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Books > Computing & IT > Applications of computing
Advances in Imaging and Electron Physics, Volume 224 highlights new
advances in the field, with this new volume presenting interesting
chapters on Measuring elastic deformation and orientation gradients
by scanning electron microscopy - conventional, new and emerging
methods, Development of an alternative global method with high
angular resolution, Implementing the new global method, Numerical
validation of the method and influence of optical distortions, and
Applications of the method.
The successful deployment of AI solutions in manufacturing
environments hinges on their security, safety and reliability which
becomes more challenging in settings where multiple AI systems
(e.g., industrial robots, robotic cells, Deep Neural Networks
(DNNs)) interact as atomic systems and with humans. To guarantee
the safe and reliable operation of AI systems in the shopfloor,
there is a need to address many challenges in the scope of complex,
heterogeneous, dynamic and unpredictable environments.
Specifically, data reliability, human machine interaction,
security, transparency and explainability challenges need to be
addressed at the same time. Recent advances in AI research (e.g.,
in deep neural networks security and explainable AI (XAI) systems),
coupled with novel research outcomes in the formal specification
and verification of AI systems provide a sound basis for safe and
reliable AI deployments in production lines. Moreover, the legal
and regulatory dimension of safe and reliable AI solutions in
production lines must be considered as well.To address some of the
above listed challenges, fifteen European Organizations collaborate
in the scope of the STAR project, a research initiative funded by
the European Commission in the scope of its H2020 program (Grant
Agreement Number: 956573). STAR researches, develops, and validates
novel technologies that enable AI systems to acquire knowledge in
order to take timely and safe decisions in dynamic and
unpredictable environments. Moreover, the project researches and
delivers approaches that enable AI systems to confront
sophisticated adversaries and to remain robust against security
attacks.This book is co-authored by the STAR consortium members and
provides a review of technologies, techniques and systems for
trusted, ethical, and secure AI in manufacturing. The different
chapters of the book cover systems and technologies for industrial
data reliability, responsible and transparent artificial
intelligence systems, human centered manufacturing systems such as
human-centred digital twins, cyber-defence in AI systems, simulated
reality systems, human robot collaboration systems, as well as
automated mobile robots for manufacturing environments. A variety
of cutting-edge AI technologies are employed by these systems
including deep neural networks, reinforcement learning systems, and
explainable artificial intelligence systems. Furthermore, relevant
standards and applicable regulations are discussed. Beyond
reviewing state of the art standards and technologies, the book
illustrates how the STAR research goes beyond the state of the art,
towards enabling and showcasing human-centred technologies in
production lines. Emphasis is put on dynamic human in the loop
scenarios, where ethical, transparent, and trusted AI systems
co-exist with human workers. The book is made available as an open
access publication, which could make it broadly and freely
available to the AI and smart manufacturing communities.
Blockchain has potential to revolutionize how manufacturers design,
engineer, make and scale their products. Blockchain is gradually
proving to be an effective "middleware" solution for enabling
seamless interoperability within complex supply chains. Due to its
technological nature, blockchain enables secure, transparent and
fast data exchanges as well as allowing for the creation of
immutable records databases The main advantage of Blockchain in
Manufacturing Industries is product traceability, supply chain
transparency, compliance monitoring, and auditability. Moreover,
leveraging blockchain technology into a manufacturing enterprise
can enhance its security and reduce the rates of systematic
failures. So, blockchain is now used in various sectors of the
manufacturing industry, such as automotive, aerospace, defense,
pharmaceutical, consumer electronics, textile, food and beverages,
and more. Hence, Blockchain should be seen as an investment in
future-readiness and customer-centricity, not as an experimental
technology - because, the evidence is overwhelming. This book will
explore the strengths of Blockchain adaptation in Manufacturing
Industries and Logistics Management, cover different use cases of
Blockchain Technology for Manufacturing Industries and Logistics
Management, and will discuss the role, impact and challenges of
adopting Blockchain in Manufacturing industries and Logistics
Management. The chapters will also provide the current open issues
and future research trends of Blockchain, especially for
Manufacturing Industries and Logistics, and will encapsulate
quantitative and qualitative research for a wide spectrum of
readers of the book.
