain.utilities import GoogleSearchAPIWrapper from langchain.agents import initialize_agent search = GoogleSearchAPIWrapper() tools = [ Tool( name = "Current Search", func=search.run, description="useful for when you need to answer questions about current events or the current state of the world" ), ] memory = ConversationBufferMemory(memory_key="chat_history") llm=OpenAI(temperature=0) agent_chain = initialize_agent(tools, llm, agent=AgentType.CONVERSATIONAL_REACT_DESCRIPTION, verbose=True, memory=memory) agent_chain.run(input="hi, i am bob") > Entering new AgentExecutor chain... Thought: Do I need to use a tool? No AI: Hi Bob, nice to meet you! How can I help you today? > Finished chain. 'Hi Bob, nice to meet you! How can I help you today?' agent_chain.run(input="what's my name?") > Entering new AgentExecutor chain... Thought: Do I need to use a tool? No AI: Your name is Bob! > Finished chain. 'Your name is Bob!' agent_chain.run("what are some good dinners to make this week, if i like thai
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Bob!' agent_chain.run("what are some good dinners to make this week, if i like thai food?") > Entering new AgentExecutor chain... Thought: Do I need to use a tool? No AI: If you like Thai food, some great dinner options this week could include Thai green curry, Pad Thai, or a Thai-style stir-fry. You could also try making a Thai-style soup or salad. Enjoy! > Finished chain. 'If you like Thai food, some great dinner options this week could include Thai green curry, Pad Thai, or a Thai-style stir-fry. You could also try making a Thai-style soup or salad. Enjoy!' agent_chain.run(input="tell me the last letter in my name, and also tell me who won the world cup in 1978?") > Entering new AgentExecutor chain... Thought: Do I need to use a tool? Yes Action: Current Search Action Input: Who won the World Cup in 1978 Observation: The Cup was won by the host nation, Argentina, who defeated the Netherlands 3–1 in the final, after extra time. The final was held at River Plate's home stadium ... Amid Argentina's celebrations, there was sympathy for the Netherlands, runners-up for the second tournament running, following a 3-1 final defeat at the Estadio ... The match was won by the Argentine squad in extra time by a score of 3–1. Mario Kempes, who finished as the tournament's top scorer, was named the man of the ... May 21, 2022 ... Argentina won the World Cup for the first time in their history, beating Netherlands 3-1 in the final. This edition of the World Cup was full of ... The adidas Golden Ball is presented to the best player at each FIFA World Cup finals. Those who finish as runners-up in the vote receive the adidas Silver ... Holders West Germany failed to beat Holland
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as runners-up in the vote receive the adidas Silver ... Holders West Germany failed to beat Holland and Italy and were eliminated when Berti Vogts' own goal gave Austria a 3-2 victory. Holland thrashed the Austrians ... Jun 14, 2018 ... On a clear afternoon on 1 June 1978 at the revamped El Monumental stadium in Buenos Aires' Belgrano barrio, several hundred children in white ... Dec 15, 2022 ... The tournament couldn't have gone better for the ruling junta. Argentina went on to win the championship, defeating the Netherlands, 3-1, in the ... Nov 9, 2022 ... Host: Argentina Teams: 16. Format: Group stage, second round, third-place playoff, final. Matches: 38. Goals: 102. Winner: Argentina Feb 19, 2009 ... Argentina sealed their first World Cup win on home soil when they defeated the Netherlands in an exciting final that went to extra-time. For the ... Thought: Do I need to use a tool? No AI: The last letter in your name is 'b'. Argentina won the World Cup in 1978. > Finished chain. "The last letter in your name is 'b'. Argentina won the World Cup in 1978." agent_chain.run(input="whats the current temperature in pomfret?") > Entering new AgentExecutor chain... Thought: Do I need to use a tool? Yes Action: Current Search Action Input: Current temperature in Pomfret Observation: A mixture of rain and snow showers. High 39F. Winds NNW at 5 to 10 mph. Chance of precip 50%. Snow accumulations less than one inch. Pomfret, CT Weather Forecast, with current conditions, wind, air quality, and what to expect for the next 3 days. Pomfret Center Weather Forecasts.
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and what to expect for the next 3 days. Pomfret Center Weather Forecasts. ... Pomfret Center, CT Weather Conditionsstar_ratehome ... Tomorrow's temperature is forecast to be COOLER than today. It is 46 degrees fahrenheit, or 8 degrees celsius and feels like 46 degrees fahrenheit. The barometric pressure is 29.78 - measured by inch of mercury units - ... Pomfret Weather Forecasts. ... Pomfret, MD Weather Conditionsstar_ratehome ... Tomorrow's temperature is forecast to be MUCH COOLER than today. Additional Headlines. En Español · Share |. Current conditions at ... Pomfret CT. Tonight ... Past Weather Information · Interactive Forecast Map. Pomfret MD detailed current weather report for 20675 in Charles county, Maryland. ... Pomfret, MD weather condition is Mostly Cloudy and 43°F. Mostly Cloudy. Hazardous Weather Conditions. Hazardous Weather Outlook · En Español · Share |. Current conditions at ... South Pomfret VT. Tonight. Pomfret Center, CT Weather. Current Report for Thu Jan 5 2023. As of 2:00 PM EST. 5-Day Forecast | Road Conditions. 45°F 7°c. Feels Like 44°F. Pomfret Center CT. Today. Today: Areas of fog before 9am. Otherwise, cloudy, with a ... Otherwise, cloudy, with a temperature falling to around 33 by 5pm. Thought: Do I need to use a tool? No AI: The current temperature in Pomfret is 45°F (7°C) and it feels like 44°F. > Finished chain. 'The current temperature in Pomfret is 45°F (7°C) and it feels like 44°F.' previous Conversation Agent (for Chat Models) next MRKL By Harrison Chase
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Chat Models) next MRKL By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/conversational_agent.html
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.ipynb .pdf MRKL MRKL# This notebook showcases using an agent to replicate the MRKL chain. This uses the example Chinook database. To set it up follow the instructions on https://database.guide/2-sample-databases-sqlite/, placing the .db file in a notebooks folder at the root of this repository. from langchain import LLMMathChain, OpenAI, SerpAPIWrapper, SQLDatabase, SQLDatabaseChain from langchain.agents import initialize_agent, Tool from langchain.agents import AgentType llm = OpenAI(temperature=0) search = SerpAPIWrapper() llm_math_chain = LLMMathChain(llm=llm, verbose=True) db = SQLDatabase.from_uri("sqlite:///../../../../notebooks/Chinook.db") db_chain = SQLDatabaseChain(llm=llm, database=db, verbose=True) tools = [ Tool( name = "Search", func=search.run, description="useful for when you need to answer questions about current events. You should ask targeted questions" ), Tool( name="Calculator", func=llm_math_chain.run, description="useful for when you need to answer questions about math" ), Tool( name="FooBar DB", func=db_chain.run, description="useful for when you need to answer questions about FooBar. Input should be in the form of a question containing full context" ) ] mrkl = initialize_agent(tools, llm, agent=AgentType.ZERO_SHOT_REACT_DESCRIPTION,
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= initialize_agent(tools, llm, agent=AgentType.ZERO_SHOT_REACT_DESCRIPTION, verbose=True) mrkl.run("Who is Leo DiCaprio's girlfriend? What is her current age raised to the 0.43 power?") > Entering new AgentExecutor chain... I need to find out who Leo DiCaprio's girlfriend is and then calculate her age raised to the 0.43 power. Action: Search Action Input: "Who is Leo DiCaprio's girlfriend?" Observation: Camila Morrone Thought: I need to find out Camila Morrone's age Action: Search Action Input: "How old is Camila Morrone?" Observation: 25 years Thought: I need to calculate 25 raised to the 0.43 power Action: Calculator Action Input: 25^0.43 > Entering new LLMMathChain chain... 25^0.43 ```python import math print(math.pow(25, 0.43)) ``` Answer: 3.991298452658078 > Finished chain. Observation: Answer: 3.991298452658078 Thought: I now know the final answer Final Answer: Camila Morrone is 25 years old and her age raised to the 0.43 power is 3.991298452658078. > Finished chain. 'Camila Morrone is 25 years old and her age raised to the 0.43 power is 3.991298452658078.' mrkl.run("What is the full name of the artist who recently released an album called 'The Storm Before the Calm' and are they in the FooBar database? If so, what albums of theirs are in the FooBar database?") > Entering new AgentExecutor chain... I need to find out the artist's full name and then search the FooBar database for their albums. Action:
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find out the artist's full name and then search the FooBar database for their albums. Action: Search Action Input: "The Storm Before the Calm" artist Observation: The Storm Before the Calm (stylized in all lowercase) is the tenth (and eighth international) studio album by Canadian-American singer-songwriter Alanis ... Thought: I now need to search the FooBar database for Alanis Morissette's albums Action: FooBar DB Action Input: What albums by Alanis Morissette are in the FooBar database? > Entering new SQLDatabaseChain chain... What albums by Alanis Morissette are in the FooBar database? SQLQuery: SELECT Title FROM Album INNER JOIN Artist ON Album.ArtistId = Artist.ArtistId WHERE Artist.Name = 'Alanis Morissette' LIMIT 5; SQLResult: [('Jagged Little Pill',)] Answer: The albums by Alanis Morissette in the FooBar database are Jagged Little Pill. > Finished chain. Observation: The albums by Alanis Morissette in the FooBar database are Jagged Little Pill. Thought: I now know the final answer Final Answer: The artist who released the album The Storm Before the Calm is Alanis Morissette and the albums of theirs in the FooBar database are Jagged Little Pill. > Finished chain. 'The artist who released the album The Storm Before the Calm is Alanis Morissette and the albums of theirs in the FooBar database are Jagged Little Pill.' previous Conversation Agent next MRKL Chat By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/agents/examples/mrkl.html
