Dominio
Machine Learning & AI
Perfil de habilidad
Pinecone, Weaviate, Qdrant, Milvus, pgvector, embedding indexing and search
Roles
3
donde aparece esta habilidad
Niveles
5
ruta de crecimiento estructurada
Requisitos obligatorios
13
los otros 2 opcionales
Machine Learning & AI
LLM & Generative AI
17/3/2026
Selecciona tu nivel actual y compara las expectativas.
La tabla muestra cómo crece la profundidad desde Junior hasta Principal.
| Rol | Obligatorio | Descripción |
|---|---|---|
| AI Product Engineer | Understands the fundamentals of Vector Databases. Applies basic practices in daily work. Follows recommendations from the team and documentation. | |
| LLM Engineer | Obligatorio | Knows vector database basics: what is vector index, ANN search, distance metrics. Works with ChromaDB or Faiss for storing and searching embeddings in simple RAG applications. |
| NLP Engineer | Obligatorio | Knows vector database basics: embeddings, similarity search, ANN algorithms. Uses Pinecone/Weaviate/Qdrant for storing text embeddings and semantic search. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| AI Product Engineer | Independently applies Vector Databases in practice. Understands trade-offs of different approaches. Solves typical tasks independently. | |
| LLM Engineer | Obligatorio | Independently administers vector databases in production: Pinecone, Weaviate, Qdrant. Configures indexes (HNSW, IVF), optimizes recall vs latency, manages collections and metadata. |
| NLP Engineer | Obligatorio | Independently designs vector search for NLP: embedding model selection, index configuration, metadata filtering. Optimizes recall and latency for production semantic search. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| AI Product Engineer | Obligatorio | Has deep expertise in Vector Databases. Designs solutions for production systems. Optimizes and scales. Mentors the team. |
| LLM Engineer | Obligatorio | Designs scalable vector DB infrastructure: sharding, replication, hybrid search. Optimizes index parameters for trade-offs between recall, latency, and memory with millions of vectors. |
| NLP Engineer | Obligatorio | Designs production vector search infrastructure for NLP: multi-tenant architecture, embedding model selection, index sharding. Optimizes for scale and cost-effectiveness. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| AI Product Engineer | Obligatorio | Defines Vector Databases strategy at the team/product level. Establishes standards and best practices. Conducts reviews. |
| LLM Engineer | Obligatorio | Defines vector database strategy for the LLM platform. Establishes guidelines for vector DB selection, schema design, indexing strategy, monitoring. Coordinates migration and upgrades. |
| NLP Engineer | Obligatorio | Defines vector search strategy for the NLP team. Establishes embedding pipeline standards, index management, and evaluation metrics for semantic search systems. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| AI Product Engineer | Obligatorio | Defines Vector Databases strategy at the organizational level. Establishes enterprise approaches. Mentors leads and architects. |
| LLM Engineer | Obligatorio | Shapes enterprise vector database strategy. Defines approaches to centralized vector infrastructure, multi-tenant architecture, and cost optimization for billions of vectors at organizational scale. |
| NLP Engineer | Obligatorio | Shapes enterprise vector search strategy for the NLP platform. Defines shared embedding infrastructure architecture and semantic retrieval standards at organizational level. |