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  • Book Overview & Buying Deep Learning with MXNet Cookbook
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Deep Learning with MXNet Cookbook

Deep Learning with MXNet Cookbook

By : Andrés P. Torres
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Deep Learning with MXNet Cookbook

Deep Learning with MXNet Cookbook

5 (1)
By: Andrés P. Torres

Overview of this book

Explore the capabilities of the open-source deep learning framework MXNet to train and deploy neural network models and implement state-of-the-art (SOTA) architectures in Computer Vision, natural language processing, and more. The Deep Learning with MXNet Cookbook is your gateway to constructing fast and scalable deep learning solutions using Apache MXNet. Starting with the different versions of MXNet, this book helps you choose the optimal version for your use and install your library. You’ll work with MXNet/Gluon libraries to solve classification and regression problems and gain insights into their inner workings. Venturing further, you’ll use MXNet to analyze toy datasets in the areas of numerical regression, data classification, picture classification, and text classification. From building and training deep-learning neural network architectures from scratch to delving into advanced concepts such as transfer learning, this book covers it all. You'll master the construction and deployment of neural network architectures, including CNN, RNN, LSTMs, and Transformers, and integrate these models into your applications. By the end of this deep learning book, you’ll wield the MXNet and Gluon libraries to expertly create and train deep learning networks using GPUs and deploy them in different environments.
Table of Contents (12 chapters)
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Optimizing training for image segmentation

In the previous recipe, we saw how we could leverage MXNet and Gluon to optimize the training of our models with a variety of different techniques. We understood how we can jointly use lazy evaluation and automatic parallelization for parallel processing. We saw how to improve the performance of our DataLoaders by combining preprocessing in the CPU and GPU, and how using half-precision (Float16) in combination with AMP can halve our training times. Lastly, we explored how to take advantage of multiple GPUs to further reduce training times.

Now, we can revisit a problem we have been working with throughout the book: image segmentation. We have worked on this task in recipes from previous chapters. In the Segmenting objects semantically with MXNet Model Zoo – PSPNet and DeepLabv3 recipe in Chapter 5, we learned how to use pre-trained models from GluonCV Model Zoo, and introduced the task and the datasets that we will be using in this...

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