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Awesome GitHub RepositoriesWeb-based Feedback Integrations

Integrates external web content fetched from URLs in prompts, combined with multi-agent critique, to improve evolved solution accuracy.

Distinct from External Data Integrations: Distinct from generic external data integrations: specifically fetches webpage content for prompt evolution feedback, not general data enrichment.

Explore 2 awesome GitHub repositories matching data & databases · Web-based Feedback Integrations. Refine with filters or upvote what's useful.

Awesome Web-based Feedback Integrations GitHub Repositories

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  • algorithmicsuperintelligence/openevolvealgorithmicsuperintelligence 的头像

    algorithmicsuperintelligence/openevolve

    5,421在 GitHub 上查看↗

    OpenEvolve is an open-source framework for evolutionary computation that uses language models to drive automated optimization across multiple domains. It can evolve system prompts for large language models, refine source code across programming languages, search for optimal GPU kernel configurations, discover interpretable mathematical expressions from data, and maintain diverse populations of high-performing solutions. The framework integrates multiple evolutionary strategies, including MAP-Elites diversity mapping and island-based topologies, to avoid premature convergence and preserve a wid

    Evo fetches webpage content from URLs in prompts and applies multi-agent critique to generate more accurate evolved solutions.

    Pythonalpha-evolvealphacodealphaevolve
    在 GitHub 上查看↗5,421
  • zou-group/textgradzou-group 的头像

    zou-group/textgrad

    3,374在 GitHub 上查看↗

    TextGrad is a differentiable text optimization library and framework designed for simulated language model backpropagation. It functions as a textual gradient engine that treats language model feedback as gradients to iteratively refine prompts and unstructured text variables. The system utilizes a computation graph to trace errors from a defined loss function back to input text, allowing it to determine specific improvements. It differentiates itself by implementing natural-language backpropagation and gradient aggregation, which merges multiple pieces of textual critique into consolidated i

    Integrates multi-agent critique and feedback to iteratively improve the accuracy and quality of evolved solutions.

    Pythonai-optimizationcompound-systemslarge-language-models
    在 GitHub 上查看↗3,374
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