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.ipynb .pdf Vectorstore Agent Contents Create the Vectorstores Initialize Toolkit and Agent Examples Multiple Vectorstores Examples Vectorstore Agent# This notebook showcases an agent designed to retrieve information from one or more vectorstores, either with or without sources. Create the Vectorstores# from langchain.embeddings.openai import OpenAIEmbeddings from langchain.vectorstores import Chroma from langchain.text_splitter import CharacterTextSplitter from langchain import OpenAI, VectorDBQA llm = OpenAI(temperature=0) from langchain.document_loaders import TextLoader loader = TextLoader('../../../state_of_the_union.txt') documents = loader.load() text_splitter = CharacterTextSplitter(chunk_size=1000, chunk_overlap=0) texts = text_splitter.split_documents(documents) embeddings = OpenAIEmbeddings() state_of_union_store = Chroma.from_documents(texts, embeddings, collection_name="state-of-union") Running Chroma using direct local API. Using DuckDB in-memory for database. Data will be transient. from langchain.document_loaders import WebBaseLoader loader = WebBaseLoader("https://beta.ruff.rs/docs/faq/") docs = loader.load() ruff_texts = text_splitter.split_documents(docs) ruff_store = Chroma.from_documents(ruff_texts, embeddings, collection_name="ruff") Running Chroma using direct local API. Using DuckDB in-memory for database. Data will be transient. Initialize Toolkit and Agent# First, we’ll create an agent with a single vectorstore. from langchain.agents.agent_toolkits import ( create_vectorstore_agent, VectorStoreToolkit, VectorStoreInfo, ) vectorstore_info = VectorStoreInfo( name="state_of_union_address", description="the most recent state of the Union adress",
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description="the most recent state of the Union adress", vectorstore=state_of_union_store ) toolkit = VectorStoreToolkit(vectorstore_info=vectorstore_info) agent_executor = create_vectorstore_agent( llm=llm, toolkit=toolkit, verbose=True ) Examples# agent_executor.run("What did biden say about ketanji brown jackson is the state of the union address?") > Entering new AgentExecutor chain... I need to find the answer in the state of the union address Action: state_of_union_address Action Input: What did biden say about ketanji brown jackson Observation: Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence. Thought: I now know the final answer Final Answer: Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence. > Finished chain. "Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence." agent_executor.run("What did biden say about ketanji brown jackson is the state of the union address? List the source.") > Entering new AgentExecutor chain... I need to use the state_of_union_address_with_sources tool to answer this question. Action: state_of_union_address_with_sources Action Input: What did biden say about ketanji brown jackson Observation: {"answer": " Biden said that he nominated Circuit Court of Appeals Judge Ketanji Brown Jackson to the United States Supreme Court, and that she is one of the nation's top legal minds who will continue Justice Breyer's legacy of excellence.\n", "sources":
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top legal minds who will continue Justice Breyer's legacy of excellence.\n", "sources": "../../state_of_the_union.txt"} Thought: I now know the final answer Final Answer: Biden said that he nominated Circuit Court of Appeals Judge Ketanji Brown Jackson to the United States Supreme Court, and that she is one of the nation's top legal minds who will continue Justice Breyer's legacy of excellence. Sources: ../../state_of_the_union.txt > Finished chain. "Biden said that he nominated Circuit Court of Appeals Judge Ketanji Brown Jackson to the United States Supreme Court, and that she is one of the nation's top legal minds who will continue Justice Breyer's legacy of excellence. Sources: ../../state_of_the_union.txt" Multiple Vectorstores# We can also easily use this initialize an agent with multiple vectorstores and use the agent to route between them. To do this. This agent is optimized for routing, so it is a different toolkit and initializer. from langchain.agents.agent_toolkits import ( create_vectorstore_router_agent, VectorStoreRouterToolkit, VectorStoreInfo, ) ruff_vectorstore_info = VectorStoreInfo( name="ruff", description="Information about the Ruff python linting library", vectorstore=ruff_store ) router_toolkit = VectorStoreRouterToolkit( vectorstores=[vectorstore_info, ruff_vectorstore_info], llm=llm ) agent_executor = create_vectorstore_router_agent( llm=llm, toolkit=router_toolkit, verbose=True ) Examples# agent_executor.run("What did biden say about ketanji brown jackson is the state of the union address?") > Entering new AgentExecutor chain... I need to use the state_of_union_address tool to answer this question. Action:
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chain... I need to use the state_of_union_address tool to answer this question. Action: state_of_union_address Action Input: What did biden say about ketanji brown jackson Observation: Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence. Thought: I now know the final answer Final Answer: Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence. > Finished chain. "Biden said that Ketanji Brown Jackson is one of the nation's top legal minds and that she will continue Justice Breyer's legacy of excellence." agent_executor.run("What tool does ruff use to run over Jupyter Notebooks?") > Entering new AgentExecutor chain... I need to find out what tool ruff uses to run over Jupyter Notebooks Action: ruff Action Input: What tool does ruff use to run over Jupyter Notebooks? Observation: Ruff is integrated into nbQA, a tool for running linters and code formatters over Jupyter Notebooks. After installing ruff and nbqa, you can run Ruff over a notebook like so: > nbqa ruff Untitled.ipynb Thought: I now know the final answer Final Answer: Ruff is integrated into nbQA, a tool for running linters and code formatters over Jupyter Notebooks. After installing ruff and nbqa, you can run Ruff over a notebook like so: > nbqa ruff Untitled.ipynb > Finished chain. 'Ruff is integrated into nbQA, a tool for running linters and code formatters over Jupyter Notebooks. After installing ruff and nbqa, you can run Ruff over a notebook like so: > nbqa ruff
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and nbqa, you can run Ruff over a notebook like so: > nbqa ruff Untitled.ipynb' agent_executor.run("What tool does ruff use to run over Jupyter Notebooks? Did the president mention that tool in the state of the union?") > Entering new AgentExecutor chain... I need to find out what tool ruff uses and if the president mentioned it in the state of the union. Action: ruff Action Input: What tool does ruff use to run over Jupyter Notebooks? Observation: Ruff is integrated into nbQA, a tool for running linters and code formatters over Jupyter Notebooks. After installing ruff and nbqa, you can run Ruff over a notebook like so: > nbqa ruff Untitled.ipynb Thought: I need to find out if the president mentioned nbQA in the state of the union. Action: state_of_union_address Action Input: Did the president mention nbQA in the state of the union? Observation: No, the president did not mention nbQA in the state of the union. Thought: I now know the final answer. Final Answer: No, the president did not mention nbQA in the state of the union. > Finished chain. 'No, the president did not mention nbQA in the state of the union.' previous SQL Database Agent next Agent Executors Contents Create the Vectorstores Initialize Toolkit and Agent Examples Multiple Vectorstores Examples By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/vectorstore.html
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.ipynb .pdf OpenAPI agents Contents OpenAPI agents 1st example: hierarchical planning agent To start, let’s collect some OpenAPI specs. How big is this spec? Let’s see some examples! Try another API. 2nd example: “json explorer” agent OpenAPI agents# We can construct agents to consume arbitrary APIs, here APIs conformant to the OpenAPI/Swagger specification. 1st example: hierarchical planning agent# In this example, we’ll consider an approach called hierarchical planning, common in robotics and appearing in recent works for LLMs X robotics. We’ll see it’s a viable approach to start working with a massive API spec AND to assist with user queries that require multiple steps against the API. The idea is simple: to get coherent agent behavior over long sequences behavior & to save on tokens, we’ll separate concerns: a “planner” will be responsible for what endpoints to call and a “controller” will be responsible for how to call them. In the initial implementation, the planner is an LLM chain that has the name and a short description for each endpoint in context. The controller is an LLM agent that is instantiated with documentation for only the endpoints for a particular plan. There’s a lot left to get this working very robustly :) To start, let’s collect some OpenAPI specs.# import os, yaml !wget https://raw.githubusercontent.com/openai/openai-openapi/master/openapi.yaml !mv openapi.yaml openai_openapi.yaml !wget https://www.klarna.com/us/shopping/public/openai/v0/api-docs !mv api-docs klarna_openapi.yaml !wget https://raw.githubusercontent.com/APIs-guru/openapi-directory/main/APIs/spotify.com/1.0.0/openapi.yaml !mv openapi.yaml spotify_openapi.yaml --2023-03-31 15:45:56--
