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LangSmith データ取得

LangSmith データ取得

LLMの最適化のために、LangSmithからトレースデータや評価データを取得するツールです。

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「langsmith-fetch」を使用してトレースデータを取得してください。
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SKILL.md Definition

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


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


About Awesome Claude Skills

A curated list of practical Claude Skills for enhancing productivity across Claude.ai, Claude Code, and the Claude API.

What Are Claude Skills?

Claude Skills are customizable workflows that teach Claude how to perform specific tasks according to your unique requirements. Skills enable Claude to execute tasks in a repeatable, standardized manner across all Claude platforms.

Quickstart: Connect Claude to 500+ Apps

The connect-apps plugin lets Claude perform real actions - send emails, create issues, post to Slack. It handles auth and connects to 500+ apps using Composio under the hood.

  1. Install the Plugin

    claude --plugin-dir ./connect-apps-plugin
    
  2. Run Setup

    /connect-apps:setup
    

    Paste your API key when asked. (Get a free key at platform.composio.dev)

強力な Agent Skills

プロフェッショナルなスキルコレクションで AI パフォーマンスを向上させます。

すぐに使用可能

スキルをサポートする任意のエージェントシステムにコピー&ペースト。

モジュール設計

「code skills」を組み合わせて、複雑なエージェントの動作を作成。

最適化済み

各「agent skill」は、高性能と正確性のために調整されています。

オープンソース

すべての「code skills」は提供とカスタマイズのために公開されています。

クロスプラットフォーム

さまざまな LLM とエージェントフレームワークで動作します。

安全・確実

AI セーフティのベストプラクティスに従った精査済みのスキル。

エージェントを強化する

今日から Agiskills を使い始めて、その違いを実感してください。

今すぐ探索

使い方

3 つの簡単なステップでエージェントスキルを開始しましょう。

1

スキルを選択

コレクションから必要なスキルを見つけます。

2

ドキュメントを読む

スキルの仕組みと制約を理解します。

3

コピーして使用

定義をエージェントの構成に貼り付けます。

4

テスト

結果を確認し、必要に応じて微調整します。

5

デプロイ

特化型 AI エージェントを起動します。

開発者の声

世界中の開発者が Agiskills を選ぶ理由をご覧ください。

Alex Smith

AI エンジニア

"Agiskills は AI エージェントの構築方法を完全に変えました。"

Maria Garcia

プロダクトマネージャー

"PDF スペシャリストスキルは、複雑なドキュメント解析の問題を解決してくれました。"

John Doe

開発者

"プロフェッショナルでドキュメントが充実したスキル。非常にお勧めです!"

Sarah Lee

アーティスト

"アルゴリズムアートスキルは、非常に美しいコードを生成します。"

Chen Wei

フロントエンドスペシャリスト

"テーマファクトリーで作成されたテーマはピクセルパーフェクトです。"

Robert T.

CTO

"現在、私たちの AI チームの標準として Agiskills を使用しています。"

よくある質問

Agiskills について知っておくべきすべてのこと。

はい、すべての公開スキルは無料でコピーして使用できます。

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