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It is undeniable that the recent revival of artificial intelligence
(AI) has significantly changed the landscape of science in many
application domains, ranging from health to defense and from
conversational interfaces to autonomous cars. With terms such as
“Google Home”, “Alexa”, and “ChatGPT” becoming
household names, the pervasive societal impact of AI is clear.
Advances in AI promise a revolution in our interaction with the
physical world, a domain where computational intelligence has
always been envisioned as a transformative force toward a better
tomorrow. Depending on the application family, this domain is often
referred to as Ubiquitous Computing, Cyber-Physical Computing, or
the Internet of Things. The underlying vision is driven by the
proliferation of cheap embedded computing hardware that can be
integrated easily into myriads of everyday devices from consumer
electronics, such as personal wearables and smart household
appliances, to city infrastructure and industrial process control
systems. One common trait across these applications is that the
data that the application operates on come directly (typically via
sensors) from the physical world. Thus, from the perspective of
communication network infrastructure, the data originate at the
network edge. From a performance standpoint, there is an argument
to be made that such data should be processed at the point of
collection. Hence, a need arises for Edge AI -- a genre of AI where
the inference, and sometimes even the training, are performed at
the point of need, meaning at the edge where the data originate.
The book is broken down into three parts: core problems,
distributed problems, and other cross-cutting issues. It explores
the challenges arising in Edge AI contexts. Some of these
challenges (such as neural network model reduction to fit
resource-constrained hardware) are unique to the edge environment.
They need a novel category of solutions that do not parallel more
typical concerns in mainstream AI. Others are adaptations of
mainstream AI challenges to the edge space. An example is
overcoming the cost of data labeling. The labeling problem is
pervasive, but its solution in the IoT application context is
different from other contexts. This book is not a survey of the
state of the art. With thousands of publications appearing in AI
every year, such a survey is doomed to be incomplete on arrival. It
is also not a comprehensive coverage of all the problems in the
space of Edge AI. Different applications pose different challenges,
and a more comprehensive coverage should be more application
specific. Instead, this book covers some of the more endemic
challenges across the range of IoT/CPS applications. To offer
coverage in some depth, we opt to cover mainly one or a few
representative solutions for each of these endemic challenges in
sufficient detail, rather that broadly touching on all relevant
prior work. The underlying philosophy is one of illustrating by
example. The solutions are curated to offer insight into a way of
thinking that characterizes Edge AI research and distinguishes its
solutions from their more mainstream counterparts.
Providing the first truly comprehensive overview of Network
Tomography - a novel network monitoring approach that makes use of
inference techniques to reconstruct the internal network state from
external vantage points - this rigorous yet accessible treatment of
the fundamental theory and algorithms of network tomography covers
the most prominent results demonstrated on real-world data,
including identifiability conditions, measurement design
algorithms, and network state inference algorithms, alongside
practical tools for applying these techniques to real-world network
management. It describes the main types of mathematical problems,
along with their solutions and properties, and emphasizes the
actions that can be taken to improve the accuracy of network
tomography. With proofs and derivations introduced in an accessible
language for easy understanding, this is an essential resource for
professional engineers, academic researchers, and graduate students
in network management and network science.
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