SkyWalking:一个分布式跟踪系统和APM(应用程序性能监视器)

网友投稿 848 2022-10-30

SkyWalking:一个分布式跟踪系统和APM(应用程序性能监视器)

SkyWalking:一个分布式跟踪系统和APM(应用程序性能监视器)

Apache SkyWalking

SkyWalking: an APM(application performance monitor) system, especially designed for microservices, cloud native and container-based (Docker, Kubernetes, Mesos) architectures.

Abstract

SkyWalking is an open source APM system, including monitoring, tracing, diagnosing capabilities for distributed system in Cloud Native architecture. The core features are following.

Service, service instance, endpoint metrics analysisRoot cause analysisService topology map analysisService, service instance and endpoint dependency analysisSlow services and endpoints detectedPerformance optimizationDistributed tracing and context propagationAlarm

SkyWalking supports to collect telemetry (traces and metrics) data from multiple sources and multiple formats, including

Java, .NET Core and NodeJS auto-instrument agents in SkyWalking formatIstio telemetry formatZipkin v1/v2 formats

Document

6.x Documents.

5.x is still supported by SkyWalking community, and the agent-backend protocol is compatible with 6.x.You can go to 5.x branch. At there, you have everything you need.

Go to 5.x pages. Also 5.x document is here.

Downloads

Please head to the releases page to download a release of Apache SkyWalking.

Code of conduct

This project adheres to the Contributor Covenant code of conduct. By participating, you are expected to uphold this code. Please report unacceptable behavior to dev@skywalking.apache.org .

Live Demo

Host in Beijing. gotoUsername: adminPassword: admin

Screenshot

See all screenshots

Compiling project

Follow this document.

Contact Us

Submit an issueMail list: dev@skywalking.apache.orgGitterQQ Group: 392443393

Who Uses SkyWalking?

A wide variety of companies and organizations use SkyWalking for research, production and commercial product. Here is the User Wall of SkyWalking.

Users are encouraged to add themselves to the PoweredBy page.

License

Apache 2.0 License.

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