An in-depth analysis into the world of deep learning using Apache MXNet for flexible and efficient research prototyping and deployment to production
Key Features
A step-by-step tutorial towards using MXNet products to create scalable deep learning applications
Implement tasks such as transfer learning, transformers, and more with the required speed and scalability
Analyze the performance of models and fine-tune them for accuracy, scalability, and speed
Book DescriptionMXNet is an open-source deep learning framework that allows you to train and deploy neural network models and implement state-of-the-art (SOTA) architectures in NLP, CV, RL, and more. With this cookbook, you will be able to construct fast, scalable deep learning solutions using Apache MXNet.
This book will start by showing you the different versions of MXNet and what version to choose before installing your library. You will learn to start using MXNet/Gluon libraries to solve classification and regression problems and get an idea on the inner workings of these libraries. This book will also show how to use MXNet to analyze toy datasets in the areas of numerical regression, data classification, picture classification, and text classification. You'll also learn to build and train deep-learning neural network architectures from scratch, before moving on to complex concepts like transfer learning. You'll learn to construct and deploy neural network architectures including CNN, RNN, LSTMs, GANs, and integrate these models into your applications. You will also learn to analyze the performance of these models, and fine-tune them for increased accuracy, scalability, and speed.
By the end of the book, you will be able to utilize the MXNet and Gluon libraries to create and train deep learning networks using GPUs and distributed computing.What you will learn
Understand MXNet and Gluon libraries and their advantages
Build and train network models from scratch using MXNet
Apply ready-to-use pre-trained models and learn to fine-tune and apply transfer learning for increased accuracy
Train and evaluate models using GPUs and distributed computing
Solve modern computer vision, NLP, RL, and GANs problems using neural network techniques
Learn how vector embeddings can be used for Recommender Systems with a Collaborative Filtering approach
Learn about Deep Convolutional GANs architectures and how to apply them to generate photo-realistic synthetic faces
Who this book is forThis book is ideal for data scientists, machine learning engineers, and AWS developers who want to work with Apache MXNet for building fast, scalable deep learning solutions. The reader is expected to have a good understanding of Python programming and a working environment with Python 3.6+. A good theoretical understanding of mathematics for deep learning will be beneficial.