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- # mypy: disable-error-code="no-any-unimported"
- import os
- import tempfile
- from typing import Any, AsyncGenerator, Generator
-
- import pandas as pd
- import pytest
- import tiktoken
- from autogen_core import CancellationToken
- from autogen_ext.tools.graphrag import GlobalSearchTool, GlobalSearchToolReturn, LocalSearchTool, LocalSearchToolReturn
- from autogen_ext.tools.graphrag._config import GlobalDataConfig, LocalDataConfig
- from graphrag.callbacks.llm_callbacks import BaseLLMCallback
- from graphrag.model.types import TextEmbedder
- from graphrag.query.llm.base import BaseLLM, BaseTextEmbedding
- from graphrag.vector_stores.base import BaseVectorStore, VectorStoreDocument, VectorStoreSearchResult
-
-
- class MockLLM(BaseLLM): # type: ignore
- def generate(
- self,
- messages: str | list[Any],
- streaming: bool = True,
- callbacks: list[BaseLLMCallback] | None = None,
- **kwargs: Any,
- ) -> str:
- return "Mock response"
-
- def stream_generate(
- self, messages: str | list[Any], callbacks: list[BaseLLMCallback] | None = None, **kwargs: Any
- ) -> Generator[str, None, None]:
- yield "Mock response"
-
- async def agenerate(
- self,
- messages: str | list[Any],
- streaming: bool = True,
- callbacks: list[BaseLLMCallback] | None = None,
- **kwargs: Any,
- ) -> str:
- return "Mock response"
-
- async def astream_generate( # type: ignore
- self, messages: str | list[Any], callbacks: list[BaseLLMCallback] | None = None, **kwargs: Any
- ) -> AsyncGenerator[str, None]:
- yield "Mock response"
-
-
- class MockTextEmbedding(BaseTextEmbedding): # type: ignore
- def embed(self, text: str, **kwargs: Any) -> list[float]:
- return [0.1] * 10
-
- async def aembed(self, text: str, **kwargs: Any) -> list[float]:
- return [0.1] * 10
-
-
- class MockVectorStore(BaseVectorStore): # type: ignore
- def __init__(self, **kwargs: Any) -> None:
- super().__init__(collection_name="mock", **kwargs)
- self.documents: dict[str | int, VectorStoreDocument] = {}
-
- def connect(self, **kwargs: Any) -> None:
- pass
-
- def load_documents(self, documents: list[VectorStoreDocument], overwrite: bool = True) -> None:
- if overwrite:
- self.documents = {}
- for doc in documents:
- self.documents[doc.id] = doc
-
- def filter_by_id(self, include_ids: list[str] | list[int]) -> None:
- return None
-
- def similarity_search_by_vector(
- self, query_embedding: list[float], k: int = 10, **kwargs: Any
- ) -> list[VectorStoreSearchResult]:
- docs = list(self.documents.values())[:k]
- return [VectorStoreSearchResult(document=doc, score=0.9) for doc in docs]
-
- def similarity_search_by_text(
- self, text: str, text_embedder: TextEmbedder, k: int = 10, **kwargs: Any
- ) -> list[VectorStoreSearchResult]:
- return self.similarity_search_by_vector([0.1] * 10, k)
-
- def search_by_id(self, id: str) -> VectorStoreDocument:
- return self.documents.get(id, VectorStoreDocument(id=id, text=None, vector=None))
-
-
- @pytest.mark.asyncio
- async def test_global_search_tool(
- community_df_fixture: pd.DataFrame,
- entity_df_fixture: pd.DataFrame,
- report_df_fixture: pd.DataFrame,
- entity_embedding_fixture: pd.DataFrame,
- ) -> None:
- # Create a temporary directory to simulate the data config
- with tempfile.TemporaryDirectory() as tempdir:
- # Save fixtures to parquet files
- community_table = os.path.join(tempdir, "create_final_communities.parquet")
- entity_table = os.path.join(tempdir, "create_final_nodes.parquet")
- community_report_table = os.path.join(tempdir, "create_final_community_reports.parquet")
- entity_embedding_table = os.path.join(tempdir, "create_final_entities.parquet")
-
- community_df_fixture.to_parquet(community_table) # type: ignore
- entity_df_fixture.to_parquet(entity_table) # type: ignore
- report_df_fixture.to_parquet(community_report_table) # type: ignore
- entity_embedding_fixture.to_parquet(entity_embedding_table) # type: ignore
-
- # Initialize the data config with the temporary directory
- data_config = GlobalDataConfig(
- input_dir=tempdir,
- community_table="create_final_communities",
- entity_table="create_final_nodes",
- community_report_table="create_final_community_reports",
- entity_embedding_table="create_final_entities",
- )
-
- # Initialize the GlobalSearchTool with mock data
- token_encoder = tiktoken.encoding_for_model("gpt-4o")
- llm = MockLLM()
-
- global_search_tool = GlobalSearchTool(token_encoder=token_encoder, llm=llm, data_config=data_config)
-
- # Example of running the tool and checking the result
- query = "What is the overall sentiment of the community reports?"
