docker
docker 部署合集
docker搭建OpenLDAP
docker-compose
phpLdapAdmin 创建用户和组
jenkins 集成 ldap
添加memberOf模块
gitlab 集成ldap
OpenLDAP多主复制(基于docker容器模式部署)
ldap 日志
LDAP自助密码服务平台
cadvisor
开放 端口 和 套接字
docker命令
Weave Scope
cmd entrypoint
docker-compose 删除数据卷
docker slim
面试
harbor 更新证书
Docker Build Cache 缓存清理
本文档使用 MrDoc 发布
-
+
首页
cadvisor
![](/media/202304/2023-04-13_164301_6886130.9153617777697569.png) ![test status](https://github.com/google/cadvisor/workflows/Test/badge.svg) 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. cAdvisor has native support for [Docker](https://github.com/docker/docker) containers and should support just about any other container type out of the box. We strive for support across the board so feel free to open an issue if that is not the case. cAdvisor's container abstraction is based on [lmctfy](https://github.com/google/lmctfy)'s so containers are inherently nested hierarchically. #### Quick Start: Running cAdvisor in a Docker Container To quickly tryout cAdvisor on your machine with Docker, we have a Docker image that includes everything you need to get started. You can run a single cAdvisor to monitor the whole machine. Simply run: ``` VERSION=v0.36.0 # use the latest release version from https://github.com/google/cadvisor/releases sudo docker run \ --volume=/:/rootfs:ro \ --volume=/var/run:/var/run:ro \ --volume=/sys:/sys:ro \ --volume=/var/lib/docker/:/var/lib/docker:ro \ --volume=/dev/disk/:/dev/disk:ro \ --publish=8080:8080 \ --detach=true \ --name=cadvisor \ --privileged \ --device=/dev/kmsg \ gcr.io/cadvisor/cadvisor:$VERSION ``` cAdvisor is now running (in the background) on `http://localhost:8080`. The setup includes directories with Docker state cAdvisor needs to observe. **Note**: If you're running on CentOS, Fedora, or RHEL (or are using LXC), take a look at our [running instructions](docs/running.md). We have detailed [instructions](docs/running.md#standalone) on running cAdvisor standalone outside of Docker. cAdvisor [running options](docs/runtime_options.md) may also be interesting for advanced usecases. If you want to build your own cAdvisor Docker image, see our [deployment](docs/deploy.md) page. For [Kubernetes](https://github.com/kubernetes/kubernetes) users, cAdvisor can be run as a daemonset. See the [instructions](deploy/kubernetes) for how to get started, and for how to [kustomize](https://github.com/kubernetes-sigs/kustomize#kustomize) it to fit your needs. ## Building and Testing See the more detailed instructions in the [build page](docs/development/build.md). This includes instructions for building and deploying the cAdvisor Docker image. ## Exporting stats cAdvisor supports exporting stats to various storage plugins. See the [documentation](docs/storage/README.md) for more details and examples. ## Web UI cAdvisor exposes a web UI at its port: `http://<hostname>:<port>/` See the [documentation](docs/web.md) for more details. ## Remote REST API & Clients cAdvisor exposes its raw and processed stats via a versioned remote REST API. See the API's [documentation](docs/api.md) for more information. There is also an official Go client implementation in the [client](client/) directory. See the [documentation](docs/clients.md) for more information. ## Roadmap cAdvisor aims to improve the resource usage and performance characteristics of running containers. Today, we gather and expose this information to users. In our roadmap: - Advise on the performance of a container (e.g.: when it is being negatively affected by another, when it is not receiving the resources it requires, etc). - Auto-tune the performance of the container based on previous advise. - Provide usage prediction to cluster schedulers and orchestration layers. ## Community Contributions, questions, and comments are all welcomed and encouraged! cAdvisor developers hang out on [Slack](https://kubernetes.slack.com) in the #sig-node channel (get an invitation [here](http://slack.kubernetes.io/)). We also have [discuss.kubernetes.io](https://discuss.kubernetes.io/). Please reach out and get involved in the project, we're actively looking for more contributors to bring on board! ### Core Team * [@bobbypage, Google](https://github.com/bobbypage) * [@iwankgb, Independent](https://github.com/iwankgb) * [@creatone, Independent](https://github.com/creatone) * [@dims, VMWare](https://github.com/dims) * [@mrunalp, RedHat](https://github.com/mrunalp) ### Frequent Collaborators * [@haircommander, RedHat](https://github.com/haircommander) ### Emeritus * [@dashpole, Google](https://github.com/dashpole) * [@dchen1107, Google](https://github.com/dchen1107) * [@derekwaynecarr, RedHat](https://github.com/derekwaynecarr)
admin
2023年4月13日 16:43
转发文档
收藏文档
上一篇
下一篇
手机扫码
复制链接
手机扫一扫转发分享
复制链接
Markdown文件
分享
链接
类型
密码
更新密码