RAG-Boilerplate
RAG boilerplate with semantic/propositional chunking, hybrid search (BM25 + dense), LLM reranking, query enhancement agents, CrewAI orchestration, Qdrant vector search, Redis/Mongo sessioning, Celery ingestion pipeline, Gradio UI, and an evaluation suite (Hit-Rate, MRR, hybrid configs).
Details
- Author
- mburaksayici
- Category
- Data & Research
- Platform
- GitHub
- Framework
- crewai
- Language
- python
- Stars
- 69
- First indexed
- 2026-05-15
- Last active
- 2025-11-18
- Directory sync
- 2026-05-15
Overview
RAG boilerplate with semantic/propositional chunking, hybrid search (BM25 + dense), LLM reranking, query enhancement agents, CrewAI orchestration, Qdrant vector search, Redis/Mongo sessioning, Celery ingestion pipeline, Gradio UI, and an evaluation suite (Hit-Rate, MRR, hybrid configs).
Quick start
git
git clone https://github.com/mburaksayici/RAG-BoilerplateSnippet generated from the published metadata; check the source page for full setup, configuration, and prerequisites.
What RAG-Boilerplate can do
Frequently asked questions
What is RAG-Boilerplate?
How do I install RAG-Boilerplate?
Is RAG-Boilerplate open source?
What are alternatives to RAG-Boilerplate?
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Source & freshness
Profile data for RAG-Boilerplate is sourced from GitHub, published by mburaksayici.
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