技能档案

RAG Architecture

Chunking, retrieval, reranking, hybrid search, RAG pipeline quality assessment

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

11

其余 4 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 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.

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📋 提案
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