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In Decision Making and Problem Solving: A Practical Guide for
Applied Research, the author utilizes traditional approaches,
tools, and techniques adopted to solve current day-to-day,
real-life problems. The book offers guidance in identifying and
applying accurate methods for designing a strategy as well as
implementing these strategies in the real world. The book includes
realistic case studies and practical approaches that should help
readers understand how the decision making occurs and can be
applied to problem solving under deep uncertainty.
The book examines the role of artificial intelligence during the
COVID-19 pandemic, including its application in i) early warnings
and alerts, ii) tracking and prediction, iii) data dashboards, iv)
diagnosis and prognosis, v) treatments, and cures, and vi) social
control. It explores the use of artificial intelligence in the
context of population screening and assessing infection risks, and
presents mathematical models for epidemic prediction of COVID-19.
Furthermore, the book discusses artificial intelligence-mediated
diagnosis, and how machine learning can help in the development of
drugs to treat the disease. Lastly, it analyzes various artificial
intelligence-based models to improve the critical care of COVID-19
patients.
Understand the introductory concepts and design principles of
algorithms and their complexities. Demonstrate the programming
implementations of all the algorithms using C-Language. Be an
excellent handbook on algorithms with self-explanatory chapters
enriched with problems and solutions.
The book series "Smart Computing Applications" provides a platform
for researchers, academicians and practitioners to exchange ideas
on recent theoretical and applied data science and computing
technologies research, with a particular attention to the possible
applications of such technologies in the industry, especially in
the field of mechanical and industrial engineering. This series
serves as a valuable resource for graduate, postgraduate, doctoral
students, researchers, academicians and industry professionals.
This new volume, Real-Life Applications of the Internet of Things:
Challenges, Applications, and Advances, provides an overview of the
Internet of Things along with its architectures, its vital
technologies their uses in our daily life and other domains, and
associated challenges. The book also covers some advanced topics
where IoT is combined with other emerging technologies, such as
blockchain and cloud, which will bring a revolution in the era of
IoT. Topics in the volume cover the many powerful features and
applications of IoT, such as for weather forecasting, in
agriculture, in medical science, in surveillance systems, and much
more. The first section of the book covers many of the issues and
challenging arising from the Internet of Things. The section
explores security challenges, such as attack detection and
prevention systems as well as energy efficiency and resource
management in IoT. Part II introduces various application areas of
IoT, including the uses of smart technology in agricultural
management, in healthcare diagnosis and monitoring, and in the
financial industry. The third section of the book discusses the
integration of IoT with blockchain, cloud, and big data and
features some advanced topics. The variety of topics includes
surveillance network technology, the shift from television to video
streaming apps and the technology involved, using IoT-fog computing
for smart healthcare, detection of anomalies in climate conditions,
and even detection of illegal wood logging activity. The
informative chapters in this volume will shed light on the varied
challenges, issues, and advances in IoT technology and culture for
scientists and researchers, faculty and students, and industry
professionals.
This volume takes the reader on a technological voyage of machine
learning advancements, highlighting the systematic changes in
algorithms, challenges, and constraints. The technological
advancements in the ML arena have transformed and revolutionized
several fields, including transportation, agriculture, finance,
weather monitoring, and others. This book brings together
researchers, authors, industrialists, and academicians to cover a
vast selection of topics in ML, starting with the rudiments of
machine learning approaches and going on to specific applications
in healthcare and industrial automation. The book begins with an
overview of the ethics, security and privacy issues, future
directions, and challenges in machine learning as well as a
systematic review of deep learning techniques and provides an
understanding of building generative adversarial networks. Chapters
explore predictive data analytics for health issues. The book also
adds a macro dimension by highlighting the industrial applications
of machine learning, such as in the steel industry, for urban
information retrieval, in garbage detection, in measuring air
pollution, for stock market predictions, for underwater fish
detection, as a fake news predictor, and more.
This book offers a holistic approach to the Internet of Things
(IoT) model, covering both the technologies and their applications,
focusing on uniquely identifiable objects and their virtual
representations in an Internet-like structure. The authors add to
the rapid growth in research on IoT communications and networks,
confirming the scalability and broad reach of the core concepts.
The book is filled with examples of innovative applications and
real-world case studies. The authors also address the business,
social, and legal aspects of the Internet of Things and explore the
critical topics of security and privacy and their challenges for
both individuals and organizations. The contributions are from
international experts in academia, industry, and research.
Wireless Sensor Networks and the Internet of Things: Future
Directions and Applications explores a wide range of important and
real-time issues and applications in this ever-advancing field.