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spotify_openapi.yaml --2023-03-31 15:45:56-- https://raw.githubusercontent.com/openai/openai-openapi/master/openapi.yaml Resolving raw.githubusercontent.com (raw.githubusercontent.com)... 185.199.110.133, 185.199.109.133, 185.199.111.133, ... Connecting to raw.githubusercontent.com (raw.githubusercontent.com)|185.199.110.133|:443... connected. HTTP request sent, awaiting response... 200 OK Length: 122995 (120K) [text/plain] Saving to: ‘openapi.yaml’ openapi.yaml 100%[===================>] 120.11K --.-KB/s in 0.01s 2023-03-31 15:45:56 (10.4 MB/s) - ‘openapi.yaml’ saved [122995/122995] --2023-03-31 15:45:57-- https://www.klarna.com/us/shopping/public/openai/v0/api-docs Resolving www.klarna.com (www.klarna.com)... 52.84.150.34, 52.84.150.46, 52.84.150.61, ... Connecting to www.klarna.com (www.klarna.com)|52.84.150.34|:443... connected. HTTP request sent, awaiting response... 200 OK Length: unspecified [application/json] Saving to: ‘api-docs’ api-docs [ <=> ] 1.87K --.-KB/s in 0s 2023-03-31
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in 0s 2023-03-31 15:45:57 (261 MB/s) - ‘api-docs’ saved [1916] --2023-03-31 15:45:57-- https://raw.githubusercontent.com/APIs-guru/openapi-directory/main/APIs/spotify.com/1.0.0/openapi.yaml Resolving raw.githubusercontent.com (raw.githubusercontent.com)... 185.199.110.133, 185.199.109.133, 185.199.111.133, ... Connecting to raw.githubusercontent.com (raw.githubusercontent.com)|185.199.110.133|:443... connected. HTTP request sent, awaiting response... 200 OK Length: 286747 (280K) [text/plain] Saving to: ‘openapi.yaml’ openapi.yaml 100%[===================>] 280.03K --.-KB/s in 0.02s 2023-03-31 15:45:58 (13.3 MB/s) - ‘openapi.yaml’ saved [286747/286747] from langchain.agents.agent_toolkits.openapi.spec import reduce_openapi_spec with open("openai_openapi.yaml") as f: raw_openai_api_spec = yaml.load(f, Loader=yaml.Loader) openai_api_spec = reduce_openapi_spec(raw_openai_api_spec) with open("klarna_openapi.yaml") as f: raw_klarna_api_spec = yaml.load(f, Loader=yaml.Loader) klarna_api_spec = reduce_openapi_spec(raw_klarna_api_spec) with open("spotify_openapi.yaml") as f: raw_spotify_api_spec = yaml.load(f, Loader=yaml.Loader) spotify_api_spec =
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raw_spotify_api_spec = yaml.load(f, Loader=yaml.Loader) spotify_api_spec = reduce_openapi_spec(raw_spotify_api_spec) We’ll work with the Spotify API as one of the examples of a somewhat complex API. There’s a bit of auth-related setup to do if you want to replicate this. You’ll have to set up an application in the Spotify developer console, documented here, to get credentials: CLIENT_ID, CLIENT_SECRET, and REDIRECT_URI. To get an access tokens (and keep them fresh), you can implement the oauth flows, or you can use spotipy. If you’ve set your Spotify creedentials as environment variables SPOTIPY_CLIENT_ID, SPOTIPY_CLIENT_SECRET, and SPOTIPY_REDIRECT_URI, you can use the helper functions below: import spotipy.util as util from langchain.requests import RequestsWrapper def construct_spotify_auth_headers(raw_spec: dict): scopes = list(raw_spec['components']['securitySchemes']['oauth_2_0']['flows']['authorizationCode']['scopes'].keys()) access_token = util.prompt_for_user_token(scope=','.join(scopes)) return { 'Authorization': f'Bearer {access_token}' } # Get API credentials. headers = construct_spotify_auth_headers(raw_spotify_api_spec) requests_wrapper = RequestsWrapper(headers=headers) How big is this spec?# endpoints = [ (route, operation) for route, operations in raw_spotify_api_spec["paths"].items() for operation in operations if operation in ["get", "post"] ] len(endpoints) 63 import tiktoken enc = tiktoken.encoding_for_model('text-davinci-003') def count_tokens(s): return len(enc.encode(s)) count_tokens(yaml.dump(raw_spotify_api_spec)) 80326 Let’s see
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see some examples!# Starting with GPT-4. (Some robustness iterations under way for GPT-3 family.) from langchain.llms.openai import OpenAI from langchain.agents.agent_toolkits.openapi import planner llm = OpenAI(model_name="gpt-4", temperature=0.0) /Users/jeremywelborn/src/langchain/langchain/llms/openai.py:169: UserWarning: You are trying to use a chat model. This way of initializing it is no longer supported. Instead, please use: `from langchain.chat_models import ChatOpenAI` warnings.warn( /Users/jeremywelborn/src/langchain/langchain/llms/openai.py:608: UserWarning: You are trying to use a chat model. This way of initializing it is no longer supported. Instead, please use: `from langchain.chat_models import ChatOpenAI` warnings.warn( spotify_agent = planner.create_openapi_agent(spotify_api_spec, requests_wrapper, llm) user_query = "make me a playlist with the first song from kind of blue. call it machine blues." spotify_agent.run(user_query) > Entering new AgentExecutor chain... Action: api_planner Action Input: I need to find the right API calls to create a playlist with the first song from Kind of Blue and name it Machine Blues Observation: 1. GET /search to search for the album "Kind of Blue" 2. GET /albums/{id}/tracks to get the tracks from the "Kind of Blue" album 3. GET /me to get the current user's information 4. POST /users/{user_id}/playlists to create a new playlist named "Machine Blues" for the current user 5. POST /playlists/{playlist_id}/tracks to add the first song from "Kind of Blue" to the "Machine Blues" playlist Thought:I have the plan, now
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"Kind of Blue" to the "Machine Blues" playlist Thought:I have the plan, now I need to execute the API calls. Action: api_controller Action Input: 1. GET /search to search for the album "Kind of Blue" 2. GET /albums/{id}/tracks to get the tracks from the "Kind of Blue" album 3. GET /me to get the current user's information 4. POST /users/{user_id}/playlists to create a new playlist named "Machine Blues" for the current user 5. POST /playlists/{playlist_id}/tracks to add the first song from "Kind of Blue" to the "Machine Blues" playlist > Entering new AgentExecutor chain... Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/search?q=Kind%20of%20Blue&type=album", "output_instructions": "Extract the id of the first album in the search results"} Observation: 1weenld61qoidwYuZ1GESA Thought:Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/albums/1weenld61qoidwYuZ1GESA/tracks", "output_instructions": "Extract the id of the first track in the album"} Observation: 7q3kkfAVpmcZ8g6JUThi3o Thought:Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/me", "output_instructions": "Extract the id of the current user"} Observation: 22rhrz4m4kvpxlsb5hezokzwi Thought:Action: requests_post Action Input: {"url": "https://api.spotify.com/v1/users/22rhrz4m4kvpxlsb5hezokzwi/playlists", "data":
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"data": {"name": "Machine Blues"}, "output_instructions": "Extract the id of the created playlist"} Observation: 7lzoEi44WOISnFYlrAIqyX Thought:Action: requests_post Action Input: {"url": "https://api.spotify.com/v1/playlists/7lzoEi44WOISnFYlrAIqyX/tracks", "data": {"uris": ["spotify:track:7q3kkfAVpmcZ8g6JUThi3o"]}, "output_instructions": "Confirm that the track was added to the playlist"} Observation: The track was added to the playlist, confirmed by the snapshot_id: MiwxODMxNTMxZTFlNzg3ZWFlZmMxYTlmYWQyMDFiYzUwNDEwMTAwZmE1. Thought:I am finished executing the plan. Final Answer: The first song from the "Kind of Blue" album has been added to the "Machine Blues" playlist. > Finished chain. Observation: The first song from the "Kind of Blue" album has been added to the "Machine Blues" playlist. Thought:I am finished executing the plan and have created the playlist with the first song from Kind of Blue. Final Answer: I have created a playlist called "Machine Blues" with the first song from the "Kind of Blue" album. > Finished chain. 'I have created a playlist called "Machine Blues" with the first song from the "Kind of Blue" album.' user_query = "give me a song I'd like, make it blues-ey" spotify_agent.run(user_query) > Entering new AgentExecutor chain... Action: api_planner Action Input: I need to find the right API calls to get a blues song recommendation for the user Observation: 1. GET /me to get the current
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blues song recommendation for the user Observation: 1. GET /me to get the current user's information 2. GET /recommendations/available-genre-seeds to retrieve a list of available genres 3. GET /recommendations with the seed_genre parameter set to "blues" to get a blues song recommendation for the user Thought:I have the plan, now I need to execute the API calls. Action: api_controller Action Input: 1. GET /me to get the current user's information 2. GET /recommendations/available-genre-seeds to retrieve a list of available genres 3. GET /recommendations with the seed_genre parameter set to "blues" to get a blues song recommendation for the user > Entering new AgentExecutor chain... Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/me", "output_instructions": "Extract the user's id and username"} Observation: ID: 22rhrz4m4kvpxlsb5hezokzwi, Username: Jeremy Welborn Thought:Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/recommendations/available-genre-seeds", "output_instructions": "Extract the list of available genres"} Observation: acoustic, afrobeat, alt-rock, alternative, ambient, anime, black-metal, bluegrass, blues, bossanova, brazil, breakbeat, british, cantopop, chicago-house, children, chill, classical, club, comedy, country, dance, dancehall, death-metal, deep-house, detroit-techno, disco, disney, drum-and-bass, dub, dubstep, edm, electro, electronic, emo, folk, forro, french, funk, garage, german, gospel, goth, grindcore, groove, grunge, guitar, happy, hard-rock, hardcore,