- cancellation_token = CancellationToken()
- result = await global_search_tool.run_json(args={"query": query}, cancellation_token=cancellation_token)
- assert isinstance(result, GlobalSearchToolReturn)
- assert isinstance(result.answer, str)
-
-
- @pytest.mark.asyncio
- async def test_local_search_tool(
- entity_df_fixture: pd.DataFrame,
- relationship_df_fixture: pd.DataFrame,
- text_unit_df_fixture: pd.DataFrame,
- entity_embedding_fixture: pd.DataFrame,
- monkeypatch: pytest.MonkeyPatch,
- ) -> None:
- # Create a temporary directory to simulate the data config
- with tempfile.TemporaryDirectory() as tempdir:
- # Save fixtures to parquet files
- entity_table = os.path.join(tempdir, "create_final_nodes.parquet")
- relationship_table = os.path.join(tempdir, "create_final_relationships.parquet")
- text_unit_table = os.path.join(tempdir, "create_final_text_units.parquet")
- entity_embedding_table = os.path.join(tempdir, "create_final_entities.parquet")
-
- entity_df_fixture.to_parquet(entity_table) # type: ignore
- relationship_df_fixture.to_parquet(relationship_table) # type: ignore
- text_unit_df_fixture.to_parquet(text_unit_table) # type: ignore
- entity_embedding_fixture.to_parquet(entity_embedding_table) # type: ignore
-
- # Initialize the data config with the temporary directory
- data_config = LocalDataConfig(
- input_dir=tempdir,
- entity_table="create_final_nodes",
- relationship_table="create_final_relationships",
- text_unit_table="create_final_text_units",
- entity_embedding_table="create_final_entities",
- )
-
- # Initialize the LocalSearchTool with mock data
- token_encoder = tiktoken.encoding_for_model("gpt-4o")
- llm = MockLLM()
- embedder = MockTextEmbedding()
-
- # Mock the vector store
- def mock_vector_store_factory(*args: Any, **kwargs: dict[str, Any]) -> MockVectorStore:
- store = MockVectorStore()
- store.document_collection = store # Make the store act as its own collection
- return store
-
- # Patch the LanceDBVectorStore class
- monkeypatch.setattr("autogen_ext.tools.graphrag._local_search.LanceDBVectorStore", mock_vector_store_factory) # type: ignore
-
- local_search_tool = LocalSearchTool(
- token_encoder=token_encoder, llm=llm, embedder=embedder, data_config=data_config
- )
-
- # Example of running the tool and checking the result
- query = "What are the relationships between Dr. Becher and the station-master?"
- cancellation_token = CancellationToken()
- result = await local_search_tool.run_json(args={"query": query}, cancellation_token=cancellation_token)
- assert isinstance(result, LocalSearchToolReturn)
- assert isinstance(result.answer, str)
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