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Books > Computing & IT > Applications of computing
Relational databases have been predominant for many years and are
used throughout various industries. The current system faces
challenges related to size and variety of data thus the NoSQL
databases emerged. By joining these two database models, there is
room for crucial developments in the field of computer science.
Bridging Relational and NoSQL Databases is an innovative source of
academic content on the convergence process between databases and
describes key features of the next database generation. Featuring
coverage on a wide variety of topics and perspectives such as BASE
approach, CAP theorem, and hybrid and native solutions, this
publication is ideally designed for professionals and researchers
interested in the features and collaboration of relational and
NoSQL databases.
There is a tremendous need for computer scientists, data
scientists, and software developers to learn how to develop
Socratic problem-solving applications. While the amount of data and
information processing has been accelerating, our ability to learn
and problem-solve with that data has fallen behind. Meanwhile,
problems have become too complex to solve in the workplace without
a concerted effort to follow a problem-solving process. This
problem-solving process must be able to deal with big and disparate
data. Furthermore, it must solve problems that do not have a "rule"
to apply in solving them. Moreover, it must deal with ambiguity and
help humans use informed judgment to build on previous steps and
create new understanding. Computer-based Socratic problem-solving
systems answer this need for a problem-solving process using big
and disparate data. Furthermore, computer scientists, data
scientists, and software developers need the knowledge to develop
these systems. Socrates Digital (TM) for Learning and Problem
Solving presents the rationale for developing a Socratic
problem-solving application. It describes how a computer-based
Socratic problem-solving system called Socrates DigitalTM can keep
problem-solvers on track, document the outcome of a problem-solving
session, and share those results with problem-solvers and larger
audiences. In addition, Socrates DigitalTM assists problem-solvers
to combine evidence about their quality of reasoning for individual
problem-solving steps and their overall confidence in the solution.
Socrates DigitalTM also captures, manages, and distributes this
knowledge across organizations to improve problem-solving. This
book also presents how to build a Socrates DigitalTM system by
detailing the four phases of design and development: Understand,
Explore, Materialize, and Realize. The details include flow charts
and pseudo-code for readers to implement Socrates DigitalTM in a
general-purpose programming language. The completion of the design
and development process results in a Socrates DigitalTM system that
leverages artificial intelligence services from providers that
include Apple, Microsoft, Google, IBM, and Amazon. In addition, an
appendix provides a demonstration of a no-code implementation of
Socrates DigitalTM in Microsoft Power Virtual Agent.
As society continues to heavily rely on software and databases, the
risks for cyberattacks have increased rapidly. As the dependence on
computers has become gradually widespread throughout communities
and governments, there is a need for cybersecurity programs that
can assist in protecting sizeable networks and significant amounts
of data at once. Implementing overarching security policies for
software systems is integral to protecting community-wide data from
harmful attacks. Establishing Cyber Security Programs Through the
Community Cyber Security Maturity Model (CCSMM) is an essential
reference source that discusses methods in applying sustainable
cybersecurity programs and policies within organizations,
governments, and other communities. Featuring research on topics
such as community engagement, incident planning methods, and
information sharing, this book is ideally designed for
cybersecurity professionals, security analysts, managers,
researchers, policymakers, students, practitioners, and
academicians seeking coverage on novel policies and programs in
cybersecurity implementation.
This book presents the state-of-the-art, current challenges, and
future perspectives for the field of many-criteria optimization and
decision analysis. The field recognizes that real-life problems
often involve trying to balance a multiplicity of considerations
simultaneously – such as performance, cost, risk, sustainability,
and quality. The field develops theory, methods and tools that can
support decision makers in finding appropriate solutions when faced
with many (typically more than three) such criteria at the same
time. The book consists of two parts: key research topics,
and emerging topics. Part I begins with a general introduction to
many-criteria optimization, perspectives from research leaders in
real-world problems, and a contemporary survey of the attributes of
problems of this kind. This part continues with chapters on
fundamental aspects of many-criteria optimization, namely on order
relations, quality measures, benchmarking, visualization, and
theoretical considerations. Part II offers more specialized
chapters on correlated objectives, heterogeneous objectives,
Bayesian optimization, and game theory. Written by leading experts
across the field of many-criteria optimization, this book will be
an essential resource for researchers in the fields of evolutionary
computing, operations research, multiobjective optimization, and
decision science.