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goth, grindcore, groove, grunge, guitar, happy, hard-rock, hardcore, hardstyle, heavy-metal, hip-hop, holidays, honky-tonk, house, idm, indian, indie, indie-pop, industrial, iranian, j-dance, j-idol, j-pop, j-rock, jazz, k-pop, kids, latin, latino, malay, mandopop, metal, metal-misc, metalcore, minimal-techno, movies, mpb, new-age, new-release, opera, pagode, party, philippines- Thought: Retrying langchain.llms.openai.completion_with_retry.<locals>._completion_with_retry in 4.0 seconds as it raised RateLimitError: That model is currently overloaded with other requests. You can retry your request, or contact us through our help center at help.openai.com if the error persists. (Please include the request ID 2167437a0072228238f3c0c5b3882764 in your message.). Action: requests_get Action Input: {"url": "https://api.spotify.com/v1/recommendations?seed_genres=blues", "output_instructions": "Extract the list of recommended tracks with their ids and names"} Observation: [ { id: '03lXHmokj9qsXspNsPoirR', name: 'Get Away Jordan' } ] Thought:I am finished executing the plan. Final Answer: The recommended blues song for user Jeremy Welborn (ID: 22rhrz4m4kvpxlsb5hezokzwi) is "Get Away Jordan" with the track ID: 03lXHmokj9qsXspNsPoirR. > Finished chain. Observation: The recommended blues song for user Jeremy Welborn (ID:
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Finished chain. Observation: The recommended blues song for user Jeremy Welborn (ID: 22rhrz4m4kvpxlsb5hezokzwi) is "Get Away Jordan" with the track ID: 03lXHmokj9qsXspNsPoirR. Thought:I am finished executing the plan and have the information the user asked for. Final Answer: The recommended blues song for you is "Get Away Jordan" with the track ID: 03lXHmokj9qsXspNsPoirR. > Finished chain. 'The recommended blues song for you is "Get Away Jordan" with the track ID: 03lXHmokj9qsXspNsPoirR.' Try another API.# headers = { "Authorization": f"Bearer {os.getenv('OPENAI_API_KEY')}" } openai_requests_wrapper=RequestsWrapper(headers=headers) # Meta! llm = OpenAI(model_name="gpt-4", temperature=0.25) openai_agent = planner.create_openapi_agent(openai_api_spec, openai_requests_wrapper, llm) user_query = "generate a short piece of advice" openai_agent.run(user_query) > Entering new AgentExecutor chain... Action: api_planner Action Input: I need to find the right API calls to generate a short piece of advice Observation: 1. GET /engines to retrieve the list of available engines 2. POST /completions with the selected engine and a prompt for generating a short piece of advice Thought:I have the plan, now I need to execute the API calls. Action: api_controller Action Input: 1. GET /engines to retrieve the list of available engines 2. POST /completions with the selected engine and a prompt for generating a short piece of advice > Entering new AgentExecutor chain... Action:
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a prompt for generating a short piece of advice > Entering new AgentExecutor chain... Action: requests_get Action Input: {"url": "https://api.openai.com/v1/engines", "output_instructions": "Extract the ids of the engines"} Observation: babbage, davinci, text-davinci-edit-001, babbage-code-search-code, text-similarity-babbage-001, code-davinci-edit-001, text-davinci-001, ada, babbage-code-search-text, babbage-similarity, whisper-1, code-search-babbage-text-001, text-curie-001, code-search-babbage-code-001, text-ada-001, text-embedding-ada-002, text-similarity-ada-001, curie-instruct-beta, ada-code-search-code, ada-similarity, text-davinci-003, code-search-ada-text-001, text-search-ada-query-001, davinci-search-document, ada-code-search-text, text-search-ada-doc-001, davinci-instruct-beta, text-similarity-curie-001, code-search-ada-code-001 Thought:I will use the "davinci" engine to generate a short piece of advice. Action: requests_post Action Input: {"url": "https://api.openai.com/v1/completions", "data": {"engine": "davinci", "prompt": "Give me a short piece of advice on how to be more productive."}, "output_instructions": "Extract the text from the first choice"} Observation: "you must provide a model parameter" Thought:!! Could not _extract_tool_and_input from "I cannot finish executing the plan without knowing how to provide the model parameter correctly." in _get_next_action I cannot finish executing the plan without knowing how to provide the model parameter correctly. > Finished chain. Observation: I need
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plan without knowing how to provide the model parameter correctly. > Finished chain. Observation: I need more information on how to provide the model parameter correctly in the POST request to generate a short piece of advice. Thought:I need to adjust my plan to include the model parameter in the POST request. Action: api_planner Action Input: I need to find the right API calls to generate a short piece of advice, including the model parameter in the POST request Observation: 1. GET /models to retrieve the list of available models 2. Choose a suitable model from the list 3. POST /completions with the chosen model as a parameter to generate a short piece of advice Thought:I have an updated plan, now I need to execute the API calls. Action: api_controller Action Input: 1. GET /models to retrieve the list of available models 2. Choose a suitable model from the list 3. POST /completions with the chosen model as a parameter to generate a short piece of advice > Entering new AgentExecutor chain... Action: requests_get Action Input: {"url": "https://api.openai.com/v1/models", "output_instructions": "Extract the ids of the available models"} Observation: babbage, davinci, text-davinci-edit-001, babbage-code-search-code, text-similarity-babbage-001, code-davinci-edit-001, text-davinci-edit-001, ada Thought:Action: requests_post Action Input: {"url": "https://api.openai.com/v1/completions", "data": {"model": "davinci", "prompt": "Give me a short piece of advice on how to improve communication skills."}, "output_instructions": "Extract the text from the first choice"} Observation: "I'd like to broaden my horizon.\n\nI was trying to" Thought:I cannot finish executing the plan
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like to broaden my horizon.\n\nI was trying to" Thought:I cannot finish executing the plan without knowing some other information. Final Answer: The generated text is not a piece of advice on improving communication skills. I would need to retry the API call with a different prompt or model to get a more relevant response. > Finished chain. Observation: The generated text is not a piece of advice on improving communication skills. I would need to retry the API call with a different prompt or model to get a more relevant response. Thought:I need to adjust my plan to include a more specific prompt for generating a short piece of advice on improving communication skills. Action: api_planner Action Input: I need to find the right API calls to generate a short piece of advice on improving communication skills, including the model parameter in the POST request Observation: 1. GET /models to retrieve the list of available models 2. Choose a suitable model for generating text (e.g., text-davinci-002) 3. POST /completions with the chosen model and a prompt related to improving communication skills to generate a short piece of advice Thought:I have an updated plan, now I need to execute the API calls. Action: api_controller Action Input: 1. GET /models to retrieve the list of available models 2. Choose a suitable model for generating text (e.g., text-davinci-002) 3. POST /completions with the chosen model and a prompt related to improving communication skills to generate a short piece of advice > Entering new AgentExecutor chain... Action: requests_get Action Input: {"url": "https://api.openai.com/v1/models", "output_instructions": "Extract the names of the models"} Observation: babbage, davinci, text-davinci-edit-001, babbage-code-search-code, text-similarity-babbage-001, code-davinci-edit-001,
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text-similarity-babbage-001, code-davinci-edit-001, text-davinci-edit-001, ada Thought:Action: requests_post Action Input: {"url": "https://api.openai.com/v1/completions", "data": {"model": "text-davinci-002", "prompt": "Give a short piece of advice on how to improve communication skills"}, "output_instructions": "Extract the text from the first choice"} Observation: "Some basic advice for improving communication skills would be to make sure to listen" Thought:I am finished executing the plan. Final Answer: Some basic advice for improving communication skills would be to make sure to listen. > Finished chain. Observation: Some basic advice for improving communication skills would be to make sure to listen. Thought:I am finished executing the plan and have the information the user asked for. Final Answer: A short piece of advice for improving communication skills is to make sure to listen. > Finished chain. 'A short piece of advice for improving communication skills is to make sure to listen.' Takes awhile to get there! 2nd example: “json explorer” agent# Here’s an agent that’s not particularly practical, but neat! The agent has access to 2 toolkits. One comprises tools to interact with json: one tool to list the keys of a json object and another tool to get the value for a given key. The other toolkit comprises requests wrappers to send GET and POST requests. This agent consumes a lot calls to the language model, but does a surprisingly decent job. from langchain.agents import create_openapi_agent from langchain.agents.agent_toolkits import OpenAPIToolkit from langchain.llms.openai import OpenAI from langchain.requests import TextRequestsWrapper from langchain.tools.json.tool import JsonSpec with open("openai_openapi.yaml") as f: data = yaml.load(f,
