让 AI 帮你使用轩辕镜像? · 展开查看说明 · 点击收起说明
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。
therako/datadog-agent-fargate
datadog/agent
datadog/docker-dd-agent
datadog/datadog-agent-runner-circle
datadog/agent-dev
datadog/cluster-agent
datadog/agent-amd64
datadog/cluster-agent-dev
datadog/agent-buildimages-datadog-ci-uploader
datadog/fake-datadog
datadog/agent-arm64
datadog/synthetics-private-location-worker
datadog/dev-dd-agent
datadog/dogstatsd
datadog/system-tests
datadog/datadog-agent-six-cci
datadog/dd-trace-ci
datadog/agent-dev-env-linux
datadog/serverless-init
datadog/docker-library
datadog/dd-trace-py
datadog/cws-instrumentation
datadog/agent-package-dev
datadog/agent-buildimages-rpm_x64
datadog/agent-buildimages-circleci-runner
datadog/agent-buildimages-deb_x64
datadog/dogstatsd-dev
datadog/datadog-agent-ecs-task-patcher
datadog/dd-lib-java-init
datadog/agent-package
datadog/ci
datadog/fips-proxy
datadog/dd-appsec-php-ci
datadog/agent-buildimages-windows_x64
datadog/agent-dev-amd64
datadog/agent-buildimages-rpm_arm64
datadog/ingress-nginx-injection
datadog/operator
datadog/docker-dogstatsd
datadog/agent-dev-arm64
datadog/dd-lib-dotnet-init
datadog/docker-dd-agent-build-rpm-x64
datadog/dd-lib-js-init
datadog/agent-buildimages-circleci-runner_test_only
datadog/dd-trace-java-docker-build
datadog/docker-dd-agent-build-deb-x64
datadog/agent-buildimages-deb_arm64
datadog/fakeintake
datadog/extendeddaemonset
datadog/lambda-extension
datadog/agent-buildimages-suse_x64
datadog/agent-buildimages-linux
datadog/agent-data-plane
datadog/observability-pipelines-worker
datadog/dd-lib-python-init
datadog/docker-dd-agent-build-rpm-i386
datadog/docker-dd-agent-build-deb-i386
portainer/agent
datadog/docker-filter
datadog/agent-buildimages-system-probe_x64
datadog/agent-buildimages-linux-glibc-2-17-x64
datadog/agent-buildimages-system-probe_arm64
datadog/apm-inject
sublimesec/datadog-agent
docker/ucp-agent
datadog/watermarkpodautoscaler
datadog/datadog-security-playground
datadog/cluster-agent-dev-amd64
grafana/agent
datadog/agent-buildimages-windows_1909_x64
datadog/cluster-agent-dev-arm64
datadog/dd-lib-ruby-init
datadog/agent-buildimages-windows_1809_x64
datadog/dogstatsd-socat-proxy
datadog/agent-buildimages-windows_1809_x86
mirantis/ucp-agent
datadog/agent-buildimages-windows_1909_x86
mirantis/ucp-agent-win
datadog/ddot-ebpf-dev
datadog/docker-dd-agent-build-rpm-suse-i386
datadog/libddwaf
hashicorp/tfc-agent
datadog/operator-bundle
datadog/ddot-collector
docker/ucp-agent-win
datadog/agent-buildimages-windows_2004_x64
rancher/agent
datadog/agent-buildimages-windows_20h2_x64
amazon/amazon-ecs-agent
datadog/dd-lib-php-init
datadog/cloudprem
datadog/chaos-controller
rancher/fleet-agent
datadog/apm-library-python-package
datadog/csi-driver
datadog/apigentools
datadog/docker-dd-agent
datadog/datadog-agent-runner-circle
datadog/cluster-agent
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