Different types of WSN and IoT technologies are discussed in order
to provide a strong framework of reference, and the volume places
an emphasis on solutions to the challenges of protection,
conservation, evaluation, and implementation of WSN and IoT that
lead to low-cost products, energy savings, low carbon usage, higher
quality, and global competitiveness. The volume is divided into
four sections that cover: Wireless sensor networks and their
relevant applications Smart monitoring and control systems with the
Internet of Things Attacks, threats, vulnerabilities, and defensive
measures for smart systems Research challenges and opportunities
This collection of chapters on an important and diverse range of
issues presents case studies and applications of cutting-edge
technologies of WSN and IoT that will be valuable for academic
communities in computer science, information technology, and
electronics, including cyber security, monitoring, and data
collection. The informative material presented here can be applied
to many sectors, including agriculture, energy and power, resource
management, biomedical and health care, business management, and
others.
Wireless Sensor Networks and the Internet of Things: Future
Directions and Applications explores a wide range of important and
real-time issues and applications in this ever-advancing field.
Different types of WSN and IoT technologies are discussed in order
to provide a strong framework of reference, and the volume places
an emphasis on solutions to the challenges of protection,
conservation, evaluation, and implementation of WSN and IoT that
lead to low-cost products, energy savings, low carbon usage, higher
quality, and global competitiveness. The volume is divided into
four sections that cover: Wireless sensor networks and their
relevant applications Smart monitoring and control systems with the
Internet of Things Attacks, threats, vulnerabilities, and defensive
measures for smart systems Research challenges and opportunities
This collection of chapters on an important and diverse range of
issues presents case studies and applications of cutting-edge
technologies of WSN and IoT that will be valuable for academic
communities in computer science, information technology, and
electronics, including cyber security, monitoring, and data
collection. The informative material presented here can be applied
to many sectors, including agriculture, energy and power, resource
management, biomedical and health care, business management, and
others.
Recommender systems use information filtering to predict user
preferences. They are becoming a vital part of e-business and are
used in a wide variety of industries, ranging from entertainment
and social networking to information technology, tourism,
education, agriculture, healthcare, manufacturing, and retail.
Recommender Systems: Algorithms and Applications dives into the
theoretical underpinnings of these systems and looks at how this
theory is applied and implemented in actual systems. The book
examines several classes of recommendation algorithms, including
Machine learning algorithms Community detection algorithms
Filtering algorithms Various efficient and robust product
recommender systems using machine learning algorithms are helpful
in filtering and exploring unseen data by users for better
prediction and extrapolation of decisions. These are providing a
wider range of solutions to such challenges as imbalanced data set
problems, cold-start problems, and long tail problems. This book
also looks at fundamental ontological positions that form the
foundations of recommender systems and explain why certain
recommendations are predicted over others. Techniques and
approaches for developing recommender systems are also
investigated. These can help with implementing algorithms as
systems and include A latent-factor technique for model-based
filtering systems Collaborative filtering approaches Content-based
approaches Finally, this book examines actual systems for social
networking, recommending consumer products, and predicting risk in
software engineering projects.
This book provides various insights into machine learning
techniques in healthcare system data and its analysis. Recent
technological advancements in the healthcare system represent
cutting-edge innovations and global research successes in
performance modelling, analysis, and applications. The extensive
use of machine learning in numerous industries, including
healthcare, has been made possible by advancements in data
technologies, including storage capacity, processing capability,
and data transit speeds. The need for a personalized medicine or
""precision medicine"" approach to healthcare has been highlighted
by current trends in medicine due to the complexity of providing
effective healthcare to each individual. Personalized medicine aims
to identify, forecast, and analyze diagnostic decisions using vast
volumes of healthcare data so that doctors may then apply them to
each unique patient. These data may include, but are not limited
to, information on a person's genes or family history, medical
imaging data, drug combinations, patient health outcomes at the
community level, and natural language processing of pre-existing
medical documentation. The introduction of digital technology in
the healthcare industry is marked by ongoing difficulties with
implementation and use. Slow progress has been made in unifying
different healthcare systems, and much of the world still lacks a
fully integrated healthcare system. The intrinsic complexity and
development of human biology, as well as the differences across
patients, have repeatedly demonstrated the significance of the
human element in the diagnosis and treatment of illnesses. But as
digital technology develops, healthcare providers will undoubtedly
need to use it more and more to give patients the best treatment
possible.