Digital Manufacturing: The Industrialization of "Art to Part" 3D
Additive Printing explains everything needed to understand how
recent advances in materials science, manufacturing engineering and
digital design have integrated to create exciting new capabilities.
Sections discuss relevant fundamentals in mechanical engineering
and materials science and complex and practical topics in additive
manufacturing, such as part manufacturing, all in the context of
the modern digital design environment. Being successful in today's
"art to part" cyber-physical manufacturing age requires a strong
grounding in science and engineering fundamentals as well as
knowledge of the latest techniques, all of which readers will find
here. Every chapter is developed by leading specialists and based
on first-hand experiences, capturing the essential knowledge
readers need to solve problems related to digital manufacturing.
Opinion Mining and Text Analytics on Literary Works and Social
Media introduces the use of artificial intelligence and big data
analytics techniques which can apply opinion mining and text
analytics on literary works and social media. This book focuses on
theories, method and approaches in which data analytic techniques
can be used to analyze data from social media, literary books,
novels, news, texts, and beyond to provide a meaningful pattern.
The subject area of this book is multidisciplinary; related to data
science, artificial intelligence, social science and humanities,
and literature. This is an essential resource for scholars,
Students and lecturers from various fields of data science,
artificial intelligence, social science and humanities, and
literature, university libraries, new agencies, and many more.
Cyber security is a key focus in the modern world as more private
information is stored and saved online. In order to ensure vital
information is protected from various cyber threats, it is
essential to develop a thorough understanding of technologies that
can address cyber security challenges. Artificial intelligence has
been recognized as an important technology that can be employed
successfully in the cyber security sector. Due to this, further
study on the potential uses of artificial intelligence is required.
The Handbook of Research on Cyber Security Intelligence and
Analytics discusses critical artificial intelligence technologies
that are utilized in cyber security and considers various cyber
security issues and their optimal solutions supported by artificial
intelligence. Covering a range of topics such as malware, smart
grid, data breachers, and machine learning, this major reference
work is ideal for security analysts, cyber security specialists,
data analysts, security professionals, computer scientists,
government officials, researchers, scholars, academicians,
practitioners, instructors, and students.
This timely book presents a detailed analysis of the role of law
and regulation in the utilisation of Artificial Intelligence (AI)
in the media sector. As well as contributing to the wider
discussion on law and AI, the book also digs deeper by exploring
pressing issues at the intersections of AI, media, and the law.
Chapters critically re-examine various rights and responsibilities
from the perspectives of incentives for accountable utilisation of
AI in the industry. Featuring chapters from leading scholars in the
field, Artificial Intelligence and the Media provides a timely and
in-depth research-based contribution to complex themes - especially
at the interface of new technology (including AI) with media and
regulation. Analysing both legislative and ethical solutions,
chapters explore what "AI" and "accountability" mean in terms of
media practices, principles, and power relations, as well as how to
address the AI revolution with informed law and policy in order to
incentivise accountable utilisation of AI and to reduce negative
societal impacts. Offering ideas for further research in the area,
this book is key reading for academics and researchers in the
fields of information and media law, regulation, and technology
law. It may also interest media law practitioners, with
research-based guidance for everyday practices and tools to prepare
for future developments in the area.
In the implementation of smart cities, sensors and actuators that
produce and consume enormous amounts of data in a variety of
formats and ontologies will be incorporated into the system as a
whole. The data produced by the participating devices need to be
adequately categorized and connected to reduce duplication and
conflicts. Newer edge computing techniques are needed to manage
enormous amounts of data quickly and avoid overloading the cloud
infrastructure. Cyber-Physical System Solutions for Smart Cities
considers the most recent developments in several crucial software
services and cyber infrastructures that are important to smart
cities. Covering key topics such as artificial intelligence, smart
data, big data, and computer science, this premier reference source
is ideal for industry professionals, government officials,
policymakers, scholars, researchers, academicians, instructors, and
students.
