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    langsmith-fetch

    composiohq/langsmith-fetch
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    About

    SKILL.md

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    About

    Debug LangChain and LangGraph agents by fetching execution traces from LangSmith Studio...

    SKILL.md

    LangSmith Fetch - Agent Debugging Skill

    Debug LangChain and LangGraph agents by fetching execution traces directly from LangSmith Studio in your terminal.

    When to Use This Skill

    Automatically activate when user mentions:

    • 🐛 "Debug my agent" or "What went wrong?"
    • 🔍 "Show me recent traces" or "What happened?"
    • ❌ "Check for errors" or "Why did it fail?"
    • 💾 "Analyze memory operations" or "Check LTM"
    • 📊 "Review agent performance" or "Check token usage"
    • 🔧 "What tools were called?" or "Show execution flow"

    Prerequisites

    1. Install langsmith-fetch

    pip install langsmith-fetch
    

    2. Set Environment Variables

    export LANGSMITH_API_KEY="your_langsmith_api_key"
    export LANGSMITH_PROJECT="your_project_name"
    

    Verify setup:

    echo $LANGSMITH_API_KEY
    echo $LANGSMITH_PROJECT
    

    Core Workflows

    Workflow 1: Quick Debug Recent Activity

    When user asks: "What just happened?" or "Debug my agent"

    Execute:

    langsmith-fetch traces --last-n-minutes 5 --limit 5 --format pretty
    

    Analyze and report:

    1. ✅ Number of traces found
    2. ⚠️ Any errors or failures
    3. 🛠️ Tools that were called
    4. ⏱️ Execution times
    5. 💰 Token usage

    Example response format:

    Found 3 traces in the last 5 minutes:
    
    Trace 1: ✅ Success
    - Agent: memento
    - Tools: recall_memories, create_entities
    - Duration: 2.3s
    - Tokens: 1,245
    
    Trace 2: ❌ Error
    - Agent: cypher
    - Error: "Neo4j connection timeout"
    - Duration: 15.1s
    - Failed at: search_nodes tool
    
    Trace 3: ✅ Success
    - Agent: memento
    - Tools: store_memory
    - Duration: 1.8s
    - Tokens: 892
    
    💡 Issue found: Trace 2 failed due to Neo4j timeout. Recommend checking database connection.
    

    Workflow 2: Deep Dive Specific Trace

    When user provides: Trace ID or says "investigate that error"

    Execute:

    langsmith-fetch trace <trace-id> --format json
    

    Analyze JSON and report:

    1. 🎯 What the agent was trying to do
    2. 🛠️ Which tools were called (in order)
    3. ✅ Tool results (success/failure)
    4. ❌ Error messages (if any)
    5. 💡 Root cause analysis
    6. 🔧 Suggested fix

    Example response format:

    Deep Dive Analysis - Trace abc123
    
    Goal: User asked "Find all projects in Neo4j"
    
    Execution Flow:
    1. ✅ search_nodes(query: "projects")
       → Found 24 nodes
    
    2. ❌ get_node_details(node_id: "proj_123")
       → Error: "Node not found"
       → This is the failure point
    
    3. ⏹️ Execution stopped
    
    Root Cause:
    The search_nodes tool returned node IDs that no longer exist in the database,
    possibly due to recent deletions.
    
    Suggested Fix:
    1. Add error handling in get_node_details tool
    2. Filter deleted nodes in search results
    3. Update cache invalidation strategy
    
    Token Usage: 1,842 tokens ($0.0276)
    Execution Time: 8.7 seconds
    

    Workflow 3: Export Debug Session

    When user says: "Save this session" or "Export traces"

    Execute:

    # Create session folder with timestamp
    SESSION_DIR="langsmith-debug/session-$(date +%Y%m%d-%H%M%S)"
    mkdir -p "$SESSION_DIR"
    
    # Export traces
    langsmith-fetch traces "$SESSION_DIR/traces" --last-n-minutes 30 --limit 50 --include-metadata
    
    # Export threads (conversations)
    langsmith-fetch threads "$SESSION_DIR/threads" --limit 20
    

    Report:

    ✅ Session exported successfully!
    
