monitoring-error-rates
について
このスキルは、ClaudeがHTTPリクエスト、データベース、外部APIなど様々なコンポーネントにわたるアプリケーションのエラー率を監視・分析することを可能にします。開発者がエラーの追跡、エラー率の分析、または定義された閾値に基づくアラート設定を行う必要がある場合にご利用ください。包括的なエラートラッキングを自動化し、アプリケーションの信頼性向上を支援します。
クイックインストール
Claude Code
推奨/plugin add https://github.com/jeremylongshore/claude-code-plugins-plusgit clone https://github.com/jeremylongshore/claude-code-plugins-plus.git ~/.claude/skills/monitoring-error-ratesこのコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします
ドキュメント
Overview
This skill automates the process of setting up comprehensive error monitoring and alerting for various components of an application. It helps identify, track, and analyze different types of errors, enabling proactive identification and resolution of issues before they impact users.
How It Works
- Analyze Error Sources: Identifies potential error sources within the application architecture, including HTTP endpoints, database queries, external APIs, background jobs, and client-side code.
- Define Monitoring Criteria: Establishes specific error types and thresholds for each source, such as HTTP status codes (4xx, 5xx), exception types, query timeouts, and API response failures.
- Configure Alerting: Sets up alerts to trigger when error rates exceed defined thresholds, notifying relevant teams or individuals for investigation and remediation.
When to Use This Skill
This skill activates when you need to:
- Set up error monitoring for a new application.
- Analyze existing error rates and identify areas for improvement.
- Configure alerts to be notified of critical errors in real-time.
- Establish error budgets and track progress towards reliability goals.
Examples
Example 1: Setting up Error Monitoring for a Web Application
User request: "Monitor errors in my web application, especially 500 errors and database connection issues."
The skill will:
- Analyze the web application's architecture to identify potential error sources (e.g., HTTP endpoints, database connections).
- Configure monitoring for 500 errors and database connection failures, setting appropriate thresholds and alerts.
Example 2: Analyzing Error Rates in a Background Job Processor
User request: "Analyze error rates for my background job processor. I'm seeing a lot of failed jobs."
The skill will:
- Focus on the background job processor and identify the types of errors occurring (e.g., task failures, timeouts, resource exhaustion).
- Analyze the frequency and patterns of these errors to identify potential root causes.
Best Practices
- Granularity: Monitor errors at a granular level to identify specific problem areas.
- Thresholding: Set appropriate alert thresholds to avoid alert fatigue and focus on critical issues.
- Context: Include relevant context in error messages and alerts to facilitate troubleshooting.
Integration
This skill can be integrated with other monitoring and alerting tools, such as Prometheus, Grafana, and PagerDuty, to provide a comprehensive view of application health and performance. It can also be used in conjunction with incident management tools to streamline incident response workflows.
GitHub リポジトリ
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