Skip to main content

Falkor hybrid database adapter for cognee

Project description

Cognee Community FalkorDB Hybrid Adapter

This is a community-maintained adapter that enables Cognee to work with FalkorDB as a hybrid graph database.

Installation

pip install cognee-community-hybrid-adapter-falkor

Usage

import asyncio
import os
import pathlib
from os import path
from cognee import config, prune, add, cognify, search, SearchType

# Import the register module to enable FalkorDB support
import cognee_community_hybrid_adapter_falkor.register

async def main():
    # Set up local directories
    system_path = pathlib.Path(__file__).parent
    config.system_root_directory(path.join(system_path, ".cognee_system"))
    config.data_root_directory(path.join(system_path, ".cognee_data"))
    
    # Configure databases
    config.set_relational_db_config({
        "db_provider": "sqlite",
    })
    
    # Configure FalkorDB as both vector and graph database
    config.set_vector_db_config({
        "vector_db_provider": "falkordb",
        "vector_db_url": os.getenv("GRAPH_DB_URL", "localhost"),
        "vector_db_port": int(os.getenv("GRAPH_DB_PORT", "6379")),
    })
    config.set_graph_db_config({
        "graph_database_provider": "falkordb",
        "graph_database_url": os.getenv("GRAPH_DB_URL", "localhost"),
        "graph_database_port": int(os.getenv("GRAPH_DB_PORT", "6379")),
    })
    
    # Optional: Clean previous data
    await prune.prune_data()
    await prune.prune_system()
    
    # Add and process your content
    await add("""
    Natural language processing (NLP) is an interdisciplinary
    subfield of computer science and information retrieval.
    """)
    
    await add("""
    Sandwiches are best served toasted with cheese, ham, mayo,
    lettuce, mustard, and salt & pepper.          
    """)
    
    await cognify()
    
    # Search using graph completion
    query_text = "Tell me about NLP"
    search_results = await search(
        query_type=SearchType.GRAPH_COMPLETION,
        query_text=query_text
    )
    
    for result in search_results:
        print("\nSearch result: \n" + result)

if __name__ == "__main__":
    asyncio.run(main())

Configuration

The FalkorDB adapter can be configured as both a vector database and graph database, providing true hybrid capabilities. The following configuration parameters are available:

Graph Database Configuration:

  • graph_database_provider: Set to "falkordb"
  • graph_database_url: Your FalkorDB server hostname (default: "localhost")
  • graph_database_port: Your FalkorDB server port (default: 6379)

Vector Database Configuration (optional - enables hybrid mode):

  • vector_db_provider: Set to "falkordb"
  • vector_db_url: Your FalkorDB server hostname (default: "localhost")
  • vector_db_port: Your FalkorDB server port (default: 6379)

Environment Variables

Set the following environment variables or pass them directly in the config:

export GRAPH_DB_URL="localhost"
export GRAPH_DB_PORT="6379"

Alternative: You can also use the .env.template file from the main cognee repository. Copy it to your project directory, rename it to .env, and fill in your FalkorDB configuration values.

Requirements

  • Python >= 3.11, <= 3.13
  • falkordb >= 1.0.9, < 2.0.0
  • cognee >= 0.2.0.dev0

Features

  • True Hybrid Database: Use FalkorDB as both vector and graph database in a single instance
  • Full graph database capabilities with Cypher query support
  • Vector similarity search and indexing
  • Redis-based protocol support for high performance
  • Hybrid storage and retrieval operations
  • Async/await support
  • Graph queries and traversals
  • Knowledge graph construction and semantic analysis
  • Unified data management across vector and graph domains

About FalkorDB

FalkorDB is a graph database that combines the power of Redis with graph capabilities. It provides:

  • High-performance graph operations
  • Redis-compatible protocol
  • Cypher query language support
  • Real-time graph analytics
  • Scalable graph storage

This adapter allows Cognee to leverage FalkorDB's hybrid capabilities for advanced knowledge graph operations and semantic search.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

File details

Details for the file cognee_community_hybrid_adapter_falkor-0.0.1.tar.gz.

File metadata

File hashes

Hashes for cognee_community_hybrid_adapter_falkor-0.0.1.tar.gz
Algorithm Hash digest
SHA256 3f6381f2d531df47a32d3e9f49a46bed6f212c4a7d7027142adaeebddc74a9e5
MD5 508e81c4c7c631a5139eea0fa3e7bfa5
BLAKE2b-256 f00a9485f54d4677e3995305e9f2d42716a80ab4e40ca6e5725b2aaed5fe026e

See more details on using hashes here.

File details

Details for the file cognee_community_hybrid_adapter_falkor-0.0.1-py3-none-any.whl.

File metadata

File hashes

Hashes for cognee_community_hybrid_adapter_falkor-0.0.1-py3-none-any.whl
Algorithm Hash digest
SHA256 cd3fb6262b1aee580ed522fe2b42e352d1dea646f53ed4afb866682d375ccc5a
MD5 ed8cc1aab44bb1f4468b1b9c7bb3fa6a
BLAKE2b-256 59946dbc6ed5100979b1dddf8bb439ae0acb92698cae5b49d55db2e99ef20960

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page