As environmental issues remain at the forefront of energy research,
renewable energy is now an all-important field of study. And as
smart technology continues to grow and be refined, its applications
broaden and increase in their potential to revolutionize
sustainability studies. This potential can only be fully realized
with a thorough understanding of the most recent breakthroughs in
the field. Research Advancements in Smart Technology, Optimization,
and Renewable Energy is a collection of innovative research that
explores the recent steps forward for smart applications in
sustainability. Featuring coverage on a wide range of topics
including energy assessment, neural fuzzy control, and
biogeography, this book is ideally designed for advocates,
policymakers, engineers, software developers, academicians,
researchers, and students.
The optimization of traffic management operations has become a
considerable challenge in today's global scope due to the
significant increase in the number of vehicles, traffic
congestions, and automobile accidents. Fortunately, there has been
substantial progress in the application of intelligent computing
devices to transportation processes. Vehicular ad-hoc networks
(VANETs) are a specific practice that merges the connectivity of
wireless technologies with smart vehicles. Despite its relevance,
empirical research is lacking on the developments being made in
VANETs and how certain intelligent technologies are being applied
within transportation systems. IoT and Cloud Computing Advancements
in Vehicular Ad-Hoc Networks provides emerging research exploring
the theoretical and practical aspects of intelligent transportation
systems and analyzing the modern techniques that are being applied
to smart vehicles through cloud technology. Featuring coverage on a
broad range of topics such as health monitoring, node localization,
and fault tolerance, this book is ideally designed for network
designers, developers, analysists, IT specialists, computing
professionals, researchers, academics, and post-graduate students
seeking current research on emerging computing concepts and
developments in vehicular ad-hoc networks.
Predictive Modeling of Drug Sensitivity gives an overview of drug
sensitivity modeling for personalized medicine that includes data
characterizations, modeling techniques, applications, and research
challenges. It covers the major mathematical techniques used for
modeling drug sensitivity, and includes the requisite biological
knowledge to guide a user to apply the mathematical tools in
different biological scenarios. This book is an ideal reference for
computer scientists, engineers, computational biologists, and
mathematicians who want to understand and apply multiple approaches
and methods to drug sensitivity modeling. The reader will learn a
broad range of mathematical and computational techniques applied to
the modeling of drug sensitivity, biological concepts, and
measurement techniques crucial to drug sensitivity modeling, how to
design a combination of drugs under different constraints, and the
applications of drug sensitivity prediction methodologies.
Evolution of Knowledge Science: Myth to Medicine: Intelligent
Internet-Based Humanist Machines explains how to design and build
the next generation of intelligent machines that solve social and
environmental problems in a systematic, coherent, and optimal
fashion. The book brings together principles from computer and
communication sciences, electrical engineering, mathematics,
physics, social sciences, and more to describe computer systems
that deal with knowledge, its representation, and how to deal with
knowledge centric objects. Readers will learn new tools and
techniques to measure, enhance, and optimize artificial
intelligence strategies for efficiently searching through vast
knowledge bases, as well as how to ensure the security of
information in open, easily accessible, and fast digital networks.
Author Syed Ahamed joins the basic concepts from various
disciplines to describe a robust and coherent knowledge sciences
discipline that provides readers with tools, units, and measures to
evaluate the flow of knowledge during course work or their
research. He offers a unique academic and industrial perspective of
the concurrent dynamic changes in computer and communication
industries based upon his research. The author has experience both
in industry and in teaching graduate level telecommunications and
network architecture courses, particularly those dealing with
applications of networks in education.
Chemical modelling covers a wide range of disciplines, and this
book is the first stop for any chemist, materials scientist,
biochemist, or molecular physicist wishing to acquaint themselves
with major developments in the applications and theory of chemical
modelling. Containing both comprehensive and critical reviews, it
is a convenient reference to the current literature. Coverage
includes, but is not limited to, considerations towards rigorous
foundations for the natural-orbital representation of molecular
electronic transitions, quantum and classical embedding schemes for
optical properties, machine learning for excited states, ultrafast
and wave function-based electron dynamics, and attosecond
chemistry.
The success of any organization is largely dependent on positive
feedback and repeat business from patrons. By utilizing acquired
marketing data, business professionals can more accurately assess
practices, services, and products that their customers find
appealing. The Handbook of Research on Intelligent Techniques and
Modeling Applications in Marketing Analytics features innovative
research and implementation practices of analytics in marketing
research. Highlighting various techniques in acquiring and
deciphering marketing data, this publication is a pivotal reference
for professionals, managers, market researchers, and practitioners
interested in the observation and utilization of data on marketing
trends to promote positive business practices.
Big data generates around us constantly from daily business, custom
use, engineering, and science activities. Sensory data is collected
from the internet of things (IoT) and cyber-physical systems (CPS).
