/install auto-conda-env
Auto Conda Env for Python Project / 自动为Python项目配置Conda环境
触发条件 / When to Use
当用户需要为Python项目配置独立运行环境、自动创建Conda环境,或希望复用已有的匹配环境时,使用本技能。 Use when: setting up an isolated Python env, creating a new Conda env, or reusing an existing one for a project.
执行步骤 / Execution Steps
1. 获取项目路径 / Get Project Path
- 询问用户提供Python项目文件夹路径,若未指定则默认使用当前工作目录。 Ask for the project folder path; default to current working directory if not provided.
- 验证路径是否存在且为有效文件夹。 Verify the path exists and is a valid directory.
2. 扫描项目依赖文件 / Scan Dependency Files
进入项目文件夹,按以下优先级扫描:Scan in this order:
| 优先级 / Priority | 文件 / File | 提取内容 / What to Extract |
|---|---|---|
| 1 | environment.yml / environment.yaml |
Python版本 + 所有依赖 / Python version + all deps |
| 2 | pyproject.toml |
project.requires-python + project.dependencies |
| 3 | requirements.txt |
依赖包列表(检查 .python-version 获取版本) |
| 4 | setup.py |
python_requires + install_requires |
| 5 | Pipfile |
[packages] 节 |
| 6 | setup.cfg |
install_requires |
- 若未找到任何依赖配置文件,默认使用 Python 3.10,无额外依赖。 Default to Python 3.10 with no extra packages if nothing found.
3. 查找 conda 可执行文件 / Find Conda Executable
conda 可能不在 PATH 中,按以下顺序尝试:Try these paths if conda is not in PATH:
which conda
~/.local/bin/conda # pip-installed conda
~/miniconda3/bin/conda # standard Miniconda
~/anaconda3/bin/conda # standard Anaconda
$HOME/miniconda3/bin/conda
$HOME/anaconda3/bin/conda
保存找到的 conda 路径为 CONDA,后续所有 conda 命令用 CONDA 前缀执行。
Save the working conda path as CONDA; prefix all conda commands with it.
4. 检查现有Conda环境 / Check Existing Environments
- 执行
CONDA info --envs获取环境列表。 - 对每个环境验证:
CONDA run -n \x3Cenv> which python— 确认 python 存在(避免 ghost env)CONDA run -n \x3Cenv> python --version— 验证 Python 版本CONDA run -n \x3Cenv> pip list— 验证依赖已安装
⚠️ 部分 conda 环境 python 不在 PATH(如损坏/空环境),
conda run会失败,此时跳过该环境。 Some envs failconda run— skip them.
若找到完全匹配的环境 → 复用。 若未找到 → 进入步骤 5 创建。
5. 复用或创建环境 / Reuse or Create
复用 / Reuse:
- 确认环境 python 可执行且版本匹配
- 验证核心依赖已安装
- 配置 OpenClaw 后续操作使用此环境
创建新环境 / Create New:
-
生成环境名:
项目文件夹名→ 小写 → 特殊字符替换为_→ 追加_env例 / e.g.:MyProject-2.0→myproject_2_0_env -
创建环境:
CONDA create -n \x3Cenv_name> python=\x3Cversion> -y -
安装依赖 / Install Dependencies:
依赖文件 / File 安装命令 / Command environment.ymlCONDA env update -n \x3Cenv> -f environment.yml --prunepyproject.tomlCONDA run -n \x3Cenv> pip install .requirements.txtCONDA run -n \x3Cenv> pip install -r requirements.txtsetup.pyCONDA run -n \x3Cenv> pip install .PipfileCONDA run -n \x3Cenv> pip install pipenv && CONDA run -n \x3Cenv> pipenv sync无配置文件 / None 仅创建空环境 / create empty env only 💡 pip 安装失败时(如系统保护
PEP 668),追加--break-system-packages参数重试。 If pip refuses due to PEP 668, add--break-system-packages. -
GPU / CUDA 处理(如需要)/ Handle GPU / CUDA if needed:
- 检查项目是否 import torch / tensorflow 等
- 若需要 GPU:
CONDA run -n \x3Cenv> pip install torch torchvision --index-url https://download.pytorch.org/whl/cu118 - 验证:
CONDA run -n \x3Cenv> python -c "import torch; print(torch.cuda.is_available())"
-
验证环境可用 / Verify Env Works:
CONDA run -n \x3Cenv> python -c "import numpy, scipy, sklearn; print('OK')"若失败,记录缺失的包并重新安装。
6. 输出结果 / Output Summary
最终告知用户:
环境名称 / Env name: \x3Cname>
Python 版本 / Python: \x3Cversion>
已安装依赖 / Installed: \x3Clist>
环境路径 / Path: /path/to/env
激活命令 / Activate: conda activate \x3Cname>
注意事项 / Notes
conda不在 PATH 是常见问题,优先搜索常见安装路径 Missingcondain PATH is common; search standard install locations first- ghost 环境(python 不存在)用
conda run ... which python排除 Usewhich pythonviaconda runto detect ghost/broken envs - pip 安装失败先尝试加
--break-system-packagesTry--break-system-packageswhen pip is blocked by OS package protection - GPU 项目安装 torch 后务必验证 CUDA 可用 Always verify CUDA availability after installing torch
- 不修改用户现有 conda 安装,只读和复用/创建新环境 Read-only on existing installs; only create/reuse envs, don't modify base
适用场景 / Use Cases
- 新项目初始化 / New project setup
- 不同项目需要不同 Python 版本 / Projects needing different Python versions
- 有 CUDA 依赖的 ML/DL 项目 / ML/DL projects with CUDA dependencies
- 依赖冲突隔离 / Isolating dependency conflicts
- 团队环境标准化 / Team environment standardization
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install auto-conda-env - After installation, invoke the skill by name or use
/auto-conda-env - Provide required inputs per the skill's parameter spec and get structured output
What is Auto Conda Env?
自动为Python项目创建或复用匹配的Conda环境,扫描项目依赖文件自动配置运行环境。Auto-create or reuse a Conda env for any Python project — scans deps, matches envs, handles CUDA/GPU needs. It is an AI Agent Skill for Claude Code / OpenClaw, with 91 downloads so far.
How do I install Auto Conda Env?
Run "/install auto-conda-env" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Auto Conda Env free?
Yes, Auto Conda Env is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Auto Conda Env support?
Auto Conda Env is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Auto Conda Env?
It is built and maintained by Kazuya (@kazuya-ecnu); the current version is v1.1.0.