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Books > Computing & IT > Applications of computing
Coulomb Interactions in Particle Beams, Volume 223 in the Advances
in Imaging and Electron Physics series, merges two long-running
serials, Advances in Electronics and Electron Physics and Advances
in Optical and Electron Microscopy. The series features articles on
the physics of electron devices (especially semiconductor devices),
particle optics at high and low energies, microlithography, image
science, digital image processing, electromagnetic wave
propagation, electron microscopy, and computing methods used in all
these domains, with this release exploring Coulomb Interactions in
Particle Beams.
Algebraic Theory for True Concurrency presents readers with the
algebraic laws for true concurrency. Parallelism and concurrency
are two of the core concepts within computer science. This book
covers the different realms of concurrency, which enables programs,
algorithms or problems to be broken out into order-independent or
partially ordered components to improve computation and execution
speed. There are two primary approaches for executing concurrency:
interleaving concurrency and true concurrency. The main
representative of interleaving concurrency is bisimulation/rooted
branching bisimulation equivalences which is also readily explored.
This work eventually founded the comprehensive axiomatization
modulo bisimulation equivalence -- ACP (Algebra of Communicating
Processes).The other approach to concurrency is true concurrency.
Research on true concurrency is active and includes many emerging
applications. First, there are several truly concurrent
bisimulation equivalences, including: pomset bisimulation
equivalence, step bisimulation equivalence, history-preserving
(hp-) bisimulation equivalence, and hereditary history-preserving
(hhp-) bisimulation equivalence, the most well-known truly
concurrent bisimulation equivalence.
Machine Learning and Pattern Recognition Methods in Chemistry from
Multivariate and Data Driven Modeling outlines key knowledge in
this area, combining critical introductory approaches with the
latest advanced techniques. Beginning with an introduction of
univariate and multivariate statistical analysis, the book then
explores multivariate calibration and validation methods. Soft
modeling in chemical data analysis, hyperspectral data analysis,
and autoencoder applications in analytical chemistry are then
discussed, providing useful examples of the techniques in chemistry
applications. Drawing on the knowledge of a global team of
researchers, this book will be a helpful guide for chemists
interested in developing their skills in multivariate data and
error analysis.
Statistical Modeling in Machine Learning: Concepts and Applications
presents the basic concepts and roles of statistics, exploratory
data analysis and machine learning. The various aspects of Machine
Learning are discussed along with basics of statistics. Concepts
are presented with simple examples and graphical representation for
better understanding of techniques. This book takes a holistic
approach - putting key concepts together with an in-depth treatise
on multi-disciplinary applications of machine learning. New case
studies and research problem statements are discussed, which will
help researchers in their application areas based on the concepts
of statistics and machine learning. Statistical Modeling in Machine
Learning: Concepts and Applications will help statisticians,
machine learning practitioners and programmers solving various
tasks such as classification, regression, clustering, forecasting,
recommending and more.
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.
The Definitive Guide to Arm (R) Cortex (R)-M23 and Cortex-M33
Processors focuses on the Armv8-M architecture and the features
that are available in the Cortex-M23 and Cortex- M33 processors.
This book covers a range of topics, including the instruction set,
the programmer's model, interrupt handling, OS support, and debug
features. It demonstrates how to create software for the Cortex-M23
and Cortex-M33 processors by way of a range of examples, which will
enable embedded software developers to understand the Armv8-M
architecture. This book also covers the TrustZone (R) technology in
detail, including how it benefits security in IoT applications, its
operations, how the technology affects the processor's hardware
(e.g., memory architecture, interrupt handling, etc.), and various
other considerations in creating secure software.
