onnxruntime/samples/c_cxx
Changming Sun 9d67292c8c
Document for the C/C++ samples (#1442)
1. Document for the C/C++ samples.
2. Fix a null pointer errorin the imagenet sample.
2019-07-22 16:14:49 -07:00
..
fns_candy_style_transfer Sample for imagenet and batch prediction (#1372) 2019-07-16 14:23:45 -07:00
imagenet Document for the C/C++ samples (#1442) 2019-07-22 16:14:49 -07:00
include Sample for imagenet and batch prediction (#1372) 2019-07-16 14:23:45 -07:00
MNIST Sample for imagenet and batch prediction (#1372) 2019-07-16 14:23:45 -07:00
CMakeLists.txt Document for the C/C++ samples (#1442) 2019-07-22 16:14:49 -07:00
README.md Document for the C/C++ samples (#1442) 2019-07-22 16:14:49 -07:00
vs.png Document for the C/C++ samples (#1442) 2019-07-22 16:14:49 -07:00

This directory contains a few C/C++ sample applications for demoing onnxruntime usage:

  1. fns_candy_style_transfer: A C application that uses the FNS-Candy style transfer model to re-style images.
  2. MNIST: A windows GUI application for doing handwriting recognition
  3. imagenet: An end-to-end sample for the ImageNet Large Scale Visual Recognition Challenge 2012

How to build

Prerequisites

  1. Visual Studio 2015/2017/2019
  2. cmake(version >=3.13)

Install ONNX Runtime

You may either get a prebuit onnxruntime from nuget.org, or build it from source by following the BUILD.md document. If you build it by yourself, you must append the "--build_shared_lib" flag to your build command. Like:

build.bat --config RelWithDebInfo --build_shared_lib --parallel

When the build is done, run Visual Studio as administrator and open the onnxruntime.sln file in your build directory. vs.png

When the solution is loaded, change the build configuration to "RelWithDebInfo"(which must match your previous build command), then select the "INSTALL" project, and build it. It will install your onnxruntime to "C:\Program Files (x86)\onnxruntime"

Build the samples

Open cmd.exe, change your current directory to samples\c_cxx, then run

mkdir build
cmake .. -A x64 -T host=x64

You may append "-Donnxruntime_USE_CUDA=ON" to the last command args if your onnxruntime binary was built with CUDA support.

Then you can open the onnxruntime_samples.sln file in the "build" directory and build the solution.