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# ViT 

## 论文
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`An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale`
- https://arxiv.org/abs/2010.11929
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## 模型结构
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Vision Transformer先将图像用卷积进行分块以降低计算量,再对每一块进行展平处理变成序列,然后将序列添加位置编码和cls token,再输入多层Transformer结构提取特征,最后将cls tooken取出来通过一个MLP(多层感知机)用于分类。
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![img](./doc/vit.png)
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## 算法原理
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图像领域借鉴《Transformer is all you need!》算法论文中的Encoder结构提取特征,Transformer的核心思想是利用注意力模块attention提取特征:
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![img](./doc/attention.png)
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## 环境配置
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```
mv megatron-deepspeed-vit_pytorch megatron-deepspeed-vit # 去框架名后缀
```
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### Docker(方法一)
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```
docker pull image.sourcefind.cn:5000/dcu/admin/base/pytorch:1.10.0-centos7.6-dtk-23.04-py38-latest
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# <your IMAGE ID>用以上拉取的docker的镜像ID替换
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docker run --shm-size 10g --network=host --name=megatron --privileged --device=/dev/kfd --device=/dev/dri --group-add video --cap-add=SYS_PTRACE --security-opt seccomp=unconfined -v $PWD/megatron-deepspeed-vit:/home/megatron-deepspeed-vit -it <your IMAGE ID> bash
pip install -r requirements.txt
```
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### Dockerfile(方法二)
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```
cd megatron-deepspeed-vit/docker
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docker build --no-cache -t megatron:latest .
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docker run --rm --shm-size 10g --network=host --name=megatron --privileged --device=/dev/kfd --device=/dev/dri --group-add video --cap-add=SYS_PTRACE --security-opt seccomp=unconfined -v $PWD/../../megatron-deepspeed-vit:/home/megatron-deepspeed-vit -it megatron bash
# 若遇到Dockerfile启动的方式安装环境需要长时间等待,可注释掉里面的pip安装,启动容器后再安装python库:pip install -r requirements.txt
```
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### Anaconda(方法三)
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1、关于本项目DCU显卡所需的特殊深度学习库可从光合开发者社区下载安装:
https://developer.hpccube.com/tool/
```
DTK驱动:dtk23.04
python:python3.8
torch:1.10.0
torchvision:0.10.0
torchaudio:0.10.0
deepspeed:0.9.2
apex:0.1
```
`Tips:以上dtk驱动、python、torch等DCU相关工具版本需要严格一一对应`

2、其它非特殊库参照requirements.txt安装
```
pip install -r requirements.txt
```
## 数据集

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`ILSVRC 2012`

- https://image-net.org/challenges/LSVRC/index.php
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`imagenet 2012` 的解压与整理方法参照链接:
https://www.jianshu.com/p/a42b7d863825

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项目中已提供用于试验训练的迷你数据集,训练数据目录结构如下,用于正常训练的完整数据集请按此目录结构进行制备:
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```
data
    |
    train
        |
        n01440764
        n01806143
        ...
    val
        |
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        n01440764
        n01824575
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        ...
    test
        |
        images
            |
            test_x.JPEG
            test_xxx.JPEG
            ...
```
## 训练
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### 单机多卡
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```
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cd megatron-deepspeed-vit
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sh examples/dspvit_1node.sh
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```
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### 单机单卡
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```
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sh examples/dspvit_1dcu.sh
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```
## 推理
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方法类似以上训练步骤,只需传参时在[`dspvit_1node.sh`](./examples/dspvit_1node.sh)中额外添加以下两个参数:
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```
--eval-only True \
--do_test True \
```
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### 单机多卡
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```
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sh examples/dspvit_1node.sh
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```
## result
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![img](./doc/classify.png)
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## 应用场景
### 算法类别
`图像分类`
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### 热点应用行业
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`制造,环境,医疗,气象`
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## 源码仓库及问题反馈
- https://developer.hpccube.com/codes/modelzoo/megatron-deepspeed-vit_pytorch
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## 参考资料
- https://github.com/bigscience-workshop/Megatron-DeepSpeed

- https://www.deepspeed.ai/getting-started/

- https://deepspeed.readthedocs.io/en/latest/index.html