返回 Skill 列表
extension
分类: 内容与媒体无需 API Key

ai-llm-skills-guide

AI代理和LLM开发技能指南,包括RAG、多代理系统、提示工程、记忆系统和上下文工程。

person作者: jakexiaohubgithub

AI Agents & LLM Development Skills

Scope

Use this skill when:

  • Finding or adding AI/LLM related skills
  • Understanding agent architecture patterns
  • Working with RAG, embeddings, or vector databases
  • Implementing multi-agent systems

Key Skill Categories

Agent Frameworks

| Framework | Description | |-----------|-------------| | LangGraph | Stateful, multi-actor AI applications | | CrewAI | Role-based multi-agent orchestration | | AutoGen | Microsoft's multi-agent framework |

RAG (Retrieval-Augmented Generation)

| Component | Skills | |-----------|--------| | Embeddings | Text embedding models, chunking strategies | | Vector DBs | Pinecone, Weaviate, Chroma, Qdrant | | Retrieval | Hybrid search, reranking, context optimization |

Observability & Tracing

| Tool | Purpose | |------|---------| | Langfuse | Open-source LLM observability | | LangSmith | LangChain tracing and debugging | | Weights & Biases | ML experiment tracking |

Memory Systems

| Type | Description | |------|-------------| | Short-term | Conversation buffer, sliding window | | Long-term | Vector store persistence, entity memory | | Episodic | Experience-based memory recall |

Context Engineering Skills

Core Concepts

  • Context fundamentals: What context is and why it matters
  • Context degradation: Lost-in-middle, poisoning, distraction patterns
  • Context compression: Summarization, trimming strategies
  • Context optimization: Caching, masking, compaction

Multi-Agent Patterns

  • Orchestrator pattern
  • Peer-to-peer collaboration
  • Hierarchical delegation
  • Tool-using agents

Where to Add in README

  • Agent frameworks: AI Agents & LLM Development
  • RAG tools: AI Agents & LLM Development or Data & Analysis
  • Observability: AI Agents & LLM Development
  • Context engineering: Context Engineering

Key Repositories

sickn33/antigravity-awesome-skills/skills/
├── langgraph/
├── crewai/
├── langfuse/
├── rag-engineer/
├── prompt-engineer/
├── voice-agents/
├── agent-memory-systems/
└── autonomous-agents/

muratcankoylan/Agent-Skills-for-Context-Engineering/skills/
├── context-fundamentals/
├── context-degradation/
├── context-compression/
├── multi-agent-patterns/
└── memory-systems/

Best Practices

  1. Modular design: Separate retrieval, generation, and orchestration
  2. Evaluation: Include benchmarks and test cases
  3. Cost awareness: Document token usage and API costs
  4. Fallback strategies: Handle API failures gracefully
  5. Streaming: Support streaming responses where possible

Full Resource List

For more detailed skill resources, complete link lists, or the latest information, use WebFetch to retrieve the full README.md:

https://raw.githubusercontent.com/gmh5225/awesome-skills/refs/heads/main/README.md

The README.md contains the complete categorized resource list with all links.