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PaddleClas C# Deployment Example
This directory provides example infer.cs
to fastly finish the deployment of PaddleClas models on CPU/GPU.
Before deployment, two steps require confirmation
-
- Software and hardware should meet the requirements. Please refer to FastDeploy Environment Requirements
-
- Download the precompiled deployment library and samples code according to your development environment. Refer to FastDeploy Precompiled Library
Please follow below instructions to compile and test in Windows. FastDeploy version 1.0.4 or above (x.x.x>=1.0.4) is required to support this model.
1. Download C# package management tool nuget client
Add nuget program into system variable PATH
2. Download model and image for test
https://bj.bcebos.com/paddlehub/fastdeploy/ResNet50_vd_infer.tgz # (下载后解压缩) https://gitee.com/paddlepaddle/PaddleClas/raw/release/2.4/deploy/images/ImageNet/ILSVRC2012_val_00000010.jpeg
3. Compile example code
Open x64 Native Tools Command Prompt for VS 2019
command tool on Windows, cd to the demo path of ppyoloe and execute commands
cd D:\Download\fastdeploy-win-x64-gpu-x.x.x\examples\vision\classification\paddleclas\csharp
mkdir build && cd build
cmake .. -G "Visual Studio 16 2019" -A x64 -DFASTDEPLOY_INSTALL_DIR=D:\Download\fastdeploy-win-x64-gpu-x.x.x -DCUDA_DIRECTORY="C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.2"
nuget restore
msbuild infer_demo.sln /m:4 /p:Configuration=Release /p:Platform=x64
For more information about how to use FastDeploy SDK to compile a project with Visual Studio 2019. Please refer to
4. Execute compiled program
fastdeploy.dll and related dynamic libraries are required by the program. FastDeploy provide a script to copy all required dll to your program path.
cd D:\Download\fastdeploy-win-x64-gpu-x.x.x
fastdeploy_init.bat install %cd% D:\Download\fastdeploy-win-x64-gpu-x.x.x\examples\vision\classification\paddleclas\csharp\build\Release
Then you can run your program and test the model with image
cd Release
# CPU inference
infer_demo ResNet50_vd_infer ILSVRC2012_val_00000010.jpeg 0
# GPU inference
infer_demo ResNet50_vd_infer ILSVRC2012_val_00000010.jpeg 1
PaddleClas C# Interface
Model Class
fastdeploy.vision.classification.PaddleClasModel(
string model_file,
string params_file,
string config_file
fastdeploy.RuntimeOption runtime_option = null,
fastdeploy.ModelFormat model_format = ModelFormat.PADDLE)
PaddleClasModel initilization.
Params
- model_file(str): Model file path
- params_file(str): Parameter file path
- config_file(str): Configuration file path, which is the deployment yaml file exported by PaddleClas
- runtime_option(RuntimeOption): Backend inference configuration. null by default, which is the default configuration
- model_format(ModelFormat): Model format. Paddle format by default
Predict Function
fastdeploy.ClassifyResult Predict(OpenCvSharp.Mat im)
Model prediction interface. Input images and output results directly.
Params
- im(Mat): Input images in HWC or BGR format
Return
- result(ClassifyResult): The classification result, including label_id, and the corresponding confidence. Refer to Visual Model Prediction Results for the description of ClassifyResult