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Digital Twin for Smart Manufacturing: Emerging Approaches and
Applications provides detailed descriptions on how to integrate and
optimize novel digital technologies for smart manufacturing. The
book discusses digital twins, which combine the industrial internet
of things, artificial intelligence, machine learning and software
analytics with spatial network graphs to create living digital
simulation models that update and change as their physical
counterparts change. In addition, they provide an effective way to
integrate technologies like cyber-physical systems into a smart
manufacturing system, potentially optimizing the entire business
process and operating procedure of the manufacturing firm. Drawing
on the latest research, the book addresses the topics and
technologies key to successful implementation of a smart
manufacturing system, including augmented and virtual reality, big
data and energy management. Broader subjects such as additive
manufacturing and robotics are also covered in this context,
covering every aspect of production.
Nowadays, raw biological data can be easily stored as databases in
computers but extracting the required information is the real
challenge for researchers. For this reason, bioinformatics tools
perform a vital role in extracting and analyzing information from
databases. Bioinformatics Tools and Big Data Analytics for Patient
describes the applications of bioinformatics, data management, and
computational techniques in clinical studies and drug discovery for
patient care. The book gives details about the recent developments
in the fields of artificial intelligence, cloud computing, and data
analytics. It highlights the advances in computational techniques
used to perform intelligent medical tasks. Features: Presents
recent developments in the fields of artificial intelligence, cloud
computing, and data analytics for improved patient care. Describes
the applications of bioinformatics, data management, and
computational techniques in clinical studies and drug discovery.
Summarizes several strategies, analyses, and optimization methods
for patient healthcare. Focuses on drug discovery and development
by cloud computing and data-driven research The targeted audience
comprises academics, research scholars, healthcare professionals,
hospital managers, pharmaceutical chemists, the biomedical
industry, software engineers, and IT professionals.
This book presents a framework for integrating blended learning and
massive open online courses (MOOCs) in the Indian education system.
It argues that blended teaching and learning is the most suitable
approach to education in a post-COVID-19 world. Drawing on case
studies used in blended learning practices around the world, the
book provides ample resources for beginners to improvise the spread
of knowledge around information technology in higher education. It
discusses various concepts such as flip learning in blended
learning models and examines the self-assessment tools and
structures it offers to institutions for building competencies. In
addition to addressing the challenges and opportunities of adopting
the digital mode of teaching, the book also offers techniques and
concepts helpful for designing MOOCs. It covers concepts such as
curriculum designing, content flow, teaching behavior, and
evaluation patterns, which are important aspects of online
teaching. An indispensable guide to navigating the shift from
offline to online teaching, this book will be of interest to
students, teachers, and researchers of education, education
technology, digital education, and information technology. It will
also be useful to policymakers, educational institutions, EdTech
start-ups, NGOs in the education sector, and online education
centers.
The book emphasizes the predictive models of Big Data, Genetic
Algorithm, and IoT with a case study. The book illustrates the
predictive models with integrated fuel consumption models for smart
and safe traveling. The text is a coordinated amalgamation of
research contributions and industrial applications in the field of
Intelligent Transportation Systems. The advanced predictive models
and research results were achieved with the case studies, deployed
in real transportation environments. Features: Provides a smart
traffic congestion avoidance system with an integrated fuel
consumption model. Predicts traffic in short-term and regular. This
is illustrated with a case study. Efficient Traffic light
controller and deviation system in accordance with the traffic
scenario. IoT based Intelligent Transport Systems in a Global
perspective. Intelligent Traffic Light Control System and Ambulance
Control System. Provides a predictive framework that can handle the
traffic on abnormal days, such as weekends, festival holidays.
Bunch of solutions and ideas for smart traffic development in smart
cities. This book focuses on advanced predictive models along with
offering an efficient solution for smart traffic management system.
