
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。
Here are a couple of images for using lisp in containerized environments! There are a few variations that build on the quicklisp-sbcl-base image, which is Debian buster with sbcl and quicklisp installed.
I'll try to keep the ChangeLog updated as new releases roll out!
https://hub.docker.com/r/parentheticalenterprises/sbcl-quicklisp-base/
The image others build off of. Some interesting things for you, the user:
/quicklisp. That means you can add local projects to /quicklisp/local-projects much as you would without docker to add codebases that aren't downloadable via quicklisp.https://hub.docker.com/r/parentheticalenterprises/sbcl-quicklisp-prove/ https://hub.docker.com/r/parentheticalenterprises/sbcl-quicklisp-rove/
The https://github.com/fukamachi/prove and https://github.com/fukamachi/rove images are just the base with prove or rove, the testing packages by https://github.com/fukamachi as well as https://github.com/Chream/mockingbird by https://github.com/Chream. Thanks for the code, guys!
https://hub.docker.com/r/parentheticalenterprises/sbcl-quicklisp-slynk/
This image contains the backend for https://github.com/joaotavora/sly by https://github.com/joaotavora. It starts up a slynk server inside the container for you, so you should be able to run the container with port 4008 exposed to your host machine and then run sly-connect RET 127.0.0.1 RET 4008 in emacs to connect. Dockerized lisp dev environment!
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