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The expansion of digital data has transformed various sectors of
business such as healthcare, industrial manufacturing, and
transportation. A new way of solving business problems has emerged
through the use of machine learning techniques in conjunction with
big data analytics. Deep Learning Innovations and Their Convergence
With Big Data is a pivotal reference for the latest scholarly
research on upcoming trends in data analytics and potential
technologies that will facilitate insight in various domains of
science, industry, business, and consumer applications. Featuring
extensive coverage on a broad range of topics and perspectives such
as deep neural network, domain adaptation modeling, and threat
detection, this book is ideally designed for researchers,
professionals, and students seeking current research on the latest
trends in the field of deep learning techniques in big data
analytics. Contents include: Deep Auto-Encoders Deep Neural Network
Domain Adaptation Modeling Multilayer Perceptron (MLP) Natural
Language Processing (NLP) Restricted Boltzmann Machines (RBM)
Threat Detection
This book presents the Fifth International Conference on Safety and
Security with IoT (SaSeIoT 2021), which took place online. The
conference aims to explore not only IoT and its related critical
applications but also IoT towards Security and Safety. The
conference solicits original and inspiring research contributions
from experts, researchers, designers, and practitioners in
academia, industry and related fields and provides a common
platform to share knowledge, experience and best practices in
various domains of IoT.
The authors provide an understanding of big data and MapReduce by
clearly presenting the basic terminologies and concepts. They have
employed over 100 illustrations and many worked-out examples to
convey the concepts and methods used in big data, the inner
workings of MapReduce, and single node/multi-node installation on
physical/virtual machines. This book covers almost all the
necessary information on Hadoop MapReduce for most online
certification exams. Upon completing this book, readers will find
it easy to understand other big data processing tools such as
Spark, Storm, etc. Ultimately, readers will be able to: *
understand what big data is and the factors that are involved *
understand the inner workings of MapReduce, which is essential for
certification exams * learn the features and weaknesses of
MapReduce * set up Hadoop clusters with 100s of physical/virtual
machines * create a virtual machine in AWS * write MapReduce with
Eclipse in a simple way * understand other big data processing
tools and their applications
The authors provide an understanding of big data and MapReduce by
clearly presenting the basic terminologies and concepts. They have
employed over 100 illustrations and many worked-out examples to
convey the concepts and methods used in big data, the inner
workings of MapReduce, and single node/multi-node installation on
physical/virtual machines. This book covers almost all the
necessary information on Hadoop MapReduce for most online
certification exams. Upon completing this book, readers will find
it easy to understand other big data processing tools such as
Spark, Storm, etc. Ultimately, readers will be able to: *
understand what big data is and the factors that are involved *
understand the inner workings of MapReduce, which is essential for
certification exams * learn the features and weaknesses of
MapReduce * set up Hadoop clusters with 100s of physical/virtual
machines * create a virtual machine in AWS * write MapReduce with
Eclipse in a simple way * understand other big data processing
tools and their applications
Intelligent Vehicular Network and Communications: Fundamentals,
Architectures and Solutions begins with discussions on how the
transportation system has transformed into today's Intelligent
Transportation System (ITS). It explores the design goals,
challenges, and frameworks for modeling an ITS network, discussing
vehicular network model technologies, mobility management
architectures, and routing mechanisms and protocols. It looks at
the Internet of Vehicles, the vehicular cloud, and vehicular
network security and privacy issues. The book investigates
cooperative vehicular systems, a promising solution for addressing
current and future traffic safety needs, also exploring cooperative
cognitive intelligence, with special attention to spectral
efficiency, spectral scarcity, and high mobility. In addition,
users will find a thorough examination of experimental work in such
areas as Controller Area Network protocol and working function of
On Board Unit, as well as working principles of roadside unit and
other infrastructural nodes. Finally, the book examines big data in
vehicular networks, exploring various business models, application
scenarios, and real-time analytics, concluding with a look at
autonomous vehicles.
The international community's commitment to halve global poverty by
2015 has been enshrined in the first Millennium Development Goal.
How global poverty is measured is a critical element in assessing
progress towards this goal, and different researchers have
presented widely-varying estimates. The chapters in this volume
address a range of problems in the measurement and estimation of
global poverty, from a variety of viewpoints. Topics covered
include the controversies surrounding the definition of a global
poverty line; the use of purchasing power parity exchange rates to
map the poverty line across countries; and the quality, and
appropriate use, of data from national accounts and household
surveys. Both official and independent estimates of global poverty
have proved to be controversial, and this volume presents and
analyses the lively debate that has ensued.
Healthcare sector is characterized by difficulty, dynamism and
variety. In 21st century, healthcare domain is surrounded by tons
of challenges in terms of Disease detection, prevention, high
costs, skilled technicians and better infrastructure. In order to
handle these challenges, Intelligent Healthcare management
technologies are required to play an effective role in improvising
patient's life. Healthcare organizations also need to continuously
discover useful and actionable knowledge to gain insight from tons
of data for various purposes for saving lives, reducing medical
operations errors, enhancing efficiency, reducing costs and making
the whole world a healthy world. Applying Swarm Intelligence and
Evolutionary Algorithms in Healthcare and Drug Development is
essential nowadays. The objective of this book is to highlight
various Swarm Intelligence and Evolutionary Algorithms techniques
for various medical issues in terms of Cancer Diagnosis, Brain
Tumor, Diabetic Retinopathy, Heart disease as well as drug design
and development. The book will act as one-stop reference for
readers to think and explore Swarm Intelligence and Evolutionary
Algorithms seriously for real-time patient diagnosis, as the book
provides solutions to various complex diseases found critical for
medical practitioners to diagnose in real-world. Key Features:
Highlights the importance and applications of Swarm Intelligence
and Evolutionary Algorithms in Healthcare industry. Elaborates
Swarm Intelligence and Evolutionary Algorithms for Cancer
Detection. In-depth coverage of computational methodologies,
approaches and techniques based on Swarm Intelligence and
Evolutionary Algorithms for detecting Brain Tumour including deep
learning to optimize brain tumor diagnosis. Provides a strong
foundation for Diabetic Retinopathy detection using Swarm and
Evolutionary algorithms. Focuses on applying Swarm Intelligence and
Evolutionary Algorithms for Heart Disease detection and diagnosis.
Comprehensively covers the role of Swarm Intelligence and
Evolutionary Algorithms for Drug Design and Discovery. The book
will play a significant role for Researchers, Medical
Practitioners, Healthcare Professionals and Industrial Healthcare
Research and Development wings to conduct advanced research in
Healthcare using Swarm Intelligence and Evolutionary Algorithms
techniques.
The international community's commitment to halve global poverty by
2015 has been enshrined in the first Millennium Development Goal.
How global poverty is measured is a critical element in assessing
progress towards this goal, and different researchers have
presented widely-varying estimates. The chapters in this volume
address a range of problems in the measurement and estimation of
global poverty, from a variety of viewpoints. Topics covered
include the controversies surrounding the definition of a global
poverty line; the use of purchasing power parity exchange rates to
map the poverty line across countries; and the quality, and
appropriate use, of data from national accounts and household
surveys. Both official and independent estimates of global poverty
have proved to be controversial, and this volume presents and
analyses the lively debate that has ensued.
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