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Data-driven discovery is revolutionizing how we model, predict, and
control complex systems. Now with Python and MATLAB (R), this
textbook trains mathematical scientists and engineers for the next
generation of scientific discovery by offering a broad overview of
the growing intersection of data-driven methods, machine learning,
applied optimization, and classical fields of engineering
mathematics and mathematical physics. With a focus on integrating
dynamical systems modeling and control with modern methods in
applied machine learning, this text includes methods that were
chosen for their relevance, simplicity, and generality. Topics
range from introductory to research-level material, making it
accessible to advanced undergraduate and beginning graduate
students from the engineering and physical sciences. The second
edition features new chapters on reinforcement learning and
physics-informed machine learning, significant new sections
throughout, and chapter exercises. Online supplementary material -
including lecture videos per section, homeworks, data, and code in
MATLAB (R), Python, Julia, and R - available on databookuw.com.
Data-driven discovery is revolutionizing the modeling, prediction,
and control of complex systems. This textbook brings together
machine learning, engineering mathematics, and mathematical physics
to integrate modeling and control of dynamical systems with modern
methods in data science. It highlights many of the recent advances
in scientific computing that enable data-driven methods to be
applied to a diverse range of complex systems, such as turbulence,
the brain, climate, epidemiology, finance, robotics, and autonomy.
Aimed at advanced undergraduate and beginning graduate students in
the engineering and physical sciences, the text presents a range of
topics and methods from introductory to state of the art.
The burgeoning field of data analysis is expanding at an incredible
pace due to the proliferation of data collection in almost every
area of science. The enormous data sets now routinely encountered
in the sciences provide an incentive to develop mathematical
techniques and computational algorithms that help synthesize,
interpret and give meaning to the data in the context of its
scientific setting. A specific aim of this book is to integrate
standard scientific computing methods with data analysis. By doing
so, it brings together, in a self-consistent fashion, the key ideas
from: * statistics, * time-frequency analysis, and *
low-dimensional reductions The blend of these ideas provides
meaningful insight into the data sets one is faced with in every
scientific subject today, including those generated from complex
dynamical systems. This is a particularly exciting field and much
of the final part of the book is driven by intuitive examples from
it, showing how the three areas can be used in combination to give
critical insight into the fundamental workings of various problems.
Data-Driven Modeling and Scientific Computation is a survey of
practical numerical solution techniques for ordinary and partial
differential equations as well as algorithms for data manipulation
and analysis. Emphasis is on the implementation of numerical
schemes to practical problems in the engineering, biological and
physical sciences. An accessible introductory-to-advanced text,
this book fully integrates MATLAB and its versatile and high-level
programming functionality, while bringing together computational
and data skills for both undergraduate and graduate students in
scientific computing.
The burgeoning field of data analysis is expanding at an incredible
pace due to the proliferation of data collection in almost every
area of science. The enormous data sets now routinely encountered
in the sciences provide an incentive to develop mathematical
techniques and computational algorithms that help synthesize,
interpret and give meaning to the data in the context of its
scientific setting. A specific aim of this book is to integrate
standard scientific computing methods with data analysis. By doing
so, it brings together, in a self-consistent fashion, the key ideas
from: * statistics, * time-frequency analysis, and *
low-dimensional reductions The blend of these ideas provides
meaningful insight into the data sets one is faced with in every
scientific subject today, including those generated from complex
dynamical systems. This is a particularly exciting field and much
of the final part of the book is driven by intuitive examples from
it, showing how the three areas can be used in combination to give
critical insight into the fundamental workings of various problems.
Data-Driven Modeling and Scientific Computation is a survey of
practical numerical solution techniques for ordinary and partial
differential equations as well as algorithms for data manipulation
and analysis. Emphasis is on the implementation of numerical
schemes to practical problems in the engineering, biological and
physical sciences. An accessible introductory-to-advanced text,
this book fully integrates MATLAB and its versatile and high-level
programming functionality, while bringing together computational
and data skills for both undergraduate and graduate students in
scientific computing.
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