Microsoft Cognitive Toolkit offers two different build versions namely CPU-only and GPU-only.
The CPU-only build version of CNTK uses the optimised Intel MKLML, where MKLML is the subset of MKL (Math Kernel Library) and released with Intel MKL-DNN as a terminated version of Intel MKL for MKL-DNN.
On the other hand, the GPU-only build version of CNTK uses highly optimised NVIDIA libraries such as CUB and cuDNN. It supports distributed training across multiple GPUs and multiple machines. For even faster distributed training in CNTK, the GPU-build version also includes −
MSR-developed 1bit-quantized SGD.
Block-momentum SGD parallel training algorithms.
In the previous section, we saw how to install the basic version of CNTK to use with the CPU. Now let’s discuss how we can install CNTK to use with a GPU. But, before getting deep dive into it, first you should have a supported graphics card.
At present, CNTK supports the NVIDIA graphics card with at least CUDA 3.0 support. To make sure, you can check at https://developer.nvidia.com/cuda-gpus whether your GPU supports CUDA.
So, let us see the steps to enable GPU with CNTK on Windows OS −
Step 1 − Depending on the graphics card you are using, first you need to have the latest GeForce or Quadro drivers for your graphics card.
Step 2 − Once you downloaded the drivers, you need to install the CUDA toolkit Version 9.0 for Windows from NVIDIA website https://developer.nvidia.com/cuda-90-download-archive?target_os=Windows&target_arch=x86_64. After installing, run the installer and follow the instructions.
Step 3 − Next, you need to install cuDNN binaries from NVIDIA website https://developer.nvidia.com/rdp/form/cudnn-download-survey. With CUDA 9.0 version, cuDNN 7.4.1 works well. Basically, cuDNN is a layer on the top of CUDA, used by CNTK.
Step 4 − After downloading the cuDNN binaries, you need to extract the zip file into the root folder of your CUDA toolkit installation.
Step 5 − This is the last step which will enable GPU usage inside CNTK. Execute the following command inside the Anaconda prompt on Windows OS −
pip install cntk-gpu
Let us see how we can enable GPU with CNTK on Linux OS −
First, you need to install the CUDA toolkit from NVIDIA website https://developer.nvidia.com/cuda-90-download-archive?target_os=Linux&target_arch=x86_64&target_distro=Ubuntu&target_version=1604&target_type =runfilelocal.
Now, once you have binaries on the disk, run the installer by opening a terminal and executing the following command and the instruction on screen −
sh cuda_9.0.176_384.81_linux-run
After installing CUDA toolkit on your Linux machine, you need to modify the BASH profile script. For this, first open the $HOME/ .bashrc file in text editor. Now, at the end of the script, include the following lines −
export PATH=/usr/local/cuda-9.0/bin${PATH:+:${PATH}} export LD_LIBRARY_PATH=/usr/local/cuda-9.0/lib64\ ${LD_LIBRARY_PATH:+:${LD_LIBRARY_PATH}} Installing
At last we need to install cuDNN binaries. It can be downloaded from NVIDIA website https://developer.nvidia.com/rdp/form/cudnn-download-survey. With CUDA 9.0 version, cuDNN 7.4.1 works well. Basically, cuDNN is a layer on the top of CUDA, used by CNTK.
Once downloaded the version for Linux, extract it to the /usr/local/cuda-9.0 folder by using the following command −
tar xvzf -C /usr/local/cuda-9.0/ cudnn-9.0-linux-x64-v7.4.1.5.tgz
Change the path to the filename as required.