技能档案

Vector Databases

Pinecone, Weaviate, Qdrant, Milvus, pgvector, embedding indexing and search

Machine Learning & AI LLM & Generative AI

角色数

3

包含此技能的角色

级别数

5

结构化成长路径

必要要求

13

其余 2 个可选

领域

Machine Learning & AI

skills.group

LLM & Generative AI

最后更新

2026/3/17

如何使用

选择当前级别并对比期望。下方卡片显示晋升所需掌握的内容。

各级别期望

表格展示从初级到首席的技能深度变化。点击行查看详情。

角色 必要性 描述
AI Product Engineer Understands the fundamentals of Vector Databases. Applies basic practices in daily work. Follows recommendations from the team and documentation.
LLM Engineer 必要 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 必要 Knows vector database basics: embeddings, similarity search, ANN algorithms. Uses Pinecone/Weaviate/Qdrant for storing text embeddings and semantic search.
角色 必要性 描述
AI Product Engineer Independently applies Vector Databases in practice. Understands trade-offs of different approaches. Solves typical tasks independently.
LLM Engineer 必要 Independently administers vector databases in production: Pinecone, Weaviate, Qdrant. Configures indexes (HNSW, IVF), optimizes recall vs latency, manages collections and metadata.
NLP Engineer 必要 Independently designs vector search for NLP: embedding model selection, index configuration, metadata filtering. Optimizes recall and latency for production semantic search.
角色 必要性 描述
AI Product Engineer 必要 Has deep expertise in Vector Databases. Designs solutions for production systems. Optimizes and scales. Mentors the team.
LLM Engineer 必要 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 必要 Designs production vector search infrastructure for NLP: multi-tenant architecture, embedding model selection, index sharding. Optimizes for scale and cost-effectiveness.
角色 必要性 描述
AI Product Engineer 必要 Defines Vector Databases strategy at the team/product level. Establishes standards and best practices. Conducts reviews.
LLM Engineer 必要 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 必要 Defines vector search strategy for the NLP team. Establishes embedding pipeline standards, index management, and evaluation metrics for semantic search systems.
角色 必要性 描述
AI Product Engineer 必要 Defines Vector Databases strategy at the organizational level. Establishes enterprise approaches. Mentors leads and architects.
LLM Engineer 必要 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 必要 Shapes enterprise vector search strategy for the NLP platform. Defines shared embedding infrastructure architecture and semantic retrieval standards at organizational level.

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📋 提案
暂无提案 Vector Databases
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