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# PPOCR 服务化部署

([English](./README.md)|简体中文)

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PaddleOCR提供2种服务部署方式:
- 基于PaddleHub Serving的部署:代码路径为"`./deploy/hubserving`",使用方法参考[文档](../../deploy/hubserving/readme.md)
- 基于PaddleServing的部署:代码路径为"`./deploy/pdserving`",按照本教程使用。

# 基于PaddleServing的服务部署

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本文档将介绍如何使用[PaddleServing](https://github.com/PaddlePaddle/Serving/blob/develop/README_CN.md)工具部署PPOCR
动态图模型的pipeline在线服务。

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相比较于hubserving部署,PaddleServing具备以下优点:
- 支持客户端和服务端之间高并发和高效通信
- 支持 工业级的服务能力 例如模型管理,在线加载,在线A/B测试等
- 支持 多种编程语言 开发客户端,例如C++, Python和Java
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更多有关PaddleServing服务化部署框架介绍和使用教程参考[文档](https://github.com/PaddlePaddle/Serving/blob/develop/README_CN.md)
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## 目录
- [环境准备](#环境准备)
- [模型转换](#模型转换)
- [Paddle Serving pipeline部署](#部署)
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- [Windows用户](#Windows用户)
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- [FAQ](#FAQ)
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<a name="环境准备"></a>
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## 环境准备

需要准备PaddleOCR的运行环境和Paddle Serving的运行环境。

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- 准备PaddleOCR的运行环境[链接](../../doc/doc_ch/installation.md)
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  根据环境下载对应的paddlepaddle whl包,推荐安装2.2.2版本
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- 准备PaddleServing的运行环境,步骤如下
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```bash
# 安装serving,用于启动服务
wget https://paddle-serving.bj.bcebos.com/test-dev/whl/paddle_serving_server_gpu-0.7.0.post102-py3-none-any.whl
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pip3 install paddle_serving_server_gpu-0.7.0.post102-py3-none-any.whl
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# 如果是cuda10.1环境,可以使用下面的命令安装paddle-serving-server
# wget https://paddle-serving.bj.bcebos.com/test-dev/whl/paddle_serving_server_gpu-0.7.0.post101-py3-none-any.whl
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# pip3 install paddle_serving_server_gpu-0.7.0.post101-py3-none-any.whl
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# 安装client,用于向服务发送请求
wget https://paddle-serving.bj.bcebos.com/test-dev/whl/paddle_serving_client-0.7.0-cp37-none-any.whl
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pip3 install paddle_serving_client-0.7.0-cp37-none-any.whl
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# 安装serving-app
wget https://paddle-serving.bj.bcebos.com/test-dev/whl/paddle_serving_app-0.7.0-py3-none-any.whl
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pip3 install paddle_serving_app-0.7.0-py3-none-any.whl
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```
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**Note:** 如果要安装最新版本的PaddleServing参考[链接](https://github.com/PaddlePaddle/Serving/blob/v0.7.0/doc/Latest_Packages_CN.md)
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<a name="模型转换"></a>
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## 模型转换
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使用PaddleServing做服务化部署时,需要将保存的inference模型转换为serving易于部署的模型。

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首先,下载PPOCR的[inference模型](https://github.com/PaddlePaddle/PaddleOCR#pp-ocr-series-model-listupdate-on-september-8th)
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```bash
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# 下载并解压 OCR 文本检测模型
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wget https://paddleocr.bj.bcebos.com/PP-OCRv2/chinese/ch_PP-OCRv2_det_infer.tar -O ch_PP-OCRv2_det_infer.tar && tar -xf ch_PP-OCRv2_det_infer.tar
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# 下载并解压 OCR 文本识别模型
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wget https://paddleocr.bj.bcebos.com/PP-OCRv2/chinese/ch_PP-OCRv2_rec_infer.tar -O ch_PP-OCRv2_rec_infer.tar &&  tar -xf ch_PP-OCRv2_rec_infer.tar
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```

接下来,用安装的paddle_serving_client把下载的inference模型转换成易于server部署的模型格式。
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```bash
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# 转换检测模型
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python3 -m paddle_serving_client.convert --dirname ./ch_PP-OCRv2_det_infer/ \
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                                         --model_filename inference.pdmodel          \
                                         --params_filename inference.pdiparams       \
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                                         --serving_server ./ppocr_det_mobile_2.0_serving/ \
                                         --serving_client ./ppocr_det_mobile_2.0_client/
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# 转换识别模型
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python3 -m paddle_serving_client.convert --dirname ./ch_PP-OCRv2_rec_infer/ \
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                                         --model_filename inference.pdmodel          \
                                         --params_filename inference.pdiparams       \
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                                         --serving_server ./ppocr_rec_mobile_2.0_serving/  \
                                         --serving_client ./ppocr_rec_mobile_2.0_client/
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```

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检测模型转换完成后,会在当前文件夹多出`ppocr_det_mobile_2.0_serving``ppocr_det_mobile_2.0_client`的文件夹,具备如下格式:
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```
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|- ppocr_det_mobile_2.0_serving/
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  |- __model__  
  |- __params__
  |- serving_server_conf.prototxt  
  |- serving_server_conf.stream.prototxt

