qdrant-monitoring
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npx mdskill add github/awesome-copilot/qdrant-monitoringDiagnose Qdrant health and configure observability tools.
- Identify performance bottlenecks like optimizer stalls or memory growth.
- Integrates with Prometheus, Grafana, and Qdrant monitoring docs.
- Analyzes metric data to determine root causes of slow requests.
- Generates actionable steps for setting up alerts and health checks.
SKILL.md
.github/skills/qdrant-monitoringView on GitHub ↗
--- name: qdrant-monitoring description: "Guides Qdrant monitoring and observability setup. Use when someone asks 'how to monitor Qdrant', 'what metrics to track', 'is Qdrant healthy', 'optimizer stuck', 'why is memory growing', 'requests are slow', or needs to set up Prometheus, Grafana, or health checks. Also use when debugging production issues that require metric analysis." allowed-tools: - Read - Grep - Glob --- # Qdrant Monitoring Qdrant monitoring allows tracking performance and health of your deployment, and identifying issues before they become outages. First determine whether you need to set up monitoring or diagnose an active issue. - Understand available metrics [Monitoring docs](https://search.qdrant.tech/md/documentation/operations/monitoring/) ## Monitoring Setup Prometheus scraping, health probes, Hybrid Cloud specifics, alerting, and log centralization. [Monitoring Setup](setup/SKILL.md) ## Debugging with Metrics Optimizer stuck, memory growth, slow requests. Using metrics to diagnose active production issues. [Debugging with Metrics](debugging/SKILL.md)
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