| """Define the state structures for the agent."""
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|
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| from __future__ import annotations
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|
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| from dataclasses import dataclass, field
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| from typing import Sequence
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| from langchain_core.messages import AnyMessage
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| from langgraph.graph import add_messages
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| from langgraph.managed import IsLastStep
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| from typing_extensions import Annotated
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| @dataclass
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| class InputState:
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| """Defines the input state for the agent, representing a narrower interface to the outside world.
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| This class is used to define the initial state and structure of incoming data.
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| """
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| messages: Annotated[Sequence[AnyMessage], add_messages] = field(
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| default_factory=list
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| )
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| """
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| Messages tracking the primary execution state of the agent.
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| Typically accumulates a pattern of:
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| 1. HumanMessage - user input
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| 2. AIMessage with .tool_calls - agent picking tool(s) to use to collect information
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| 3. ToolMessage(s) - the responses (or errors) from the executed tools
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| 4. AIMessage without .tool_calls - agent responding in unstructured format to the user
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| 5. HumanMessage - user responds with the next conversational turn
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| Steps 2-5 may repeat as needed.
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| The `add_messages` annotation ensures that new messages are merged with existing ones,
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| updating by ID to maintain an "append-only" state unless a message with the same ID is provided.
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| """
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| @dataclass
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| class State(InputState):
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| """Represents the complete state of the agent, extending InputState with additional attributes.
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| This class can be used to store any information needed throughout the agent's lifecycle.
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| """
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| is_last_step: IsLastStep = field(default=False)
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| """
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| Indicates whether the current step is the last one before the graph raises an error.
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| This is a 'managed' variable, controlled by the state machine rather than user code.
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| It is set to 'True' when the step count reaches recursion_limit - 1.
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| """
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