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* add doc for vdl serving * add doc for vdl serving * add doc for vdl serving * fix link * fix link * fix gif size * fix gif size * add english version * fix links * fix links * update format * update docs * update docs * update docs * update docs * update docs * update docs --------- Co-authored-by: heliqi <1101791222@qq.com>
94 lines
3.9 KiB
Markdown
94 lines
3.9 KiB
Markdown
[English](README.md) | 简体中文
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# PaddleClas 服务化部署示例
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在服务化部署前,需确认
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- 1. 服务化镜像的软硬件环境要求和镜像拉取命令请参考[FastDeploy服务化部署](../../../../../serving/README_CN.md)
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## 启动服务
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```bash
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#下载部署示例代码
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git clone https://github.com/PaddlePaddle/FastDeploy.git
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cd FastDeploy/examples/vision/classification/paddleclas/serving
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# 下载ResNet50_vd模型文件和测试图片
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wget https://bj.bcebos.com/paddlehub/fastdeploy/ResNet50_vd_infer.tgz
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tar -xvf ResNet50_vd_infer.tgz
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wget https://gitee.com/paddlepaddle/PaddleClas/raw/release/2.4/deploy/images/ImageNet/ILSVRC2012_val_00000010.jpeg
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# 将配置文件放入预处理目录
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mv ResNet50_vd_infer/inference_cls.yaml models/preprocess/1/inference_cls.yaml
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# 将模型放入 models/runtime/1目录下, 并重命名为model.pdmodel和model.pdiparams
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mv ResNet50_vd_infer/inference.pdmodel models/runtime/1/model.pdmodel
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mv ResNet50_vd_infer/inference.pdiparams models/runtime/1/model.pdiparams
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# 拉取fastdeploy镜像(x.y.z为镜像版本号,需参照serving文档替换为数字)
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# GPU镜像
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docker pull registry.baidubce.com/paddlepaddle/fastdeploy:x.y.z-gpu-cuda11.4-trt8.4-21.10
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# CPU镜像
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docker pull registry.baidubce.com/paddlepaddle/fastdeploy:x.y.z-cpu-only-21.10
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# 运行容器.容器名字为 fd_serving, 并挂载当前目录为容器的 /serving 目录
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nvidia-docker run -it --net=host --name fd_serving -v `pwd`/:/serving registry.baidubce.com/paddlepaddle/fastdeploy:x.y.z-gpu-cuda11.4-trt8.4-21.10 bash
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# 启动服务(不设置CUDA_VISIBLE_DEVICES环境变量,会拥有所有GPU卡的调度权限)
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CUDA_VISIBLE_DEVICES=0 fastdeployserver --model-repository=/serving/models --backend-config=python,shm-default-byte-size=10485760
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```
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>> **注意**:
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>> 拉取其他硬件上的镜像请看[服务化部署主文档](../../../../../serving/README_CN.md)
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>> 执行fastdeployserver启动服务出现"Address already in use", 请使用`--grpc-port`指定端口号来启动服务,同时更改客户端示例中的请求端口号.
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>> 其他启动参数可以使用 fastdeployserver --help 查看
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服务启动成功后, 会有以下输出:
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```
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......
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I0928 04:51:15.784517 206 grpc_server.cc:4117] Started GRPCInferenceService at 0.0.0.0:8001
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I0928 04:51:15.785177 206 http_server.cc:2815] Started HTTPService at 0.0.0.0:8000
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I0928 04:51:15.826578 206 http_server.cc:167] Started Metrics Service at 0.0.0.0:8002
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```
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## 客户端请求
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在物理机器中执行以下命令,发送grpc请求并输出结果
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```
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#下载测试图片
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wget https://gitee.com/paddlepaddle/PaddleClas/raw/release/2.4/deploy/images/ImageNet/ILSVRC2012_val_00000010.jpeg
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#安装客户端依赖
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python3 -m pip install tritonclient\[all\]
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# 发送请求
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python3 paddlecls_grpc_client.py
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```
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发送请求成功后,会返回json格式的检测结果并打印输出:
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```
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output_name: CLAS_RESULT
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{'label_ids': [153], 'scores': [0.6862289905548096]}
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```
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## 配置修改
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当前默认配置在GPU上运行TensorRT引擎, 如果要在CPU或其他推理引擎上运行。 需要修改`models/runtime/config.pbtxt`中配置,详情请参考[配置文档](../../../../../serving/docs/zh_CN/model_configuration.md)
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## 使用VisualDL进行可视化部署
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可以使用VisualDL进行[Serving可视化部署](../../../../../serving/docs/zh_CN/vdl_management.md),上述启动服务、配置修改以及客户端请求的操作都可以基于VisualDL进行。
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通过VisualDL的可视化界面对PaddleClas进行服务化部署只需要如下三步:
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```text
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1. 载入模型库:./vision/classification/paddleclas/serving/models
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2. 下载模型资源文件:点击runtime模型,点击版本号1添加预训练模型,选择图像分类模型ResNet50_vd进行下载。
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3. 启动服务:点击启动服务按钮,输入启动参数。
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```
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<p align="center">
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<img src="https://user-images.githubusercontent.com/22424850/211708702-828d8ad8-4e85-457f-9c62-12f53fc81853.gif" width="100%"/>
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</p>
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