rag-implementation by sickn33/antigravity-awesome-skills
npx skills add https://github.com/sickn33/antigravity-awesome-skills --skill rag-implementation专门用于实施 RAG(检索增强生成)系统的工作流,包括嵌入模型选择、向量数据库设置、分块策略、检索优化和评估。
在以下情况下使用此工作流:
ai-product - AI 产品设计rag-engineer - RAG 工程Use @ai-product to define RAG application requirements
embedding-strategies - 嵌入选择广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
rag-engineerUse @embedding-strategies to select optimal embedding model
vector-database-engineer - 向量数据库similarity-search-patterns - 相似性搜索Use @vector-database-engineer to set up vector database
rag-engineer - 分块策略rag-implementation - RAG 实施Use @rag-engineer to implement chunking strategy
similarity-search-patterns - 相似性搜索hybrid-search-implementation - 混合搜索Use @similarity-search-patterns to implement retrieval
Use @hybrid-search-implementation to add hybrid search
llm-application-dev-ai-assistant - LLM 集成llm-application-dev-prompt-optimize - 提示优化Use @llm-application-dev-ai-assistant to integrate LLM
prompt-caching - 提示缓存rag-engineer - RAG 优化Use @prompt-caching to implement RAG caching
llm-evaluation - LLM 评估evaluation - AI 评估Use @llm-evaluation to evaluate RAG system
User Query -> Embedding -> Vector Search -> Retrieved Docs -> LLM -> Response
| | | |
Model Vector DB Chunk Store Prompt + Context
ai-ml - AI/ML 开发ai-agent-development - AI 智能体database - 向量数据库每周安装数
313
代码仓库
GitHub 星标数
27.4K
首次出现
Jan 19, 2026
安全审计
安装于
opencode257
claude-code255
gemini-cli248
antigravity226
cursor213
codex209
Specialized workflow for implementing RAG (Retrieval-Augmented Generation) systems including embedding model selection, vector database setup, chunking strategies, retrieval optimization, and evaluation.
Use this workflow when:
ai-product - AI product designrag-engineer - RAG engineeringUse @ai-product to define RAG application requirements
embedding-strategies - Embedding selectionrag-engineer - RAG patternsUse @embedding-strategies to select optimal embedding model
vector-database-engineer - Vector DBsimilarity-search-patterns - Similarity searchUse @vector-database-engineer to set up vector database
rag-engineer - Chunking strategiesrag-implementation - RAG implementationUse @rag-engineer to implement chunking strategy
similarity-search-patterns - Similarity searchhybrid-search-implementation - Hybrid searchUse @similarity-search-patterns to implement retrieval
Use @hybrid-search-implementation to add hybrid search
llm-application-dev-ai-assistant - LLM integrationllm-application-dev-prompt-optimize - Prompt optimizationUse @llm-application-dev-ai-assistant to integrate LLM
prompt-caching - Prompt cachingrag-engineer - RAG optimizationUse @prompt-caching to implement RAG caching
llm-evaluation - LLM evaluationevaluation - AI evaluationUse @llm-evaluation to evaluate RAG system
User Query -> Embedding -> Vector Search -> Retrieved Docs -> LLM -> Response
| | | |
Model Vector DB Chunk Store Prompt + Context
ai-ml - AI/ML developmentai-agent-development - AI agentsdatabase - Vector databasesWeekly Installs
313
Repository
GitHub Stars
27.4K
First Seen
Jan 19, 2026
Security Audits
Gen Agent Trust HubPassSocketPassSnykPass
Installed on
opencode257
claude-code255
gemini-cli248
antigravity226
cursor213
codex209
React 组合模式指南:Vercel 组件架构最佳实践,提升代码可维护性
105,000 周安装