There has been a multitude of studies focused on the COVID-19
pandemic across fields and disciplines as all sectors of life have
had to adjust the way things are done and adapt to the constantly
shifting environment. These studies are crucial as they provide
support and perspectives on how things are changing and what needs
to be done to stay afloat. Connecting COVID-19-related studies and
big data analytics is crucial for the advancement of industrial
applications and research areas. Applied Big Data Analytics and Its
Role in COVID-19 Research introduces the most recent industrial
applications and research topics on COVID-19 with big data
analytics. Featuring coverage on a broad range of big data
technologies such as data gathering, artificial intelligence, smart
diagnostics, and mining mobility, this publication provides
concrete examples and cases of usage of data-driven projects in
COVID-19 research. This reference work is a vital resource for data
scientists, technical managers, researchers, scholars,
practitioners, academicians, instructors, and students.
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Data Analytics on Graphs
(Hardcover)
Ljubisa Stankovic, Danilo P. Mandic, Milos Dakovic, Milos Brajovic, Bruno Scalzo, …
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R3,426
Discovery Miles 34 260
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Ships in 10 - 15 working days
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The current availability of powerful computers and huge data sets
is creating new opportunities in computational mathematics to bring
together concepts and tools from graph theory, machine learning and
signal processing, creating Data Analytics on Graphs. In discrete
mathematics, a graph is merely a collection of points (nodes) and
lines connecting some or all of them. The power of such graphs lies
in the fact that the nodes can represent entities as diverse as the
users of social networks or financial market data, and that these
can be transformed into signals which can be analyzed using data
analytics tools. Data Analytics on Graphs is a comprehensive
introduction to generating advanced data analytics on graphs that
allows us to move beyond the standard regular sampling in time and
space to facilitate modelling in many important areas, including
communication networks, computer science, linguistics, social
sciences, biology, physics, chemistry, transport, town planning,
financial systems, personal health and many others. The authors
revisit graph topologies from a modern data analytics point of
view, and proceed to establish a taxonomy of graph networks. With
this as a basis, the authors show how the spectral analysis of
graphs leads to even the most challenging machine learning tasks,
such as clustering, being performed in an intuitive and physically
meaningful way. The authors detail unique aspects of graph data
analytics, such as their benefits for processing data acquired on
irregular domains, their ability to finely-tune statistical
learning procedures through local information processing, the
concepts of random signals on graphs and graph shifts, learning of
graph topology from data observed on graphs, and confluence with
deep neural networks, multi-way tensor networks and Big Data.
Extensive examples are included to render the concepts more
concrete and to facilitate a greater understanding of the
underlying principles. Aimed at readers with a good grasp of the
fundamentals of data analytics, this book sets out the fundamentals
of graph theory and the emerging mathematical techniques for the
analysis of a wide range of data acquired on graph environments.
Data Analytics on Graphs will be a useful friend and a helpful
companion to all involved in data gathering and analysis
irrespective of area of application.
Industrial Tomography: Systems and Applications, Second Edition
thoroughly explores the important techniques of industrial
tomography, also discusses image reconstruction, systems, and
applications. This book presents complex processes, including the
way three-dimensional imaging is used to create multiple
cross-sections, and how computer software helps monitor flows,
filtering, mixing, drying processes, and chemical reactions inside
vessels and pipelines. This book is suitable for materials
scientists and engineers and applied physicists working in the
photonics and optoelectronics industry or in the applications
industries.
Explainable artificial intelligence is proficient in operating and
analyzing the unconstrainted environment in fields like robotic
medicine, robotic treatment, and robotic surgery, which rely on
computational vision for analyzing complex situations. Explainable
artificial intelligence is a well-structured customizable
technology that makes it possible to generate promising unbiased
outcomes. The model's adaptability facilitates the management of
heterogeneous healthcare data and the visualization of biological
structures through virtual reality. Explainable artificial
intelligence has newfound applications in the healthcare industry,
such as clinical trial matching, continuous healthcare monitoring,
probabilistic evolutions, and evidence-based mechanisms. Principles
and Methods of Explainable Artificial Intelligence in Healthcare
discusses explainable artificial intelligence and its applications
in healthcare, providing a broad overview of state-of-the-art
approaches for accurate analysis and diagnosis. The book also
encompasses computational vision processing techniques that handle
complex data like physiological information, electronic healthcare
records, and medical imaging data that assist in earlier
prediction. Covering topics such as neural networks and disease
detection, this reference work is ideal for industry professionals,
practitioners, academicians, researchers, scholars, instructors,
and students.
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