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OpenCL Caffe

This is an experimental, community-maintained branch led by Fabian Tschopp (@naibaf7). It is a work-in-progress.

Custom distributions

Community

Join the chat at https://gitter.im/BVLC/caffe

Caffe is a deep learning framework made with expression, speed, and modularity in mind. It is developed by Berkeley AI Research (BAIR)/The Berkeley Vision and Learning Center (BVLC) and community contributors.

Caffe is released under the BSD 2-Clause license. The BAIR/BVLC reference models are released for unrestricted use.

For error reports, please run and include the result of ./build/test/test_all.testbin --gtest_filter=*OpenCLKernelCompileTest* X where X is the OpenCL device to test (i.e. 0). This test is available after a build with make all, make runtest.

This branch of Caffe contains an OpenCL backend and additional layers for fast image segmentation. This work is partially supported by:

OpenCL Backend

The backend is supposed to work with all vendors. Note however there may be problems with libOpenCL.so provided by nVidia. It is therefore recommended to install another OpenCL implementation after installing nVidia drivers. Possibilities are:

Technical Report

Available on arXiv: http://arxiv.org/abs/1509.03371

Windows Caffe

This is an experimental, communtity based branch led by Guillaume Dumont (@willyd). It is a work-in-progress.

This branch of Caffe ports the framework to Windows.

Travis Build Status Travis (Linux build)

Build status AppVeyor (Windows build)

Prebuilt binaries

Prebuilt binaries can be downloaded from the latest CI build on appveyor for the following configurations:

Windows Setup

Requirements

  • Visual Studio 2013 or 2015
  • CMake 3.4 or higher (Visual Studio and Ninja generators are supported)

Optional Dependencies

  • Python for the pycaffe interface. Anaconda Python 2.7 or 3.5 x64 (or Miniconda)
  • Matlab for the matcaffe interface.
  • CUDA 7.5 or 8.0 (use CUDA 8 if using Visual Studio 2015)
  • cuDNN v5

We assume that cmake.exe and python.exe are on your PATH.

Configuring and Building Caffe

The fastest method to get started with caffe on Windows is by executing the following commands in a cmd prompt (we use C:\Projects as a root folder for the remainder of the instructions):

C:\Projects> git clone https://github.com/BVLC/caffe.git
C:\Projects> cd caffe
C:\Projects\caffe> git checkout windows
:: Edit any of the options inside build_win.cmd to suit your needs
C:\Projects\caffe> scripts\build_win.cmd

The build_win.cmd script will download the dependencies, create the Visual Studio project files (or the ninja build files) and build the Release configuration. By default all the required DLLs will be copied (or hard linked when possible) next to the consuming binaries. If you wish to disable this option, you can by changing the command line option -DCOPY_PREREQUISITES=0. The prebuilt libraries also provide a prependpath.bat batch script that can temporarily modify your PATH envrionment variable to make the required DLLs available.

Below is a more complete description of some of the steps involved in building caffe.

Install the caffe dependencies

By default CMake will download and extract prebuilt dependencies for your compiler and python version. It will create a folder called libraries containing all the required dependencies inside your build folder. Alternatively you can build them yourself by following the instructions in the caffe-builder README.

Use cuDNN

To use cuDNN the easiest way is to copy the content of the cuda folder into your CUDA toolkit installation directory. For example if you installed CUDA 8.0 and downloaded cudnn-8.0-windows10-x64-v5.1.zip you should copy the content of the cuda directory to C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v8.0. Alternatively, you can define the CUDNN_ROOT cache variable to point to where you unpacked the cuDNN files e.g. C:/Projects/caffe/cudnn-8.0-windows10-x64-v5.1/cuda. For example the command in scripts/build_win.cmd would become:

cmake -G"!CMAKE_GENERATOR!" ^
      -DBLAS=Open ^
      -DCMAKE_BUILD_TYPE:STRING=%CMAKE_CONFIG% ^
      -DBUILD_SHARED_LIBS:BOOL=%CMAKE_BUILD_SHARED_LIBS% ^
      -DBUILD_python:BOOL=%BUILD_PYTHON% ^
      -DBUILD_python_layer:BOOL=%BUILD_PYTHON_LAYER% ^
      -DBUILD_matlab:BOOL=%BUILD_MATLAB% ^
      -DCPU_ONLY:BOOL=%CPU_ONLY% ^
      -DCUDNN_ROOT=C:/Projects/caffe/cudnn-8.0-windows10-x64-v5.1/cuda ^
      -C "%cd%\libraries\caffe-builder-config.cmake" ^
      "%~dp0\.."

Alternatively, you can open cmake-gui.exe and set the variable from there and click Generate.

Building only for CPU

If CUDA is not installed Caffe will default to a CPU_ONLY build. If you have CUDA installed but want a CPU only build you may use the CMake option -DCPU_ONLY=1.

Using the Python interface

The recommended Python distribution is Anaconda or Miniconda. To successfully build the python interface you need to add the following conda channels:

conda config --add channels conda-forge
conda config --add channels willyd

and install the following packages:

conda install --yes cmake ninja numpy scipy protobuf==3.1.0 six scikit-image pyyaml pydotplus graphviz

If Python is installed the default is to build the python interface and python layers. If you wish to disable the python layers or the python build use the CMake options -DBUILD_python_layer=0 and -DBUILD_python=0 respectively. In order to use the python interface you need to either add the C:\Projects\caffe\python folder to your python path of copy the C:\Projects\caffe\python\caffe folder to your site_packages folder.

Using the MATLAB interface

Follow the above procedure and use -DBUILD_matlab=ON. Change your current directory in MATLAB to C:\Projects\caffe\matlab and run the following command to run the tests:

>> caffe.run_tests()

If all tests pass you can test if the classification_demo works as well. First, from C:\Projects\caffe run python scripts\download_model_binary.py models\bvlc_reference_caffenet to download the pre-trained caffemodel from the model zoo. Then change your MATLAB directory to C:\Projects\caffe\matlab\demo and run classification_demo.

Using the Ninja generator

You can choose to use the Ninja generator instead of Visual Studio for faster builds. To do so, change the option set WITH_NINJA=1 in the build_win.cmd script. To install Ninja you can download the executable from github or install it via conda:

> conda config --add channels conda-forge
> conda install ninja --yes

When working with ninja you don't have the Visual Studio solutions as ninja is more akin to make. An alternative is to use Visual Studio Code with the CMake extensions and C++ extensions.

Building a shared library

CMake can be used to build a shared library instead of the default static library. To do so follow the above procedure and use -DBUILD_SHARED_LIBS=ON. Please note however, that some tests (more specifically the solver related tests) will fail since both the test exectuable and caffe library do not share static objects contained in the protobuf library.

Troubleshooting

Should you encounter any error please post the output of the above commands by redirecting the output to a file and open a topic on the caffe-users list mailing list.

Known issues

  • The GPUTimer related test cases always fail on Windows. This seems to be a difference between UNIX and Windows.
  • Shared library (DLL) build will have failing tests.
  • Shared library build only works with the Ninja generator

Further Details

Refer to the BVLC/caffe master branch README for all other details such as license, citation, and so on.

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Caffe: a fast open framework for deep learning.

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  • C++ 79.5%
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