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open("openai_openapi.yaml") as f: data = yaml.load(f, Loader=yaml.FullLoader) json_spec=JsonSpec(dict_=data, max_value_length=4000) openapi_toolkit = OpenAPIToolkit.from_llm(OpenAI(temperature=0), json_spec, openai_requests_wrapper, verbose=True) openapi_agent_executor = create_openapi_agent( llm=OpenAI(temperature=0), toolkit=openapi_toolkit, verbose=True ) openapi_agent_executor.run("Make a post request to openai /completions. The prompt should be 'tell me a joke.'") > Entering new AgentExecutor chain... Action: json_explorer Action Input: What is the base url for the API? > Entering new AgentExecutor chain... Action: json_spec_list_keys Action Input: data Observation: ['openapi', 'info', 'servers', 'tags', 'paths', 'components', 'x-oaiMeta'] Thought: I should look at the servers key to see what the base url is Action: json_spec_list_keys Action Input: data["servers"][0] Observation: ValueError('Value at path `data["servers"][0]` is not a dict, get the value directly.') Thought: I should get the value of the servers key Action: json_spec_get_value Action Input: data["servers"][0] Observation: {'url': 'https://api.openai.com/v1'} Thought: I now know the base url for the API Final Answer: The base url for the API is https://api.openai.com/v1 > Finished chain. Observation: The base url for the API is https://api.openai.com/v1 Thought: I should find the path for the /completions endpoint. Action: json_explorer Action Input: What is the
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for the /completions endpoint. Action: json_explorer Action Input: What is the path for the /completions endpoint? > Entering new AgentExecutor chain... Action: json_spec_list_keys Action Input: data Observation: ['openapi', 'info', 'servers', 'tags', 'paths', 'components', 'x-oaiMeta'] Thought: I should look at the paths key to see what endpoints exist Action: json_spec_list_keys Action Input: data["paths"] Observation: ['/engines', '/engines/{engine_id}', '/completions', '/chat/completions', '/edits', '/images/generations', '/images/edits', '/images/variations', '/embeddings', '/audio/transcriptions', '/audio/translations', '/engines/{engine_id}/search', '/files', '/files/{file_id}', '/files/{file_id}/content', '/answers', '/classifications', '/fine-tunes', '/fine-tunes/{fine_tune_id}', '/fine-tunes/{fine_tune_id}/cancel', '/fine-tunes/{fine_tune_id}/events', '/models', '/models/{model}', '/moderations'] Thought: I now know the path for the /completions endpoint Final Answer: The path for the /completions endpoint is data["paths"][2] > Finished chain. Observation: The path for the /completions endpoint is data["paths"][2] Thought: I should find the required parameters for the POST request. Action: json_explorer Action Input: What are the required parameters for a POST request to the /completions endpoint? > Entering new AgentExecutor chain... Action: json_spec_list_keys Action Input: data Observation: ['openapi', 'info', 'servers', 'tags', 'paths', 'components', 'x-oaiMeta'] Thought: I should look
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'tags', 'paths', 'components', 'x-oaiMeta'] Thought: I should look at the paths key to see what endpoints exist Action: json_spec_list_keys Action Input: data["paths"] Observation: ['/engines', '/engines/{engine_id}', '/completions', '/chat/completions', '/edits', '/images/generations', '/images/edits', '/images/variations', '/embeddings', '/audio/transcriptions', '/audio/translations', '/engines/{engine_id}/search', '/files', '/files/{file_id}', '/files/{file_id}/content', '/answers', '/classifications', '/fine-tunes', '/fine-tunes/{fine_tune_id}', '/fine-tunes/{fine_tune_id}/cancel', '/fine-tunes/{fine_tune_id}/events', '/models', '/models/{model}', '/moderations'] Thought: I should look at the /completions endpoint to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"] Observation: ['post'] Thought: I should look at the post key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"] Observation: ['operationId', 'tags', 'summary', 'requestBody', 'responses', 'x-oaiMeta'] Thought: I should look at the requestBody key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"] Observation: ['required', 'content'] Thought: I should look at the content key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"] Observation: ['application/json'] Thought: I should look at
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['application/json'] Thought: I should look at the application/json key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"] Observation: ['schema'] Thought: I should look at the schema key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"] Observation: ['$ref'] Thought: I should look at the $ref key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"]["$ref"] Observation: ValueError('Value at path `data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"]["$ref"]` is not a dict, get the value directly.') Thought: I should look at the $ref key to get the value directly Action: json_spec_get_value Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"]["$ref"] Observation: #/components/schemas/CreateCompletionRequest Thought: I should look at the CreateCompletionRequest schema to see what parameters are required Action: json_spec_list_keys Action Input: data["components"]["schemas"]["CreateCompletionRequest"] Observation: ['type', 'properties', 'required'] Thought: I should look at the required key to see what parameters are required Action: json_spec_get_value Action Input: data["components"]["schemas"]["CreateCompletionRequest"]["required"] Observation: ['model'] Thought: I now know the final answer Final Answer: The required parameters for a POST request to the /completions endpoint are 'model'. > Finished chain. Observation: The required parameters
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the /completions endpoint are 'model'. > Finished chain. Observation: The required parameters for a POST request to the /completions endpoint are 'model'. Thought: I now know the parameters needed to make the request. Action: requests_post Action Input: { "url": "https://api.openai.com/v1/completions", "data": { "model": "davinci", "prompt": "tell me a joke" } } Observation: {"id":"cmpl-70Ivzip3dazrIXU8DSVJGzFJj2rdv","object":"text_completion","created":1680307139,"model":"davinci","choices":[{"text":" with mummy not there”\n\nYou dig deep and come up with,","index":0,"logprobs":null,"finish_reason":"length"}],"usage":{"prompt_tokens":4,"completion_tokens":16,"total_tokens":20}} Thought: I now know the final answer. Final Answer: The response of the POST request is {"id":"cmpl-70Ivzip3dazrIXU8DSVJGzFJj2rdv","object":"text_completion","created":1680307139,"model":"davinci","choices":[{"text":" with mummy not there”\n\nYou dig deep and come up with,","index":0,"logprobs":null,"finish_reason":"length"}],"usage":{"prompt_tokens":4,"completion_tokens":16,"total_tokens":20}} > Finished chain. 'The response of the POST request is {"id":"cmpl-70Ivzip3dazrIXU8DSVJGzFJj2rdv","object":"text_completion","created":1680307139,"model":"davinci","choices":[{"text":" with mummy not there”\\n\\nYou dig deep and come
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with mummy not there”\\n\\nYou dig deep and come up with,","index":0,"logprobs":null,"finish_reason":"length"}],"usage":{"prompt_tokens":4,"completion_tokens":16,"total_tokens":20}}' previous JSON Agent next Natural Language APIs Contents OpenAPI agents 1st example: hierarchical planning agent To start, let’s collect some OpenAPI specs. How big is this spec? Let’s see some examples! Try another API. 2nd example: “json explorer” agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/openapi.html
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.ipynb .pdf Python Agent Contents Fibonacci Example Training neural net Python Agent# This notebook showcases an agent designed to write and execute python code to answer a question. from langchain.agents.agent_toolkits import create_python_agent from langchain.tools.python.tool import PythonREPLTool from langchain.python import PythonREPL from langchain.llms.openai import OpenAI agent_executor = create_python_agent( llm=OpenAI(temperature=0, max_tokens=1000), tool=PythonREPLTool(), verbose=True ) Fibonacci Example# This example was created by John Wiseman. agent_executor.run("What is the 10th fibonacci number?") > Entering new AgentExecutor chain... I need to calculate the 10th fibonacci number Action: Python REPL Action Input: def fibonacci(n): if n == 0: return 0 elif n == 1: return 1 else: return fibonacci(n-1) + fibonacci(n-2) Observation: Thought: I need to call the function with 10 as the argument Action: Python REPL Action Input: fibonacci(10) Observation: Thought: I now know the final answer Final Answer: 55 > Finished chain. '55' Training neural net# This example was created by Samee Ur Rehman. agent_executor.run("""Understand, write a single neuron neural network in PyTorch. Take synthetic data for y=2x. Train for 1000 epochs and print every 100 epochs. Return prediction for x = 5""") > Entering new AgentExecutor chain... I need to write a neural network in PyTorch and train it on the given data. Action:
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need to write a neural network in PyTorch and train it on the given data. Action: Python REPL Action Input: import torch # Define the model model = torch.nn.Sequential( torch.nn.Linear(1, 1) ) # Define the loss loss_fn = torch.nn.MSELoss() # Define the optimizer optimizer = torch.optim.SGD(model.parameters(), lr=0.01) # Define the data x_data = torch.tensor([[1.0], [2.0], [3.0], [4.0]]) y_data = torch.tensor([[2.0], [4.0], [6.0], [8.0]]) # Train the model for epoch in range(1000): # Forward pass y_pred = model(x_data) # Compute and print loss loss = loss_fn(y_pred, y_data) if (epoch+1) % 100 == 0: print(f'Epoch {epoch+1}: loss = {loss.item():.4f}') # Zero the gradients optimizer.zero_grad() # Backward pass loss.backward() # Update the weights optimizer.step() Observation: Epoch 100: loss = 0.0013 Epoch 200: loss = 0.0007 Epoch 300: loss = 0.0004 Epoch 400: loss = 0.0002 Epoch 500: loss = 0.0001 Epoch 600: loss = 0.0001 Epoch 700: loss = 0.0000 Epoch 800: loss = 0.0000 Epoch 900: loss = 0.0000 Epoch 1000: loss =
