cAdvisor
Analyzes resource usage and performance characteristics of running containers. - google/cadvisor
Overview
Analyzes resource usage and performance characteristics of running containers. Analyzes resource usage and performance characteristics of running containers. - google/cadvisor cAdvisor (Container Advisor) provides container users an understanding of the resource usage and performance characteristics of their running containers. It is a running daemon that collects, aggregates, processes, and exports information about running containers. Specifically, for each container it keeps resource isolation parameters, historical resource usage, histograms of complete historical resource usage and network statistics. This data is exported by container and machine-wide. The project has 19K+ GitHub stars and is licensed under NOASSERTION.
Normalized Features
Source: tool-features-normalized.json
docker, kubernetes, plugins, rest api.
Deploy
Features
Integrations & APIs
- Plugin / Extension System
- REST API
Related Monitoring & Observability Tools
View all 92 →Firecrawl
94KTurn websites into LLM-ready data — scrape, crawl, and extract structured content from any website as clean markdown, JSON, or screenshots.
Uptime Kuma
84KFancy self-hosted uptime monitoring with 90+ notification services, status pages, and 20-second check intervals — the open-source UptimeRobot alternative.
Netdata
78KReal-time infrastructure monitoring with per-second metrics, 800+ integrations, built-in ML anomaly detection, and AI troubleshooting — using just 5% CPU and 150MB RAM.
Elasticsearch
76KThe distributed search and analytics engine that powers search at Netflix, eBay, and Uber — sub-millisecond queries across billions of documents, with vector search built in for AI/RAG applications.
Grafana
73KThe open-source observability platform for visualizing metrics, logs, and traces from Prometheus, Loki, Elasticsearch, and dozens more data sources.
Sentry
43KSentry is the leading error tracking and application performance monitoring platform, helping developers diagnose, fix, and optimize code across every stack.