kube-profefe

profiler

Provides continuous profiling capabilities in Kubernetes environments

continuous profiling made easy in Kubernetes with profefe

GitHub

78 stars
5 watching
15 forks
Language: Go
last commit: about 4 years ago
golangkubernetesperformancepprof

Related projects:

Repository Description Stars
pkg/profile A simple Go package to enable profiling of application performance 2,003
becheran/roumon A tool to monitor and analyze the performance of concurrent programs in real-time. 187
parca-dev/parca-agent A tool for real-time profiling of running processes without modifying their source code or restarting them. 551
kube-burner/kube-burner A toolset for testing and optimizing Kubernetes clusters' performance and scale 502
maxm65dia/vscode-go-prof An extension for VS Code that provides benchmark profiling support for the Go language 7
gperfutils/gprof A Java profiling tool that analyzes program execution time and provides detailed performance reports. 33
pfirsich/jprof A profiling library for Lua applications that allows developers to annotate their code with profiling zones and generate human-readable profiles. 90
objectprofile/spy2 A profiling framework for Pharo that collects execution statistics and visualizes test coverage 7
keikoproj/kube-forensics Tool to create checkpoint snapshots of running Kubernetes pods for forensic analysis after termination. 221
thlorenz/cpuprofilify Converts profiling output to a format used by Chrome DevTools 167
giginet/xcprofiler A tool to measure compilation time of Swift projects. 334
lpereira/hardinfo A system profiler and benchmark tool for Linux systems that gathers hardware and software information. 770
postfinance/kubenurse A Kubernetes network monitoring tool that measures request durations, records errors, and exports metrics in Prometheus format. 416
virtual-kubelet/tensile-kube Enables Kubernetes clusters to work together by automatically discovering resources and scheduling pods across multiple clusters 270
iglaweb/tfprofiler An app for profiling and optimizing the performance of TensorFlow Lite models on mobile devices 27