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900: loss = 0.0000 Epoch 1000: loss = 0.0000 Thought: I now know the final answer Final Answer: The prediction for x = 5 is 10.0. > Finished chain. 'The prediction for x = 5 is 10.0.' previous Pandas Dataframe Agent next SQL Database Agent Contents Fibonacci Example Training neural net By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/python.html
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.ipynb .pdf JSON Agent Contents Initialization Example: getting the required POST parameters for a request JSON Agent# This notebook showcases an agent designed to interact with large JSON/dict objects. This is useful when you want to answer questions about a JSON blob that’s too large to fit in the context window of an LLM. The agent is able to iteratively explore the blob to find what it needs to answer the user’s question. In the below example, we are using the OpenAPI spec for the OpenAI API, which you can find here. We will use the JSON agent to answer some questions about the API spec. Initialization# import os import yaml from langchain.agents import ( create_json_agent, AgentExecutor ) from langchain.agents.agent_toolkits import JsonToolkit from langchain.chains import LLMChain from langchain.llms.openai import OpenAI from langchain.requests import TextRequestsWrapper from langchain.tools.json.tool import JsonSpec with open("openai_openapi.yml") as f: data = yaml.load(f, Loader=yaml.FullLoader) json_spec = JsonSpec(dict_=data, max_value_length=4000) json_toolkit = JsonToolkit(spec=json_spec) json_agent_executor = create_json_agent( llm=OpenAI(temperature=0), toolkit=json_toolkit, verbose=True ) Example: getting the required POST parameters for a request# json_agent_executor.run("What are the required parameters in the request body to the /completions endpoint?") > Entering new AgentExecutor chain... Action: json_spec_list_keys Action Input: data Observation: ['openapi', 'info', 'servers', 'tags', 'paths', 'components', 'x-oaiMeta'] Thought: I should look at the paths key to see what endpoints exist Action:
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I should look at the paths key to see what endpoints exist Action: json_spec_list_keys Action Input: data["paths"] Observation: ['/engines', '/engines/{engine_id}', '/completions', '/edits', '/images/generations', '/images/edits', '/images/variations', '/embeddings', '/engines/{engine_id}/search', '/files', '/files/{file_id}', '/files/{file_id}/content', '/answers', '/classifications', '/fine-tunes', '/fine-tunes/{fine_tune_id}', '/fine-tunes/{fine_tune_id}/cancel', '/fine-tunes/{fine_tune_id}/events', '/models', '/models/{model}', '/moderations'] Thought: I should look at the /completions endpoint to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"] Observation: ['post'] Thought: I should look at the post key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"] Observation: ['operationId', 'tags', 'summary', 'requestBody', 'responses', 'x-oaiMeta'] Thought: I should look at the requestBody key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"] Observation: ['required', 'content'] Thought: I should look at the required key to see what parameters are required Action: json_spec_get_value Action Input: data["paths"]["/completions"]["post"]["requestBody"]["required"] Observation: True Thought: I should look at the content key to see what parameters are required Action: json_spec_list_keys Action Input:
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the content key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"] Observation: ['application/json'] Thought: I should look at the application/json key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"] Observation: ['schema'] Thought: I should look at the schema key to see what parameters are required Action: json_spec_list_keys Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"] Observation: ['$ref'] Thought: I should look at the $ref key to see what parameters are required Action: json_spec_get_value Action Input: data["paths"]["/completions"]["post"]["requestBody"]["content"]["application/json"]["schema"]["$ref"] Observation: #/components/schemas/CreateCompletionRequest Thought: I should look at the CreateCompletionRequest schema to see what parameters are required Action: json_spec_list_keys Action Input: data["components"]["schemas"]["CreateCompletionRequest"] Observation: ['type', 'properties', 'required'] Thought: I should look at the required key to see what parameters are required Action: json_spec_get_value Action Input: data["components"]["schemas"]["CreateCompletionRequest"]["required"] Observation: ['model'] Thought: I now know the final answer Final Answer: The required parameters in the request body to the /completions endpoint are 'model'. > Finished chain. "The required parameters in the request body to the /completions endpoint are 'model'." previous CSV Agent next OpenAPI agents Contents Initialization Example: getting the required POST parameters for a request By Harrison Chase ©
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POST parameters for a request By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/json.html
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.ipynb .pdf Pandas Dataframe Agent Pandas Dataframe Agent# This notebook shows how to use agents to interact with a pandas dataframe. It is mostly optimized for question answering. NOTE: this agent calls the Python agent under the hood, which executes LLM generated Python code - this can be bad if the LLM generated Python code is harmful. Use cautiously. from langchain.agents import create_pandas_dataframe_agent from langchain.llms import OpenAI import pandas as pd df = pd.read_csv('titanic.csv') agent = create_pandas_dataframe_agent(OpenAI(temperature=0), df, verbose=True) agent.run("how many rows are there?") > Entering new AgentExecutor chain... Thought: I need to count the number of rows Action: python_repl_ast Action Input: len(df) Observation: 891 Thought: I now know the final answer Final Answer: There are 891 rows in the dataframe. > Finished chain. 'There are 891 rows in the dataframe.' agent.run("how many people have more than 3 sibligngs") > Entering new AgentExecutor chain... Thought: I need to count the number of people with more than 3 siblings Action: python_repl_ast Action Input: df[df['SibSp'] > 3].shape[0] Observation: 30 Thought: I now know the final answer Final Answer: 30 people have more than 3 siblings. > Finished chain. '30 people have more than 3 siblings.' agent.run("whats the square root of the average age?") > Entering new AgentExecutor chain... Thought: I need to calculate the average age first Action: python_repl_ast Action Input: df['Age'].mean() Observation: 29.69911764705882 Thought: I can now calculate the square root Action:
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I can now calculate the square root Action: python_repl_ast Action Input: math.sqrt(df['Age'].mean()) Observation: name 'math' is not defined Thought: I need to import the math library Action: python_repl_ast Action Input: import math Observation: None Thought: I can now calculate the square root Action: python_repl_ast Action Input: math.sqrt(df['Age'].mean()) Observation: 5.449689683556195 Thought: I now know the final answer Final Answer: 5.449689683556195 > Finished chain. '5.449689683556195' previous Natural Language APIs next Python Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/pandas.html
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.ipynb .pdf CSV Agent CSV Agent# This notebook shows how to use agents to interact with a csv. It is mostly optimized for question answering. NOTE: this agent calls the Pandas DataFrame agent under the hood, which in turn calls the Python agent, which executes LLM generated Python code - this can be bad if the LLM generated Python code is harmful. Use cautiously. from langchain.agents import create_csv_agent from langchain.llms import OpenAI agent = create_csv_agent(OpenAI(temperature=0), 'titanic.csv', verbose=True) agent.run("how many rows are there?") > Entering new AgentExecutor chain... Thought: I need to count the number of rows Action: python_repl_ast Action Input: len(df) Observation: 891 Thought: I now know the final answer Final Answer: There are 891 rows in the dataframe. > Finished chain. 'There are 891 rows in the dataframe.' agent.run("how many people have more than 3 sibligngs") > Entering new AgentExecutor chain... Thought: I need to count the number of people with more than 3 siblings Action: python_repl_ast Action Input: df[df['SibSp'] > 3].shape[0] Observation: 30 Thought: I now know the final answer Final Answer: 30 people have more than 3 siblings. > Finished chain. '30 people have more than 3 siblings.' agent.run("whats the square root of the average age?") > Entering new AgentExecutor chain... Thought: I need to calculate the average age first Action: python_repl_ast Action Input: df['Age'].mean() Observation: 29.69911764705882 Thought: I can now calculate the square root Action: python_repl_ast Action Input:
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I can now calculate the square root Action: python_repl_ast Action Input: math.sqrt(df['Age'].mean()) Observation: name 'math' is not defined Thought: I need to import the math library Action: python_repl_ast Action Input: import math Observation: None Thought: I can now calculate the square root Action: python_repl_ast Action Input: math.sqrt(df['Age'].mean()) Observation: 5.449689683556195 Thought: I now know the final answer Final Answer: 5.449689683556195 > Finished chain. '5.449689683556195' previous Toolkits next JSON Agent By Harrison Chase © Copyright 2023, Harrison Chase. Last updated on Apr 18, 2023.