This book will give a brief idea of the available
algorithms/techniques of big data, IoT, and genetic algorithm and
guides in developing a solution for smart city applications. This
book will be a complete framework for ITS domain with the advanced
concepts of Big Data Analytics, Genetic Algorithm and IoT. This
book is primarily aimed at IT professionals. Undergraduates,
graduates and researchers in the area of computer science and
information technology will also find this book useful.
The future policing ought to cover the identification of new
assaults, the disclosure of new ill-disposed patterns and forecast
of any future vindictive patters from the accessible authentic
information. Such keen information will bring about building clever
advanced proof handling frameworks that will help cops investigate
violations. Artificial Intelligence for Cyber Defence and Smart
Policing will describe the best way of practising artificial
intelligence for cyber defence and smart policing. Key Features:
• Combines both AI for cyber defence and smart policing in one
place • Covers novel strategies in future to help cybercrime
examinations and police. • Discusses different AI models to
fabricate more exact techniques • Elaborates on problematization
and international issues. • Includes case studies and real-life
examples. This book is primarily aimed at graduates, researchers
and IT professionals. Business executives will also find this book
helpful. S Vijayalakshmi is currently working as an Associate
Professor in the Data Science Department in CHRIST (Deemed to be
University), Pune, Lavasa Campus. She is having many academic
portfolios associated with the current position. Her research area
is on Image Processing and IoT. P Durgadevi is working as an
Assistant Professor in the department of Computer Science and
Engineering, GITAM University, Bengaluru. Her research interest is
in medical image processing, Machine Learning and IoT. Lija Jacob
is an Assistant Professor at the Dept. of Data Science, Christ
[Deemed to be University],Pune Lavasa. She has more than 17 years
of teaching experience and 8 years of research experience. Her
research interests are Computer Vision, Machine learning, Deep
Learning, etc. Balamurugan Balusamy is currently working as
Professor in the School of Computing Sciences and Engineering at
Galgotias University, Greater Noida, India. He has published 30+
books on various technologies and visited 15 plus countries for his
technical course. He has several top-notch conferences in his
resume and has published over 150 of quality journal, conference
and book chapters combined.
This book is a reference on digital technology and its impact on
sustainability, providing insight into sustainable practices
globally. It focuses on the critical practices leading to
sustainable initiatives among various organizations, IT
infrastructure, communities, and government compliance. The book
describes the green computing paradigms and the impact of a
circular economy with a focus on sustainable practices in a
post-pandemic world. Sustainable Digital Technologies: Trends,
Impacts, and Assessments discusses the critical factors leading to
sustainable initiatives in a global economy. It highlights the
impact of digital technology and Industry 4.0 in today’s world.
The book focuses on the role, responsibility, and the effect of the
Internet of Things for digital sustainability and practices. It
describes implementation strategies for green cloud computing and
presents additional strategies for sustainable practices in a
post-pandemic world. This publication is designed for use by
technology development academicians, data scientists, industrial
professionals, researchers, and students interested in uncovering
the latest innovations in the field and the current research on
problem-oriented processing techniques in sustainable and
evolutionary computing applications with reduced energy
channelization.
In healthcare, a digital twin is a digital representation of a
patient or healthcare system using integrated simulations and
service data. The digital twin tracks a patient's records,
crosschecks them against registered patterns and analyses any
diseases or contra indications. The digital twin uses adaptive
analytics and algorithms to produce accurate prognoses and suggest
appropriate interventions. A digital twin can run various medical
scenarios before treatment is initiated on the patient, thus
increasing patient safety as well as providing the most appropriate
treatments to meet the patient's requirements. Digital Twin
Technologies for Healthcare 4.0 discusses how the concept of the
digital twin can be merged with other technologies, such as
artificial intelligence (AI), machine learning (ML), big data
analytics, IoT and cloud data management, for the improvement of
healthcare systems and processes. The book also focuses on the
various research perspectives and challenges in implementation of
digital twin technology in terms of data analysis, cloud management
and data privacy issues. With chapters on visualisation techniques,
prognostics and health management, this book is a must-have for
researchers, engineers and IT professionals in healthcare as well
as those involved in using digital twin technology, AI, IoT &
big data analytics for novel applications.