    Location: langsmith-debug/session-20251224-143022/
    - Traces: 42 files
    - Threads: 8 files
    
    You can now:
    1. Review individual trace files
    2. Share folder with team
    3. Analyze with external tools
    4. Archive for future reference
    
    Session size: 2.3 MB
    

    Workflow 4: Error Detection

    When user asks: "Show me errors" or "What's failing?"

    Execute:

    # Fetch recent traces
    langsmith-fetch traces --last-n-minutes 30 --limit 50 --format json > recent-traces.json
    
    # Search for errors
    grep -i "error\|failed\|exception" recent-traces.json
    

    Analyze and report:

    1. 📊 Total errors found
    2. ❌ Error types and frequency
    3. 🕐 When errors occurred
    4. 🎯 Which agents/tools failed
    5. 💡 Common patterns

    Example response format:

    Error Analysis - Last 30 Minutes
    
    Total Traces: 50
    Failed Traces: 7 (14% failure rate)
    
    Error Breakdown:
    1. Neo4j Connection Timeout (4 occurrences)
       - Agent: cypher
       - Tool: search_nodes
       - First occurred: 14:32
       - Last occurred: 14:45
       - Pattern: Happens during peak load
    
    2. Memory Store Failed (2 occurrences)
       - Agent: memento
       - Tool: store_memory
       - Error: "Pinecone rate limit exceeded"
       - Occurred: 14:38, 14:41
    
    3. Tool Not Found (1 occurrence)
       - Agent: sqlcrm
       - Attempted tool: "export_report" (doesn't exist)
       - Occurred: 14:35
    
    💡 Recommendations:
    1. Add retry logic for Neo4j timeouts
    2. Implement rate limiting for Pinecone
    3. Fix sqlcrm tool configuration
    

    Common Use Cases

    Use Case 1: "Agent Not Responding"

    User says: "My agent isn't doing anything"

    Steps:

    1. Check if traces exist:

      langsmith-fetch traces --last-n-minutes 5 --limit 5
      
    2. If NO traces found:

      • Tracing might be disabled
      • Check: LANGCHAIN_TRACING_V2=true in environment
      • Check: LANGCHAIN_API_KEY is set
      • Verify agent actually ran
    3. If traces found:

      • Review for errors
      • Check execution time (hanging?)
      • Verify tool calls completed

    Use Case 2: "Wrong Tool Called"

    User says: "Why did it use the wrong tool?"

    Steps:

    1. Get the specific trace
    2. Review available tools at execution time
    3. Check agent's reasoning for tool selection
    4. Examine tool descriptions/instructions
    5. Suggest prompt or tool config improvements

    Use Case 3: "Memory Not Working"

    User says: "Agent doesn't remember things"

    Steps:

    1. Search for memory operations:

      langsmith-fetch traces --last-n-minutes 10 --limit 20 --format raw | grep -i "memory\|recall\|store"
      
    2. Check:

      • Were memory tools called?
      • Did recall return results?
      • Were memories actually stored?
      • Are retrieved memories being used?

    Use Case 4: "Performance Issues"

    User says: "Agent is too slow"

    Steps:

    1. Export with metadata:

      langsmith-fetch traces ./perf-analysis --last-n-minutes 30 --limit 50 --include-metadata
      
    2. Analyze:

      • Execution time per trace
      • Tool call latencies
      • Token usage (context size)
      • Number of iterations
      • Slowest operations
    3. Identify bottlenecks and suggest optimizations


