FlexRAG and RAGHub

FlexRAG is a specific implementation framework for building RAG systems, while RAGHub is a meta-repository for discovering and sharing RAG tools and projects across the ecosystem, making them ecosystem siblings that serve different roles in the RAG landscape.

FlexRAG
59
Established
RAGHub
56
Established
Maintenance 10/25
Adoption 10/25
Maturity 25/25
Community 14/25
Maintenance 10/25
Adoption 10/25
Maturity 16/25
Community 20/25
Stars: 235
Forks: 22
Downloads:
Commits (30d): 0
Language: Python
License: MIT
Stars: 1,590
Forks: 150
Downloads:
Commits (30d): 0
Language:
License: MIT
No risk flags
No Package No Dependents

About FlexRAG

ictnlp/FlexRAG

FlexRAG: A RAG Framework for Information Retrieval and Generation.

This is a tool for AI researchers and developers who are building Retrieval-Augmented Generation (RAG) systems. It helps quickly reproduce, develop, and evaluate RAG systems, taking various data types like text, images, and web content as input and producing enhanced generative AI models. It's designed for those who need to experiment with different RAG approaches and share their findings efficiently.

AI research NLP engineering generative AI development information retrieval systems machine learning experimentation

About RAGHub

Andrew-Jang/RAGHub

A community-driven collection of RAG (Retrieval-Augmented Generation) frameworks, projects, and resources. Contribute and explore the evolving RAG ecosystem.

This is a living directory of tools, frameworks, and resources for Retrieval-Augmented Generation (RAG). It helps you navigate the rapidly changing landscape of RAG by providing a curated list of new and emerging solutions. You'll find frameworks for building RAG applications, evaluation tools, and data preparation frameworks. Developers and AI engineers who are building or evaluating RAG systems would use this to stay informed and choose appropriate tools.

LLM development AI engineering RAG systems Generative AI AI tools directory

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