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To put the world of linear algebra to advanced use, it is not
enough to merely understand the theory; there is a significant gap
between the theory of linear algebra and its myriad expressions in
nearly every computational domain. To bridge this gap, it is
essential to process the theory by solving many exercises, thus
obtaining a firmer grasp of its diverse applications. Similarly,
from a theoretical perspective, diving into the literature on
advanced linear algebra often reveals more and more topics that are
deferred to exercises instead of being treated in the main text. As
exercises grow more complex and numerous, it becomes increasingly
important to provide supporting material and guidelines on how to
solve them, supporting students' learning process. This book
provides precisely this type of supporting material for the
textbook "Numerical Linear Algebra and Matrix Factorizations,"
published as Vol. 22 of Springer's Texts in Computational Science
and Engineering series. Instead of omitting details or merely
providing rough outlines, this book offers detailed proofs, and
connects the solutions to the corresponding results in the
textbook. For the algorithmic exercises the utmost level of detail
is provided in the form of MATLAB implementations. Both the
textbook and solutions are self-contained. This book and the
textbook are of similar length, demonstrating that solutions should
not be considered a minor aspect when learning at advanced levels.
This book offers a user friendly, hands-on, and systematic
introduction to applied and computational harmonic analysis: to
Fourier analysis, signal processing and wavelets; and to their
interplay and applications. The approach is novel, and the book can
be used in undergraduate courses, for example, following a first
course in linear algebra, but is also suitable for use in graduate
level courses. The book will benefit anyone with a basic background
in linear algebra. It defines fundamental concepts in signal
processing and wavelet theory, assuming only a familiarity with
elementary linear algebra. No background in signal processing is
needed. Additionally, the book demonstrates in detail why linear
algebra is often the best way to go. Those with only a signal
processing background are also introduced to the world of linear
algebra, although a full course is recommended. The book comes in
two versions: one based on MATLAB, and one on Python, demonstrating
the feasibility and applications of both approaches. Most of the
code is available interactively. The applications mainly involve
sound and images. The book also includes a rich set of exercises,
many of which are of a computational nature.
This book offers a user friendly, hands-on, and systematic
introduction to applied and computational harmonic analysis: to
Fourier analysis, signal processing and wavelets; and to their
interplay and applications. The approach is novel, and the book can
be used in undergraduate courses, for example, following a first
course in linear algebra, but is also suitable for use in graduate
level courses. The book will benefit anyone with a basic background
in linear algebra. It defines fundamental concepts in signal
processing and wavelet theory, assuming only a familiarity with
elementary linear algebra. No background in signal processing is
needed. Additionally, the book demonstrates in detail why linear
algebra is often the best way to go. Those with only a signal
processing background are also introduced to the world of linear
algebra, although a full course is recommended. The book comes in
two versions: one based on MATLAB, and one on Python, demonstrating
the feasibility and applications of both approaches. Most of the
MATLAB code is available interactively. The applications mainly
involve sound and images. The book also includes a rich set of
exercises, many of which are of a computational nature.
To put the world of linear algebra to advanced use, it is not
enough to merely understand the theory; there is a significant gap
between the theory of linear algebra and its myriad expressions in
nearly every computational domain. To bridge this gap, it is
essential to process the theory by solving many exercises, thus
obtaining a firmer grasp of its diverse applications. Similarly,
from a theoretical perspective, diving into the literature on
advanced linear algebra often reveals more and more topics that are
deferred to exercises instead of being treated in the main text. As
exercises grow more complex and numerous, it becomes increasingly
important to provide supporting material and guidelines on how to
solve them, supporting students' learning process. This book
provides precisely this type of supporting material for the
textbook "Numerical Linear Algebra and Matrix Factorizations,"
published as Vol. 22 of Springer's Texts in Computational Science
and Engineering series. Instead of omitting details or merely
providing rough outlines, this book offers detailed proofs, and
connects the solutions to the corresponding results in the
textbook. For the algorithmic exercises the utmost level of detail
is provided in the form of MATLAB implementations. Both the
textbook and solutions are self-contained. This book and the
textbook are of similar length, demonstrating that solutions should
not be considered a minor aspect when learning at advanced levels.
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