Strategy, Leadership and AI in the Cyber Ecosystem investigates the
restructuring of the way cybersecurity and business leaders engage
with the emerging digital revolution towards the development of
strategic management, with the aid of AI, and in the context of
growing cyber-physical interactions (human/machine co-working
relationships). The book explores all aspects of strategic
leadership within a digital context. It investigates the
interactions from both the firm/organization strategy perspective,
including cross-functional actors/stakeholders who are operating
within the organization and the various characteristics of
operating in a cyber-secure ecosystem. As consumption and reliance
by business on the use of vast amounts of data in operations
increase, demand for more data governance to minimize the issues of
bias, trust, privacy and security may be necessary. The role of
management is changing dramatically, with the challenges of
Industry 4.0 and the digital revolution. With this intelligence
explosion, the influence of artificial intelligence technology and
the key themes of machine learning, big data, and digital twin are
evolving and creating the need for cyber-physical management
professionals.
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.
Motion Correction in MR: Correction of Position, Motion, and
Dynamic Changes, Volume Eight provides a comprehensive survey of
the state-of-the-art in motion detection and correction in magnetic
resonance imaging and magnetic resonance spectroscopy. The book
describes the problem of correctly and consistently identifying and
positioning the organ of interest and tracking it throughout the
scan. The basic principles of how image artefacts arise because of
position changes during scanning are described, along with
retrospective and prospective techniques for eliminating these
artefacts, including classical approaches and methods using machine
learning. Internal navigator-based approaches as well as external
systems for estimating motion are also presented, along with
practical applications in each organ system and each MR modality
covered. This book provides a technical basis for physicists and
engineers to develop motion correction methods, giving guidance to
technologists and radiologists for incorporating these methods in
patient examinations.
Computer vision and machine intelligence paradigms are prominent in
the domain of medical image applications, including computer
assisted diagnosis, image guided radiation therapy, landmark
detection, imaging genomics, and brain connectomics. Medical image
analysis and understanding are daunting tasks owing to the massive
influx of multi-modal medical image data generated during routine
clinal practice. Advanced computer vision and machine intelligence
approaches have been employed in recent years in the field of image
processing and computer vision. However, due to the unstructured
nature of medical imaging data and the volume of data produced
during routine clinical processes, the applicability of these
meta-heuristic algorithms remains to be investigated. Advanced
Machine Vision Paradigms for Medical Image Analysis presents an
overview of how medical imaging data can be analyzed to provide
better diagnosis and treatment of disease. Computer vision
techniques can explore texture, shape, contour and prior knowledge
along with contextual information, from image sequence and 3D/4D
information which helps with better human understanding. Many
powerful tools have been developed through image segmentation,
machine learning, pattern classification, tracking, and
reconstruction to surface much needed quantitative information not
easily available through the analysis of trained human specialists.
The aim of the book is for medical imaging professionals to acquire
and interpret the data, and for computer vision professionals to
learn how to provide enhanced medical information by using computer
vision techniques. The ultimate objective is to benefit patients
without adding to already high healthcare costs.
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.
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.
The advancement in FinTech especially artificial intelligence (AI)
and machine learning (ML), has significantly affected the way
financial services are offered and adopted today. Important
financial decisions such as investment decision making,
macroeconomic analysis, and credit evaluation are getting more
complex in the field of finance. ML is used in many financial
companies which are making a significant impact on financial
services. With the increasing complexity of financial transaction
processes, ML can reduce operational costs through process
automation which can automate repetitive tasks and increase
productivity. Among others, ML can analyze large volumes of
historical data and make better trading decisions to increase
revenue. This book provides an exhaustive overview of the roles of
AI and ML algorithms in financial sectors with special reference to
complex financial applications such as financial risk management in
a big data environment. In addition, it provides a collection of
high-quality research works that address broad challenges in both
theoretical and application aspects of AI in the field of finance.
Biomedical Image Synthesis and Simulation: Methods and Applications
presents the basic concepts and applications in image-based
simulation and synthesis used in medical and biomedical imaging.