This book is a unique guide to the disruptions, innovations, and
opportunities that technology provides the insurance sector and
acts as an academic/industry-specific guide for creating
operational effectiveness, managing risk, improving financials, and
retaining customers. It also contains the current philosophy and
actionable strategies from a wide range of contributors who are
experts on the topic. It logically explains why traditional ways of
doing business will soon become irrelevant and therefore provides
an alternative choice by embracing technology. Practitioners and
students alike will find value in the support for understanding
practical implications of how technology has brought innovation and
modern methods to measure, control, and evaluation price risk in
the insurance business. It will help insurers reduce operational
costs, strengthen customer interactions, target potential customers
to provide usage-based insurance, and optimize the overall
business. Retailers and industry giants have made significant
strides in adopting digital platforms to deliver a satisfying
customer experience. Insurance companies must adjust their business
models and strategies to remain competitive and take advantage of
technology. Insurance companies are increasingly investing in IT
and related technologies to improve customer experience and reduce
operational costs. Innovation through new technologies is a key
driver of change in the financial sector which is often accompanied
by uncertainty and doubt. This book will play a pivotal role in
risk management through fraud detection, regulatory compliances,
and claim settlement leading to overall satisfaction of customers.
At present, the technologies associated with artificial
intelligence (AI) are reshaping human resource practices across
industry. The adoption of AI technologies in human resource
management is a key component for innovating and adapting while
also focusing on sustainability and success in an ever-changing
work environment. This book covers a wide range of techniques, from
algorithms and conversational AI to decisional AI and machine
learning. The book covers the significance of AI technology in
human resources, the challenges faced in implementation,
integrating AI into the HR process, the risks associated with
implementation, and much more. From a laymen's point of view AI
technology leverages the implementation of improvised actions based
on decisions made in past. The decision is based on the recommended
actions which are repetitive and follows a pattern in
decision-making. Thus AI is important to streamline the HR
processes and improve the efficacy of the organization.
This book brings together insights for cancer management from
emerging sophisticated information and communication technologies
such as artificial intelligence, data science, and big data
analytics. It focuses on targeted disease treatment using big data
analytics, providing information about targeted treatment in
oncology, challenges and application of big data in cancer therapy.
Featured topics include: Recent developments in the fields of
artificial intelligence, machine learning, medical imaging,
personalized medicine, computing and data analytics for improved
patient care. Description of the application of big data with AI to
discover new targeting points for cancer treatment. Summary of
several risk assessments in the field of oncology using big data.
Focus on prediction of doses in oncology using big data We are in
the era of large-scale science. In oncology there is a huge number
of data sets grouping information on cancer genomes,
transcriptomes, clinical data, and more. The challenge of big data
in cancer is to integrate all this diversity of data collected into
a unique platform that can be analyzed, leading to the generation
of readable files. The possibility of harnessing information from
all the accumulated data leads to an improvement in cancer patient
treatment and outcome. Solving the big data problem in oncology has
multiple facets. Big data in Oncology: Impact, Challenges, and Risk
Assessment brings together insights from emerging sophisticated
information and communication technologies such as artificial
intelligence, data science, and big data analytics for cancer
management. The book is written for academics, research scholars,
health care professionals, hospital management, pharmaceutical
chemist, biomedical industry, software engineers and IT
professionals.
This book presents a framework for integrating blended learning and
massive open online courses (MOOCs) in the Indian education system.
