Hands-On Mathematics for Deep Learning

Hands-On Mathematics for Deep Learning
PDF, ePUB

Book Description
A comprehensive guide to getting well-versed with the mathematical techniques for building modern deep learning architectures

Key Features

  • Understand linear algebra, calculus, gradient algorithms, and other concepts essential for training deep neural networks
  • Learn the mathematical concepts needed to understand how deep learning models function
  • Use deep learning for solving problems related to vision, image, text, and sequence applications

Book Description

Most programmers and data scientists struggle with mathematics, having either overlooked or forgotten core mathematical concepts. This book uses Python libraries to help you understand the math required to build deep learning (DL) models.
You'll begin by learning about core mathematical and modern computational techniques used to design and implement DL algorithms. This book will cover essential topics, such as linear algebra, eigenvalues and eigenvectors, the singular value decomposition concept, and gradient algorithms, to help you understand how to train deep neural networks. Later chapters focus on important neural networks, such as the linear neural network and multilayer perceptrons, with a primary focus on helping you learn how each model works. As you advance, you will delve into the math used for regularization, multi-layered DL, forward propagation, optimization, and backpropagation techniques to understand what it takes to build full-fledged DL models. Finally, you'll explore CNN, recurrent neural network (RNN), and GAN models and their application.
By the end of this book, you'll have built a strong foundation in neural networks and DL mathematical concepts, which will help you to confidently research and build custom models in DL.

What you will learn

  • Understand the key mathematical concepts for building neural network models
  • Discover core multivariable calculus concepts
  • Improve the performance of deep learning models using optimization techniques
  • Cover optimization algorithms, from basic stochastic gradient descent (SGD) to the advanced Adam optimizer
  • Understand computational graphs and their importance in DL
  • Explore the backpropagation algorithm to reduce output error
  • Cover DL algorithms such as convolutional neural networks (CNNs), sequence models, and generative adversarial networks (GANs)

Who this book is for

This book is for data scientists, machine learning developers, aspiring deep learning developers, or anyone who wants to understand the foundation of deep learning by learning the math behind it. Working knowledge of the Python programming language and machine learning basics is required.

Content

Chapter 1. Linear Algebra
Chapter 2. Vector Calculus
Chapter 3. Probability and Statistics
Chapter 4. Optimization
Chapter 5. Graph Theory
Chapter 6. Linear Neural Networks
Chapter 7. Feedforward Neural Networks
Chapter 8. Regularization
Chapter 9. Convolutional Neural Networks
Chapter 10. Recurrent Neural Networks
Chapter 11. Attention Mechanisms
Chapter 12. Generative Models
Chapter 13. Transfer and Meta Learning
Chapter 14. Geometric Deep Learning

Download Hands-On Mathematics for Deep Learning: Build a solid mathematical foundation for training efficient deep neural networks PDF or ePUB format free


Free sample

Download in .PDF format



Download in .ePUB format


Add comments
Прокомментировать
Введите код с картинки:*
Кликните на изображение чтобы обновить код, если он неразборчив
Copyright © 2019