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_generate() — langchain Function Reference

Architecture documentation for the _generate() function in test_wrap_model_call.py from the langchain codebase.

Entity Profile

Dependency Diagram

graph TD
  18f8f001_75cf_0af2_02e1_dde21f0800e3["_generate()"]
  cc22cf3f_0dfb_c182_97b3_3fe7902d0b04["TrackingModel"]
  18f8f001_75cf_0af2_02e1_dde21f0800e3 -->|defined in| cc22cf3f_0dfb_c182_97b3_3fe7902d0b04
  style 18f8f001_75cf_0af2_02e1_dde21f0800e3 fill:#6366f1,stroke:#818cf8,color:#fff

Relationship Graph

Source Code

libs/langchain_v1/tests/unit_tests/agents/middleware/core/test_wrap_model_call.py lines 523–531

            def _generate(
                self,
                messages: list[BaseMessage],
                stop: list[str] | None = None,
                run_manager: CallbackManagerForLLMRun | None = None,
                **kwargs: Any,
            ) -> ChatResult:
                model_calls.append(len(messages))
                return super()._generate(messages, **kwargs)

Domain

Subdomains

Frequently Asked Questions

What does _generate() do?
_generate() is a function in the langchain codebase, defined in libs/langchain_v1/tests/unit_tests/agents/middleware/core/test_wrap_model_call.py.
Where is _generate() defined?
_generate() is defined in libs/langchain_v1/tests/unit_tests/agents/middleware/core/test_wrap_model_call.py at line 523.

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