Elastic APM MCP
Updated June 2026The Elastic APM MCP MCP server, built by community, provides access Elastic APM observability via the Elasticsearch and Kibana APIs — query service performance metrics, distributed traces, and error rates, analyze transaction latency percentiles, pull infrastructure and host metrics, access ML anomaly detection results, manage APM agent configuration, query log correlation data, build service maps, and monitor real user monitoring (RUM) analytics. It is community-built and best for Search.
by community
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Access Elastic APM observability via the Elasticsearch and Kibana APIs — query service performance metrics, distributed traces, and error rates, analyze transaction latency percentiles, pull infrastructure and host metrics, access ML anomaly detection results, manage APM agent configuration, query log correlation data, build service maps, and monitor real user monitoring (RUM) analytics.
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Repo Health
Local/stdio install — runs on your machine, so there is no remote endpoint to verify live. Trust signal below is from the source repo.
Repo recency not yet available for this server.
Quick Info
- Install Type
- npm
- Author
- community
- Categories
- 3
- Integrations
- 3
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