[STUB - Not implemented] Advanced RAG query patterns with mandatory citation attribution. PROACTIVELY activate for: [TODO: Define on implementation]. Triggers: [TODO: Define on implementation]
[STUB - Not implemented] Manage RAG corpus creation, updates, and deletion for Vertex AI RAG Engine. PROACTIVELY activate for: [TODO: Define on implementation]. Triggers: [TODO: Define on implementation]
[STUB - Not implemented] Asymmetric embedding strategy with RETRIEVAL_DOCUMENT for ingestion and RETRIEVAL_QUERY for queries. PROACTIVELY activate for: [TODO: Define on implementation]. Triggers: [TODO: Define on implementation]
[STUB - Not implemented] Intelligent document chunking and ingestion with multiple strategies for Vertex AI RAG Engine. PROACTIVELY activate for: [TODO: Define on implementation]. Triggers: [TODO: Define on implementation]
[STUB - Not implemented] RAG performance optimization with re-ranking, query expansion, and semantic caching. PROACTIVELY activate for: [TODO: Define on implementation]. Triggers: [TODO: Define on implementation]
Own this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimOwn this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimBased on adoption, maintenance, documentation, and repository signals. Not a security audit or endorsement.
npx claudepluginhub agentient/vibekit --plugin rag-toolsBuild Retrieval-Augmented Generation pipelines
OpenRAG agent skills: guided installation and SDK integration helpers.
Google File Search API powered RAG pipeline - managed retrieval-augmented generation with document processing
Pinecone vector database integration. Streamline your Pinecone development with powerful tools for managing vector indexes, querying data, and rapid prototyping. Use slash commands like /quickstart to generate AGENTS.md files and initialize Python projects and /query to quickly explore indexes. Access the Pinecone MCP server for creating, describing, upserting and querying indexes with Claude. Perfect for developers building semantic search, RAG applications, recommendation systems, and other vector-based applications with Pinecone.
Google Gemini embeddings API (gemini-embedding-001) for RAG and semantic search. Use for vector search, Vectorize integration, or encountering dimension mismatches, rate limits, text truncation.
Local RAG system with embedded Multi-Agent Framework for Claude Code plugin
Model Context Protocol (MCP) server development patterns
Frontend and backend performance optimization patterns
Multi-expert evaluation patterns for structured analysis, deliberation, and decision-making
Testing, code review, linting, and coverage analysis patterns
Research workflow tools: systematic interviewing, research brief design, and multi-source consolidation