Agent skill

ai-agents

Production-grade AI agent patterns with MCP integration, agentic RAG, handoff orchestration, multi-layer guardrails, and observability (modern best practices)

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Install this agent skill to your Project

npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/testing/ai-agents-vasilyu1983-ai-agents-public

SKILL.md

AI Agents Development — Production Skill Hub

Modern Best Practices: MCP-based tool integration, agentic RAG, handoff-first orchestration, multi-layer guardrails, LangGraph workflows, OpenTelemetry observability, and human-in-the-loop controls.

This skill provides production-ready operational patterns for designing, building, evaluating, and deploying AI agents. It centralizes procedures, checklists, decision rules, and templates used across RAG agents, tool-using agents, OS agents, and multi-agent systems.

No theory. No narrative. Only what Claude can execute.


When to Use This Skill

Claude should activate this skill whenever the user asks for:

  • Designing an agent (LLM-based, tool-based, OS-based, or multi-agent).
  • Scoping capability maturity and rollout risk for new agent behaviors.
  • Creating action loops, plans, workflows, or delegation logic.
  • Writing tool definitions, MCP tools, schemas, or validation logic.
  • Generating RAG pipelines, retrieval modules, or context injection.
  • Building memory systems (session, long-term, episodic, task).
  • Creating evaluation harnesses, observability plans, or safety gates.
  • Preparing CI/CD, rollout, deployment, or production operational specs.
  • Producing any template in /resources/ or /templates/.
  • Implementing MCP servers or integrating Model Context Protocol.
  • Setting up agent handoffs and orchestration patterns.
  • Configuring multi-layer guardrails and safety controls.
  • For prompt scaffolds, retrieval tuning, or security depth, see Scope Boundaries below.

Scope Boundaries (Use These Skills for Depth)

  • Prompt scaffolds & structured outputs → ai-prompt-engineering
  • RAG retrieval & chunking → ai-rag
  • Search tuning (BM25/HNSW/hybrid) → ai-rag
  • Security/guardrails → ai-mlops
  • Inference optimization → ai-llm-inference

Quick Reference

Agent Type Capability Frameworks MCP/A2A When to Use
RAG Agent Knowledge-grounded responses LangChain, LlamaIndex MCP for tools Answering questions from knowledge base
Tool-Using API/function calls LangGraph, Autogen MCP for tools External actions (search, DB, APIs)
Multi-Agent Task delegation, collaboration CrewAI, AutoGen, ADK A2A for handoffs Complex workflows requiring specialization
OS Agent Computer/browser control Anthropic Computer Use MCP for system Desktop automation, web browsing
Agentic RAG Dynamic multi-step retrieval Custom (ReAct + RAG) MCP for data Complex queries requiring iterative search
Planning Agent Strategic decomposition LangGraph (ReAct/Plan-Execute) A2A for delegation Multi-step problems, long-horizon tasks
Code/SWE Agent Autonomous coding, PR creation HyperAgent, Devin, Claude Code MCP for git/fs Issue resolution, feature implementation

Decision Tree: Choosing Agent Architecture

text
What does the agent need to do?
    ├─ Answer questions from knowledge base?
    │   ├─ Simple lookup? → RAG Agent (LangChain/LlamaIndex + vector DB)
    │   └─ Complex multi-step? → Agentic RAG (iterative retrieval + reasoning)
    │
    ├─ Perform external actions (APIs, tools, functions)?
    │   ├─ 1-3 tools, linear flow? → Tool-Using Agent (LangGraph + MCP)
    │   └─ Complex workflows, branching? → Planning Agent (ReAct/Plan-Execute)
    │
    ├─ Write/modify code autonomously?
    │   ├─ Single file edits? → Tool-Using Agent with code tools
    │   └─ Multi-file, issue resolution? → Code/SWE Agent (HyperAgent pattern)
    │
    ├─ Delegate tasks to specialists?
    │   ├─ Fixed workflow? → Multi-Agent Sequential (A → B → C)
    │   ├─ Manager-Worker? → Multi-Agent Hierarchical (Manager + Workers)
    │   └─ Dynamic routing? → Multi-Agent Group Chat (collaborative)
    │
    ├─ Control desktop/browser?
    │   └─ OS Agent (Anthropic Computer Use + MCP for system access)
    │
    └─ Hybrid (combination of above)?
        └─ Planning Agent that coordinates:
            - Tool-using for actions (MCP)
            - RAG for knowledge (MCP)
            - Multi-agent for delegation (A2A)
            - Code agents for implementation

Protocol Selection:

