技能档案

LLM Applications

RAG, LangChain/LlamaIndex, prompt templates, embedding, vector databases

Machine Learning & AI LLM & Generative AI

角色数

4

包含此技能的角色

级别数

5

结构化成长路径

必要要求

14

其余 6 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 Integrates pre-built LLM APIs into product features using standard SDKs. Writes basic prompts for user-facing functionality such as summarization or Q&A. Tests LLM outputs manually against expected behavior and documents edge cases for product scenarios.
Data Scientist Uses LLM APIs for basic text classification and named entity recognition tasks on structured datasets. Generates embeddings for simple similarity search and clustering. Applies pre-trained models to extract insights from text data, evaluating output quality with standard metrics.
LLM Engineer Deploys LLM inference endpoints using managed services and monitors latency and error rates. Writes structured prompts with few-shot examples following team guidelines. Tracks token usage across requests, identifies costly queries, and applies basic prompt length optimization techniques.
NLP Engineer 必要 Knows basics of LLM applications for NLP tasks: text generation, summarization, few-shot classification. Uses Hugging Face transformers for basic text processing tasks.
角色 必要性 描述
AI Product Engineer Designs prompt chains and multi-step LLM workflows for complex product features. Implements A/B testing frameworks to compare LLM-powered feature variants and measure user engagement. Establishes evaluation criteria for AI output quality and builds feedback loops from user interactions.
Data Scientist Builds RAG pipelines combining vector stores with LLM generation for domain-specific knowledge retrieval. Designs embedding strategies for multi-modal similarity search. Fine-tunes classification heads on top of LLM embeddings and benchmarks results against traditional ML baselines on production data.
LLM Engineer Builds fine-tuning pipelines with dataset curation, training orchestration, and automated evaluation. Implements prompt templating systems supporting versioning and rollback across environments. Designs LLM evaluation frameworks with automated scoring, regression detection, and human-in-the-loop review workflows.
NLP Engineer 必要 Independently develops LLM applications for NLP tasks: chain-of-thought for complex NER, LLM-as-judge for text quality evaluation, structured output for document data extraction.
角色 必要性 描述
AI Product Engineer 必要 Architects end-to-end LLM product systems with graceful degradation, caching strategies, and cost controls. Defines prompt engineering standards across the product organization. Leads cross-functional evaluation of AI features combining quantitative metrics with qualitative UX research and user safety analysis.
Data Scientist 必要 Designs advanced RAG architectures with hybrid retrieval, re-ranking, and context window optimization for domain-critical applications. Develops custom NER and relation extraction pipelines combining LLMs with structured knowledge graphs. Mentors team on embedding space analysis and LLM evaluation methodology.
LLM Engineer 必要 Designs scalable LLM serving infrastructure with model routing, adaptive batching, and multi-region deployment. Establishes organization-wide prompt engineering practices with governance and audit trails. Optimizes token budgets across services through semantic caching, prompt compression, and model distillation strategies.
NLP Engineer 必要 Designs complex LLM applications for production NLP: multi-agent systems for document analysis, LLM orchestration for multi-step NLP pipelines. Optimizes quality and inference cost.
角色 必要性 描述
AI Product Engineer 必要 Defines LLM Applications strategy at the team/product level. Establishes standards and best practices. Conducts reviews.
Data Scientist 必要 Defines the strategic roadmap for LLM adoption in data science workflows across the organization. Establishes evaluation standards for LLM-augmented analytics including bias detection, hallucination measurement, and domain accuracy benchmarks. Drives build-vs-buy decisions for embedding infrastructure and RAG platforms.
LLM Engineer 必要 Leads the LLM platform team, defining architecture standards for inference, fine-tuning, and evaluation infrastructure. Coordinates cross-team prompt engineering governance and token budget allocation. Drives vendor evaluation for foundation models, balancing capability, cost, and compliance requirements across the engineering organization.
NLP Engineer 必要 Defines LLM application strategy for the NLP team. Establishes architectural patterns, prompt engineering standards, and evaluation framework for LLM-based NLP systems.
角色 必要性 描述
AI Product Engineer 必要 Defines LLM Applications strategy at the organizational level. Establishes enterprise approaches. Mentors leads and architects.
Data Scientist 必要 Shapes the organization's vision for LLM-augmented data intelligence, aligning research initiatives with business strategy. Pioneers novel approaches combining LLMs with causal inference, simulation, and decision systems. Publishes findings and represents the company at conferences, influencing industry standards for responsible LLM use in analytics.
LLM Engineer 必要 Defines the company-wide LLM engineering strategy spanning model selection, deployment topology, and cost governance. Architects next-generation LLM platforms supporting multi-model orchestration, continuous evaluation, and automated optimization. Drives industry partnerships and open-source contributions that advance the state of LLM infrastructure and tooling.
NLP Engineer 必要 Shapes enterprise LLM application strategy for the NLP platform. Defines LLM adoption roadmap, security policies, and architectural standards for all organizational NLP products.

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