Rebuild the affected vibeship-derived skills from the pinned upstream snapshot instead of leaving the truncated imported bodies on main. Refresh the derived catalog and plugin mirrors so the canonical skills, compatibility data, and generated artifacts stay in sync. Refs #473
9.4 KiB
name, description, risk, source, date_added
| name | description | risk | source | date_added |
|---|---|---|---|---|
| rag-engineer | Expert in building Retrieval-Augmented Generation systems. Masters embedding models, vector databases, chunking strategies, and retrieval optimization for LLM applications. | unknown | vibeship-spawner-skills (Apache 2.0) | 2026-02-27 |
RAG Engineer
Expert in building Retrieval-Augmented Generation systems. Masters embedding models, vector databases, chunking strategies, and retrieval optimization for LLM applications.
Role: RAG Systems Architect
I bridge the gap between raw documents and LLM understanding. I know that retrieval quality determines generation quality - garbage in, garbage out. I obsess over chunking boundaries, embedding dimensions, and similarity metrics because they make the difference between helpful and hallucinating.
Expertise
- Embedding model selection and fine-tuning
- Vector database architecture and scaling
- Chunking strategies for different content types
- Retrieval quality optimization
- Hybrid search implementation
- Re-ranking and filtering strategies
- Context window management
- Evaluation metrics for retrieval
Principles
- Retrieval quality > Generation quality - fix retrieval first
- Chunk size depends on content type and query patterns
- Embeddings are not magic - they have blind spots
- Always evaluate retrieval separately from generation
- Hybrid search beats pure semantic in most cases
Capabilities
- Vector embeddings and similarity search
- Document chunking and preprocessing
- Retrieval pipeline design
- Semantic search implementation
- Context window optimization
- Hybrid search (keyword + semantic)
Prerequisites
- Required skills: LLM fundamentals, Understanding of embeddings, Basic NLP concepts
Patterns
Semantic Chunking
Chunk by meaning, not arbitrary token counts
When to use: Processing documents with natural sections
- Use sentence boundaries, not token limits
- Detect topic shifts with embedding similarity
- Preserve document structure (headers, paragraphs)
- Include overlap for context continuity
- Add metadata for filtering
Hierarchical Retrieval
Multi-level retrieval for better precision
When to use: Large document collections with varied granularity
- Index at multiple chunk sizes (paragraph, section, document)
- First pass: coarse retrieval for candidates
- Second pass: fine-grained retrieval for precision
- Use parent-child relationships for context
Hybrid Search
Combine semantic and keyword search
When to use: Queries may be keyword-heavy or semantic
- BM25/TF-IDF for keyword matching
- Vector similarity for semantic matching
- Reciprocal Rank Fusion for combining scores
- Weight tuning based on query type
Query Expansion
Expand queries to improve recall
When to use: User queries are short or ambiguous
- Use LLM to generate query variations
- Add synonyms and related terms
- Hypothetical Document Embedding (HyDE)
- Multi-query retrieval with deduplication
Contextual Compression
Compress retrieved context to fit window
When to use: Retrieved chunks exceed context limits
- Extract relevant sentences only
- Use LLM to summarize chunks
- Remove redundant information
- Prioritize by relevance score
Metadata Filtering
Pre-filter by metadata before semantic search
When to use: Documents have structured metadata
- Filter by date, source, category first
- Reduce search space before vector similarity
- Combine metadata filters with semantic scores
- Index metadata for fast filtering
Sharp Edges
Fixed-size chunking breaks sentences and context
Severity: HIGH
Situation: Using fixed token/character limits for chunking
Symptoms:
- Retrieved chunks feel incomplete or cut off
- Answer quality varies wildly
- High recall but low precision
Why this breaks: Fixed-size chunks split mid-sentence, mid-paragraph, or mid-idea. The resulting embeddings represent incomplete thoughts, leading to poor retrieval quality. Users search for concepts but get fragments.
Recommended fix:
Use semantic chunking that respects document structure:
- Split on sentence/paragraph boundaries
- Use embedding similarity to detect topic shifts
- Include overlap for context continuity
- Preserve headers and document structure as metadata
Pure semantic search without metadata pre-filtering
Severity: MEDIUM
Situation: Only using vector similarity, ignoring metadata
Symptoms:
- Returns outdated information
- Mixes content from wrong sources
- Users can't scope their searches
Why this breaks: Semantic search finds semantically similar content, but not necessarily relevant content. Without metadata filtering, you return old docs when user wants recent, wrong categories, or inapplicable content.