  • Use MCP for: Tool access, data retrieval, single-agent integration
  • Use A2A for: Agent-to-agent handoffs, multi-agent coordination, task delegation

Navigation: Core Concepts & Patterns

Governance & Maturity

  • Agent Maturity & Governance - resources/agent-maturity-governance.md
    • Capability maturity levels (L0-L4)
    • Identity & policy enforcement
    • Fleet control and registry management
    • Deprecation rules and kill switches

Modern Best Practices

  • Modern Best Practices - resources/modern-best-practices.md
    • Model Context Protocol (MCP)
    • Agent-to-Agent Protocol (A2A)
    • Agentic RAG (Dynamic Retrieval)
    • Multi-layer guardrails
    • LangGraph over LangChain
    • OpenTelemetry for agents

Context Management

  • Context Engineering - resources/context-engineering.md
    • Progressive disclosure
    • Session management
    • Memory provenance
    • Retrieval timing
    • Multimodal context

Core Operational Patterns

  • Operational Patterns - resources/operational-patterns.md
    • Agent loop pattern (PLAN → ACT → OBSERVE → UPDATE)
    • OS agent action loop
    • RAG pipeline pattern
    • Tool specification
    • Memory system pattern
    • Multi-agent workflow
    • Safety & guardrails
    • Observability
    • Evaluation patterns
    • Deployment & CI/CD

Navigation: Protocol Implementation

  • MCP Practical Guide - resources/mcp-practical-guide.md Building MCP servers, tool integration, and standardized data access

  • MCP Server Builder - resources/mcp-server-builder.md End-to-end checklist for workflow-focused MCP servers (design → build → test)

  • A2A Handoff Patterns - resources/a2a-handoff-patterns.md Agent-to-agent communication, task delegation, and coordination protocols

  • Protocol Decision Tree - resources/protocol-decision-tree.md When to use MCP vs A2A, decision framework, and selection criteria


Navigation: Agent Capabilities

  • Agent Operations - resources/agent-operations-best-practices.md Action loops, planning, observation, and execution patterns

  • RAG Patterns - resources/rag-patterns.md Contextual retrieval, agentic RAG, and hybrid search strategies

  • Memory Systems - resources/memory-systems.md Session, long-term, episodic, and task memory architectures

  • Tool Design & Validation - resources/tool-design-specs.md Tool schemas, validation, error handling, and MCP integration

Skill Packaging & Sharing

  • Skill Lifecycle - resources/skill-lifecycle.md Scaffold, validate, package, and share Claude skills with teams (Slack-ready)

  • API Contracts for Agents - resources/api-contracts-for-agents.md Request/response envelopes, safety gates, streaming/async patterns, error taxonomy

  • Multi-Agent Patterns - resources/multi-agent-patterns.md Manager-worker, sequential, handoff, and group chat orchestration

  • OS Agent Capabilities - resources/os-agent-capabilities.md Desktop automation, UI grounding, and computer use patterns

  • Code/SWE Agents - resources/code-swe-agents.md SE 3.0 paradigm, autonomous coding patterns, SWE-Bench, HyperAgent architecture


Navigation: Production Operations

  • Evaluation & Observability - resources/evaluation-and-observability.md OpenTelemetry GenAI, metrics, LLM-as-judge, and monitoring

  • Deployment, CI/CD & Safety - resources/deployment-ci-cd-and-safety.md Multi-layer guardrails, HITL controls, NIST AI RMF, production checklists


Navigation: Templates (Copy-Paste Ready)

Core Agent Templates

  • Standard Agent Template - templates/core/agent-template-standard.md Full production spec: memory, tools, RAG, evaluation, observability, safety

  • Specialized Agent Template - templates/core/agent-template-specialized.md Domain-specific agents with custom capabilities and constraints

  • Quick Agent Template - templates/core/agent-template-quick.md Minimal viable agent for rapid prototyping

RAG Templates

  • Basic RAG - templates/rag/rag-basic.md Simple retrieval-augmented generation pipeline

  • Advanced RAG - templates/rag/rag-advanced.md Contextual retrieval, reranking, and agentic RAG patterns

  • Hybrid Retrieval - templates/rag/hybrid-retrieval.md Semantic + keyword search with BM25 fusion

Tool Templates

  • Tool Definition - templates/tools/tool-definition.md MCP-compatible tool schemas with validation and error handling

  • Tool Validation Checklist - templates/tools/tool-validation-checklist.md Testing, security, and production readiness checks

Multi-Agent Templates

  • Manager-Worker Template - templates/multi-agent/manager-worker-template.md Orchestration pattern with task delegation and result aggregation

  • Evaluator-Router Template - templates/multi-agent/evaluator-router-template.md Dynamic routing with quality assessment and domain classification

