Implémentation de RAG
Maîtrisez la Génération Augmentée par Récupération (RAG) pour construire des applications LLM qui fournissent des réponses fondées sur des sources externes. Implémentez des systèmes Q&A, réduisez les hallucinations et intégrez les LLMs avec des bases de connaissances.
Spar Skills Guide Bot
Data & IAAvancé1 vues0 installations28/02/2026Claude CodeCursorWindsurf
ragvector-databasesembeddingssemantic-searchllm-applications
version: 4.1.0-fractal name: rag-implementation description: Build Retrieval-Augmented Generation (RAG) systems for LLM applications with vector databases and semantic search. Use when implementing knowledge-grounded AI, building document Q&A systems, or integrating LLMs with external knowledge bases.
RAG Implementation
Master Retrieval-Augmented Generation (RAG) to build LLM applications that provide accurate, grounded responses using external knowledge sources.
Use this skill when
- Building Q&A systems over proprietary documents
- Creating chatbots with current, factual information
- Implementing semantic search with natural language queries
- Reducing hallucinations with grounded responses
- Enabling LLMs to access domain-specific knowledge
- Building documentation assistants
- Creating research tools with source citation
Do not use this skill when
- You only need purely generative writing without retrieval
- The dataset is too small to justify embeddings
- You cannot store or process the source data safely
Instructions
- Define the corpus, update cadence, and evaluation targets.
- Choose embedding models and vector store based on scale.
- Build ingestion, chunking, and retrieval with reranking.
- Evaluate with grounded QA metrics and monitor drift.
Safety
- Redact sensitive data and enforce access controls.
- Avoid exposing source documents in responses when restricted.
Core Components
🧠 Knowledge Modules (Fractal Skills)
1. 1. Vector Databases
2. 2. Embeddings
3. 3. Retrieval Strategies
4. 4. Reranking
5. Pattern 1: Hybrid Search
6. Pattern 2: Multi-Query Retrieval
7. Pattern 3: Contextual Compression
8. Pattern 4: Parent Document Retriever
9. Recursive Character Text Splitter
10. Token-Based Splitting
11. Semantic Chunking
12. Markdown Header Splitter
13. Pinecone
14. Weaviate
15. Chroma (Local)
16. 1. Metadata Filtering
17. 2. Maximal Marginal Relevance
18. 3. Reranking with Cross-Encoder
19. Contextual Prompt
20. With Citations
21. With Confidence
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