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Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

By : Meints
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Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

By: Meints

Overview of this book

Cognitive Toolkit is a very popular and recently open sourced deep learning toolkit by Microsoft. Cognitive Toolkit is used to train fast and effective deep learning models. This book will be a quick introduction to using Cognitive Toolkit and will teach you how to train and validate different types of neural networks, such as convolutional and recurrent neural networks. This book will help you understand the basics of deep learning. You will learn how to use Microsoft Cognitive Toolkit to build deep learning models and discover what makes this framework unique so that you know when to use it. This book will be a quick, no-nonsense introduction to the library and will teach you how to train different types of neural networks, such as convolutional neural networks, recurrent neural networks, autoencoders, and more, using Cognitive Toolkit. Then we will look at two scenarios in which deep learning can be used to enhance human capabilities. The book will also demonstrate how to evaluate your models' performance to ensure it trains and runs smoothly and gives you the most accurate results. Finally, you will get a short overview of how Cognitive Toolkit fits in to a DevOps environment
Table of Contents (9 chapters)
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Convolutional neural network architecture

In previous chapters, we've learned how to use regular feed-forward network architectures to build neural networks. In a feed-forward neural network, we assume that there are interactions between the different input features. But we don't make any assumptions about the nature of these interactions. This is, however, not always the right thing to do.

When you work with complex data such as images, a feed-forward neural network won't do a very good job. This comes from the fact that we assume that there's an interaction between the inputs of our network. But we don't account for the fact that they are organized in a spatial way. When you look at the pixels in an image, there's a horizontal and vertical relationship between them. There's also a relationship between the colors in an image and the position...

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