The first part of the book introduces and describes the simulation
and synthesis methods that were developed and successfully used
within the last twenty years, from parametric to deep generative
models. The second part gives examples of successful applications
of these methods. Both parts together form a book that gives the
reader insight into the technical background of image synthesis and
how it is used, in the particular disciplines of medical and
biomedical imaging. The book ends with several perspectives on the
best practices to adopt when validating image synthesis approaches,
the crucial role that uncertainty quantification plays in medical
image synthesis, and research directions that should be worth
exploring in the future.
Plasmon Coupling Physics, Wave Effects and their Study by Electron
Spectroscopies, Volume 222 in the Advances in Imaging and Electron
Physics serial, merges two long-running serials, Advances in
Electronics and Electron Physics and Advances in Optical and
Electron Microscopy. The series features articles on the physics of
electron devices (especially semiconductor devices), particle
optics at high and low energies, microlithography, image science,
digital image processing, electromagnetic wave propagation,
electron microscopy and the computing methods used in all these
domains. Specific chapters in this release cover Phase retrieval
methods applied to coherent imaging, X-ray phase-contrast imaging:
a broad overview of some fundamentals, Graphene and borophene as
nanoscopic materials for electronics - with review of the physics,
and more.
With the growing maturity and stability of digitization and edge
technologies, vast numbers of digital entities, connected devices,
and microservices interact purposefully to create huge sets of
poly-structured digital data. Corporations are continuously seeking
fresh ways to use their data to drive business innovations and
disruptions to bring in real digital transformation. Data science
(DS) is proving to be the one-stop solution for simplifying the
process of knowledge discovery and dissemination out of massive
amounts of multi-structured data. Supported by query languages,
databases, algorithms, platforms, analytics methods and machine and
deep learning (ML and DL) algorithms, graphs are now emerging as a
new data structure for optimally representing a variety of data and
their intimate relationships. Compared to traditional analytics
methods, the connectedness of data points in graph analytics
facilitates the identification of clusters of related data points
based on levels of influence, association, interaction frequency
and probability. Graph analytics is being empowered through a host
of path-breaking analytics techniques to explore and pinpoint
beneficial relationships between different entities such as
organizations, people and transactions. This edited book aims to
explain the various aspects and importance of graph data science.
The authors from both academia and industry cover algorithms,
analytics methods, platforms and databases that are intrinsically
capable of creating business value by intelligently leveraging
connected data. This book will be a valuable reference for ICTs
industry and academic researchers, scientists and engineers, and
lecturers and advanced students in the fields of data analytics,
data science, cloud/fog/edge architecture, internet of things,
artificial intelligence/machine and deep learning, and related
fields of applications. It will also be of interest to analytics
professionals in industry and IT operations teams.
Human-Centered Artificial Intelligence: Research and Applications
presents current theories, fundamentals, techniques and diverse
applications of human-centered AI. Sections address the question,
"are AI models explainable, interpretable and understandable?,
introduce readers to the design and development process, including
mind perception and human interfaces, explore various applications
of human-centered AI, including human-robot interaction, healthcare
and decision-making, and more. As human-centered AI aims to push
the boundaries of previously limited AI solutions to bridge the gap
between machine and human, this book is an ideal update on the
latest advances.
Artificial Intelligence Methods for Optimization of the Software
Testing Process: With Practical Examples and Exercises presents
different AI-based solutions for overcoming the uncertainty found
in many initial testing problems. The concept of intelligent
decision making is presented as a multi-criteria, multi-objective
undertaking. The book provides guidelines on how to manage diverse
types of uncertainty with intelligent decision-making that can help
subject matter experts in many industries improve various processes
in a more efficient way. As the number of required test cases for
testing a product can be large (in industry more than 10,000 test
cases are usually created). Executing all these test cases without
any particular order can impact the results of the test execution,
hence this book fills the need for a comprehensive resource on the
topics on the how's, what's and whys. To learn more about
Elsevier's Series, Uncertainty, Computational Techniques and
Decision Intelligence, please visit this link:
https://www.elsevier.com/books-and-journals/book-series/uncertainty-computational-techniques-and-decision-intelligence
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