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|- ppocr_det_mobile_2.0_client
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  |- serving_client_conf.prototxt  
  |- serving_client_conf.stream.prototxt

```
识别模型同理。

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<a name="部署"></a>
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## Paddle Serving pipeline部署

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1. 下载PaddleOCR代码,若已下载可跳过此步骤
    ```
    git clone https://github.com/PaddlePaddle/PaddleOCR

    # 进入到工作目录
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    cd PaddleOCR/deploy/pdserving/
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    ```
    pdserver目录包含启动pipeline服务和发送预测请求的代码,包括:
    ```
    __init__.py
    config.yml            # 启动服务的配置文件
    ocr_reader.py         # OCR模型预处理和后处理的代码实现
    pipeline_http_client.py   # 发送pipeline预测请求的脚本
    web_service.py        # 启动pipeline服务端的脚本
    ```

2. 启动服务可运行如下命令:
    ```
    # 启动服务,运行日志保存在log.txt
    python3 web_service.py &>log.txt &
    ```
    成功启动服务后,log.txt中会打印类似如下日志
    ![](./imgs/start_server.png)

3. 发送服务请求:
    ```
    python3 pipeline_http_client.py
    ```
    成功运行后,模型预测的结果会打印在cmd窗口中,结果示例为:
    ![](./imgs/results.png)

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    调整 config.yml 中的并发个数获得最大的QPS, 一般检测和识别的并发数为2:1
    ```
    det:
        #并发数,is_thread_op=True时,为线程并发;否则为进程并发
        concurrency: 8
        ...
    rec:
        #并发数,is_thread_op=True时,为线程并发;否则为进程并发
        concurrency: 4
        ...
    ```
    有需要的话可以同时发送多个服务请求

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    预测性能数据会被自动写入 `PipelineServingLogs/pipeline.tracer` 文件中。

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    在200张真实图片上测试,把检测长边限制为960。T4 GPU 上 QPS 均值可达到23左右:

    ```
    2021-05-13 03:42:36,895 ==================== TRACER ======================
    2021-05-13 03:42:36,975 Op(rec):
    2021-05-13 03:42:36,976         in[14.472382882882883 ms]
    2021-05-13 03:42:36,976         prep[9.556855855855856 ms]
    2021-05-13 03:42:36,976         midp[59.921905405405404 ms]
    2021-05-13 03:42:36,976         postp[15.345945945945946 ms]
    2021-05-13 03:42:36,976         out[1.9921216216216215 ms]
    2021-05-13 03:42:36,976         idle[0.16254943864471572]
    2021-05-13 03:42:36,976 Op(det):
    2021-05-13 03:42:36,976         in[315.4468035714286 ms]
    2021-05-13 03:42:36,976         prep[69.5980625 ms]
    2021-05-13 03:42:36,976         midp[18.989535714285715 ms]
    2021-05-13 03:42:36,976         postp[18.857803571428573 ms]
    2021-05-13 03:42:36,977         out[3.1337544642857145 ms]
    2021-05-13 03:42:36,977         idle[0.7477961159203756]
    2021-05-13 03:42:36,977 DAGExecutor:
    2021-05-13 03:42:36,977         Query count[224]
    2021-05-13 03:42:36,977         QPS[22.4 q/s]
    2021-05-13 03:42:36,977         Succ[0.9910714285714286]
    2021-05-13 03:42:36,977         Error req[169, 170]
    2021-05-13 03:42:36,977         Latency:
    2021-05-13 03:42:36,977                 ave[535.1678348214285 ms]
    2021-05-13 03:42:36,977                 .50[172.651 ms]
    2021-05-13 03:42:36,977                 .60[187.904 ms]
    2021-05-13 03:42:36,977                 .70[245.675 ms]
    2021-05-13 03:42:36,977                 .80[526.684 ms]
    2021-05-13 03:42:36,977                 .90[854.596 ms]
    2021-05-13 03:42:36,977                 .95[1722.728 ms]
    2021-05-13 03:42:36,977                 .99[3990.292 ms]
    2021-05-13 03:42:36,978 Channel (server worker num[10]):
    2021-05-13 03:42:36,978         chl0(In: ['@DAGExecutor'], Out: ['det']) size[0/0]
    2021-05-13 03:42:36,979         chl1(In: ['det'], Out: ['rec']) size[6/0]
    2021-05-13 03:42:36,979         chl2(In: ['rec'], Out: ['@DAGExecutor']) size[0/0]
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    ```
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<a name="Windows用户"></a>
## Windows用户
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Windows用户不能使用上述的启动方式,需要使用Web Service,详情参见[Windows平台使用Paddle Serving指导](https://github.com/PaddlePaddle/Serving/blob/develop/doc/Windows_Tutorial_CN.md)
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**WINDOWS只能使用0.5.0版本的CPU模式**

准备阶段:
```
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pip3 install paddle-serving-server==0.5.0
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pip3 install paddle-serving-app==0.3.1
```
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1. 启动服务端程序

```
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cd win
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python3 ocr_web_server.py gpu(使用gpu方式)
或者
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python3 ocr_web_server.py cpu(使用cpu方式)
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```

2. 发送服务请求

```
python3 ocr_web_client.py
```
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<a name="FAQ"></a>
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## FAQ
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**Q1**: 发送请求后没有结果返回或者提示输出解码报错
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**A1**: 启动服务和发送请求时不要设置代理,可以在启动服务前和发送请求前关闭代理,关闭代理的命令是:
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```
unset https_proxy
unset http_proxy
```