Home
Deep Learning Crash Course for Beginners with Python: Theory and Applications of Artificial Neural Networks, CNN, RNN, LSTM and Autoencoders using TensorFlow 2.0- Contains Exercises with Solutions and Hands-On Projects
Barnes and Noble
Deep Learning Crash Course for Beginners with Python: Theory and Applications of Artificial Neural Networks, CNN, RNN, LSTM and Autoencoders using TensorFlow 2.0- Contains Exercises with Solutions and Hands-On Projects
Current price: $24.99
Barnes and Noble
Deep Learning Crash Course for Beginners with Python: Theory and Applications of Artificial Neural Networks, CNN, RNN, LSTM and Autoencoders using TensorFlow 2.0- Contains Exercises with Solutions and Hands-On Projects
Current price: $24.99
Size: OS
Loading Inventory...
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Barnes and Noble
Artificial intelligence is the rage today!
While you may find it difficult to understand the most recent advancements in AI, it simply boils down to two most celebrated developments: Machine Learning and Deep Learning. In 2020, Deep Learning is leagues ahead because of its supremacy when it comes to accuracy, especially when trained with enormous amounts of data. Deep Learning, essentially, is a subset of Machine Learning, but it's capable of achieving tremendous power and flexibility. And the era of big data technology presents vast opportunities for incredible innovations in deep learning.
How Is This Book Different?
This book gives equal importance to the theoretical as well as practical aspects of deep learning. You will understand how high-performing deep learning algorithms work. In every chapter, the theoretical explanation of the different types of deep learning techniques is followed by practical examples. You will learn how to implement different deep learning techniques using the TensorFlow Keras library for Python. Each chapter contains exercises that you can use to assess your understanding of the concepts explained in that chapter. Also, in the
Resources
, the Python notebook for each chapter is provided. The key advantage of buying this book is you get instant access to all the extra content presented with this book-Python codes, references, exercises, and PDFs-on the publisher's website. You don't need to spend an extra cent. The datasets used in this book are either downloaded at runtime or are available in the
Resources/Datasets
folder.
Another advantage is a detailed explanation of the installation steps for the software that you will need to implement the various deep learning algorithms in this book is provided. That is, you get to experiment with the practical aspects of Deep Learning right from page 1. Even if you are new to Python, you will find the crash course on Python programming language in the first chapter immensely useful. Since all the codes and datasets are included with this book, you only need access to a computer with the internet to get started.
The topics covered include:
Python Crash Course
Deep Learning Prerequisites: Linear and Logistic Regression
Neural Networks from Scratch in Python
Introduction to TensorFlow and Keras
Convolutional Neural Networks
Sequence Classification with Recurrent Neural Networks
Deep Learning for Natural Language Processing
Unsupervised Learning with Autoencoders
Answers to All Exercises
Click the BUY button and download the book now to start your Deep Learning journey.