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As the world has entered the era of big data, there is a need to
give a semantic perspective to the data to find unseen patterns,
derive meaningful information, and make intelligent decisions. This
2-volume handbook set is a unique, comprehensive, and complete
presentation of the current progress and future potential
explorations in the field of data science and related topics.
Handbook of Data Science with Semantic Technologies provides a
roadmap for a new trend and future development of data science with
semantic technologies. The first volume serves as an important
guide towards applications of data science with semantic
technologies for the upcoming generation and thus becomes a unique
resource for both academic researchers and industry professionals.
The second volume provides a roadmap for the deployment of semantic
technologies in the field of data science that enables users to
create intelligence through these technologies by exploring the
opportunities while eradicating the current and future challenges.
The set explores the optimal use of these technologies to provide
the maximum benefit to the user under one comprehensive source.
This set consisting of two separate volumes can be utilized
independently or together as an invaluable resource for students,
scholars, researchers, professionals, and practitioners in the
field.
As data is an important asset for any organization, it is essential
to apply semantic technologies in data science to fulfill the need
of any organization. This volume of a two-volume handbook set
provides a roadmap for new trends and future developments of data
science with semantic technologies. Data Science with Semantic
Technologies: New Trends and Future Developments highlights how
data science enables the user to create intelligence through these
technologies. In addition, this book offers the answers to various
questions such as can semantic technologies be able to facilitate
data science? Which type of data science problems can be tackled by
semantic technologies? How can data scientists get benefited from
these technologies? What is the role of semantic technologies in
data science? What is the current progress and future of data
science with semantic technologies? Which types of problems require
the immediate attention of the researchers? What should be the
vision 2030 for data science? This volume can serve as an important
guide towards applications of data science with semantic
technologies for the upcoming generation and thus becomes a unique
resource for scholars, researchers, professionals, and
practitioners in this field.
Gone are the days when data was interlinked with related data by
humans and to find insights coherently, human interpretation was
required. Data is no more just data. It is now considered a Thing
or Entity or Concept- to bring the meaning to it, so that a machine
not only understands the concept but also extrapolates the way
humans do. Data Science with Semantic Technologies: Deployment and
Exploration volume of a two-volume handbook set provides a roadmap
for the deployment of semantic technologies in the field of data
science and enables the user to create intelligence through these
technologies by exploring the opportunities and eradicating the
challenges in the current and future time frame. In addition, this
book offers the answer to various questions like What makes a
technology semantic as opposed to other approaches to data science?
What is knowledge data science? How does knowledge data science
relate to other fields? This book explores the optimal use of these
technologies to provide the highest benefit to the user under one
comprehensive source and title. As there is no dedicated book
available in the market on this topic at this time, this proposed
new book becomes a unique and only resource for scholars,
researchers, data scientists, professionals, and practitioners.
This volume can serve as an important guide towards applications of
data science with semantic technologies for the upcoming generation
and thus becomes a unique resource for scholars, researchers,
professionals, and practitioners in this field.
Semantic web technologies (SWTs) offer the richest
machine-interpretable (rather than just machine-processable) and
explicit semantics that are being extensively used in various
domains and industries. This book provides a roadmap for semantic
web technologies (SWTs) and highlights their role in a wide range
of domains including cloud computing, Internet of Things, big data,
sensor network, and so forth. It also explores the prospects of
these technologies including different data interchange formats,
query languages, ontologies, Linked Data, and notations. The role
of SWTs in 'epidemic Covid-19', 'e-learning platforms and systems',
'block chain', 'open online courses', and 'visual analytics in
healthcare' is described as well. This book: Explores all the
critical aspects of semantic web technologies (SWTs) Discusses the
impact of SWTs on cloud computing, Internet of Things, big data,
and sensor network Offers a comprehensive examination of the
emerging research in the areas of SWTs and their related domains
Provides a template to develop a wide range of smart and
intelligent applications Includes latest applications and examples
with real data This book is aimed at researchers and graduate
students in computer science, informatics, web technology, cloud
computing, and Internet of Things.
This book provides a roadmap for semantic technologies and
highlights the role of these technologies in industry, making it an
important guide towards the latest industrial applications of
semantic technologies for the upcoming generation and is a unique
resource for scholars, researchers, professionals and practitioners
in the field. The book also explores the present and future
prospects of these semantic technologies along with providing
answers to various questions like: Are semantic technologies useful
for the next era (industry 4.0)? Why are semantic technologies so
popular and extensively used in the industry? Can semantic
technologies make intelligent industrial applications? Which type
of problem requires the immediate attention of researchers? Why are
semantic technologies very helpful in people’s future lives? As
the world enters the era of big data, there is a serious need to
give a semantic perspective to the data in order to find unseen
patterns, derive meaningful information, and make intelligent
decisions. Semantic technologies offer the richest
machine-interpretable (rather than just machine-processable) and
explicit semantics that are being extensively used in various
domains and industries. These technologies reduce the problem of
large semantic loss in the process of modelling knowledge, and
provide sharable, reusable knowledge, and a common understanding of
the knowledge. As a result, the interoperability and
interconnectivity of the model make it priceless for addressing the
issues of querying data. These technologies work with the concepts
and relations that are very close to the working of the human
brain. They provide a semantic representation of any data format:
unstructured or semi-structured. As a consequence, data becomes
real-world entity rather than a string of characters. For these
reasons, semantic technologies are highly valuable tools to
simplify the existing problems of the industry leading to new
opportunities. However, there are some challenges that need to be
addressed to make industrial applications and machines smarter.
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