RAG Pipeline Builder

advanceddataMin 32K context

Designs and implements retrieval-augmented generation (RAG) pipelines end to end. Covers document chunking strategies, embedding model selection, vector store configuration, hybrid and re-ranking retrieval, prompt construction with grounded citations, and evaluation harnesses for measuring retrieval quality and answer faithfulness.

Use Cases

  • Building production RAG over internal documentation
  • Choosing chunking and embedding strategies for a corpus
  • Adding hybrid search and re-ranking to improve recall
  • Designing citation-grounded answer prompts
  • Creating retrieval and faithfulness evaluation suites

Example Prompt

Design a RAG pipeline for a customer support knowledge base of ~50,000 markdown articles.

Requirements:
- Sub-second retrieval latency
- Answers must cite source articles
- Multilingual content (English, Spanish, German)

Provide:
1. Chunking strategy with rationale
2. Embedding model recommendation and vector store choice
3. Hybrid retrieval + re-ranking design
4. Prompt template enforcing grounded citations
5. Evaluation plan (retrieval recall, answer faithfulness)
6. Example implementation code

Recommended Models

Compatible Tools

claude-codecursorkiroany

Modalities

Input: text, code
Output: text, code

Related Skills

Author

OpenModels Community

@openmodelsrun
RAG Pipeline Builder — AI Agent Skill | OpenModels