    Output Format Guide

    Pretty Format (Default)

    langsmith-fetch traces --limit 5 --format pretty
    

    Use for: Quick visual inspection, showing to users

    JSON Format

    langsmith-fetch traces --limit 5 --format json
    

    Use for: Detailed analysis, syntax-highlighted review

    Raw Format

    langsmith-fetch traces --limit 5 --format raw
    

    Use for: Piping to other commands, automation


    Advanced Features

    Time-Based Filtering

    # After specific timestamp
    langsmith-fetch traces --after "2025-12-24T13:00:00Z" --limit 20
    
    # Last N minutes (most common)
    langsmith-fetch traces --last-n-minutes 60 --limit 100
    

    Include Metadata

    # Get extra context
    langsmith-fetch traces --limit 10 --include-metadata
    
    # Metadata includes: agent type, model, tags, environment
    

    Concurrent Fetching (Faster)

    # Speed up large exports
    langsmith-fetch traces ./output --limit 100 --concurrent 10
    

    Troubleshooting

    "No traces found matching criteria"

    Possible causes:

    1. No agent activity in the timeframe
    2. Tracing is disabled
    3. Wrong project name
    4. API key issues

    Solutions:

    # 1. Try longer timeframe
    langsmith-fetch traces --last-n-minutes 1440 --limit 50
    
    # 2. Check environment
    echo $LANGSMITH_API_KEY
    echo $LANGSMITH_PROJECT
    
    # 3. Try fetching threads instead
    langsmith-fetch threads --limit 10
    
    # 4. Verify tracing is enabled in your code
    # Check for: LANGCHAIN_TRACING_V2=true
    

    "Project not found"

    Solution:

    # View current config
    langsmith-fetch config show
    
    # Set correct project
    export LANGSMITH_PROJECT="correct-project-name"
    
    # Or configure permanently
    langsmith-fetch config set project "your-project-name"
    

    Environment variables not persisting

    Solution:

    # Add to shell config file (~/.bashrc or ~/.zshrc)
    echo 'export LANGSMITH_API_KEY="your_key"' >> ~/.bashrc
    echo 'export LANGSMITH_PROJECT="your_project"' >> ~/.bashrc
    
    # Reload shell config
    source ~/.bashrc
    

    Best Practices

    1. Regular Health Checks

    # Quick check after making changes
    langsmith-fetch traces --last-n-minutes 5 --limit 5
    

    2. Organized Storage

    langsmith-debug/
    ├── sessions/
    │   ├── 2025-12-24/
    │   └── 2025-12-25/
    ├── error-cases/
    └── performance-tests/
    

    3. Document Findings

    When you find bugs:

    1. Export the problematic trace
    2. Save to error-cases/ folder
    3. Note what went wrong in a README
    4. Share trace ID with team

    4. Integration with Development

    # Before committing code
    langsmith-fetch traces --last-n-minutes 10 --limit 5
    
    # If errors found
    langsmith-fetch trace <error-id> --format json > pre-commit-error.json
    

    Quick Reference

    # Most common commands
    
    # Quick debug
    langsmith-fetch traces --last-n-minutes 5 --limit 5 --format pretty
    
    # Specific trace
    langsmith-fetch trace <trace-id> --format pretty
    
    # Export session
    langsmith-fetch traces ./debug-session --last-n-minutes 30 --limit 50
    
    # Find errors
    langsmith-fetch traces --last-n-minutes 30 --limit 50 --format raw | grep -i error
    
    # With metadata
    langsmith-fetch traces --limit 10 --include-metadata
    

    Resources

    • LangSmith Fetch CLI: https://github.com/langchain-ai/langsmith-fetch
    • LangSmith Studio: https://smith.langchain.com/
    • LangChain Docs: https://docs.langchain.com/
    • This Skill Repo: https://github.com/OthmanAdi/langsmith-fetch-skill

    Notes for Claude

    • Always check if langsmith-fetch is installed before running commands
    • Verify environment variables are set
    • Use --format pretty for human-readable output
    • Use --format json when you need to parse and analyze data
    • When exporting sessions, create organized folder structures
    • Always provide clear analysis and actionable insights
    • If commands fail, help troubleshoot configuration issues

    Version: 0.1.0 Author: Ahmad Othman Ammar Adi License: MIT Repository: https://github.com/OthmanAdi/langsmith-fetch-skill

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