Files
wehub-resource-sync c889a57b6b
Test Suites / Build CI Environment (push) Has been cancelled
Test Suites / Basic Tests (push) Has been cancelled
Test Suites / End-to-End Tests (push) Has been cancelled
Test Suites / CLI Tests (push) Has been cancelled
Test Suites / Slow End-to-End Tests (push) Has been cancelled
Test Suites / Graph Database Tests (push) Has been cancelled
Test Suites / Vector DB Tests (push) Has been cancelled
Test Suites / Temporal Graph Test (push) Has been cancelled
Test Suites / Search Test on Different DBs (push) Has been cancelled
Test Suites / Example Tests (push) Has been cancelled
Test Suites / Notebook Tests (push) Has been cancelled
Test Suites / OS and Python Tests Ubuntu (push) Has been cancelled
Test Suites / OS and Python Tests Extended (push) Has been cancelled
Test Suites / LLM Test Suite (push) Has been cancelled
Test Suites / S3 File Storage Test (push) Has been cancelled
Test Suites / Run Integration Tests (push) Has been cancelled
Test Suites / MCP Tests (push) Has been cancelled
Test Suites / Docker Compose Test (push) Has been cancelled
Test Suites / Docker CI test (push) Has been cancelled
Test Suites / Relational DB Migration Tests (push) Has been cancelled
Test Suites / Distributed Cognee Test (push) Has been cancelled
Test Suites / DB Examples Tests (push) Has been cancelled
Test Suites / Test Completion Status (push) Has been cancelled
Test Suites / Claude Code Review (push) Has been cancelled
Test Suites / basic checks (push) Has been cancelled
build | Build and Push Cognee MCP Docker Image to dockerhub / docker-build-and-push (push) Has been cancelled
Scorecard supply-chain security / Scorecard analysis (push) Has been cancelled
build | Build and Push Docker Image to dockerhub / docker-build-and-push (push) Has been cancelled
Weighted Edges Tests / Test Weighted Edges Core Functionality (3.11) (push) Has been cancelled
Weighted Edges Tests / Test Weighted Edges Core Functionality (3.12) (push) Has been cancelled
Weighted Edges Tests / Test Weighted Edges with Different Graph Databases (kuzu, kuzu) (push) Has been cancelled
Weighted Edges Tests / Test Weighted Edges with Different Graph Databases (neo4j, neo4j) (push) Has been cancelled
Weighted Edges Tests / Test Weighted Edges Examples (push) Has been cancelled
Weighted Edges Tests / Code Quality for Weighted Edges (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:02:24 +08:00

92 lines
3.5 KiB
Python

import asyncio
import os
import pathlib
# ChromaDB is available as a vector adapter, but it does not have a dataset
# database handler for backend access control yet.
# Set os.environ before importing Cognee: Cognee reads env-backed settings at import time, so values
# assigned later may not override defaults or `.env`. See https://docs.cognee.ai/setup-configuration/overview#using-os-environ
os.environ["ENABLE_BACKEND_ACCESS_CONTROL"] = "False"
import cognee
from cognee import SearchType
async def main():
"""
Example script demonstrating how to use Cognee with ChromaDB
This example:
1. Configures Cognee to use ChromaDB as vector database
2. Sets up data directories
3. Stores sample data with remember to Cognee
4. Performs different types of searches
"""
# Configure ChromaDB as the vector database provider
cognee.config.set_vector_db_config(
{
"vector_db_url": "http://localhost:8000", # Default ChromaDB server URL
"vector_db_key": "", # ChromaDB doesn't require an API key by default
"vector_db_provider": "chromadb", # Specify ChromaDB as provider
"vector_dataset_database_handler": "chromadb",
}
)
# Set up data directories for storing documents and system files
# You should adjust these paths to your needs
current_dir = pathlib.Path(__file__).parent
data_directory_path = str(current_dir / "data_storage")
cognee.config.data_root_directory(data_directory_path)
cognee_directory_path = str(current_dir / "cognee_system")
cognee.config.system_root_directory(cognee_directory_path)
# Clean any existing data (optional)
# await cognee.forget(everything=True)
# Create a dataset
dataset_name = "chromadb_example"
# Add sample text to the dataset
sample_text = """ChromaDB is an open-source embedding database.
It allows users to store and query embeddings and their associated metadata.
ChromaDB can be deployed in various ways: in-memory, on disk via sqlite, or as a persistent service.
It is designed to be fast, scalable, and easy to use, making it a popular choice for AI applications.
The database is built to handle vector search efficiently, which is essential for semantic search applications.
ChromaDB supports multiple distance metrics for vector similarity search and can be integrated with various ML frameworks."""
# Add the sample text to the dataset
await cognee.remember([sample_text], dataset_name=dataset_name, self_improvement=False)
# Now let's perform some searches
# 1. Search for insights related to "ChromaDB"
insights_results = await cognee.recall(
query_type=SearchType.GRAPH_COMPLETION, query_text="ChromaDB"
)
print("\nInsights about ChromaDB:")
for result in insights_results:
print(f"- {result}")
# 2. Search for text chunks related to "vector search"
chunks_results = await cognee.recall(
query_type=SearchType.CHUNKS, query_text="vector search", datasets=[dataset_name]
)
print("\nChunks about vector search:")
for result in chunks_results:
print(f"- {result}")
# 3. Get graph completion related to databases
graph_completion_results = await cognee.recall(
query_type=SearchType.GRAPH_COMPLETION, query_text="database"
)
print("\nGraph completion for databases:")
for result in graph_completion_results:
print(f"- {result}")
# Clean up (optional)
# await cognee.forget(everything=True)
if __name__ == "__main__":
asyncio.run(main())