Domain
Machine Learning & AI
Skill Profile
This skill defines expectations across roles and levels.
Roles
1
where this skill appears
Levels
5
structured growth path
Mandatory requirements
0
the other 5 optional
Machine Learning & AI
LLM & Generative AI
2/22/2026
Choose your current level and compare expectations. The items below show what to cover to advance to the next level.
The table shows how skill depth grows from Junior to Principal. Click a row to see details.
| Role | Required | Description |
|---|---|---|
| LLM Engineer | Knows RAG basics: retrieval + generation, basic pipeline with embedding and vector search. Builds simple RAG pipeline on LangChain with ChromaDB for QA task under mentor guidance. |
| Role | Required | Description |
|---|---|---|
| LLM Engineer | Independently designs production RAG: advanced chunking, hybrid retrieval, re-ranking. Configures metadata filtering, conversation history, and source attribution. Evaluates quality via RAGAS. |
| Role | Required | Description |
|---|---|---|
| LLM Engineer | Designs enterprise RAG systems: multi-source retrieval, agentic RAG, query routing. Optimizes retrieval quality through fine-tuning retrievers, custom re-rankers, and adaptive chunking strategies. |
| Role | Required | Description |
|---|---|---|
| LLM Engineer | Defines RAG strategy for the LLM team. Establishes best practices for RAG architecture, data ingestion, quality monitoring. Coordinates RAG system as platform for multiple products. |
| Role | Required | Description |
|---|---|---|
| LLM Engineer | Shapes enterprise RAG platform for the organization. Defines approaches to unified knowledge bases, multi-tenant RAG, and governance. Ensures scalability and quality at the scale of millions of documents. |