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Books > Computing & IT > Applications of computing
Artificial intelligence (AI) and knowledge management can create
innovative digital solutions and business opportunities in Asia
from circular and green economies to technological disruption,
innovation, and smart cities. It is essential to understand the
impact and importance of AI and knowledge management within the
digital economy for future development and for fostering the best
practices within 21st century businesses. The Handbook of Research
on Artificial Intelligence and Knowledge Management in Asia's
Digital Economy offers conceptual frameworks, empirical studies,
and case studies that help to understand the latest developments in
artificial intelligence and knowledge management, as well as its
potential for digital transformation and business opportunities in
Asia. Covering topics such as augmented reality. Convolutional
neural networks, and digital transformation, this major reference
work generates enriching debate on the challenges and opportunities
for economic growth and inclusion in the region among business
executives and leaders, IT managers, policymakers, government
officials, students and educators of higher education, researchers,
and academicians.
Computing has moved away from a focus on performance-centric serial
computation, instead towards energy-efficient parallel computation.
This provides continued performance increases without increasing
clock frequencies, and overcomes the thermal and power limitations
of the dark-silicon era. As the number of parallel cores increases,
we transition into the many-core computing era. There is
considerable interest in developing methods, tools, architectures
and applications to support many-core computing. The primary aim of
this edited book is to provide a timely and coherent account of the
recent advances in many-core computing research. Starting with
programming models, operating systems and their applications; the
authors present runtime management techniques, followed by system
modelling, verification and testing methods, and architectures and
systems. The book ends with some examples of innovative
applications.
The technological advancements of today not only affect
individual's personal lives. They also affect the way urban
communities regard the improvement of their resident's lives.
Research involving these autonomic reactions to the growing needs
of the people is desperately needed to transform the cities of
today into the cities of the future. Driving the Development,
Management, and Sustainability of Cognitive Cities is a pivotal
reference source that explores and improves the understanding of
the strategic role of sustainable cognitive cities in residents'
routine life styles. Such benefits to residents and businesses
include having access to world-class training while sitting at
home, having their wellbeing observed consistently, and having
their medical issues identified before occurrence. This book is
ideally designed for administrators, policymakers, industrialists,
and researchers seeking current research on developing and managing
cognitive cities.
Artificial intelligence is headline news with the launch of the latest ChatGPT and Google Bard. But when did we start making computers mimic the human mind? And what is the reality of the capabilities of AI now, and in the future?
AI has always stirred emotions and caused great excitement and concern. Since the launch of large language models such as ChatGPT, the scope and capabilities of AI look set to transform our technology, in both good and bad ways. AI can help teach us how to write better or help us generate amazing artwork. But in the wrong hands, AI can create fake images and fake information that can be used to damage our societies.
A new addition to the popular Bite-sized Chunks series, this expert-led book will explore how AI has developed from humble beginnings in the 1950s to today’s extraordinary AIs with more neurons than the human brain. Focusing on specific AIs and their creators over the years, it explains the science and engineering behind each AI, discusses ethical issues, and covers all the most fascinating information about one of the most important and contentious developments in human technology (including the latest on generative AI/ChatGPT), as well as what we can expect to see in the future of this field – all in short, accessible bite-sized chunks.
This book proposes various deep learning models featuring how deep
learning algorithms have been applied and used in real-life
settings. The complexity of real-world scenarios and constraints
imposed by the environment, together with budgetary and resource
limitations, have posed great challenges to engineers and
developers alike, to come up with solutions to meet these demands.
This book presents case studies undertaken by its contributors to
overcome these problems. These studies can be used as references
for designers when applying deep learning in solving real-world
problems in the areas of vision, signals, and networks.The contents
of this book are divided into three parts. In the first part, AI
vision applications in plant disease diagnostics, PM2.5
concentration estimation, surface defect detection, and ship plate
identification, are featured. The second part introduces deep
learning applications in signal processing; such as time series
classification, broad-learning based signal modulation recognition,
and graph neural network (GNN) based modulation recognition.
