|
Showing 1 - 25 of
35 matches in All Departments
|
Decision Making (Hardcover)
Fausto Pedro Garcia Marquez, Alberto Pliego Marugan, Mayorkinos Papaelias
|
R2,858
R2,679
Discovery Miles 26 790
Save R179 (6%)
|
Ships in 10 - 15 working days
|
This book provides relevant theoretical frameworks and the latest
empirical research findings of Operations Research/Management
Science applied to Internet of Things. This book identifies and
describes ways in which OR and MS have been applied and influenced
the development of IoT. Examples are from smart industry; city;
transportation; home and smart devices. It discusses future
applications, trends, and potential benefits of this new
discipline. It is written for professionals who want to improve
their understanding of the strategic role of IoT at various levels
of the organization, that is, IoT at the global economy level, at
networks and organizations level, at teams and work groups, at
information systems and, finally, IoT at the level of individuals,
as players in the networked environments.
This book provides a comprehensive overview of current renewable
energy technologies and their basic principles. It also addresses
the financial aspects of renewable energy projects and analyzes
their profitability, covering the most relevant topics for
engineers, economists, managers and scientists who are actively
involved in renewable energy research and management. The authors
are professionals and researchers who are active in the industry,
and supplement the main content with revealing case studies and
best-practice examples.
This book combines the analytic principles of digital business and
data science with business practice and big data. The
interdisciplinary, contributed volume provides an interface between
the main disciplines of engineering and technology and business
administration. Written for managers, engineers and researchers who
want to understand big data and develop new skills that are
necessary in the digital business, it not only discusses the latest
research, but also presents case studies demonstrating the
successful application of data in the digital business.
As organizations continue to develop, there is an increasing need
for technological methods that can keep up with the rising amount
of data and information that is being generated. Machine learning
is a tool that has become powerful due to its ability to analyze
large amounts of data quickly. Machine learning is one of many
technological advancements that is being implemented into a
multitude of specialized fields. An extensive study on the
execution of these advancements within professional industries is
necessary. Advanced Multi-Industry Applications of Big Data
Clustering and Machine Learning is an essential reference source
that synthesizes the analytic principles of clustering and machine
learning to big data and provides an interface between the main
disciplines of engineering/technology and the organizational,
administrative, and planning abilities of management. Featuring
research on topics such as project management, contextual data
modeling, and business information systems, this book is ideally
designed for engineers, economists, finance officers, marketers,
decision makers, business professionals, industry practitioners,
academicians, students, and researchers seeking coverage on the
implementation of big data and machine learning within specific
professional fields.
This book features a collection of high-quality, peer-reviewed
papers presented at International Conference on Ubiquitous
Intelligent Systems (ICUIS 2021) organized by Shree Venkateshwara
Hi-Tech Engineering College, Tamil Nadu, India, during April 16-17,
2021. The book covers topics such as cloud computing, mobile
computing and networks, embedded computing frameworks, modeling and
analysis of ubiquitous information systems, communication
networking models, big data models and applications, ubiquitous
information processing systems, next-generation ubiquitous networks
and protocols, advanced intelligent systems, Internet of things,
wireless communication and storage networks, intelligent
information retrieval techniques, AI-based intelligent information
visualization techniques, cognitive informatics, smart automation
systems, healthcare informatics and bioinformatics models, security
and privacy of intelligent information systems, and smart
distributed information systems.
Big data is a well-trafficked subject in recent IT discourse and
does not lack for current research. In fact, there is such a
surfeit of material related to big data-and so much of it of
questionably reliability, thanks to the high-gloss efforts of savvy
tech-marketing gurus-that it can, at times, be difficult for a
serious academician to navigate. The Handbook of Research on Trends
and Future Directions in Big Data and Web Intelligence cuts through
the haze of glitz and pomp surrounding big data and offers a
simple, straightforward reference-source of practical academic
utility. Covering such topics as cloud computing, parallel
computing, natural language processing, and personalized medicine,
this volume presents an overview of current research, insight into
recent advances, and gaps in the literature indicative of
opportunities for future inquiry and is targeted toward a broad,
interdisciplinary audience of students, academics, researchers, and
professionals in fields of IT, networking, and data-analytics.
