# Copyright (c) 2024 Microsoft Corporation. # Licensed under the MIT License from graphrag.config.embeddings import ( all_embeddings, ) from graphrag.index.workflows.generate_text_embeddings import ( run_workflow, ) from tests.unit.config.utils import get_default_graphrag_config from .util import ( create_test_context, ) async def test_generate_text_embeddings(): context = await create_test_context( storage=[ "documents", "relationships", "text_units", "entities", "community_reports", ] ) config = get_default_graphrag_config() llm_settings = config.get_embedding_model_config( config.embed_text.embedding_model_id ) llm_settings.type = "mock" llm_settings.mock_responses = [1.0] * 3072 config.embed_text.names = list(all_embeddings) config.snapshots.embeddings = True await run_workflow(config, context) parquet_files = context.output_storage.keys() for field in all_embeddings: assert f"embeddings.{field}.parquet" in parquet_files # entity description should always be here, let's assert its format entity_description_embeddings = await context.output_table_provider.read_dataframe( "embeddings.entity_description" ) assert len(entity_description_embeddings.columns) == 2 assert "id" in entity_description_embeddings.columns assert "embedding" in entity_description_embeddings.columns