mirror of
https://github.com/hwchase17/langchain
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2f2b77602e
Several `core` modules do not have descriptions, like the [agent](https://api.python.langchain.com/en/latest/core_api_reference.html#module-langchain_core.agents) module. - Added missed module descriptions. The descriptions are mostly copied from the `langchain` or `community` package modules.
206 lines
6.8 KiB
Python
206 lines
6.8 KiB
Python
"""
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**Agent** is a class that uses an LLM to choose a sequence of actions to take.
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In Chains, a sequence of actions is hardcoded. In Agents,
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a language model is used as a reasoning engine to determine which actions
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to take and in which order.
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Agents select and use **Tools** and **Toolkits** for actions.
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**Class hierarchy:**
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.. code-block::
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BaseSingleActionAgent --> LLMSingleActionAgent
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OpenAIFunctionsAgent
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XMLAgent
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Agent --> <name>Agent # Examples: ZeroShotAgent, ChatAgent
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BaseMultiActionAgent --> OpenAIMultiFunctionsAgent
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**Main helpers:**
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.. code-block::
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AgentType, AgentExecutor, AgentOutputParser, AgentExecutorIterator,
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AgentAction, AgentFinish, AgentStep
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""" # noqa: E501
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from __future__ import annotations
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import json
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from typing import Any, List, Literal, Sequence, Union
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from langchain_core.load.serializable import Serializable
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from langchain_core.messages import (
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AIMessage,
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BaseMessage,
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FunctionMessage,
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HumanMessage,
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)
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class AgentAction(Serializable):
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"""A full description of an action for an ActionAgent to execute."""
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tool: str
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"""The name of the Tool to execute."""
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tool_input: Union[str, dict]
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"""The input to pass in to the Tool."""
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log: str
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"""Additional information to log about the action.
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This log can be used in a few ways. First, it can be used to audit
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what exactly the LLM predicted to lead to this (tool, tool_input).
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Second, it can be used in future iterations to show the LLMs prior
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thoughts. This is useful when (tool, tool_input) does not contain
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full information about the LLM prediction (for example, any `thought`
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before the tool/tool_input)."""
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type: Literal["AgentAction"] = "AgentAction"
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def __init__(
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self, tool: str, tool_input: Union[str, dict], log: str, **kwargs: Any
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):
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"""Override init to support instantiation by position for backward compat."""
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super().__init__(tool=tool, tool_input=tool_input, log=log, **kwargs)
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@classmethod
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def is_lc_serializable(cls) -> bool:
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"""Return whether or not the class is serializable."""
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return True
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@classmethod
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def get_lc_namespace(cls) -> List[str]:
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"""Get the namespace of the langchain object."""
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return ["langchain", "schema", "agent"]
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@property
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def messages(self) -> Sequence[BaseMessage]:
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"""Return the messages that correspond to this action."""
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return _convert_agent_action_to_messages(self)
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class AgentActionMessageLog(AgentAction):
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message_log: Sequence[BaseMessage]
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"""Similar to log, this can be used to pass along extra
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information about what exact messages were predicted by the LLM
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before parsing out the (tool, tool_input). This is again useful
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if (tool, tool_input) cannot be used to fully recreate the LLM
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prediction, and you need that LLM prediction (for future agent iteration).
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Compared to `log`, this is useful when the underlying LLM is a
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ChatModel (and therefore returns messages rather than a string)."""
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# Ignoring type because we're overriding the type from AgentAction.
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# And this is the correct thing to do in this case.
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# The type literal is used for serialization purposes.
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type: Literal["AgentActionMessageLog"] = "AgentActionMessageLog" # type: ignore
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class AgentStep(Serializable):
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"""The result of running an AgentAction."""
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action: AgentAction
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"""The AgentAction that was executed."""
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observation: Any
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"""The result of the AgentAction."""
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@property
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def messages(self) -> Sequence[BaseMessage]:
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"""Return the messages that correspond to this observation."""
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return _convert_agent_observation_to_messages(self.action, self.observation)
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class AgentFinish(Serializable):
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"""The final return value of an ActionAgent."""
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return_values: dict
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"""Dictionary of return values."""
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log: str
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"""Additional information to log about the return value.
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This is used to pass along the full LLM prediction, not just the parsed out
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return value. For example, if the full LLM prediction was
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`Final Answer: 2` you may want to just return `2` as a return value, but pass
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along the full string as a `log` (for debugging or observability purposes).
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"""
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type: Literal["AgentFinish"] = "AgentFinish"
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def __init__(self, return_values: dict, log: str, **kwargs: Any):
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"""Override init to support instantiation by position for backward compat."""
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super().__init__(return_values=return_values, log=log, **kwargs)
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@classmethod
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def is_lc_serializable(cls) -> bool:
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"""Return whether or not the class is serializable."""
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return True
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@classmethod
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def get_lc_namespace(cls) -> List[str]:
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"""Get the namespace of the langchain object."""
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return ["langchain", "schema", "agent"]
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@property
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def messages(self) -> Sequence[BaseMessage]:
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"""Return the messages that correspond to this observation."""
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return [AIMessage(content=self.log)]
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def _convert_agent_action_to_messages(
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agent_action: AgentAction,
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) -> Sequence[BaseMessage]:
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"""Convert an agent action to a message.
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This code is used to reconstruct the original AI message from the agent action.
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Args:
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agent_action: Agent action to convert.
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Returns:
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AIMessage that corresponds to the original tool invocation.
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"""
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if isinstance(agent_action, AgentActionMessageLog):
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return agent_action.message_log
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else:
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return [AIMessage(content=agent_action.log)]
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def _convert_agent_observation_to_messages(
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agent_action: AgentAction, observation: Any
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) -> Sequence[BaseMessage]:
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"""Convert an agent action to a message.
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This code is used to reconstruct the original AI message from the agent action.
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Args:
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agent_action: Agent action to convert.
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Returns:
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AIMessage that corresponds to the original tool invocation.
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"""
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if isinstance(agent_action, AgentActionMessageLog):
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return [_create_function_message(agent_action, observation)]
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else:
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return [HumanMessage(content=observation)]
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def _create_function_message(
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agent_action: AgentAction, observation: Any
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) -> FunctionMessage:
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"""Convert agent action and observation into a function message.
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Args:
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agent_action: the tool invocation request from the agent
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observation: the result of the tool invocation
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Returns:
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FunctionMessage that corresponds to the original tool invocation
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"""
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if not isinstance(observation, str):
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try:
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content = json.dumps(observation, ensure_ascii=False)
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except Exception:
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content = str(observation)
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else:
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content = observation
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return FunctionMessage(
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name=agent_action.tool,
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content=content,
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)
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