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Using digital and mobile technologies provides smart healthcare
options for the inhabitants of urban centers. The IOT revolution
that has exploded in the segment of energy, transportation,
security and infrastructure will have sweeping healthcare
implications. A centralized healthcare system, data collection and
sharing, analysis and testing methods will usher in a new age to
combat modern times. Emerging technologies like Artificial
Intelligence, 5G, and smart cameras as well as innovative
strategies and design are just a few of the ways smart cities can
address healthcare problems. Smart cities rely heavily on sensors
to perceive parameters such as temperature, humidity, allergens,
pollution and power grid status. All these affect deeply the way
cities function and the adaptation phase cities will pass in
achieving a balanced 'out of danger' co-living with Covid-19. The
scope of this publication encompasses empirical work and scientific
documentation on the two meeting areas: resilience and the smart
city in the case of the Covid-19 pandemic in cities. Moreover,
interface concept development and urban technologies production
systems that can be replicable in many cities, including AI,
machine learning and ICT are discussed. Strategically responding to
system data updates enables healthcare to be smarter. Building
capacity programs on how a community might gain universal access to
valuable information, partners, networks, new learning paradigms
and/or to eventually familiarize itself with innovative tracking,
mentoring and fighting technologies and address the challenges in
solving today's healthcare challenges.
Many approaches have sprouted from artificial intelligence (AI) and
produced major breakthroughs in the computer science and
engineering industries. Deep learning is a method that is
transforming the world of data and analytics. Optimization of this
new approach is still unclear, however, and there's a need for
research on the various applications and techniques of deep
learning in the field of computing. Deep Learning Techniques and
Optimization Strategies in Big Data Analytics is a collection of
innovative research on the methods and applications of deep
learning strategies in the fields of computer science and
information systems. While highlighting topics including data
integration, computational modeling, and scheduling systems, this
book is ideally designed for engineers, IT specialists, data
analysts, data scientists, engineers, researchers, academicians,
and students seeking current research on deep learning methods and
its application in the digital industry.
Advances in machine learning techniques and ever-increasing
computing power has helped create a new generation of hardware and
software technologies with practical applications for nearly every
industry. As the progress has, in turn, excited the interest of
venture investors, technology firms, and a growing number of
clients, implementing intelligent automation in both physical and
information systems has become a must in business. Handbook of
Research on Smart Technology Models for Business and Industry is an
essential reference source that discusses relevant abstract
frameworks and the latest experimental research findings in theory,
mathematical models, software applications, and prototypes in the
area of smart technologies. Featuring research on topics such as
digital security, renewable energy, and intelligence management,
this book is ideally designed for machine learning specialists,
industrial experts, data scientists, researchers, academicians,
students, and business professionals seeking coverage on current
smart technology models.
Scalable and Distributed Machine Learning and Deep Learning
Patterns is a practical guide that provides insights into how
distributed machine learning can speed up the training and serving
of machine learning models, reduce time and costs, and address
bottlenecks in the system during concurrent model training and
inference. The book covers various topics related to distributed
machine learning such as data parallelism, model parallelism, and
hybrid parallelism. Readers will learn about cutting-edge parallel
techniques for serving and training models such as parameter server
and all-reduce, pipeline input, intra-layer model parallelism, and
a hybrid of data and model parallelism. The book is suitable for
machine learning professionals, researchers, and students who want
to learn about distributed machine learning techniques and apply
them to their work. This book is an essential resource for
advancing knowledge and skills in artificial intelligence, deep
learning, and high-performance computing. The book is suitable for
computer, electronics, and electrical engineering courses focusing
on artificial intelligence, parallel computing, high-performance
computing, machine learning, and its applications. Whether you're a
professional, researcher, or student working on machine and deep
learning applications, this book provides a comprehensive guide for
creating distributed machine learning, including multi-node machine
learning systems, using Python development experience. By the end
of the book, readers will have the knowledge and abilities
necessary to construct and implement a distributed data processing
pipeline for machine learning model inference and training, all
while saving time and costs.
The immense increase on the size and type of real time data
generated across various edge computing platform results in
unstructured databases and data silos. This edited book gathers
together an international set of researchers to investigate the
possibilities offered by data-fabric solutions; the volume focuses
in particular on data architectures and on semantic changes in
future data landscapes.
The perception of smart cities encompasses a strategy that uses
different types of technologies, artificial intelligence (AI), and
machine learning and in which, through the internet of things (IoT)
and sensor-based data collection, the strategy extrapolates
information using insights gained from that data to manage or
monitor or track assets, resources, and services efficiently in an
urban area. Both these models deeply affect the localities where
they are applied and can create together immense possibilities for
urban recovery, better quality of life, physical and mental health
protection, and economic and social redevelopment. Smart Cities and
Machine Learning in Urban Health promotes interdisciplinary work
that develops and illustrates the concept of resilience in relation
to smart city and machine learning. The book examines the ability
of an area and its communities to recover quickly from
difficulties; the rigidness and resistance of an area and its
communities to possible crisis; the ability of an area, its
communities, infrastructure, and business to spring back into
shape; and the responsiveness and mitigation towards the crisis
with a special look at the impact of the COVID-19 pandemic. The
research's theoretical foundation rests on a wide range of
non-architectural sources, primarily AI, sociology, urban studies,
and technological development, but it explores everything on cases
taken from real cities, thus transforming them into pieces of
architectural interest. Covering topics such as carbon emissions,
digital healthcare systems, and urban transformation, this book is
an essential resource for graduate and post-graduate students,
policymakers, researchers, university faculty, engineers, public
management, hospital administration, professors, and academicians.
Many approaches have sprouted from artificial intelligence (AI) and
produced major breakthroughs in the computer science and
engineering industries. Deep learning is a method that is
transforming the world of data and analytics. Optimization of this
new approach is still unclear, however, and there's a need for
research on the various applications and techniques of deep
learning in the field of computing. Deep Learning Techniques and
Optimization Strategies in Big Data Analytics is a collection of
innovative research on the methods and applications of deep
learning strategies in the fields of computer science and
information systems. While highlighting topics including data
integration, computational modeling, and scheduling systems, this
book is ideally designed for engineers, IT specialists, data
analysts, data scientists, engineers, researchers, academicians,
and students seeking current research on deep learning methods and
its application in the digital industry.
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