Merely storing such a massive amount of data is meaningless, as the
key point is to identify, locate, and extract valuable knowledge
from big data to forecast and support services. Such extracted
valuable knowledge is usually referred to as smart data. It is
vital to providing suitable decisions in business, science, and
engineering applications. Deep Learning Applications for
Cyber-Physical Systems provides researchers a platform to present
state-of-the-art innovations, research, and designs while
implementing methodological and algorithmic solutions to data
processing problems and designing and analyzing evolving trends in
health informatics and computer-aided diagnosis in deep learning
techniques in context with cyber physical systems. Covering topics
such as smart medical systems, intrusion detection systems, and
predictive analytics, this text is essential for computer
scientists, engineers, practitioners, researchers, students, and
academicians, especially those interested in the areas of internet
of things, machine learning, deep learning, and cyber-physical
systems.
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
ClearRevise is all about making your revision easy. At the end of
the course, doing practice papers is useful - but an exam tutor can
make a big difference. This book helps provide support from both
angles and will really help you to ace the exam. The first section
is your exam tutor. It shows you example questions with model
answers. Just like a tutor, it gives you exam tips and lets you
know what the examiner is looking for. Secondly, you are then given
similar questions from the same topic for you to have a go at,
applying your knowledge and tips. With over 400 marks in this
section and all the answers provided you'll easily revise the
topics as you go. Lastly, there are two complete exam papers
written in the same style as the live OCR papers to try. They're
exactly the same length and marks as the real exam, providing a
realistic experience and a great opportunity to show how much
you've progressed.
Food is a necessary aspect of human life, and agriculture is
crucial to any country's global economy. Because the food business
is essential to both a country's economy and global economy,
artificial intelligence (AI)-based smart solutions are needed to
assure product quality and food safety. The agricultural sector is
constantly under pressure to boost crop output as a result of
population growth. This necessitates the use of AI applications.
Artificial Intelligence Applications in Agriculture and Food
Quality Improvement discusses the application of AI, machine
learning, and data analytics for the acceleration of the
agricultural and food sectors. It presents a comprehensive view of
how these technologies and tools are used for agricultural process
improvement, food safety, and food quality improvement. Covering
topics such as diet assessment research, crop yield prediction, and
precision farming, this premier reference source is an essential
resource for food safety professionals, quality assurance
professionals, agriculture specialists, crop managers, agricultural
engineers, food scientists, computer scientists, AI specialists,
students, libraries, government officials, researchers, and
academicians.
Artificial intelligence has become an invaluable tool in modern
society and can be utilized across fields such as healthcare,
travel, education, and construction. There are numerous benefits
for companies, industries, and governments when adopting this
technology into their daily operations as it continues to evolve to
support the needs of society. Further study on the challenges and
strategies of implementation is required in order to ensure the
technology is employed to its full potential. Artificial
Intelligence for Societal Development and Global Well-Being
considers the various uses, best practices, and success factors of
artificial intelligence across fields and industries and discusses
critical ways in which the technology must be developed further for
the good of society. Covering a range of topics such as smart
devices, artificial neural networks, and natural intelligence, this
reference work is crucial for scientists, librarians, business
owners, government officials, entrepreneurs, scholars, researchers,
practitioners, instructors, and students.
Translation and communication between cultures can sometimes be a
difficult process. Image-based assessments can offer a way for
large populations to be tested on different subjects without having
to create multiple testing programs. Cross-Cultural Analysis of
Image-Based Assessments: Emerging Research and Opportunities is an
innovative resource that offers insight into the application of
visual assessments across a global and intercultural context.
Highlighting applicable topics which include visual literacy,
psychological assessments, assessment development, and equivalency
measurements, this publication is ideal for psychologists,
therapists, and researchers who would like to stay current on the
most efficient way to test multi-cultural populations in various
fields of knowledge.
Example-Based Super Resolution provides a thorough introduction and
overview of example-based super resolution, covering the most
successful algorithmic approaches and theories behind them with
implementation insights. It also describes current challenges and
explores future trends. Readers of this book will be able to
understand the latest natural image patch statistical models and
the performance limits of example-based super resolution
algorithms, select the best state-of-the-art algorithmic
alternative and tune it for specific use cases, and quickly put
into practice implementations of the latest and most successful
example-based super-resolution methods.
Advances in Computers, the latest volume in the series published
since 1960, presents detailed coverage of innovations in computer
hardware, software, theory, design, and applications. In addition,
it provides contributors with a medium in which they can explore
their subjects in greater depth and breadth than journal articles
usually allow. As a result, many articles have become standard
references that continue to be of significant, lasting value in
this rapidly expanding field.
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