Skip to content

rag-architect

Designs and implements production-grade RAG systems by chunking documents, generating embeddings, configuring vector stores, building hybrid search pipelines, applying reranking, and evaluating retrieval quality. Use when building RAG systems, vector databases, or knowledge-grounded AI applications requiring semantic search, document retrieval, context augmentation, similarity search, or embedding-based indexing.

Repository Source folder

Details

Path
skills/ai-ml/rag-architect-jeffallan-claude-skills-3/SKILL.md
License
MIT
Dependencies
1

FAQ