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rag-implementation

by @sickn33v1.0.0
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"RAG (Retrieval-Augmented Generation) implementation workflow covering embedding selection, vector database setup, chunking strategies, and retrieval optimization."

RAG ImplementationVector SearchKnowledge BasesLLM WorkflowData IndexingGitHub
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npx skills add sickn33/antigravity-awesome-skills --skill rag-implementation
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name: rag-implementation description: "RAG (Retrieval-Augmented Generation) implementation workflow covering embedding selection, vector database setup, chunking strategies, and retrieval optimization." category: granular-workflow-bundle risk: safe source: personal date_added: "2026-02-27"

RAG Implementation Workflow

Overview

Specialized workflow for implementing RAG (Retrieval-Augmented Generation) systems including embedding model selection, vector database setup, chunking strategies, retrieval optimization, and evaluation.

When to Use This Workflow

Use this workflow when:

  • Building RAG-powered applications
  • Implementing semantic search
  • Creating knowledge-grounded AI
  • Setting up document Q&A systems
  • Optimizing retrieval quality

Workflow Phases

Phase 1: Requirements Analysis

Skills to Invoke

  • ai-product - AI product design
  • rag-engineer - RAG engineering

Actions

  1. Define use case
  2. Identify data sources
  3. Set accuracy requirements
  4. Determine latency targets
  5. Plan evaluation metrics

Copy-Paste Prompts

Use @ai-product to define RAG application requirements

Phase 2: Embedding Selection

Skills to Invoke

  • embedding-strategies - Embedding selection
  • rag-engineer - RAG patterns

Actions

  1. Evaluate embedding models
  2. Test domain relevance
  3. Measure embedding quality
  4. Consider cost/latency
  5. Select model

Copy-Paste Prompts

Use @embedding-strategies to select optimal embedding model

Phase 3: Vector Database Setup

Skills to Invoke

  • vector-database-engineer - Vector DB
  • similarity-search-patterns - Similarity search

Actions

  1. Choose vector database
  2. Design schema
  3. Configure indexes
  4. Set up connection
  5. Test queries

Copy-Paste Prompts

Use @vector-database-engineer to set up vector database

Phase 4: Chunking Strategy

Skills to Invoke

  • rag-engineer - Chunking strategies
  • rag-implementation - RAG implementation

Actions

  1. Choose chunk size
  2. Implement chunking
  3. Add overlap handling
  4. Create metadata
  5. Test retrieval quality

Copy-Paste Prompts

Use @rag-engineer to implement chunking strategy

Phase 5: Retrieval Implementation

Skills to Invoke

  • similarity-search-patterns - Similarity search
  • hybrid-search-implementation - Hybrid search

Actions

  1. Implement vector search
  2. Add keyword search
  3. Configure hybrid search
  4. Set up reranking
  5. Optimize latency

Copy-Paste Prompts

Use @similarity-search-patterns to implement retrieval
Use @hybrid-search-implementation to add hybrid search

Phase 6: LLM Integration

Skills to Invoke

  • llm-application-dev-ai-assistant - LLM integration
  • llm-application-dev-prompt-optimize - Prompt optimization

Actions

  1. Select LLM provider
  2. Design prompt template
  3. Implement context injection
  4. Add citation handling
  5. Test generation quality

Copy-Paste Prompts

Use @llm-application-dev-ai-assistant to integrate LLM

Phase 7: Caching

Skills to Invoke

  • prompt-caching - Prompt caching
  • rag-engineer - RAG optimization

Actions

  1. Implement response caching
  2. Set up embedding cache
  3. Configure TTL
  4. Add cache invalidation
  5. Monitor hit rates

Copy-Paste Prompts

Use @prompt-caching to implement RAG caching

Phase 8: Evaluation

Skills to Invoke

  • llm-evaluation - LLM evaluation
  • evaluation - AI evaluation

Actions

  1. Define evaluation metrics
  2. Create test dataset
  3. Measure retrieval accuracy
  4. Evaluate generation quality
  5. Iterate on improvements

Copy-Paste Prompts

Use @llm-evaluation to evaluate RAG system

RAG Architecture

User Query -> Embedding -> Vector Search -> Retrieved Docs -> LLM -> Response
                |              |              |              |
            Model         Vector DB     Chunk Store    Prompt + Context

Quality Gates

  • [ ] Embedding model selected
  • [ ] Vector DB configured
  • [ ] Chunking implemented
  • [ ] Retrieval working
  • [ ] LLM integrated
  • [ ] Evaluation passing

Related Workflow Bundles

  • ai-ml - AI/ML development
  • ai-agent-development - AI agents
  • database - Vector databases

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安装量4.2K
评分0.0 / 5.0
版本1.0.0
更新日期2026年3月16日
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创建2026年3月16日
最后更新2026年3月16日