Finally, the last section of the book reports on graph embedding
applications and GNN in AI for networks; such as an end-to-end
graph embedding method for dispute detection, an autonomous
System-GNN architecture to infer the relationship between Apache
software, a Ponzi scheme detection framework to identify and detect
Ponzi schemes, and a GNN application to predict molecular
biological activities.
Because trainees need to learn about the underlying technologies to
use automation safely and efficiently, the development of automated
aviation systems training is a growing challenge. Task analysis has
been singled out as the basis of the training, but it can be more
time-consuming than traditional development techniques. Cases on
Modern Computer Systems in Aviation is an essential reference
source that covers new information technology use in aviation
systems to streamline the cybersecurity, decision-making, planning,
and design processes within the aviation industry. Featuring
coverage on a broad range of topics such as computer systems in
aviation, artificial intelligence, software-defined networking
(SDN), air navigation systems, decision support systems (DSS), and
more, this publication is ideally designed for aviation specialists
and industry professionals, technicians, practitioners,
researchers, and academicians seeking current research on modern
modeling approaches to streamline management in aviation.
Decision-making is a frequent problem in today's financial,
business, and industrial world. Thus, fuzzy expert systems are
increasingly being used to solve decision-making problems by
attempting to solve a part or whole of a practical problem. These
expert systems have proven that they can solve problems in various
domains where human expertise is required, including the field of
agriculture. Fuzzy Expert Systems and Applications in Agricultural
Diagnosis is a crucial source that examines the use of fuzzy expert
systems for prediction and problem solving in the agricultural
industry. Featuring research on topics such as nutrition
management, sustainable agriculture, and defuzzification, this book
is ideally designed for farmers, researchers, scientists,
academics, students, policymakers, and development practitioners
seeking the latest research in technological tools that support
crop disease diagnosis.
In the world of mathematics and computer science, technological
advancements are constantly being researched and applied to ongoing
issues. Setbacks in social networking, engineering, and automation
are themes that affect everyday life, and researchers have been
looking for new techniques in which to solve these challenges.
Graph theory is a widely studied topic that is now being applied to
real-life problems. Advanced Applications of Graph Theory in Modern
Society is an essential reference source that discusses recent
developments on graph theory, as well as its representation in
social networks, artificial neural networks, and many complex
networks. The book aims to study results that are useful in the
fields of robotics and machine learning and will examine different
engineering issues that are closely related to fuzzy graph theory.
Featuring research on topics such as artificial neural systems and
robotics, this book is ideally designed for mathematicians,
research scholars, practitioners, professionals, engineers, and
students seeking an innovative overview of graphic theory.
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Pharmako-AI
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K Allado-McDowell
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R395
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Discovery Miles 3 560
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In recent years, smart cities have been an emerging area of
interest across the world. Due to this, numerous technologies and
tools, such as building information modeling (BIM) and digital
twins, have been developed to help achieve smart cities. To ensure
research is continuously up to date and new technologies are
considered within the field, further study is required. The
Research Anthology on BIM and Digital Twins in Smart Cities
considers the uses, challenges, and opportunities of BIM and
digital twins within smart cities. Covering key topics such as
data, design, urban areas, technology, and sustainability, this
major reference work is ideal for industry professionals,
government officials, computer scientists, policymakers,
researchers, scholars, practitioners, instructors, and students.
There is not a single industry which will not be transformed by
machine learning and Internet of Things (IoT). IoT and machine
learning have altogether changed the technological scenario by
letting the user monitor and control things based on the prediction
made by machine learning algorithms. There has been substantial
progress in the usage of platforms, technologies and applications
that are based on these technologies. These breakthrough
technologies affect not just the software perspective of the
industry, but they cut across areas like smart cities, smart
healthcare, smart retail, smart monitoring, control, and others.
Because of these "game changers," governments, along with top
companies around the world, are investing heavily in its research
and development. Keeping pace with the latest trends, endless
research, and new developments is paramount to innovate systems
that are not only user-friendly but also speak to the growing needs
and demands of society. This volume is focused on saving energy at
different levels of design and automation including the concept of
machine learning automation and prediction modeling. It also deals
with the design and analysis for IoT-enabled systems including
energy saving aspects at different level of operation. The editors
and contributors also cover the fundamental concepts of IoT and
machine learning, including the latest research, technological
developments, and practical applications. Valuable as a learning
tool for beginners in this area as well as a daily reference for
engineers and scientists working in the area of IoT and machine
technology, this is a must-have for any library.
