|
|
Books > Computing & IT > Applications of computing
In this collection of 17 articles, top scholars synthesize and
analyze scholarship on this widely used tool of policy analysis,
setting forth its accomplishments, difficulties, and means of
implementation. Though CGE modeling does not play a prominent role
in top US graduate schools, it is employed universally in the
development of economic policy. This collection is particularly
important because itpresents a history of modeling applications and
examines competing points of view.
Presents coherent summaries of CGE theories that inform major model
types Covers the construction of CGE databases, model solving, and
computer-assisted interpretation of resultsShows how CGE modeling
has made a contribution to economic policy "
Artificial intelligence is headline news with the launch of the latest ChatGPT and Google Bard. But when did we start making computers mimic the human mind? And what is the reality of the capabilities of AI now, and in the future?
AI has always stirred emotions and caused great excitement and concern. Since the launch of large language models such as ChatGPT, the scope and capabilities of AI look set to transform our technology, in both good and bad ways. AI can help teach us how to write better or help us generate amazing artwork. But in the wrong hands, AI can create fake images and fake information that can be used to damage our societies.
A new addition to the popular Bite-sized Chunks series, this expert-led book will explore how AI has developed from humble beginnings in the 1950s to today’s extraordinary AIs with more neurons than the human brain. Focusing on specific AIs and their creators over the years, it explains the science and engineering behind each AI, discusses ethical issues, and covers all the most fascinating information about one of the most important and contentious developments in human technology (including the latest on generative AI/ChatGPT), as well as what we can expect to see in the future of this field – all in short, accessible bite-sized chunks.
Data mining analysis techniques have undergone significant
developments in recent years. This has led to improved uses
throughout numerous functions and applications. Intelligent
Multidimensional Data Clustering and Analysis is an authoritative
reference source for the latest scholarly research on the
advantages and challenges presented by the use of cluster analysis
techniques. Highlighting theoretical foundations, computing
paradigms, and real-world applications, this book is ideally
designed for researchers, practitioners, upper-level students, and
professionals interested in the latest developments in cluster
analysis for large data sets.
For the past decade or more, much of cell biology research has been
focused on determining the key molecules involved in different
cellular processes, an analytical problem that has been amenable to
biochemical and genetic approaches. Now, we face an integrative
problem of understanding how all of these molecules work together
to produce living cells, a challenge that requires using
quantitative approaches to model the complex interactions within a
cell, and testing those models with careful quantitative
measurements. This book is an introductory overview of the various
approaches, methods, techniques, and models employed in
quantitative cell biology, which are reviewed in greater detail in
the other volumes in this e-book series. Particular emphasis is
placed on the goals and purpose of quantitative analysis and
modeling, and the special challenges that cell biology holds for
understanding life at the physical level.
As humans interact more often and more intimately with computers,
and as computational systems become an ever more important element
of our society, playing roles in education, the production of
culture and goods, and management, it is inevitable that we should
seek to interact with these systems in ways that take advantage of
our powerful emotional capabilities. Creating Synthetic Emotions
through Technological and Robotic Advancements compiles progressive
research in the emerging and groundbreaking fields of artificial
emotions, affective computing, and sociable robotics that allow
humans to begin the once impossible-seeming task of interacting
with robots, systems, devices, and agents. This landmark volume
brings together expert international researchers to expound upon
these topics as synthetic emotions move toward becoming a daily
reality.
Recent developments in information processing systems have driven
the advancement of computational methods in the engineering realm.
New models and simulations enable better solutions for
problem-solving and overall process improvement. The Handbook of
Research on Advanced Computational Techniques for Simulation-Based
Engineering is an authoritative reference work representing the
latest scholarly research on the application of computational
models to improve the quality of engineering design. Featuring
extensive coverage on a range of topics from various engineering
disciplines, including, but not limited to, soft computing methods,
comparative studies, and hybrid approaches, this book is a
comprehensive reference source for students, professional
engineers, and researchers interested in the application of
computational methods for engineering design.
Research on living systems, human level artificial systems, and
machines that exhibit intelligent behavioral characteristics is
fundamental in order to tackle complex and dynamic issues in nature
and create applicable solutions. Investigations into Living
Systems, Artificial Life, and Real-World Solutions provides
original research on the theoretical and applied aspects of
artificial life, as well as addresses scientific, psychological,
and social issues of synthetic life-like behavior and abilities.
This book is essential for researchers, students, and scientists
interested in the emerging discipline of artificial life to further
understand and solve real-world problems.
Hybrid Artificial Intelligent Systems (HAIS) try to deal with the
complexity of real world phenomena using a multidisciplinary
approach and a plurality of techniques. Logistics Management and
Optimization through Hybrid Artificial Intelligence Systems offers
the latest research within the field of HAIS, surveying the broad
topics and collecting case studies, future directions, and cutting
edge analyses. Using biologically-inspired algorithms such as ant
colony optimization and particle swarm optimization, this text
includes solutions and heuristics for practitioners and academics
alike, offering a vital resource for staying abreast in this
ever-burgeoning field.
