agent_executor.py 5.0 KB

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  1. import enum
  2. import logging
  3. from typing import Union, Optional
  4. from langchain.agents import BaseSingleActionAgent, BaseMultiActionAgent
  5. from langchain.base_language import BaseLanguageModel
  6. from langchain.callbacks.manager import Callbacks
  7. from langchain.memory.chat_memory import BaseChatMemory
  8. from langchain.tools import BaseTool
  9. from pydantic import BaseModel, Extra
  10. from core.agent.agent.multi_dataset_router_agent import MultiDatasetRouterAgent
  11. from core.agent.agent.openai_function_call import AutoSummarizingOpenAIFunctionCallAgent
  12. from core.agent.agent.openai_multi_function_call import AutoSummarizingOpenMultiAIFunctionCallAgent
  13. from core.agent.agent.output_parser.structured_chat import StructuredChatOutputParser
  14. from core.agent.agent.structured_chat import AutoSummarizingStructuredChatAgent
  15. from langchain.agents import AgentExecutor as LCAgentExecutor
  16. from core.tool.dataset_retriever_tool import DatasetRetrieverTool
  17. class PlanningStrategy(str, enum.Enum):
  18. ROUTER = 'router'
  19. REACT = 'react'
  20. FUNCTION_CALL = 'function_call'
  21. MULTI_FUNCTION_CALL = 'multi_function_call'
  22. class AgentConfiguration(BaseModel):
  23. strategy: PlanningStrategy
  24. llm: BaseLanguageModel
  25. tools: list[BaseTool]
  26. summary_llm: BaseLanguageModel
  27. memory: Optional[BaseChatMemory] = None
  28. callbacks: Callbacks = None
  29. max_iterations: int = 6
  30. max_execution_time: Optional[float] = None
  31. early_stopping_method: str = "generate"
  32. # `generate` will continue to complete the last inference after reaching the iteration limit or request time limit
  33. class Config:
  34. """Configuration for this pydantic object."""
  35. extra = Extra.forbid
  36. arbitrary_types_allowed = True
  37. class AgentExecuteResult(BaseModel):
  38. strategy: PlanningStrategy
  39. output: Optional[str]
  40. configuration: AgentConfiguration
  41. class AgentExecutor:
  42. def __init__(self, configuration: AgentConfiguration):
  43. self.configuration = configuration
  44. self.agent = self._init_agent()
  45. def _init_agent(self) -> Union[BaseSingleActionAgent | BaseMultiActionAgent]:
  46. if self.configuration.strategy == PlanningStrategy.REACT:
  47. agent = AutoSummarizingStructuredChatAgent.from_llm_and_tools(
  48. llm=self.configuration.llm,
  49. tools=self.configuration.tools,
  50. output_parser=StructuredChatOutputParser(),
  51. summary_llm=self.configuration.summary_llm,
  52. verbose=True
  53. )
  54. elif self.configuration.strategy == PlanningStrategy.FUNCTION_CALL:
  55. agent = AutoSummarizingOpenAIFunctionCallAgent.from_llm_and_tools(
  56. llm=self.configuration.llm,
  57. tools=self.configuration.tools,
  58. extra_prompt_messages=self.configuration.memory.buffer if self.configuration.memory else None, # used for read chat histories memory
  59. summary_llm=self.configuration.summary_llm,
  60. verbose=True
  61. )
  62. elif self.configuration.strategy == PlanningStrategy.MULTI_FUNCTION_CALL:
  63. agent = AutoSummarizingOpenMultiAIFunctionCallAgent.from_llm_and_tools(
  64. llm=self.configuration.llm,
  65. tools=self.configuration.tools,
  66. extra_prompt_messages=self.configuration.memory.buffer if self.configuration.memory else None, # used for read chat histories memory
  67. summary_llm=self.configuration.summary_llm,
  68. verbose=True
  69. )
  70. elif self.configuration.strategy == PlanningStrategy.ROUTER:
  71. self.configuration.tools = [t for t in self.configuration.tools if isinstance(t, DatasetRetrieverTool)]
  72. agent = MultiDatasetRouterAgent.from_llm_and_tools(
  73. llm=self.configuration.llm,
  74. tools=self.configuration.tools,
  75. extra_prompt_messages=self.configuration.memory.buffer if self.configuration.memory else None,
  76. verbose=True
  77. )
  78. else:
  79. raise NotImplementedError(f"Unknown Agent Strategy: {self.configuration.strategy}")
  80. return agent
  81. def should_use_agent(self, query: str) -> bool:
  82. return self.agent.should_use_agent(query)
  83. def run(self, query: str) -> AgentExecuteResult:
  84. agent_executor = LCAgentExecutor.from_agent_and_tools(
  85. agent=self.agent,
  86. tools=self.configuration.tools,
  87. memory=self.configuration.memory,
  88. max_iterations=self.configuration.max_iterations,
  89. max_execution_time=self.configuration.max_execution_time,
  90. early_stopping_method=self.configuration.early_stopping_method,
  91. callbacks=self.configuration.callbacks
  92. )
  93. try:
  94. output = agent_executor.run(query)
  95. except Exception:
  96. logging.exception("agent_executor run failed")
  97. output = None
  98. return AgentExecuteResult(
  99. output=output,
  100. strategy=self.configuration.strategy,
  101. configuration=self.configuration
  102. )