In the digital era, novel applications and techniques in the realm
of computer science are increasing constantly. These innovations
have led to new techniques and developments in the field of
cybernetics. The Handbook of Research on Applied Cybernetics and
Systems Science is an authoritative reference publication for the
latest scholarly information on complex concepts of more adaptive
and self-regulating systems. Featuring exhaustive coverage on a
variety of topics such as infectious disease modeling, clinical
imaging, and computational modeling, this publication is an ideal
source for researchers and students in the field of computer
science seeking emerging trends in computer science and
computational mathematics.
It is known that trust is of the utmost importance in human
interactions, and blockchain technology establishes a new type of
foundation for financial and political confidence. This new kind of
trust is based on cryptographic techniques and distributed in
digital networks. In an uncertain world where it is difficult to
tell what is real or fake, decentralized organizational networks
may prove to be particularly competitive given that this new
""distributed trust"" endows them with an unusual functional
autonomy, namely guaranteeing the authenticity, confidentiality,
and integrity of the processed data. Besides the direct sharing of
information enabled by blockchain, transactions can now also take
place with newfound trust and ways to safely manage personal data.
It is important to look at these implications, particularly in
sectors such as business and healthcare. Political and Economic
Implications of Blockchain Technology in Business and Healthcare
provides relevant theoretical frameworks on the political and
economic impact of blockchain technology, which is thought to be
able to redesign human interactions concerning transactions.
Specifically, it will give ideas, concepts, and instruments
considered relevant to advance the knowledge about
""cryptoeconomics"" and decentralized governance. The chapters will
also provide several insights on business applications of this
digital innovation, particularly in the healthcare sector, and will
explore the ethical impact of the new ""distributed trust""
paradigm resulting from the surge of such a disruptive technology.
This book is essential for students and researchers in social and
life sciences, professionals and policymakers working in the fields
of public and business administration, healthcare workers and
researchers, academicians, and students interested in blockchain
technology and the political and economic impacts in the industry.
The role of data fusion has been expanding in recent years through
the incorporation of pervasive applications, where the physical
infrastructure is coupled with information and communication
technologies, such as wireless sensor networks for the internet of
things (IoT), e-health and Industry 4.0. In this edited reference,
the authors provide advanced tools for the design, analysis and
implementation of inference algorithms in wireless sensor networks.
The book is directed at the sensing, signal processing, and ICTs
research communities. The contents will be of particular use to
researchers (from academia and industry) and practitioners working
in wireless sensor networks, IoT, E-health and Industry 4.0
applications who wish to understand the basics of inference
problems. It will also be of interest to professionals, and
graduate and PhD students who wish to understand the fundamental
concepts of inference algorithms based on intelligent and
energy-efficient protocols.
The Easy Introduction to Machine Learning (Ml) for Nontechnical
People--In Business and Beyond Artificial Intelligence for Business
is your plain-English guide to Artificial Intelligence (AI) and
Machine Learning (ML): how they work, what they can and cannot do,
and how to start profiting from them. Writing for nontechnical
executives and professionals, Doug Rose demystifies AI/ML
technology with intuitive analogies and explanations honed through
years of teaching and consulting. Rose explains everything from
early "expert systems" to advanced deep learning networks. First,
Rose explains how AI and ML emerged, exploring pivotal early ideas
that continue to influence the field. Next, he deepens your
understanding of key ML concepts, showing how machines can create
strategies and learn from mistakes. Then, Rose introduces current
powerful neural networks: systems inspired by the structure and
function of the human brain. He concludes by introducing leading AI
applications, from automated customer interactions to event
prediction. Throughout, Rose stays focused on business: applying
these technologies to leverage new opportunities and solve real
problems. Compare the ways a machine can learn, and explore current
leading ML algorithms Start with the right problems, and avoid
common AI/ML project mistakes Use neural networks to automate
decision-making and identify unexpected patterns Help neural
networks learn more quickly and effectively Harness AI chatbots,
virtual assistants, virtual agents, and conversational AI
applications
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