This book aims to provide relevant theoretical frameworks and the
latest empirical research findings in Internet of Things (IoT) in
Management Science and Operations Research. It starts with basic
concept and present cases, applications, theory, and potential
future. The contributed chapters to the book cover wide array of
topics as space permits. Examples are from smart industry; city;
transportation; home and smart devices. They present future
applications, trends, and potential future of this new discipline.
Specifically, this book provides an interface between the main
disciplines of engineering/technology and the organizational,
administrative, and planning capabilities of managing IoT. This
book deals with the implementation of latest IoT research findings
in practice at the global economy level, at networks and
organizations, at teams and work groups and, finally, IoT at the
level of players in the networked environments. This book is
intended for professionals in the field of engineering, information
science, mathematics, economics, and researchers who wish to
develop new skills in IoT, or who employ the IoT discipline as part
of their work. It will improve their understanding of the strategic
role of IoT at various levels of the information and knowledge
organization. The book is complemented by a second volume of the
same editors with practical cases.
This book consists of different accepted papers of the conference.
Firstly, the artificial intelligence and its application-related
topics are provided. Secondly, cloud computing and related topics
are also provided. The book has been designed to help research
organisations and business leaders from across industries to
transform their organisations into AI-driven disruptors. The
utility of the technology in the face of massive globally
interconnected complexity is explored. The significant
characteristics of IEMAICLOUD are the promotion of inevitable
dialogue between scientists, researchers, engineers, corporate's
and scholar's students to mitigate the gap between academia,
industry and governmental ethics which has been fostered through
keynote speeches, workshops, panel discussion and oral
presentations by eminent researchers in relevant field. The
industry personnel depict cutting-edge researches in artificial
intelligence and cloud computing to convey academia regarding
real-time scenario and practical findings. Conference has been well
equipped with talks by industry experts on the state of the art in
computer science, lectures by eminent scientists designed to
inspire and inform presentations by innovative researchers coming
from 20+ countries from Europe and abroad. There has been
discussion-oriented sessions and networking breaks to enable
collaborations. Papers consist abstract, result, discussions and
conclusions by the help of different tables and diagrams.
The book describes advanced business analytics and shows how to
apply them to many different professional areas of engineering and
management. Each chapter of the book is contributed by a different
author and covers a different area of business analytics. The book
connects the analytic principles with business practice and
provides an interface between the main disciplines of
engineering/technology and the organizational, administrative and
planning abilities of management. It also refers to other
disciplines such as economy, finance, marketing, behavioral
economics and risk analysis. This book is of special interest to
engineers, economists and researchers who are developing new
advances in engineering management but also to practitioners
working on this subject.
This book provides relevant theoretical frameworks and the latest
empirical research findings of Operations Research/Management
Science applied to Internet of Things. This book identifies and
describes ways in which OR and MS have been applied and influenced
the development of IoT. Examples are from smart industry; city;
transportation; home and smart devices. It discusses future
applications, trends, and potential benefits of this new
discipline. It is written for professionals who want to improve
their understanding of the strategic role of IoT at various levels
of the organization, that is, IoT at the global economy level, at
networks and organizations level, at teams and work groups, at
information systems and, finally, IoT at the level of individuals,
as players in the networked environments.
This book gathers the proceedings of the 14th International
Conference on Management Science and Engineering Management (ICMSEM
2020). Held at the Academy of Studies of Moldova from July 30 to
August 2, 2020, the conference provided a platform for researchers
and practitioners in the field to share their ideas and
experiences. Covering a wide range of topics, including hot
management issues in engineering science, the book presents novel
ideas and the latest research advances in the area of management
science and engineering management. It includes both theoretical
and practical studies of management science applied in computing
methodology, highlighting advanced management concepts, and
computing technologies for decision-making problems involving
large, uncertain and unstructured data. The book also describes the
changes and challenges relating to decision-making procedures at
the dawn of the big data era, and discusses new technologies for
analysis, capture, search, sharing, storage, transfer and
visualization, as well as advances in the integration of
optimization, statistics and data mining. Given its scope, it will
appeal to a wide readership, particularly those looking for new
ideas and research directions.
