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The book presents advanced AI based technologies in dealing with
COVID-19 outbreak and provides an in-depth analysis of variety of
COVID-19 datasets throughout globe. It discusses recent artificial
intelligence based algorithms and models for data analysis of
COVID-19 symptoms and its possible remedies. It provides a unique
opportunity to present the work on state-of-the-art of modern
artificial intelligence tools and technologies to track and
forecast COVID-19 cases. It indicates insights and viewpoints from
scholars regarding risk and resilience analytics for policy making
and operations of large-scale systems on this epidemic. A snapshot
of the latest architectures, frameworks in machine learning and
data science are also highlighted to gather and aggregate data
records related to COVID-19 and to diagnose the virus. It delivers
significant research outcomes and inspiring new real-world
applications with respect to feasible AI based solutions in
COVID-19 outbreak. In addition, it discusses strong preventive
measures to control such pandemic.
This book focuses on various advanced technologies which integrate
with machine learning to assist one of the most leading industries,
healthcare. It presents recent research works based on machine
learning approaches supported by medical and information
communication technologies with the use of data and image analysis.
The book presents insight about techniques which broadly deals in
delivery of quality, accurate and affordable healthcare solutions
by predictive, proactive and preventative methods. The book also
explores the possible use of machine learning in enterprises, such
as enhanced medical imaging/diagnostics, understanding medical
data, drug discovery and development, robotic surgery and
automation, radiation treatments, creating electronic smart records
and outbreak prediction.
This book focuses on privacy and security concerns in big data and
differentiates between privacy and security and privacy
requirements in big data. It focuses on the results obtained after
applying a systematic mapping study and implementation of security
in the big data for utilizing in business under the establishment
of "Business Intelligence". The chapters start with the definition
of big data, discussions why security is used in business
infrastructure and how the security can be improved. In this book,
some of the data security and data protection techniques are
focused and it presents the challenges and suggestions to meet the
requirements of computing, communication and storage capabilities
for data mining and analytics applications with large aggregate
data in business.
The book discusses how augmented intelligence can increase the
efficiency and speed of diagnosis in healthcare organizations. The
concept of augmented intelligence can reflect the enhanced
capabilities of human decision-making in clinical settings when
augmented with computation systems and methods. It includes
real-life case studies highlighting impact of augmented
intelligence in health care. The book offers a guided tour of
computational intelligence algorithms, architecture design, and
applications of learning in healthcare challenges. It presents a
variety of techniques designed to represent, enhance, and empower
multi-disciplinary and multi-institutional machine learning
research in healthcare informatics. It also presents specific
applications of augmented intelligence in health care, and
architectural models and frameworks-based augmented solutions.
Cognitive Big Data Intelligence with a Metaheuristic Approach
presents an exact and compact organization of content relating to
the latest metaheuristics methodologies based on new challenging
big data application domains and cognitive computing. The combined
model of cognitive big data intelligence with metaheuristics
methods can be used to analyze emerging patterns, spot business
opportunities, and take care of critical process-centric issues in
real-time. Various real-time case studies and implemented works are
discussed in this book for better understanding and additional
clarity. This book presents an essential platform for the use of
cognitive technology in the field of Data Science. It covers
metaheuristic methodologies that can be successful in a wide
variety of problem settings in big data frameworks.
The book presents advanced AI based technologies in dealing with
COVID-19 outbreak and provides an in-depth analysis of variety of
COVID-19 datasets throughout globe. It discusses recent artificial
intelligence based algorithms and models for data analysis of
COVID-19 symptoms and its possible remedies. It provides a unique
opportunity to present the work on state-of-the-art of modern
artificial intelligence tools and technologies to track and
forecast COVID-19 cases. It indicates insights and viewpoints from
scholars regarding risk and resilience analytics for policy making
and operations of large-scale systems on this epidemic. A snapshot
of the latest architectures, frameworks in machine learning and
data science are also highlighted to gather and aggregate data
records related to COVID-19 and to diagnose the virus. It delivers
significant research outcomes and inspiring new real-world
applications with respect to feasible AI based solutions in
COVID-19 outbreak. In addition, it discusses strong preventive
measures to control such pandemic.
This book focuses on privacy and security concerns in big data and
differentiates between privacy and security and privacy
requirements in big data. It focuses on the results obtained after
applying a systematic mapping study and implementation of security
in the big data for utilizing in business under the establishment
of "Business Intelligence". The chapters start with the definition
of big data, discussions why security is used in business
infrastructure and how the security can be improved. In this book,
some of the data security and data protection techniques are
focused and it presents the challenges and suggestions to meet the
requirements of computing, communication and storage capabilities
for data mining and analytics applications with large aggregate
data in business.
This book focuses on various advanced technologies which integrate
with machine learning to assist one of the most leading industries,
healthcare. It presents recent research works based on machine
learning approaches supported by medical and information
communication technologies with the use of data and image analysis.
The book presents insight about techniques which broadly deals in
delivery of quality, accurate and affordable healthcare solutions
by predictive, proactive and preventative methods. The book also
explores the possible use of machine learning in enterprises, such
as enhanced medical imaging/diagnostics, understanding medical
data, drug discovery and development, robotic surgery and
automation, radiation treatments, creating electronic smart records
and outbreak prediction.
The book discusses how augmented intelligence can increase the
efficiency and speed of diagnosis in healthcare organizations. The
concept of augmented intelligence can reflect the enhanced
capabilities of human decision-making in clinical settings when
augmented with computation systems and methods. It includes
real-life case studies highlighting impact of augmented
intelligence in health care. The book offers a guided tour of
computational intelligence algorithms, architecture design, and
applications of learning in healthcare challenges. It presents a
variety of techniques designed to represent, enhance, and empower
multi-disciplinary and multi-institutional machine learning
research in healthcare informatics. It also presents specific
applications of augmented intelligence in health care, and
architectural models and frameworks-based augmented solutions.
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