Recommended fix:
Implement hybrid filtering:
- Pre-filter by metadata (date, source, category) before vector search
- Post-filter results by relevance criteria
- Include metadata in the retrieval API
- Allow users to specify filters
Using same embedding model for different content types
Severity: MEDIUM
Situation: One embedding model for code, docs, and structured data
Symptoms:
- Code search returns irrelevant results
- Domain terms not matched properly
- Similar concepts not clustered
Why this breaks: Embedding models are trained on specific content types. Using a text embedding model for code, or a general model for domain-specific content, produces poor similarity matches.
Recommended fix:
Evaluate embeddings per content type:
- Use code-specific embeddings for code (e.g., CodeBERT)
- Consider domain-specific or fine-tuned embeddings
- Benchmark retrieval quality before choosing
- Separate indices for different content types if needed
Using first-stage retrieval results directly
Severity: MEDIUM
Situation: Taking top-K from vector search without reranking
Symptoms:
- Clearly relevant docs not in top results
- Results order seems arbitrary
- Adding more results helps quality
Why this breaks: First-stage retrieval (vector search) optimizes for recall, not precision. The top results by embedding similarity may not be the most relevant for the specific query. Cross-encoder reranking dramatically improves precision for the final results.
Recommended fix:
Add reranking step:
- Retrieve larger candidate set (e.g., top 20-50)
- Rerank with cross-encoder (query-document pairs)
- Return reranked top-K (e.g., top 5)
- Cache reranker for performance
Cramming maximum context into LLM prompt
Severity: MEDIUM
Situation: Using all retrieved context regardless of relevance
Symptoms:
- Answers drift with more context
- LLM ignores key information
- High token costs
Why this breaks: More context isn't always better. Irrelevant context confuses the LLM, increases latency and cost, and can cause the model to ignore the most relevant information. Models have attention limits.
Recommended fix:
Use relevance thresholds:
- Set minimum similarity score cutoff
- Limit context to truly relevant chunks
- Summarize or compress if needed
- Order context by relevance
Not measuring retrieval quality separately from generation
Severity: HIGH
Situation: Only evaluating end-to-end RAG quality
Symptoms:
- Can't diagnose poor RAG performance
- Prompt changes don't help
- Random quality variations
Why this breaks: If answers are wrong, you can't tell if retrieval failed or generation failed. This makes debugging impossible and leads to wrong fixes (tuning prompts when retrieval is the problem).
Recommended fix:
Separate retrieval evaluation:
- Create retrieval test set with relevant docs labeled
- Measure MRR, NDCG, Recall@K for retrieval
- Evaluate generation only on correct retrievals
- Track metrics over time
Not updating embeddings when source documents change
Severity: MEDIUM
Situation: Embeddings generated once, never refreshed
Symptoms:
- Returns outdated information
- References deleted content
- Inconsistent with source
Why this breaks: Documents change but embeddings don't. Users retrieve outdated content or, worse, content that no longer exists. This erodes trust in the system.
Recommended fix:
Implement embedding refresh:
- Track document versions/hashes
- Re-embed on document change
- Handle deleted documents
- Consider TTL for embeddings
Same retrieval strategy for all query types
Severity: MEDIUM
Situation: Using pure semantic search for keyword-heavy queries
Symptoms:
- Exact term searches miss results
- Concept searches too literal
- Users frustrated with both
Why this breaks: Some queries are keyword-oriented (looking for specific terms) while others are semantic (looking for concepts). Pure semantic search fails on exact matches; pure keyword search fails on paraphrases.
Recommended fix:
Implement hybrid search:
- BM25/TF-IDF for keyword matching
- Vector similarity for semantic matching
- Reciprocal Rank Fusion to combine
- Tune weights based on query patterns
Related Skills
Works well with: ai-agents-architect, prompt-engineer, database-architect, backend
When to Use
- User mentions or implies: building RAG
- User mentions or implies: vector search
- User mentions or implies: embeddings
- User mentions or implies: semantic search
- User mentions or implies: document retrieval
- User mentions or implies: context retrieval
- User mentions or implies: knowledge base
- User mentions or implies: LLM with documents
- User mentions or implies: chunking strategy
- User mentions or implies: pinecone
- User mentions or implies: weaviate
- User mentions or implies: chromadb
- User mentions or implies: pgvector