It argues that blended teaching and learning is the most suitable
approach to education in a post-COVID-19 world. Drawing on case
studies used in blended learning practices around the world, the
book provides ample resources for beginners to improvise the spread
of knowledge around information technology in higher education. It
discusses various concepts such as flip learning in blended
learning models and examines the self-assessment tools and
structures it offers to institutions for building competencies. In
addition to addressing the challenges and opportunities of adopting
the digital mode of teaching, the book also offers techniques and
concepts helpful for designing MOOCs. It covers concepts such as
curriculum designing, content flow, teaching behavior, and
evaluation patterns, which are important aspects of online
teaching. An indispensable guide to navigating the shift from
offline to online teaching, this book will be of interest to
students, teachers, and researchers of education, education
technology, digital education, and information technology. It will
also be useful to policymakers, educational institutions, EdTech
start-ups, NGOs in the education sector, and online education
centers.
This book comprehensively conveys the theoretical and practical
aspects of IoT and big data analytics with the solid contributions
from practitioners as well as academicians. This book examines and
expounds the unique capabilities of the big data analytics
platforms in capturing, cleansing and crunching IoT device/sensor
data in order to extricate actionable insights. A number of
experimental case studies and real-world scenarios are incorporated
in this book in order to instigate our book readers. This book
Analyzes current research and development in the domains of IoT and
big data analytics Gives an overview of latest trends and
transitions happening in the IoT data analytics space Illustrates
the various platforms, processes, patterns, and practices for
simplifying and streamlining IoT data analytics The Internet of
Things and Big Data Analytics: Integrated Platforms and Industry
Use Cases examines and accentuates how the multiple challenges at
the cusp of IoT and big data can be fully met. The device ecosystem
is growing steadily. It is forecast that there will be billions of
connected devices in the years to come. When these IoT devices,
resource-constrained as well as resource-intensive, interact with
one another locally and remotely, the amount of multi-structured
data generated, collected, and stored is bound to grow
exponentially. Another prominent trend is the integration of IoT
devices with cloud-based applications, services, infrastructures,
middleware solutions, and databases. This book examines the
pioneering technologies and tools emerging and evolving in order to
collect, pre-process, store, process and analyze data heaps in
order to disentangle actionable insights.
The main aim of Healthcare 4.0: Health Informatics and Precision
Data Management is to improve the services given by the healthcare
industry and to bring meaningful patient outcomes by applying the
data, information and knowledge in the healthcare domain. Features:
* Improves the quality of health data of a patient * Presents a
wide range of opportunities and renewed possibilities for
healthcare systems * Gives a way for carefully and meticulously
tracking the provenance of medical records * Accelerates the
process of disease-oriented data and medical data arbitration *
Brings meaningful patient health outcomes * Eradicates delayed
clinical communications * Helps the research intellectuals to step
down further toward the disease and clinical data storage * Creates
more patient-centered services The precise focus of this handbook
is on the potential applications and use of data informatics in
healthcare, including clinical trials, tailored ailment data,
patient and ailment record characterization and health records
management.
Cognitive Computing for Internet of Medical Things (IoMT) offers a
complete assessment of the present scenario, role, challenges,
technologies, and impact of IoMT-enabled smart healthcare systems.
It contains chapters discussing various biomedical applications
under the umbrella of the IoMT. Key Features Exploits the different
prospects of cognitive computing techniques for the IoMT and smart
healthcare applications Addresses the significance of IoMT and
cognitive computing in the evolution of intelligent medical systems
for biomedical applications Describes the different computing
techniques of cognitive intelligent systems from a practical point
of view: solving common life problems Explores the technologies and
tools to utilize IoMT for the transformation and growth of
healthcare systems Focuses on the economic, social, and
environmental impact of IoMT-enabled smart healthcare systems This
book is primarily aimed at graduates, researchers and academicians
working in the area of development of the application of the of the
application of the IoT in smart healthcare. Industry professionals
will also find this book helpful.
