Install TensorFlow-GPU on Windows 10 cuDNN, CUDA toolkit, and Visual Studio for Application Development

What You Will Learn Install the packages needed for TensorFlow-GPU Set a path in Windows 10 Use the correct version of Python for your needs Who This Video Is For Developers new to deep learning who would like to use the more powerful GPU for hardware intensive deep-learning applications

Bibliographic Details
Main Author: Kumar, Kishan
Format: eBook
Language:English
Published: Apress 2020
Edition:1st edition
Subjects:
Online Access:
Collection: O'Reilly - Collection details see MPG.ReNa
Description
Summary:What You Will Learn Install the packages needed for TensorFlow-GPU Set a path in Windows 10 Use the correct version of Python for your needs Who This Video Is For Developers new to deep learning who would like to use the more powerful GPU for hardware intensive deep-learning applications
We ll also need to install Visual Studio IDE for the C++ development libraries that will be required by the toolkit. Many users miss this step and they run into the problem of their toolkit not installing properly. Having done all these steps we will then look into cuDNN, which is a deep neural network library. This library provides highly tuned implementations for standard routines such as forward and backward convolution, pooling, normalization, and activation layers. We ll have to provide a path to cuDNN, too, as it s not an application but a library. So we ll look into how to make our system locate these libraries. Finally, we ll install TensorFlow-GPU. We ll verify it by running some basic commands and also verify whether it s making use of your GPU or not. TensorFlow-GPU offers a powerful, hardware-dependent development environment for the most consumptive of deep learning tasks.
Skip wasting time while trying to get TensorFlow-GPU up and running by stepping through the complex procedure to learn what steps are pivotal and which aren t. Gain a basic overview of TensorFlow-GPU and why it might be the right choice for your machine learning and deep learning development environment. Then look at which version of Python will fit best for your needs and how to get it to interact properly with your TF-GPU. You ll also find out how to gauge whether or not your graphics card is well suited to the task and what your options are based on your hardware. Once all the basic requirements are met, we ll install the Cuda toolkit to provide a development environment for creating high-performance GPU-accelerated applications. The toolkit includes GPU-accelerated libraries, debugging and optimization tools, a C/C++ compiler, and a runtime library to deploy your applications.
Item Description:Not recommended for use of the libraries' public computers
Made available through: Safari, an O Reilly Media Company
Physical Description:1 streaming video file, approximately 43 min.
ISBN:1484266986