Files
agents/tools/langchain-agent.md
Seth Hobson d2f3886ae1 Consolidate workflows and tools from commands repository
Repository Restructure:
- Move all 83 agent .md files to agents/ subdirectory
- Add 15 workflow orchestrators from commands repo to workflows/
- Add 42 development tools from commands repo to tools/
- Update README for unified repository structure

The commands repository functionality is now fully integrated, providing
complete workflow orchestration and development tooling alongside agents.

Directory Structure:
- agents/    - 83 specialized AI agents
- workflows/ - 15 multi-agent orchestration commands
- tools/     - 42 focused development utilities

No breaking changes to agent functionality - all agents remain accessible
with same names and behavior. Adds workflow and tool commands for enhanced
multi-agent coordination capabilities.
2025-10-08 08:28:33 -04:00

1.4 KiB

model
model
claude-sonnet-4-0

LangChain/LangGraph Agent Scaffold

Create a production-ready LangChain/LangGraph agent for: $ARGUMENTS

Implement a complete agent system including:

  1. Agent Architecture:

    • LangGraph state machine
    • Tool selection logic
    • Memory management
    • Context window optimization
    • Multi-agent coordination
  2. Tool Implementation:

    • Custom tool creation
    • Tool validation
    • Error handling in tools
    • Tool composition
    • Async tool execution
  3. Memory Systems:

    • Short-term memory
    • Long-term storage (vector DB)
    • Conversation summarization
    • Entity tracking
    • Memory retrieval strategies
  4. Prompt Engineering:

    • System prompts
    • Few-shot examples
    • Chain-of-thought reasoning
    • Output formatting
    • Prompt templates
  5. RAG Integration:

    • Document loading pipeline
    • Chunking strategies
    • Embedding generation
    • Vector store setup
    • Retrieval optimization
  6. Production Features:

    • Streaming responses
    • Token counting
    • Cost tracking
    • Rate limiting
    • Fallback strategies
  7. Observability:

    • LangSmith integration
    • Custom callbacks
    • Performance metrics
    • Decision tracking
    • Debug mode

Include error handling, testing strategies, and deployment considerations. Use the latest LangChain/LangGraph best practices.