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Explore the world of neural networks by building powerful deep
learning models using the R ecosystem Key Features Get to grips
with the fundamentals of deep learning and neural networks Use R
3.5 and its libraries and APIs to build deep learning models for
computer vision and text processing Implement effective deep
learning systems in R with the help of end-to-end projects Book
DescriptionDeep learning finds practical applications in several
domains, while R is the preferred language for designing and
deploying deep learning models. This Learning Path introduces you
to the basics of deep learning and even teaches you to build a
neural network model from scratch. As you make your way through the
chapters, you'll explore deep learning libraries and understand how
to create deep learning models for a variety of challenges, right
from anomaly detection to recommendation systems. The book will
then help you cover advanced topics, such as generative adversarial
networks (GANs), transfer learning, and large-scale deep learning
in the cloud, in addition to model optimization, overfitting, and
data augmentation. Through real-world projects, you'll also get up
to speed with training convolutional neural networks (CNNs),
recurrent neural networks (RNNs), and long short-term memory
networks (LSTMs) in R. By the end of this Learning Path, you'll be
well versed with deep learning and have the skills you need to
implement a number of deep learning concepts in your research work
or projects. This Learning Path includes content from the following
Packt products: R Deep Learning Essentials - Second Edition by
Joshua F. Wiley and Mark Hodnett R Deep Learning Projects by Yuxi
(Hayden) Liu and Pablo Maldonado What you will learn Implement
credit card fraud detection with autoencoders Train neural networks
to perform handwritten digit recognition using MXNet Reconstruct
images using variational autoencoders Explore the applications of
autoencoder neural networks in clustering and dimensionality
reduction Create natural language processing (NLP) models using
Keras and TensorFlow in R Prevent models from overfitting the data
to improve generalizability Build shallow neural network prediction
models Who this book is forThis Learning Path is for aspiring data
scientists, data analysts, machine learning developers, and deep
learning enthusiasts who are well versed in machine learning
concepts and are looking to explore the deep learning paradigm
using R. A fundamental understanding of R programming and
familiarity with the basic concepts of deep learning are necessary
to get the most out of this Learning Path.
Implement neural network models in R 3.5 using TensorFlow, Keras,
and MXNet Key Features Use R 3.5 for building deep learning models
for computer vision and text Apply deep learning techniques in
cloud for large-scale processing Build, train, and optimize neural
network models on a range of datasets Book DescriptionDeep learning
is a powerful subset of machine learning that is very successful in
domains such as computer vision and natural language processing
(NLP). This second edition of R Deep Learning Essentials will open
the gates for you to enter the world of neural networks by building
powerful deep learning models using the R ecosystem. This book will
introduce you to the basic principles of deep learning and teach
you to build a neural network model from scratch. As you make your
way through the book, you will explore deep learning libraries,
such as Keras, MXNet, and TensorFlow, and create interesting deep
learning models for a variety of tasks and problems, including
structured data, computer vision, text data, anomaly detection, and
recommendation systems. You'll cover advanced topics, such as
generative adversarial networks (GANs), transfer learning, and
large-scale deep learning in the cloud. In the concluding chapters,
you will learn about the theoretical concepts of deep learning
projects, such as model optimization, overfitting, and data
augmentation, together with other advanced topics. By the end of
this book, you will be fully prepared and able to implement deep
learning concepts in your research work or projects. What you will
learn Build shallow neural network prediction models Prevent models
from overfitting the data to improve generalizability Explore
techniques for finding the best hyperparameters for deep learning
models Create NLP models using Keras and TensorFlow in R Use deep
learning for computer vision tasks Implement deep learning tasks,
such as NLP, recommendation systems, and autoencoders Who this book
is forThis second edition of R Deep Learning Essentials is for
aspiring data scientists, data analysts, machine learning
developers, and deep learning enthusiasts who are well versed in
machine learning concepts and are looking to explore the deep
learning paradigm using R. Fundamental understanding of the R
language is necessary to get the most out of this book.
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