领域
Machine Learning & AI
技能档案
Chunking, retrieval, reranking, hybrid search, RAG pipeline quality assessment
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
11
其余 4 个可选
Machine Learning & AI
LLM & Generative AI
2026/3/17
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。
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 RAG fundamentals: document chunking, embedding generation, vector search, and context injection. Sets up basic RAG pipelines using LangChain or LlamaIndex for product Q&A features. | |
| LLM Engineer | Understands RAG pipeline components: embedding models, vector databases, and retrieval strategies. Implements basic document indexing and semantic search with FAISS or Pinecone for LLM augmentation. | |
| NLP Engineer | 必要 | Knows RAG basics: retrieval, augmentation, generation. Applies simple RAG pipelines for NLP tasks: searching relevant documents and generating context-based answers. |
| 角色 | 必要性 | 描述 |
|---|---|---|
| AI Product Engineer | Builds production RAG systems with hybrid search (dense + sparse retrieval), re-ranking, and metadata filtering. Implements evaluation frameworks measuring retrieval relevance and answer faithfulness for user-facing features. | |
| LLM Engineer | Implements advanced RAG patterns: query decomposition, hypothetical document embeddings (HyDE), and multi-index retrieval. Optimizes chunk size and overlap for domain-specific corpora and evaluates retrieval quality with RAGAS metrics. | |
| NLP Engineer | 必要 | Independently designs RAG systems for NLP: hybrid search, reranking, query expansion. Configures chunking strategies for different document types, evaluates quality via RAGAS. |
| 角色 | 必要性 | 描述 |
|---|---|---|
| AI Product Engineer | 必要 | Designs enterprise RAG architecture with multi-tenant knowledge bases, access control integration, and real-time document ingestion. Implements agentic RAG with iterative retrieval and self-correcting answer generation for complex product workflows. |
| LLM Engineer | 必要 | Designs scalable RAG platforms with graph-augmented retrieval, contextual compression, and adaptive chunking strategies. Implements knowledge graph integration for structured reasoning and mentors team on RAG evaluation methodology and hallucination mitigation. |
| NLP Engineer | 必要 | Designs production RAG architectures: multi-index retrieval, agentic RAG, self-reflective RAG. Optimizes quality through advanced reranking, query decomposition, and citation verification. |
| 角色 | 必要性 | 描述 |
|---|---|---|
| AI Product Engineer | 必要 | Defines RAG Architecture strategy at the team/product level. Establishes standards and best practices. Conducts reviews. |
| LLM Engineer | 必要 | Defines RAG Architecture strategy at team/product level. Establishes standards and best practices. Conducts reviews. |
| NLP Engineer | 必要 | Defines RAG strategy for the NLP team. Establishes evaluation framework, retrieval and generation best practices, and quality assurance standards for RAG-based NLP products. |
| 角色 | 必要性 | 描述 |
|---|---|---|
| AI Product Engineer | 必要 | Defines RAG Architecture strategy at the organizational level. Establishes enterprise approaches. Mentors leads and architects. |
| LLM Engineer | 必要 | Defines RAG Architecture strategy at organizational level. Establishes enterprise approaches. Mentors leads and architects. |
| NLP Engineer | 必要 | Shapes enterprise RAG strategy for the NLP platform. Defines architectural patterns, knowledge management standards, and retrieval infrastructure at organizational level. |