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Datadog Observability Skill

Skill Aktiv

Full-stack observability with Datadog APM, logs, metrics, synthetics, and RUM. Use when implementing monitoring, tracing, alerting, or cost optimization for production systems.

Zweck

To enable users to effectively implement and manage full-stack observability for their production systems using Datadog, covering monitoring, tracing, logging, and cost optimization.

Funktionen

  • Full-stack observability with Datadog APM, logs, metrics, synthetics, RUM
  • Detailed installation instructions for Docker, Kubernetes, Linux, Windows
  • Guidance on application instrumentation (Python, Node.js, Go, Java)
  • Configuration best practices for custom metrics, log processing, and alerting
  • Strategies for cost optimization and cardinality management

Anwendungsfälle

  • Implementing production monitoring and observability
  • Setting up distributed tracing across microservices
  • Configuring log aggregation and analysis pipelines
  • Creating custom metrics and dashboards
  • Optimizing Datadog costs

Nicht-Ziele

  • Building with open-source stacks (Prometheus/Grafana)
  • Replacing managed observability solutions when cost is the primary concern
  • Providing a direct API to Datadog services (documentation and guidance only)

Workflow

  1. Understand Datadog capabilities
  2. Install Datadog Agent on target platform
  3. Instrument applications for APM and custom metrics
  4. Configure log collection and processing
  5. Set up dashboards and alerts
  6. Monitor and optimize costs

Praktiken

  • Observability best practices
  • APM instrumentation
  • Log management
  • Metric monitoring
  • Alerting strategies
  • Cost optimization

Voraussetzungen

  • Datadog account and API key
  • Installation of Datadog Agent
  • Application instrumentation (for APM/metrics)

Trust

  • warning:Issues AttentionThere are 4 open issues and 0 closed issues in the last 90 days, indicating a closure rate of 0% and potentially slow maintainer engagement.

Installation

npx skills add bobmatnyc/claude-mpm-skills

Führt das Vercel skills CLI (skills.sh) via npx aus — benötigt Node.js lokal und mindestens einen installierten skills-kompatiblen Agent (Claude Code, Cursor, Codex, …). Setzt voraus, dass das Repo dem agentskills.io-Format folgt.

Qualitätspunktzahl

89 /100
Analysiert 1 day ago

Vertrauenssignale

Letzter Commit29 days ago
Sterne44
LizenzMIT
Status
Quellcode ansehen

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