Collaborative working has been increasingly viewed as a good
practice for organizations to achieve efficiency. Organizations
that work well in collaboration may have access to new sources of
funding, deliver new, improved, and more integrated services, make
savings on shared costs, and exchange knowledge, information and
expertise. Collaboration and the Semantic Web: Social Networks,
Knowledge Networks and Knowledge Resources showcases cutting-edge
research on the intersections of Semantic Web, collaborative work,
and social media research, exploring how the resources of so-called
social networking applications, which bring people together to
interact and encourage sharing of personal information and ideas,
can be tapped by Semantic Web techniques, making shared Web
contents readable and processable for machine and intelligent
applications, as well as humans. Semantic technologies have shown
their potential for integrating valuable knowledge, and they are
being applied to the composition of digital learning and working
platforms. Integrated semantic applications, linked data, social
networks, and networked digital solutions can now be used in
collaborative environments and present participants with the
context-aware information that they need.
Technology has revolutionized the ways in which libraries store,
share, and access information. As digital resources and tools
continue to advance, so too do the opportunities for libraries to
become more efficient and house more information. E-Discovery Tools
and Applications in Modern Libraries presents critical research on
the digitization of data and how this shift has impacted knowledge
discovery, storage, and retrieval. This publication explores
several emerging trends and concepts essential to electronic
discovery, such as library portals, responsive websites, and
federated search technology. The timely research presented within
this publication is designed for use by librarians, graduate-level
students, technology developers, and researchers in the field of
library and information science.
Although some IoT systems are built for simple event control where
a sensor signal triggers a corresponding reaction, many events are
far more complex, requiring applications to interpret the event
using analytical techniques to initiate proper actions. Artificial
intelligence of things (AIoT) applies intelligence to the edge and
gives devices the ability to understand the data, observe the
environment around them, and decide what to do best with minimum
human intervention. With the power of AI, AIoT devices are not just
messengers feeding information to control centers. They have
evolved into intelligent machines capable of performing self-driven
analytics and acting independently. A smart environment uses
technologies such as wearable devices, IoT, and mobile internet to
dynamically access information, connect people, materials and
institutions, and then actively manages and responds to the
ecosystem's needs in an intelligent manner. In this edited book,
the authors present challenges, technologies, applications and
future trends of AI-enabled IoT (AIoT) in realizing smart and
intelligent environments, including frameworks and methodologies to
apply AIoT in monitoring devices and environments, tools and
practices most applicable to product or service development to
solve innovation problems, advanced and innovative techniques and
practical implementations to enhance future smart environment
systems as. They plan to cover a broad range of applications
including smart cities, smart transportation and smart agriculture.
This book is a valuable resource for industry and academic
researchers, scientists, engineers and advanced students in the
fields of ICTs and networking, IoT, AI and machine and deep
learning, data science, sensing, robotics, automation and smart
technologies and smart environments.
Today's "machine-learning" systems, trained by data, are so
effective that we've invited them to see and hear for us-and to
make decisions on our behalf. But alarm bells are ringing. Recent
years have seen an eruption of concern as the field of machine
learning advances. When the systems we attempt to teach will not,
in the end, do what we want or what we expect, ethical and
potentially existential risks emerge. Researchers call this the
alignment problem. Systems cull resumes until, years later, we
discover that they have inherent gender biases. Algorithms decide
bail and parole-and appear to assess Black and White defendants
differently. We can no longer assume that our mortgage application,
or even our medical tests, will be seen by human eyes. And as
autonomous vehicles share our streets, we are increasingly putting
our lives in their hands. The mathematical and computational models
driving these changes range in complexity from something that can
fit on a spreadsheet to a complex system that might credibly be
called "artificial intelligence." They are steadily replacing both
human judgment and explicitly programmed software. In best-selling
author Brian Christian's riveting account, we meet the alignment
problem's "first-responders," and learn their ambitious plan to
solve it before our hands are completely off the wheel. In a
masterful blend of history and on-the ground reporting, Christian
traces the explosive growth in the field of machine learning and
surveys its current, sprawling frontier. Readers encounter a
discipline finding its legs amid exhilarating and sometimes
terrifying progress. Whether they-and we-succeed or fail in solving
the alignment problem will be a defining human story. The Alignment
Problem offers an unflinching reckoning with humanity's biases and
blind spots, our own unstated assumptions and often contradictory
goals. A dazzlingly interdisciplinary work, it takes a hard look
not only at our technology but at our culture-and finds a story by
turns harrowing and hopeful.
This book documents recent attempts to conduct systematic,
prodigious and multidisciplinary research in learning analytics and
present their findings and identify areas for further research and
development. The book also unveils the distinguished and exemplary
works by educators and researchers in the field highlighting the
current trends, privacy and ethical issues, creative and unique
approaches, innovative methods, frameworks, and theoretical and
practical aspects of learning analytics.
|
|