Service Layer Templates

  • FastAPI Agent Service - ../dev-api-design/templates/fastapi/fastapi-complete-api.md Auth, pagination, validation, error handling; extend with model lifespan loads, SSE, background tasks

External Sources Metadata

  • Curated References - data/sources.json 95 authoritative sources across 13 categories including arXiv research papers and Code/SWE agents

Shared Utilities (Centralized patterns — extract, don't duplicate)

  • ../_shared/utilities/llm-utilities.md — Token counting, streaming, cost estimation
  • ../_shared/utilities/error-handling.md — Effect Result types, correlation IDs
  • ../_shared/utilities/resilience-utilities.md — p-retry v6, circuit breaker for API calls
  • ../_shared/utilities/logging-utilities.md — pino v9 + OpenTelemetry integration
  • ../_shared/utilities/observability-utilities.md — OpenTelemetry SDK, tracing, metrics
  • ../_shared/utilities/testing-utilities.md — Test factories, fixtures, mocks
  • ../_shared/resources/code-quality-operational-playbook.md — Canonical coding rules & LLM code review

Related Skills

This skill integrates with complementary Claude Code skills:

Core Dependencies

  • ../ai-llm/ - LLM patterns, prompt engineering, and model selection for agents
  • ../ai-rag/ - Deep RAG implementation: chunking, embedding, reranking
  • ../ai-prompt-engineering/ - System prompt design, few-shot patterns, reasoning strategies

Production & Operations

  • ../qa-observability/ - OpenTelemetry, metrics, distributed tracing
  • ../software-security-appsec/ - OWASP Top 10, input validation, secure tool design
  • ../ops-devops-platform/ - CI/CD pipelines, deployment strategies, infrastructure

Supporting Patterns

  • ../dev-api-design/ - REST/GraphQL design for agent APIs and tool interfaces
  • ../ai-mlops/ - Model deployment, monitoring, drift detection
  • ../qa-debugging/ - Agent debugging, error analysis, root cause investigation

Usage pattern: Start here for agent architecture, then reference specialized skills for deep implementation details.


Usage Notes for Claude

  • Modern Standards: Default to MCP for tools, agentic RAG for retrieval, handoff-first for multi-agent
  • Lightweight SKILL.md: Use this file for quick reference and navigation
  • Drill-down resources: Reference detailed resources for implementation guidance
  • Copy-paste templates: Use templates when the user asks for structured artifacts
  • External sources: Reference data/sources.json for authoritative documentation links
  • No theory: Never include theoretical explanations; only operational steps

Key Modern Migrations

Traditional → Modern:

  • Custom APIs → Model Context Protocol (MCP)
  • Static RAG → Agentic RAG with contextual retrieval
  • Ad-hoc handoffs → Versioned handoff APIs with JSON Schema
  • Single guardrail → Multi-layer defense (5+ layers)
  • LangChain agents → LangGraph stateful workflows
  • Custom observability → OpenTelemetry GenAI standards
  • Model-centric → Context engineering-centric

AI-Native SDLC Pattern (Delegate → Review → Own)

  • Plan: Have the agent draft PLAN.md or use a planning tool; require code-path trace, dependency map, and risk/edge-case list before build starts.
  • Design: Convert mocks to components; enforce design tokens/style guides; surface accessibility gaps; keep MCP-linked component libraries in context.
  • Build: Let the agent scaffold end-to-end (models/APIs/UI/tests/docs); enforce long-run guardrails (time cap, allowed commands/tools, commit/PR gating, kill switch).
  • Test: Demand failing test first; agent generates and runs suites; require coverage deltas and flaky-test notes; human reviews assertions and fixtures.
  • Review: Agent runs first-pass review tuned for P0/P1; human focuses on architecture, performance, safety, and migration risk; always own final merge.
  • Document: Agent drafts PR summaries, module/file notes, and mermaid diagrams; require doc updates in the same run; human adds “why” and approvals.
  • Deploy & Maintain: Agent links logs/metrics via MCP for triage; propose hotfixes with rollback plans; human approves rollouts; track drift/regressions with evals.

Executive Briefing (Optional)

  • Value: Coding agents compress SDLC time; delegate mechanical work, keep humans on intent/architecture; measurable gains come from tight guardrails plus eval loops.
  • Cost & Risk: Training vs inference economics; long runs need caps/kill switches; data/secret handling and supply-chain policies stay human-owned.
  • Governance: Multi-layer guardrails (policy prompt, tool allowlist, auth scopes, eval gates, audit logs); require human sign-off for deploys and safety-sensitive changes.

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