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/csv.html
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.ipynb .pdf SQL Database Agent Contents Initialization Example: describing a table Example: describing a table, recovering from an error Example: running queries Recovering from an error SQL Database Agent# This notebook showcases an agent designed to interact with a sql databases. The agent builds off of SQLDatabaseChain and is designed to answer more general questions about a database, as well as recover from errors. Note that, as this agent is in active development, all answers might not be correct. Additionally, it is not guaranteed that the agent won’t perform DML statements on your database given certain questions. Be careful running it on sensitive data! This uses the example Chinook database. To set it up follow the instructions on https://database.guide/2-sample-databases-sqlite/, placing the .db file in a notebooks folder at the root of this repository. Initialization# from langchain.agents import create_sql_agent from langchain.agents.agent_toolkits import SQLDatabaseToolkit from langchain.sql_database import SQLDatabase from langchain.llms.openai import OpenAI from langchain.agents import AgentExecutor db = SQLDatabase.from_uri("sqlite:///../../../../notebooks/Chinook.db") toolkit = SQLDatabaseToolkit(db=db) agent_executor = create_sql_agent( llm=OpenAI(temperature=0), toolkit=toolkit, verbose=True ) Example: describing a table# agent_executor.run("Describe the playlisttrack table") > Entering new AgentExecutor chain... Action: list_tables_sql_db Action Input: "" Observation: Artist, Invoice, Playlist, Genre, Album, PlaylistTrack, Track, InvoiceLine, MediaType, Employee, Customer Thought: I should look at the schema of the playlisttrack table Action: schema_sql_db Action Input: "PlaylistTrack" Observation: CREATE TABLE "PlaylistTrack"
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Input: "PlaylistTrack" Observation: CREATE TABLE "PlaylistTrack" ( "PlaylistId" INTEGER NOT NULL, "TrackId" INTEGER NOT NULL, PRIMARY KEY ("PlaylistId", "TrackId"), FOREIGN KEY("TrackId") REFERENCES "Track" ("TrackId"), FOREIGN KEY("PlaylistId") REFERENCES "Playlist" ("PlaylistId") ) SELECT * FROM 'PlaylistTrack' LIMIT 3; PlaylistId TrackId 1 3402 1 3389 1 3390 Thought: I now know the final answer Final Answer: The PlaylistTrack table has two columns, PlaylistId and TrackId, and is linked to the Playlist and Track tables. > Finished chain. 'The PlaylistTrack table has two columns, PlaylistId and TrackId, and is linked to the Playlist and Track tables.' Example: describing a table, recovering from an error# In this example, the agent tries to search for a table that doesn’t exist, but finds the next best result agent_executor.run("Describe the playlistsong table") > Entering new AgentExecutor chain... Action: list_tables_sql_db Action Input: "" Observation: Genre, PlaylistTrack, MediaType, Invoice, InvoiceLine, Track, Playlist, Customer, Album, Employee, Artist Thought: I should look at the schema of the PlaylistSong table Action: schema_sql_db Action Input: "PlaylistSong" Observation: Error: table_names {'PlaylistSong'} not found in database Thought: I should check the spelling of the table Action: list_tables_sql_db Action Input: "" Observation: Genre, PlaylistTrack, MediaType, Invoice, InvoiceLine, Track, Playlist, Customer, Album, Employee, Artist Thought: The table is called PlaylistTrack Action: schema_sql_db Action Input: "PlaylistTrack" Observation: CREATE TABLE "PlaylistTrack" ( "PlaylistId"
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"PlaylistTrack" Observation: CREATE TABLE "PlaylistTrack" ( "PlaylistId" INTEGER NOT NULL, "TrackId" INTEGER NOT NULL, PRIMARY KEY ("PlaylistId", "TrackId"), FOREIGN KEY("TrackId") REFERENCES "Track" ("TrackId"), FOREIGN KEY("PlaylistId") REFERENCES "Playlist" ("PlaylistId") ) SELECT * FROM 'PlaylistTrack' LIMIT 3; PlaylistId TrackId 1 3402 1 3389 1 3390 Thought: I now know the final answer Final Answer: The PlaylistTrack table contains two columns, PlaylistId and TrackId, which are both integers and are used to link Playlist and Track tables. > Finished chain. 'The PlaylistTrack table contains two columns, PlaylistId and TrackId, which are both integers and are used to link Playlist and Track tables.' Example: running queries# agent_executor.run("List the total sales per country. Which country's customers spent the most?") > Entering new AgentExecutor chain... Action: list_tables_sql_db Action Input: "" Observation: Invoice, MediaType, Artist, InvoiceLine, Genre, Playlist, Employee, Album, PlaylistTrack, Track, Customer Thought: I should look at the schema of the relevant tables to see what columns I can use. Action: schema_sql_db Action Input: "Invoice, Customer" Observation: CREATE TABLE "Customer" ( "CustomerId" INTEGER NOT NULL, "FirstName" NVARCHAR(40) NOT NULL, "LastName" NVARCHAR(20) NOT NULL, "Company" NVARCHAR(80), "Address" NVARCHAR(70), "City" NVARCHAR(40), "State" NVARCHAR(40), "Country" NVARCHAR(40), "PostalCode" NVARCHAR(10), "Phone"
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"PostalCode" NVARCHAR(10), "Phone" NVARCHAR(24), "Fax" NVARCHAR(24), "Email" NVARCHAR(60) NOT NULL, "SupportRepId" INTEGER, PRIMARY KEY ("CustomerId"), FOREIGN KEY("SupportRepId") REFERENCES "Employee" ("EmployeeId") ) SELECT * FROM 'Customer' LIMIT 3; CustomerId FirstName LastName Company Address City State Country PostalCode Phone Fax Email SupportRepId 1 Luís Gonçalves Embraer - Empresa Brasileira de Aeronáutica S.A. Av. Brigadeiro Faria Lima, 2170 São José dos Campos SP Brazil 12227-000 +55 (12) 3923-5555 +55 (12) 3923-5566 luisg@embraer.com.br 3 2 Leonie Köhler None Theodor-Heuss-Straße 34 Stuttgart None Germany 70174 +49 0711 2842222 None leonekohler@surfeu.de 5 3 François Tremblay None 1498 rue Bélanger Montréal QC Canada H2G 1A7 +1 (514) 721-4711 None ftremblay@gmail.com 3 CREATE TABLE "Invoice" ( "InvoiceId" INTEGER NOT NULL, "CustomerId" INTEGER NOT NULL, "InvoiceDate" DATETIME NOT NULL, "BillingAddress" NVARCHAR(70), "BillingCity" NVARCHAR(40), "BillingState" NVARCHAR(40), "BillingCountry" NVARCHAR(40), "BillingPostalCode" NVARCHAR(10), "Total" NUMERIC(10, 2) NOT NULL, PRIMARY KEY ("InvoiceId"), FOREIGN KEY("CustomerId") REFERENCES
