--- name: embedding-strategies description: Select and optimize embedding models for semantic search and RAG applications. Use when choosing embedding models, implementing chunking strategies, or optimizing embedding quality for specific domains. --- # Embedding Strategies Guide to selecting and optimizing embedding models for vector search applications. ## When to Use This Skill - Choosing embedding models for RAG - Optimizing chunking strategies - Fine-tuning embeddings for domains - Comparing embedding model performance - Reducing embedding dimensions - Handling multilingual content ## Core Concepts ### 1. Embedding Model Comparison (2026) | Model | Dimensions | Max Tokens | Best For | | -------------------------- | ---------- | ---------- | ----------------------------------- | | **voyage-3-large** | 1024 | 32000 | Claude apps (Anthropic recommended) | | **voyage-3** | 1024 | 32000 | Claude apps, cost-effective | | **voyage-code-3** | 1024 | 32000 | Code search | | **voyage-finance-2** | 1024 | 32000 | Financial documents | | **voyage-law-2** | 1024 | 32000 | Legal documents | | **text-embedding-3-large** | 3072 | 8191 | OpenAI apps, high accuracy | | **text-embedding-3-small** | 1536 | 8191 | OpenAI apps, cost-effective | | **bge-large-en-v1.5** | 1024 | 512 | Open source, local deployment | | **all-MiniLM-L6-v2** | 384 | 256 | Fast, lightweight | | **multilingual-e5-large** | 1024 | 512 | Multi-language | ### 2. Embedding Pipeline ``` Document → Chunking → Preprocessing → Embedding Model → Vector ↓ [Overlap, Size] [Clean, Normalize] [API/Local] ``` ## Templates and detailed worked examples Full template library and detailed worked examples live in `references/details.md`. Read that file when you need the concrete templates. ## Best Practices ### Do's - **Match model to use case**: Code vs prose vs multilingual - **Chunk thoughtfully**: Preserve semantic boundaries - **Normalize embeddings**: For cosine similarity search - **Batch requests**: More efficient than one-by-one - **Cache embeddings**: Avoid recomputing for static content - **Use Voyage AI for Claude apps**: Recommended by Anthropic ### Don'ts - **Don't ignore token limits**: Truncation loses information - **Don't mix embedding models**: Incompatible vector spaces - **Don't skip preprocessing**: Garbage in, garbage out - **Don't over-chunk**: Lose important context - **Don't forget metadata**: Essential for filtering and debugging