Math for Deep Learning
What You Need to Know to Understand Neural Networks
Price  $37.30  $39.49

Rating  
Author  Ronald T. Kneusel 
Publisher  No Starch Press 
Published  2021 
Pages  344 
Language  English 
Format  Paper book / ebook (PDF) 
ISBN10  1718501900 
ISBN13  9781718501904 
Deep learning is everywhere, making this powerful driver of AI something more STEM professionals need to know. Learning which library commands to use is one thing, but to truly understand the discipline, you need to grasp the mathematical concepts that make it tick. This book will give you a working knowledge of topics in probability, statistics, linear algebra, and differential calculus  the essential math needed to make deep learning comprehensible, which is key to practicing it successfully.
Each of the four subfields are contextualized with Python code and handson, realworld examples that bridge the gap between pure mathematics and its applications in deep learning. Chapters build upon one another, with foundational topics such as Bayes' theorem followed by more advanced concepts, like training neural networks using vectors, matrices, and derivatives of functions. You'll ultimately put all this math to use as you explore and implement deep learning algorithms, including backpropagation and gradient descent  the foundational algorithms that have enabled the AI revolution.
You'll learn: The rules of probability, probability distributions, and Bayesian probability; The use of statistics for understanding datasets and evaluating models; How to manipulate vectors and matrices, and use both to move data through a neural network; How to use linear algebra to implement principal component analysis and singular value decomposition; How to apply improved versions of gradient descent, like RMSprop, Adagrad and Adadelta.
Once you understand the core math concepts presented throughout this book through the lens of AI programming, you'll have foundational knowhow to easily follow and work with deep learning.
Chapter 11:
→ https://itbook.store/files/9781718501904/chapter11.pdf
Source Code:
→ https://github.com/rkneusel9/MathForDeepLearning
 Ronald T. Kneusel (2 books)
5 5 28
Similar Books
by Mathew Salvaris, Danielle Dean, Wee Hyong Tok
Get uptospeed with Microsoft's AI Platform. Learn to innovate and accelerate with open and powerful tools and services that bring artificial intelligence to every data scientist and developer.Artificial Intelligence (AI) is the new normal. Innovations in deep learning algorithms and hardware are happening at a rapid pace. It is no ...
Price: $37.99  Publisher: Apress  Release: 2018
Learn Keras for Deep Neural Networks
by Jojo John Moolayil
Learn, understand, and implement deep neural networks in a math and programmingfriendly approach using Keras and Python. The book focuses on an endtoend approach to developing supervised learning algorithms in regression and classification with practical businesscentric usecases implemented in Keras.The overall book comprises three ...
Price: $9.99  Publisher: Apress  Release: 2019
Practical MATLAB Deep Learning, 2nd Edition
by Michael Paluszek, Stephanie Thomas, Eric Ham
Harness the power of MATLAB for deeplearning challenges. Practical MATLAB Deep Learning, Second Edition, remains a oneof akind book that provides an introduction to deep learning and using MATLAB's deeplearning toolboxes. In this book, you'll see how these toolboxes provide the complete set of functions needed to implement a...
Price: $41.19  Publisher: Apress  Release: 2022
by Reza Zadeh, Bharath Ramsundar
Learn how to solve challenging machine learning problems with Tensorflow, Google's revolutionary new system for deep learning. If you have some background with basic linear algebra and calculus, this practical book shows you how to build  and when to use  deep learning architectures. You'll learn how to design systems capable ...
Price: $23.99  Publisher: O'Reilly Media  Release: 2018
Deep Learning for Natural Language Processing
by Palash Goyal, Sumit Pandey, Karan Jain
Discover the concepts of deep learning used for natural language processing (NLP), with fullfledged examples of neural network models such as recurrent neural networks, long shortterm memory networks, and sequence2sequence models.You'll start by covering the mathematical prerequisites and the fundamentals of deep learning and NLP...
Price: $31.93  Publisher: Apress  Release: 2018
by Nihkil Ketkar
Master the practical aspects of implementing deep learning solutions with PyTorch, using a handson approach to understanding both theory and practice. This new edition will prepare you for applying deep learning to real world problems with a sound theoretical foundation and practical knowhow with PyTorch, a platform developed by Faceboo...
Price: $32.99  Publisher: Apress  Release: 2020
by Hisham ElAmir, Mahmoud Hamdy
Build your own pipeline based on modern TensorFlow approaches rather than outdated engineering concepts. This book shows you how to build a deep learning pipeline for reallife TensorFlow projects. You'll learn what a pipeline is and how it works so you can build a full application easily and rapidly. Then troubleshoot and overcome b...
Price: $30.93  Publisher: Apress  Release: 2020
Applied Deep Learning with TensorFlow 2, 2nd Edition
by Umberto Michelucci
Understand how neural networks work and learn how to implement them using TensorFlow 2.0 and Keras. This new edition focuses on the fundamental concepts and at the same time on practical aspects of implementing neural networks and deep learning for your research projects.This book is designed so that you can focus on the parts you are int...
Price: $48.23  Publisher: Apress  Release: 2022