The book IoT and Big Data Analytics (IoT-BDA) for Smart Cities - A
Global Perspective, emphasizes the challenges, architectural
models, and intelligent frameworks with smart decisionmaking
systems using Big Data and IoT with case studies. The book
illustrates the benefits of Big Data and IoT methods in framing
smart systems for smart applications. The text is a coordinated
amalgamation of research contributions and industrial applications
in the field of smart cities. Features: Provides the necessity of
convergence of Big Data Analytics and IoT techniques in smart city
application Challenges and Roles of IoT and Big Data in Smart City
applications Provides Big Data-IoT intelligent smart systems in a
global perspective Provides a predictive framework that can handle
the traffic on abnormal days, such as weekends and festival
holidays Gives various solutions and ideas for smart traffic
development in smart cities Gives a brief idea of the available
algorithms/techniques of Big Data and IoT and guides in developing
a solution for smart city applications This book is primarily aimed
at IT professionals. Undergraduates, graduates, and researchers in
the area of computer science and information technology will also
find this book useful.
Legal Analytics: The Future of Analytics in Law navigates the
crisscrossing of intelligent technology and the legal field in
building up a new landscape of transformation. Legal automation
navigation is multidimensional, wherein it intends to construct
streamline communication, approval, and management of legal tasks.
The evolving environment of technology has emphasized the need for
better automation in the legal field from time to time, although
legal scholars took long to embrace information revolution of the
legal field. * Describes the historical development of law and
automation. * Analyzes the challenges and opportunities in law and
automation. * Studies the current research and development in the
convergence of law, artificial intelligence, and legal analytics. *
Explores the recent emerging trends and technologies that are used
by various legal systems globally for crime prediction and
prevention. * Examines the applicability of legal analytics in
forensic investigation. * Investigates the impact of legal
analytics tools and techniques in judicial decision making. *
Analyzes deep learning techniques and their scope in accelerating
legal analytics in developed and developing countries. * Provides
an in-depth analysis of implementation, challenges, and issues in
society related to legal analytics. This book is primarily aimed at
graduates and postgraduates in law and technology, computer
science, and information technology. Legal practitioners and
academicians will also find this book helpful.
This book comprehensively conveys the theoretical and practical
aspects of IoT and big data analytics with the solid contributions
from practitioners as well as academicians. This book examines and
expounds the unique capabilities of the big data analytics
platforms in capturing, cleansing and crunching IoT device/sensor
data in order to extricate actionable insights. A number of
experimental case studies and real-world scenarios are incorporated
in this book in order to instigate our book readers. This book
Analyzes current research and development in the domains of IoT and
big data analytics Gives an overview of latest trends and
transitions happening in the IoT data analytics space Illustrates
the various platforms, processes, patterns, and practices for
simplifying and streamlining IoT data analytics The Internet of
Things and Big Data Analytics: Integrated Platforms and Industry
Use Cases examines and accentuates how the multiple challenges at
the cusp of IoT and big data can be fully met. The device ecosystem
is growing steadily. It is forecast that there will be billions of
connected devices in the years to come. When these IoT devices,
resource-constrained as well as resource-intensive, interact with
one another locally and remotely, the amount of multi-structured
data generated, collected, and stored is bound to grow
exponentially. Another prominent trend is the integration of IoT
devices with cloud-based applications, services, infrastructures,
middleware solutions, and databases. This book examines the
pioneering technologies and tools emerging and evolving in order to
collect, pre-process, store, process and analyze data heaps in
order to disentangle actionable insights.
