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antigravity-skills-reference/skills/rag-implementation/SKILL.md
Nikolas Hor 6dd1307be6 feat: add Game Development Expansion Bundle (Bevy ECS, GLSL, Godot 4 Migration) (#121)
* add libreoffice skill and +29 workflow bundles.

* Add documentation for workflow bundles

Added comprehensive documentation for workflow bundles, detailing granular and consolidated bundles across various development scenarios including frontend, backend, WordPress, system administration, security testing, AI/ML, cloud/DevOps, database, testing/QA, and LibreOffice skills.

* add readme for workflow bundles. correct descriptions of libreoffice skills and match them with folder names.

* add readme for workflow bundles. correct descriptions of libreoffice skills and match them with folder names.

* Simplify LibreOffice skill names in README

* Refactor LibreOffice Base skill to LibreOffice Writer

Updated the skill from LibreOffice Base to LibreOffice Writer, modifying the name, description, and core capabilities. Adjusted workflows and examples to reflect document creation and automation.

* Rename skill from Writer to Base and update capabilities

Updated the LibreOffice skill from Writer to Base, reflecting changes in functionality related to database management and operations.

* Revise LibreOffice Calc skill details and capabilities

Updated the LibreOffice Calc skill description and removed outdated sections. Streamlined capabilities and workflows while maintaining essential information.

* Refine LibreOffice Draw skill details and capabilities

Updated the LibreOffice Draw skill description and capabilities. Removed flowchart automation example and adjusted related skills.

* Refine SKILL.md for LibreOffice Impress

Updated the SKILL.md file for LibreOffice Impress to refine the name and description, streamline core capabilities, and adjust related skills.

* Refine LibreOffice Writer skill details and capabilities

Updated the LibreOffice Writer skill description and capabilities. Simplified the name and improved clarity in the core capabilities section.

* chore: sync generated registry files [ci skip]

* feat: add Game Development Expansion Bundle (Bevy ECS, GLSL, Godot 4 Migration)

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Co-authored-by: Munir Abbasi <munir@ayubmed.edu.pk>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2026-02-23 07:29:08 +01:00

4.2 KiB

name, description, source, risk, domain, category, version
name description source risk domain category version
rag-implementation RAG (Retrieval-Augmented Generation) implementation workflow covering embedding selection, vector database setup, chunking strategies, and retrieval optimization. personal safe ai-ml granular-workflow-bundle 1.0.0

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