加入我們一同建構 LoongFlow – 認知演化式 AI 框架

加入我們一同建構 LoongFlow – 認知演化式 AI 框架

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本文介紹了百度開源的 LoongFlow,一個演化式代理開發框架,旨在提供從原子組件到核心場景代理的全面演化式代理建構與應用支援。

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LoongFlow:Evolve Agent Development Framework

From atomic components and development frameworks to core scenario Agents, comprehensive evolutionary Agent construction and application support is provided.

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General-Evolve • ML-Evolve • EvolveAgent • ReactAgent • AgentSDK

🚀 General-Evolve

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General Code Evolve Agent

Automatically, efficiently, and stably perform optimization tasks such as algorithms, mathematical puzzles, and prompts.

🔥 ML-Evolve

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Machine Learning Agent

Self-evolving ML Agent that autonomously understands data, builds models, and delivers an optimized solution.

⭐ LoongFlow

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Evolve Agent Framework

A modular, highly extensible Agent framework for flexible customization and seamless integration.

LoongFlow: Inspired by Wang Yangming's "Enlightenment at Longchang," this concept signifies the deep integration of the model's "knowing" and the tools' "doing" — knowledge propels action, and action yields insight, ushering in the era of Agent cognitive autonomy. It transcends the role of a mere mechanical executor; through iterative refinement in the PES (Plan-Execute-Summarize) cycle, it shatters cognitive boundaries, achieving an evolutionary leap from a "passive tool" to an "autonomous intelligence."

📰 News

✨ Why LoongFlow?

A high-performance, stable, and scalable framework for evolutionary Agent development, featuring an innovative PES evolutionary paradigm to empower developers in building high-quality evolutionary Agents efficiently.

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High Efficiency: The innovative PES evolutionary paradigm, combined with multi-structural fused evolutionary memory, shifts from "random mutation" to "directed cognitive evolution." It significantly mitigates issues in traditional evolutionary methods, such as low generation quality, excessive ineffective evaluations, repetitive trial-and-error, and high randomness, thereby substantially enhancing evolutionary efficiency and convergence certainty. Compared to conventional methods, overall evolutionary efficiency is improved by approximately 60%.

Stability: Upholding the principle of "engineering certainty," the system systematically encapsulates the inherent uncertainties of models through its architectural design, thereby reducing the burden of model reasoning and establishing a highly stable, reproducible intelligent evolution system. In practical evaluations, LoongFlow has demonstrated significant performance advantages.

Ease of Use: LoongFlow provides comprehensive support, ranging from task-specific evolutionary Agents and a highly scalable evolutionary Agent development framework to modular atomic components. From applications to frameworks, it empowers developers to rapidly deploy evolutionary Agents for solving domain-specific problems, significantly reducing development and fine-tuning costs.

💬 Contact

Welcome to join our community on

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🚀 Quick Start

Installation

LoongFlow requires Python 3.12 or higher.

Run Examples

🌟 LoongFlow Evolve Results

Validated on open mathematical problems proposed by Terence Tao and the AlphaEvolve team, the system outperformed all previously known best results on 11 of the problems.

Validated on 20 Kaggle machine learning competitions from the OpenAI MLE-Bench benchmark, the system achieved gold medals in 14 contests. Complete results will be announced after all competitions are concluded.

Additionally, validation was conducted on problems such as mathematical puzzles and MOE load balancing algorithms,Detailed examples can be found in Examples.

🧩 Advanced Usage

For more details, please refer to EvolveAgent

For more details, please refer to ReActAgent

🤝 Contribution

Please read CONTRIBUTING.md for details on our code of conduct, and the process for submitting pull requests to us.

📜 License

LoongFlow is licensed under the Apache License 2.0.

📚 Citation

If you find this work useful, please consider citing:

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