Object Detection with Deep Learning Models discusses recent
advances in object detection and recognition using deep learning
methods, which have achieved great success in the field of computer
vision and image processing. It provides a systematic and
methodical overview of the latest developments in deep learning
theory and its applications to computer vision, illustrating them
using key topics, including object detection, face analysis, 3D
object recognition, and image retrieval. The book offers a rich
blend of theory and practice. It is suitable for students,
researchers and practitioners interested in deep learning, computer
vision and beyond and can also be used as a reference book. The
comprehensive comparison of various deep-learning applications
helps readers with a basic understanding of machine learning and
calculus grasp the theories and inspires applications in other
computer vision tasks. Features: A structured overview of deep
learning in object detection A diversified collection of
applications of object detection using deep neural networks
Emphasize agriculture and remote sensing domains Exclusive
discussion on moving object detection
The primary goal of this book is to address the issues faced by
teachers in the adoption of digital tools into their teaching and
their students learning. This book also addresses the issues
confronting educators in the integration of digital technologies
into their teaching and their students' learning. Such issues
include a skepticism of the added value of technology to
educational learning outcomes, the perception of the requirement to
keep up with the fast pace of technological innovation, a lack of
knowledge of affordable educational digital tools and a lack of
understanding of pedagogical strategies to embrace digital
technologies in their teaching. This book presents theoretical
perspectives of learning and teaching today's digital students with
technology and proposes a pragmatic and sustainable framework for
teachers' professional learning to embed digital technologies into
their repertoire of teaching strategies in a systematic, coherent
and comfortable manner so that technology integration becomes an
almost effortless pedagogy in their day-to-day teaching. Some of
the objectives are given below: Shares valuable insights into the
influence of technology on teaching and learning in higher
education Provides deeper insights on higher education and
sustainability interact Studies innovations from various
perspectives Investigates how the educators and students apply the
unique innovative and emotional dimensions in modern age of
learning Provides a timely overview of changes in education reforms
and policy research globally Evaluates the problematic relationship
between globalization, the state, and education reforms.
Increased use of artificial intelligence (AI) is being deployed in
many hospitals and healthcare settings to help improve health care
service delivery. Machine learning (ML) and deep learning (DL)
tools can help guide physicians with tasks such as diagnosis and
detection of diseases and assisting with medical decision making.
This edited book outlines novel applications of AI in e-healthcare.
It includes various real-time/offline applications and case studies
in the field of e-Healthcare, such as image recognition tools for
assisting with tuberculosis diagnosis from x-ray data, ML tools for
cancer disease prediction, and visualisation techniques for
predicting the outbreak and spread of Covid-19. Heterogenous
recurrent convolution neural networks for risk prediction in
electronic healthcare record datasets are also reviewed. Suitable
for an audience of computer scientists and healthcare engineers,
the main objective of this book is to demonstrate effective use of
AI in healthcare by describing and promoting innovative case
studies and finding the scope for improvement across healthcare
services.
The book collects the latest research and thinking from
international experts on green computing and the smart city. The
financial and environmental costs of energy are a concern in smart
cities due to the high usage of computing, technology, security,
IoT, communications, traffic, and other technologies. This book
tackles this problem with a focus on computing, reporting on
various approaches being taken worldwide, illustrated by several
international case studies demonstrating these approaches.
Researchers use this book as an up-to-date reference and engineers
use it as a guide for the design and implementation of real
solutions.
The purpose of this edited book is to provide the relevant
technologies and case studies in a concise format that will
simplify and streamline the processing of blockchain. The goal is
for the contents of this book to change the way business
transformations are conducting in economic and social systems. The
book examines blockchain technology, the transaction attributes,
and its footprint in various fields. It offers fundamentals and
terminologies used in blockchain, architecture, and various
consensus mechanisms that can be deployed in areas such as
healthcare, smart cities, and supply chain management. The book
provides a widespread knowledge into the deployment of security
countermeasures that can be implemented for a blockchain network
and enables the reader to consider the management of business
processes and the implementation process in detail. The book
highlights the challenges and provides various e-business case
studies of security countermeasures. The book serves researchers
and businesses by providing a thorough understanding of the
transformation process using blockchain technology.
This book provides applications of machine learning in healthcare
systems and seeks to close the gap between engineering and
medicine. It will combine the design and problem-solving skills of
engineering with health sciences, in order to advance healthcare
treatment. The book will include areas such as diagnosis,
monitoring, and therapy. The book will provide real-world case
studies, gives a detailed exploration of applications in healthcare
systems, offers multiple perspectives on a variety of disciplines,
while also letting the reader know how to avoid some of the
consequences of old methods with data sharing. The book can be used
as a reference for practitioners, researchers and for students at
basic and intermediary levels in Computer Science, Electronics and
Communications.
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