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Learn, understand, and implement deep neural networks in a math-
and programming-friendly approach using Keras and Python. The book
focuses on an end-to-end approach to developing supervised learning
algorithms in regression and classification with practical
business-centric use-cases implemented in Keras. The overall book
comprises three sections with two chapters in each section. The
first section prepares you with all the necessary basics to get
started in deep learning. Chapter 1 introduces you to the world of
deep learning and its difference from machine learning, the choices
of frameworks for deep learning, and the Keras ecosystem. You will
cover a real-life business problem that can be solved by supervised
learning algorithms with deep neural networks. You'll tackle one
use case for regression and another for classification leveraging
popular Kaggle datasets. Later, you will see an interesting and
challenging part of deep learning: hyperparameter tuning; helping
you further improve your models when building robust deep learning
applications. Finally, you'll further hone your skills in deep
learning and cover areas of active development and research in deep
learning. At the end of Learn Keras for Deep Neural Networks, you
will have a thorough understanding of deep learning principles and
have practical hands-on experience in developing enterprise-grade
deep learning solutions in Keras. What You'll Learn Master
fast-paced practical deep learning concepts with math- and
programming-friendly abstractions. Design, develop, train,
validate, and deploy deep neural networks using the Keras framework
Use best practices for debugging and validating deep learning
models Deploy and integrate deep learning as a service into a
larger software service or product Extend deep learning principles
into other popular frameworks Who This Book Is For Software
engineers and data engineers with basic programming skills in any
language and who are keen on exploring deep learning for a career
move or an enterprise project.
Learn the ropes of supervised machine learning with R by studying
popular real-world use-cases, and understand how it drives object
detection in driver less cars, customer churn, and loan default
prediction. Key Features Study supervised learning algorithms by
using real-world datasets Fine tune optimal parameters with
hyperparameter optimization Select the best algorithm using the
model evaluation framework Book DescriptionR provides excellent
visualization features that are essential for exploring data before
using it in automated learning. Applied Supervised Learning with R
helps you cover the complete process of employing R to develop
applications using supervised machine learning algorithms for your
business needs. The book starts by helping you develop your
analytical thinking to create a problem statement using business
inputs and domain research. You will then learn different
evaluation metrics that compare various algorithms, and later
progress to using these metrics to select the best algorithm for
your problem. After finalizing the algorithm you want to use, you
will study the hyperparameter optimization technique to fine-tune
your set of optimal parameters. To prevent you from overfitting
your model, a dedicated section will even demonstrate how you can
add various regularization terms. By the end of this book, you will
have the advanced skills you need for modeling a supervised machine
learning algorithm that precisely fulfills your business needs.
What you will learn Develop analytical thinking to precisely
identify a business problem Wrangle data with dplyr, tidyr, and
reshape2 Visualize data with ggplot2 Validate your supervised
machine learning model using k-fold Optimize hyperparameters with
grid and random search, and Bayesian optimization Deploy your model
on Amazon Web Services (AWS) Lambda with plumber Improve your
model's performance with feature selection and dimensionality
reduction Who this book is forThis book is specially designed for
novice and intermediate-level data analysts, data scientists, and
data engineers who want to explore different methods of supervised
machine learning and its various use cases. Some background in
statistics, probability, calculus, linear algebra, and programming
will help you thoroughly understand and follow the content of this
book.
Enter the world of Internet of Things with the power of data
science with this highly practical, engaging book About This Book *
Explore real-world use cases from the Internet of Things (IoT)
domain using decision science with this easy-to-follow, practical
book * Learn to make smarter decisions on top of your IoT solutions
so that your IoT is smart in a real sense * This highly practical,
example-rich guide fills the gap between your knowledge of data
science and IoT Who This Book Is For If you have a basic
programming experience with R and want to solve business use cases
in IoT using decision science then this book is for you. Even if
your're a non-technical manager anchoring IoT projects, you can
skip the code and still benefit from the book. What You Will Learn
* Explore decision science with respect to IoT * Get to know the
end to end analytics stack - Descriptive + Inquisitive + Predictive
+ Prescriptive * Solve problems in IoT connected assets and
connected operations * Design and solve real-life IoT business use
cases using cutting edge machine learning techniques * Synthesize
and assimilate results to form the perfect story for a business *
Master the art of problem solving when IoT meets decision science
using a variety of statistical and machine learning techniques
along with hands on tasks in R In Detail With an increasing number
of devices getting connected to the Internet, massive amounts of
data are being generated that can be used for analysis. This book
helps you to understand Internet of Things in depth and decision
science, and solve business use cases. With IoT, the frequency and
impact of the problem is huge. Addressing a problem with such a
huge impact requires a very structured approach. The entire journey
of addressing the problem by defining it, designing the solution,
and executing it using decision science is articulated in this book
through engaging and easy-to-understand business use cases. You
will get a detailed understanding of IoT, decision science, and the
art of solving a business problem in IoT through decision science.
By the end of this book, you'll have an understanding of the
complex aspects of decision making in IoT and will be able to take
that knowledge with you onto whatever project calls for it Style
and approach This scenario-based tutorial approaches the topic
systematically, allowing you to build upon what you learned in
previous chapters.
Master the practical aspects of implementing deep learning
solutions with PyTorch, using a hands-on approach to understanding
both theory and practice. This updated edition will prepare you for
applying deep learning to real world problems with a sound
theoretical foundation and practical know-how with PyTorch, a
platform developed by Facebook's Artificial Intelligence Research
Group. You'll start with a perspective on how and why deep learning
with PyTorch has emerged as an path-breaking framework with a set
of tools and techniques to solve real-world problems. Next, the
book will ground you with the mathematical fundamentals of linear
algebra, vector calculus, probability and optimization. Having
established this foundation, you'll move on to key components and
functionality of PyTorch including layers, loss functions and
optimization algorithms. You'll also gain an understanding of
Graphical Processing Unit (GPU) based computation, which is
essential for training deep learning models. All the key
architectures in deep learning are covered, including feedforward
networks, convolution neural networks, recurrent neural networks,
long short-term memory networks, autoencoders and generative
adversarial networks. Backed by a number of tricks of the trade for
training and optimizing deep learning models, this edition of Deep
Learning with Python explains the best practices in taking these
models to production with PyTorch. What You'll Learn Review machine
learning fundamentals such as overfitting, underfitting, and
regularization. Understand deep learning fundamentals such as
feed-forward networks, convolution neural networks, recurrent
neural networks, automatic differentiation, and stochastic gradient
descent. Apply in-depth linear algebra with PyTorch Explore PyTorch
fundamentals and its building blocks Work with tuning and
optimizing models Who This Book Is For Beginners with a working
knowledge of Python who want to understand Deep Learning in a
practical, hands-on manner.
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