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NOT NULL, PRIMARY KEY ("InvoiceId"), FOREIGN KEY("CustomerId") REFERENCES "Customer" ("CustomerId") ) SELECT * FROM 'Invoice' LIMIT 3; InvoiceId CustomerId InvoiceDate BillingAddress BillingCity BillingState BillingCountry BillingPostalCode Total 1 2 2009-01-01 00:00:00 Theodor-Heuss-Straße 34 Stuttgart None Germany 70174 1.98 2 4 2009-01-02 00:00:00 Ullevålsveien 14 Oslo None Norway 0171 3.96 3 8 2009-01-03 00:00:00 Grétrystraat 63 Brussels None Belgium 1000 5.94 Thought: I should query the Invoice and Customer tables to get the total sales per country. Action: query_sql_db Action Input: SELECT c.Country, SUM(i.Total) AS TotalSales FROM Invoice i INNER JOIN Customer c ON i.CustomerId = c.CustomerId GROUP BY c.Country ORDER BY TotalSales DESC LIMIT 10 Observation: [('USA', 523.0600000000003), ('Canada', 303.9599999999999), ('France', 195.09999999999994), ('Brazil', 190.09999999999997), ('Germany', 156.48), ('United Kingdom', 112.85999999999999), ('Czech Republic', 90.24000000000001), ('Portugal', 77.23999999999998), ('India', 75.25999999999999), ('Chile', 46.62)] Thought: I now know the final answer Final Answer: The customers from the USA spent the most, with a total of $523.06. > Finished chain. 'The customers from the USA spent the most, with a total of
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Finished chain. 'The customers from the USA spent the most, with a total of $523.06.' agent_executor.run("Show the total number of tracks in each playlist. The Playlist name should be included in the result.") > Entering new AgentExecutor chain... Action: list_tables_sql_db Action Input: "" Observation: Invoice, MediaType, Artist, InvoiceLine, Genre, Playlist, Employee, Album, PlaylistTrack, Track, Customer Thought: I should look at the schema of the Playlist and PlaylistTrack tables to see what columns I can use. Action: schema_sql_db Action Input: "Playlist, PlaylistTrack" Observation: CREATE TABLE "Playlist" ( "PlaylistId" INTEGER NOT NULL, "Name" NVARCHAR(120), PRIMARY KEY ("PlaylistId") ) SELECT * FROM 'Playlist' LIMIT 3; PlaylistId Name 1 Music 2 Movies 3 TV Shows CREATE TABLE "PlaylistTrack" ( "PlaylistId" INTEGER NOT NULL, "TrackId" INTEGER NOT NULL, PRIMARY KEY ("PlaylistId", "TrackId"), FOREIGN KEY("TrackId") REFERENCES "Track" ("TrackId"), FOREIGN KEY("PlaylistId") REFERENCES "Playlist" ("PlaylistId") ) SELECT * FROM 'PlaylistTrack' LIMIT 3; PlaylistId TrackId 1 3402 1 3389 1 3390 Thought: I can use a SELECT statement to get the total number of tracks in each playlist. Action: query_checker_sql_db Action Input: SELECT Playlist.Name, COUNT(PlaylistTrack.TrackId) AS TotalTracks FROM Playlist INNER JOIN PlaylistTrack ON Playlist.PlaylistId = PlaylistTrack.PlaylistId GROUP BY Playlist.Name Observation: SELECT Playlist.Name, COUNT(PlaylistTrack.TrackId) AS TotalTracks FROM Playlist INNER JOIN PlaylistTrack ON Playlist.PlaylistId = PlaylistTrack.PlaylistId GROUP BY
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FROM Playlist INNER JOIN PlaylistTrack ON Playlist.PlaylistId = PlaylistTrack.PlaylistId GROUP BY Playlist.Name Thought: The query looks correct, I can now execute it. Action: query_sql_db Action Input: SELECT Playlist.Name, COUNT(PlaylistTrack.TrackId) AS TotalTracks FROM Playlist INNER JOIN PlaylistTrack ON Playlist.PlaylistId = PlaylistTrack.PlaylistId GROUP BY Playlist.Name LIMIT 10 Observation: [('90’s Music', 1477), ('Brazilian Music', 39), ('Classical', 75), ('Classical 101 - Deep Cuts', 25), ('Classical 101 - Next Steps', 25), ('Classical 101 - The Basics', 25), ('Grunge', 15), ('Heavy Metal Classic', 26), ('Music', 6580), ('Music Videos', 1)] Thought: I now know the final answer. Final Answer: The total number of tracks in each playlist are: '90’s Music' (1477), 'Brazilian Music' (39), 'Classical' (75), 'Classical 101 - Deep Cuts' (25), 'Classical 101 - Next Steps' (25), 'Classical 101 - The Basics' (25), 'Grunge' (15), 'Heavy Metal Classic' (26), 'Music' (6580), 'Music Videos' (1). > Finished chain. "The total number of tracks in each playlist are: '90’s Music' (1477), 'Brazilian Music' (39), 'Classical' (75), 'Classical 101 - Deep Cuts' (25), 'Classical 101 - Next Steps' (25), 'Classical 101 - The Basics' (25), 'Grunge' (15), 'Heavy Metal Classic' (26), 'Music' (6580), 'Music Videos' (1)." Recovering from an
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'Music' (6580), 'Music Videos' (1)." Recovering from an error# In this example, the agent is able to recover from an error after initially trying to access an attribute (Track.ArtistId) which doesn’t exist. agent_executor.run("Who are the top 3 best selling artists?") > Entering new AgentExecutor chain... Action: list_tables_sql_db Action Input: "" Observation: MediaType, Track, Invoice, Album, Playlist, Customer, Employee, InvoiceLine, PlaylistTrack, Genre, Artist Thought: I should look at the schema of the Artist, InvoiceLine, and Track tables to see what columns I can use. Action: schema_sql_db Action Input: "Artist, InvoiceLine, Track" Observation: CREATE TABLE "Artist" ( "ArtistId" INTEGER NOT NULL, "Name" NVARCHAR(120), PRIMARY KEY ("ArtistId") ) SELECT * FROM 'Artist' LIMIT 3; ArtistId Name 1 AC/DC 2 Accept 3 Aerosmith CREATE TABLE "Track" ( "TrackId" INTEGER NOT NULL, "Name" NVARCHAR(200) NOT NULL, "AlbumId" INTEGER, "MediaTypeId" INTEGER NOT NULL, "GenreId" INTEGER, "Composer" NVARCHAR(220), "Milliseconds" INTEGER NOT NULL, "Bytes" INTEGER, "UnitPrice" NUMERIC(10, 2) NOT NULL, PRIMARY KEY ("TrackId"), FOREIGN KEY("MediaTypeId") REFERENCES "MediaType" ("MediaTypeId"), FOREIGN KEY("GenreId") REFERENCES "Genre" ("GenreId"), FOREIGN KEY("AlbumId") REFERENCES "Album" ("AlbumId") ) SELECT * FROM 'Track' LIMIT 3; TrackId Name AlbumId MediaTypeId GenreId Composer Milliseconds Bytes
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/sql_database.html
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'Track' LIMIT 3; TrackId Name AlbumId MediaTypeId GenreId Composer Milliseconds Bytes UnitPrice 1 For Those About To Rock (We Salute You) 1 1 1 Angus Young, Malcolm Young, Brian Johnson 343719 11170334 0.99 2 Balls to the Wall 2 2 1 None 342562 5510424 0.99 3 Fast As a Shark 3 2 1 F. Baltes, S. Kaufman, U. Dirkscneider & W. Hoffman 230619 3990994 0.99 CREATE TABLE "InvoiceLine" ( "InvoiceLineId" INTEGER NOT NULL, "InvoiceId" INTEGER NOT NULL, "TrackId" INTEGER NOT NULL, "UnitPrice" NUMERIC(10, 2) NOT NULL, "Quantity" INTEGER NOT NULL, PRIMARY KEY ("InvoiceLineId"), FOREIGN KEY("TrackId") REFERENCES "Track" ("TrackId"), FOREIGN KEY("InvoiceId") REFERENCES "Invoice" ("InvoiceId") ) SELECT * FROM 'InvoiceLine' LIMIT 3; InvoiceLineId InvoiceId TrackId UnitPrice Quantity 1 1 2 0.99 1 2 1 4 0.99 1 3 2 6 0.99 1 Thought: I should query the database to get the top 3 best selling artists. Action: query_sql_db Action Input: SELECT Artist.Name, SUM(InvoiceLine.Quantity) AS TotalQuantity FROM Artist INNER JOIN Track ON Artist.ArtistId = Track.ArtistId INNER JOIN InvoiceLine ON Track.TrackId = InvoiceLine.TrackId GROUP BY Artist.Name ORDER BY TotalQuantity DESC LIMIT 3 Observation: Error: (sqlite3.OperationalError) no such column: Track.ArtistId [SQL: SELECT
https:///langchain-cn.readthedocs.io/en/latest/modules/agents/toolkits/examples/sql_database.html