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cognee AI记忆构建

Cognee 是一个轻量级 AI 记忆系统,通过 5 行代码即可为 AI 代理构建动态记忆。其核心功能包括:利用 ECL(提取、认知、加载)管道整合多源数据(文本、文档、音频等),生成知识图谱以减少幻觉;支持通过 Pydantic 快速连接 30+ 数据源,并兼容主流 LLM。适用于降低开发成本、增强 AI 上下文理解,提供 Colab 快速入门和可视化 UI,支持多语言社区协作。

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README

Cognee Logo

Cognee - Accurate and Persistent AI Memory

Demo . Docs . Learn More · Join Discord · Join r/AIMemory . Community Plugins & Add-ons

GitHub forks GitHub stars GitHub commits GitHub tag Downloads License Contributors Sponsor

cognee - Memory for AI Agents  in 5 lines of code | Product Hunt topoteretes%2Fcognee | Trendshift

Use your data to build personalized and dynamic memory for AI Agents. Cognee lets you replace RAG with scalable and modular ECL (Extract, Cognify, Load) pipelines.

🌐 Available Languages : Deutsch | Español | Français | 日本語 | 한국어 | Português | Русский | 中文

Why cognee?

About Cognee

Cognee is an open-source tool and platform that transforms your raw data into persistent and dynamic AI memory for Agents. It combines vector search with graph databases to make your documents both searchable by meaning and connected by relationships. Cognee offers default memory creation and search which we describe bellow. But with Cognee you can build your own!

:star: Help us reach more developers and grow the cognee community. Star this repo!

Cognee Open Source:

  • Interconnects any type of data — including past conversations, files, images, and audio transcriptions
  • Replaces traditional RAG systems with a unified memory layer built on graphs and vectors
  • Reduces developer effort and infrastructure cost while improving quality and precision
  • Provides Pythonic data pipelines for ingestion from 30+ data sources
  • Offers high customizability through user-defined tasks, modular pipelines, and built-in search endpoints

Basic Usage & Feature Guide

To learn more, check out this short, end-to-end Colab walkthrough of Cognee's core features.

Open In Colab

Quickstart

Let’s try Cognee in just a few lines of code. For detailed setup and configuration, see the Cognee Docs.

Prerequisites

  • Python 3.10 to 3.13

Step 1: Install Cognee

You can install Cognee with pip, poetry, uv, or your preferred Python package manager.

uv pip install cognee

Step 2: Configure the LLM

import os
os.environ["LLM_API_KEY"] = "YOUR OPENAI_API_KEY"

Alternatively, create a .env file using our template.

To integrate other LLM providers, see our LLM Provider Documentation.

Step 3: Run the Pipeline

Cognee will take your documents, generate a knowledge graph from them and then query the graph based on combined relationships.

Now, run a minimal pipeline:

import cognee
import asyncio
from pprint import pprint


async def main():
    # Add text to cognee
    await cognee.add("Cognee turns documents into AI memory.")

    # Generate the knowledge graph
    await cognee.cognify()

    # Add memory algorithms to the graph
    await cognee.memify()

    # Query the knowledge graph
    results = await cognee.search("What does Cognee do?")

    # Display the results
    for result in results:
        pprint(result)


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

As you can see, the output is generated from the document we previously stored in Cognee:

  Cognee turns documents into AI memory.

Use the Cognee CLI

As an alternative, you can get started with these essential commands:

cognee-cli add "Cognee turns documents into AI memory."

cognee-cli cognify

cognee-cli search "What does Cognee do?"
cognee-cli delete --all

To open the local UI, run:

cognee-cli -ui

Demos & Examples

See Cognee in action:

Persistent Agent Memory

Cognee Memory for LangGraph Agents

Simple GraphRAG

Watch Demo

Cognee with Ollama

Watch Demo

Community & Support

Contributing

We welcome contributions from the community! Your input helps make Cognee better for everyone. See CONTRIBUTING.md to get started.

Code of Conduct

We're committed to fostering an inclusive and respectful community. Read our Code of Conduct for guidelines.

Research & Citation

We recently published a research paper on optimizing knowledge graphs for LLM reasoning:

@misc{markovic2025optimizinginterfaceknowledgegraphs,
      title={Optimizing the Interface Between Knowledge Graphs and LLMs for Complex Reasoning},
      author={Vasilije Markovic and Lazar Obradovic and Laszlo Hajdu and Jovan Pavlovic},
      year={2025},
      eprint={2505.24478},
      archivePrefix={arXiv},
      primaryClass={cs.AI},
      url={https://arxiv.org/abs/2505.24478},
}
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