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4d 1h ago
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rag-engineer

Expert in building Retrieval-Augmented Generation systems. Masters embedding models, vector databases, chunking strategies, and retrieval optimization for LLM applications. Use when: building RAG, ...

.agents/skills/rag-engineer TypeScript
TY
JA
MA
3+ layers Tracked stack
Capabilities
6
Signals
1
Related
3
6
Capabilities
Actionable behaviors documented in the skill body.
0
Phases
Operational steps available for guided execution.
0
References
Support files available for deeper usage and onboarding.
0
Scripts
Runnable or reusable automation artifacts discovered locally.

Cognitive Capabilities

Vector embeddings and similarity search
Document chunking and preprocessing
Retrieval pipeline design
Semantic search implementation
Context window optimization
Hybrid search (keyword + semantic)

Architectural Overview

Skill Reading

"This module is grounded in ai engineering patterns and exposes 6 core capabilities across 1 execution phases."

RAG Engineer

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.

Capabilities

  • Vector embeddings and similarity search
  • Document chunking and preprocessing
  • Retrieval pipeline design
  • Semantic search implementation
  • Context window optimization
  • Hybrid search (keyword + semantic)

Requirements

  • LLM fundamentals
  • Understanding of embeddings
  • Basic NLP concepts

Patterns

Semantic Chunking

Chunk by meaning, not arbitrary token counts

- 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

- 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

- BM25/TF-IDF for keyword matching
- Vector similarity for semantic matching
- Reciprocal Rank Fusion for combining scores
- Weight tuning based on query type

Anti-Patterns

❌ Fixed Chunk Size

❌ Embedding Everything

❌ Ignoring Evaluation

⚠️ Sharp Edges

Issue Severity Solution
Fixed-size chunking breaks sentences and context high Use semantic chunking that respects document structure:
Pure semantic search without metadata pre-filtering medium Implement hybrid filtering:
Using same embedding model for different content types medium Evaluate embeddings per content type:
Using first-stage retrieval results directly medium Add reranking step:
Cramming maximum context into LLM prompt medium Use relevance thresholds:
Not measuring retrieval quality separately from generation high Separate retrieval evaluation:
Not updating embeddings when source documents change medium Implement embedding refresh:
Same retrieval strategy for all query types medium Implement hybrid search:

Related Skills

Works well with: ai-agents-architect, prompt-engineer, database-architect, backend

When to Use

This skill is applicable to execute the workflow or actions described in the overview.

Validation Signals

Observed

6 documented capabilities

Primary Stack

TypeScript

Tooling Surface

Guide only

Workspace Path

.agents/skills/rag-engineer

Operational Ecosystem

The complete hardware and software toolchain required.

This skill is mostly documentation-driven and does not expose extra scripts, references, examples, or templates.

Module Topology

Skill File
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Antigravity Core

Antigravity Core

Principal Engineering Agent

A high-performance agentic architecture developed by Deepmind for autonomous coding tasks.
210 Installs
4.2 Reliability
1 Workspace Files
4.2
Workspace Reliability Avg
5
68%
4
22%
3
10%
2
0%
1
0%

Validation signal

4d 1h ago

Observed

6 documented capabilities

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