This book gathers the proceedings of the 14th International
Conference on Management Science and Engineering Management (ICMSEM
2020). Held at the Academy of Studies of Moldova from July 30 to
August 2, 2020, the conference provided a platform for researchers
and practitioners in the field to share their ideas and
experiences. Covering a wide range of topics, including hot
management issues in engineering science, the book presents novel
ideas and the latest research advances in the area of management
science and engineering management. It includes both theoretical
and practical studies of management science applied in computing
methodology, highlighting advanced management concepts, and
computing technologies for decision-making problems involving
large, uncertain and unstructured data. The book also describes the
changes and challenges relating to decision-making procedures at
the dawn of the big data era, and discusses new technologies for
analysis, capture, search, sharing, storage, transfer and
visualization, and in the context of privacy violations, as well as
advances in the integration of optimization, statistics and data
mining. Given its scope, it will appeal to a wide readership,
particularly those looking for new ideas and research directions.
This book provides relevant theoretical frameworks and the latest
empirical research findings in Operations Research (OR) and
Management Science (MS) as applied to sustainability. Its goal is
to identify and describe ways in which OR and MS have been applied
to and influenced the development of sustainability. Many of the
issues we face today stem from the interconnectivity of the
economy, society, and the environment, and from how both the
economy and society are affecting the environment. In response,
there have been a range of local and global efforts to advance
society without harming the natural environment. The book showcases
how OR/MS can help to address these issues, specifically with
regard to renewable energy, smart industry, smart cities,
transportation, smart homes and devices, etc. This book is intended
for professionals in the fields of energy, engineering, information
science, mathematics and economics, and for researchers who wish to
develop new skills in connection with sustainability, or whose work
involves sustainability.
Decision-Making Management: A Tutorial and Applications provides
practical guidance for researchers seeking to optimizing
business-critical decisions employing Logical Decision Trees thus
saving time and money. The book focuses on decision-making and
resource allocation across and between the manufacturing, product
design and logistical functions. It demonstrates key results for
each sector with diverse real-world case studies drawn primarily
from EU projects. Theory is accompanied by relevant analysis
techniques, with a progressional approach building from simple
theory to complex and dynamic decisions with multiple data points,
including big data and lot of data. Binary Decision Diagrams are
presented as the operating approach for evaluating large Logical
Decision Trees, helping readers identify Boolean equations for
quantitative analysis of multifaceted problem sets. Computational
techniques, dynamic analysis, probabilistic methods, and
mathematical optimization techniques are expertly blended to
support analysis of multi-criteria decision-making problems with
defined constraints and requirements. The final objective is to
optimize dynamic decisions with original approaches employing
useful tools, including Big Data analysis. Extensive annexes
provide useful supplementary information for readers to follow
methods contained in the book.
This book features a collection of high-quality, peer-reviewed
papers presented at International Conference on Ubiquitous
Intelligent Systems (ICUIS 2021) organized by Shree Venkateshwara
Hi-Tech Engineering College, Tamil Nadu, India, during April 16-17,
2021. The book covers topics such as cloud computing, mobile
computing and networks, embedded computing frameworks, modeling and
analysis of ubiquitous information systems, communication
networking models, big data models and applications, ubiquitous
information processing systems, next-generation ubiquitous networks
and protocols, advanced intelligent systems, Internet of things,
wireless communication and storage networks, intelligent
information retrieval techniques, AI-based intelligent information
visualization techniques, cognitive informatics, smart automation
systems, healthcare informatics and bioinformatics models, security
and privacy of intelligent information systems, and smart
distributed information systems.
|
|