
如果你使用 DeepSeek、元宝 AI、Copilot、ChatGPT 等 AI 工具,协助配置轩辕镜像、编写 docker pull 命令、修改 Docker Compose 镜像地址、配置镜像加速、排查镜像拉取失败、分析报错日志等问题,请先让 AI 阅读并遵守轩辕镜像的规则文档。
只需在 AI 对话中先发送下面这句话即可:
请先完整阅读并严格遵守以下文档中的全部规则与要求:
https://xuanyuan.cloud/agents.md
在未充分阅读并理解该文档前,不要生成任何命令、配置、修改建议、故障排查方案或技术回答。后续所有输出都必须严格以该文档中的规范为最高优先级执行。查看 agents.md 用法指南与完整示范。国内用户首推 元宝 AI、DeepSeek 的深度思考模式,不推荐豆包 AI;Cursor 等编辑器可在对话 @ 该链接,或加入 User Rules。 若 AI 无法访问外链,可 打开说明文档 复制全文粘贴。文档会随站点更新,复制内容可能过期,建议定期检查。
https://badges.gitter.im/linkedin-Burrow/Lobby.svg](https://gitter.im/linkedin-Burrow/Lobby?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge&utm_content=badge) https://travis-ci.org/linkedin/kafka-tools.svg](https://travis-ci.org/linkedin/kafka-tools) https://goreportcard.com/badge/github.com/linkedin/Burrow](https://goreportcard.com/report/github.com/linkedin/Burrow) https://coveralls.io/repos/github/linkedin/Burrow/badge.svg?branch=master](https://coveralls.io/github/linkedin/Burrow?branch=master) https://godoc.org/github.com/linkedin/Burrow?status.svg](https://godoc.org/github.com/linkedin/Burrow)
Burrow is a monitoring companion for http://kafka.apache.org that provides consumer lag checking as a service without the need for specifying thresholds. It monitors committed offsets for all consumers and calculates the status of those consumers on demand. An HTTP endpoint is provided to request status on demand, as well as provide other Kafka cluster information. There are also configurable notifiers that can send status out via email or HTTP calls to another service.
Burrow is written in Go, so before you get started, you should https://golang.org/doc/install.
If you have not yet installed the https://github.com/golang/dep, please go over there and follow their short installation instructions. dep is used to automatically pull in the dependencies for Burrow so you don't have to chase them all down.
$ go get github.com/linkedin/Burrow $ cd $GOPATH/src/github.com/linkedin/Burrow $ dep ensure $ go install
$ $GOPATH/bin/Burrow --config-dir /path/containing/config
A Docker file is available which builds this project on top of an Alpine Linux image.
To use it, build your docker container, mount your Burrow configuration into /etc/burrow and run docker.
A https://docs.docker.com/compose/ is also available for quick and easy development.
Install Docker Compose and then:
Build the docker container:
docker-compose build
Run the docker compose stack which includes kafka and zookeeper:
docker-compose down; docker-compose up
Some test topics have already been created by default and Burrow can be accessed on port 8000 of your docker-machine. e.g. http://192.168.99.100:8000/v2/kafka
For information on how to write your configuration file, check out the https://github.com/linkedin/Burrow/wiki
Copyright 2017 LinkedIn Corp. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
您可以使用以下命令拉取该镜像。请将 <标签> 替换为具体的标签版本。如需查看所有可用标签版本,请访问 标签列表页面。
来自真实用户的反馈,见证轩辕镜像的优质服务