BaseCls BaseCls 是一个基于 MegEngine 的预训练模型库,帮助大家挑选或训练出更适合自己科研或者业务的模型结构

Overview

BaseCls

Documentation Status CI codecov

BaseCls 是一个基于 MegEngine 的预训练模型库,帮助大家挑选或训练出更适合自己科研或者业务的模型结构。

文档地址:https://basecls.readthedocs.io

安装

安装环境

BaseCls 需要 Python >= 3.6。

BaseCls 依赖 MegEngine >= 1.6.0。

通过包管理器安装

通过 pip 包管理器安装 BaseCls 的命令如下:

pip3 install basecls --user

默认不会安装包括 MegEngine 在内的部分依赖,可以通过以下命令进行完整安装:

pip3 install basecls[all] --user

对于 conda 用户, 可以选择通过在环境中先安装 pip,再按照上述方式进行 BaseCls 的安装。

通过源代码安装

为保证模型性能的可追溯性,避免实验碎片化,建议通过包管理器安装。如果包管理器安装的方式无法满足你的需求,则可以尝试自行通过源码安装。

安装依赖

pip3 install -r requirements.txt --user

安装 BaseCls

python3 setup.py develop --user

验证安装

在 Python 中导入 BaseCls 验证安装成功并查看安装版本:

import basecls
print(basecls.__version__)

开发者须知

开发环境

# 安装依赖
pip3 install -r requirements-dev.txt --user

# 配置 pre-commit
pre-commit install

开发流程

提交者需补充相应修改的单元测试。

# (外部开发者)fork repo,或(内部开发者)建立 new-feature 分支
git checkout -b new-feature

# 进行修改

# 代码风格检查与格式化
make lint
make format

# 单元测试与覆盖率检查
make unittest

# 提交修改
git commit

# 提交MR/PR
Owner
MEGVII Research
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