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Intelligent Systems and Machine Learning - First EAI International Conference, ICISML 2022, Hyderabad, India, December 16-17, 2022, Proceedings, Part II (1st ed. 2023)
Sachi Nandan Mohanty, Vicente Garcia Diaz, G A E Satish Kumar
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R2,346
Discovery Miles 23 460
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Ships in 10 - 15 working days
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This two-volume set constitutes the refereed proceedings of the
First EAI International Conference on Intelligent Systems and
Machine Learning, ICISML 2022, held in Hyderabad, India, in
December 16-17,2022. The 75 full papers presented were carefully
reviewed and selected from 209 submissions. The conference focuses
on Intelligent Systems and Machine Learning Applications
in Health care; Digital Forensic & Network
Security;Â Intelligent Communication Wireless
Networks;Â Internet of Things (IoT) Applications;Â Social
Informatics; and Emerging Applications.
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Intelligent Systems and Machine Learning - First EAI International Conference, ICISML 2022, Hyderabad, India, December 16-17, 2022, Proceedings, Part I (1st ed. 2023)
Sachi Nandan Mohanty, Vicente Garcia Diaz, G A E Satish Kumar
|
R2,861
Discovery Miles 28 610
|
Ships in 10 - 15 working days
|
This two-volume set constitutes the refereed proceedings of the
First EAI International Conference on Intelligent Systems and
Machine Learning, ICISML 2022, held in Hyderabad, India, in
December 16-17,2022. The 75 full papers presented were carefully
reviewed and selected from 209 submissions. The conference focuses
on Intelligent Systems and Machine Learning Applications
in Health care; Digital Forensic & Network
Security;Â Intelligent Communication Wireless
Networks;Â Internet of Things (IoT) Applications;Â Social
Informatics; and Emerging Applications.
This book provides research on the state-of-the-art methods for
data management in the fourth industrial revolution, with
particular focus on cloud.based data analytics for digital
manufacturing infrastructures. Innovative techniques and methods
for secure, flexible and profi table cloud manufacturing will be
gathered to present advanced and specialized research in the
selected area.
This book offers a holistic approach to the Internet of Things
(IoT) model, covering both the technologies and their applications,
focusing on uniquely identifiable objects and their virtual
representations in an Internet-like structure. The authors add to
the rapid growth in research on IoT communications and networks,
confirming the scalability and broad reach of the core concepts.
The book is filled with examples of innovative applications and
real-world case studies. The authors also address the business,
social, and legal aspects of the Internet of Things and explore the
critical topics of security and privacy and their challenges for
both individuals and organizations. The contributions are from
international experts in academia, industry, and research.
The book examines the role of artificial intelligence during the
COVID-19 pandemic, including its application in i) early warnings
and alerts, ii) tracking and prediction, iii) data dashboards, iv)
diagnosis and prognosis, v) treatments, and cures, and vi) social
control. It explores the use of artificial intelligence in the
context of population screening and assessing infection risks, and
presents mathematical models for epidemic prediction of COVID-19.
Furthermore, the book discusses artificial intelligence-mediated
diagnosis, and how machine learning can help in the development of
drugs to treat the disease. Lastly, it analyzes various artificial
intelligence-based models to improve the critical care of COVID-19
patients.
In Decision Making and Problem Solving: A Practical Guide for
Applied Research, the author utilizes traditional approaches,
tools, and techniques adopted to solve current day-to-day,
real-life problems. The book offers guidance in identifying and
applying accurate methods for designing a strategy as well as
implementing these strategies in the real world. The book includes
realistic case studies and practical approaches that should help
readers understand how the decision making occurs and can be
applied to problem solving under deep uncertainty.
This book consists of thirteen chapters covering many facts like
psycho-social intervention on emotional disorders in individuals,
impact of emotion and cognition on blended theory, theory and
implication of information processing, effects of emotional self
esteem in women, emotional dimension of women in workplace, effects
of mental thinking in different age groups irrespective of the
gender, negative emotions and its effect on information processing,
role of emotions in education and lastly emotional analysis in
multi perspective domain adopting machine learning approach. Most
of the chapters having experimental studies, with each experiment
having different constructs as well as different samples for each
data collection. Most of the studies measure information processing
within altered mood states, such as depression, anxiety, or
positive emotional states, with mental ability tasks being
conducted in addition to the experiments of quasi-experimental
design.
This book consists of thirteen chapters covering many facts like
psycho-social intervention on emotional disorders in individuals,
impact of emotion and cognition on blended theory, theory and
implication of information processing, effects of emotional self
esteem in women, emotional dimension of women in workplace, effects
of mental thinking in different age groups irrespective of the
gender, negative emotions and its effect on information processing,
role of emotions in education and lastly emotional analysis in
multi perspective domain adopting machine learning approach. Most
of the chapters having experimental studies, with each experiment
having different constructs as well as different samples for each
data collection. Most of the studies measure information processing
within altered mood states, such as depression, anxiety, or
positive emotional states, with mental ability tasks being
conducted in addition to the experiments of quasi-experimental
design.
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