Modeling and Simulation in Python
Tweedehands producten
-
Op zoek naar tweedehands producten...
Beschrijving
"An excellent choice for students and professionals alike . . . Straightaway, the book takes us into modeling, using basic Python concepts. With each chapter more complex modeling use cases and language features are being introduced. . . . I like the way A. Downey combined teaching modeling with building Python development skills. It is, in my view, a very effective (and more enjoyable) way of learning."
—Peter Schmidt, host of the Code for Thought podcast and Senior Software Engineer at University of College London
"
Modeling and Simulation in Python
is an introduction to physical modeling using a computational approach . . . making it possible to work with more realistic models than what you typically see in a first-year physics class."
—Python Kitchen
“Downey’s top-down approach, context-rich and motivating, dramatically lowers the barrier to gaining literacy in programming and explicitly and insightfully teaches modeling. . . . I’m grateful for this book.”
—Phat Vu, Director of the Science & Mathematics Program, Soka University of America
“An impressive introduction to physical modeling and Python programming, featuring clear, concise explanations and examples. . . . perfect for readers of any level.”
—Christian Mayer, founder of the Coding Academy Finxter.com and author of
Python One-Liners
“Downey uses a combination of Python, calculus, bespoke helper functions, and easily accessible online materials to model a diverse and interesting set of simulation projects. In the process, he presents a practical and reusable framework for modeling dynamical systems with Python.”
—Lee Vaughan,
former Senior Principal Scientist for Geological Modeling at ExxonMobil and a
uthor of
Python Tools for Scientists
,
Real-World Python
, and
Impractical Python Projects
“Provides a wealth of instructive examples of all kinds of modeling. . . . a valuable textbook for classes on scientific computation or guide to exploration for interested amateurs.”
—Bradford Tuckfield, author of
Dive into Algorithms
and
Dive Into Data Science
"An ideal introduction to Python and its predictive applications, [
Modeling and Simulation in Python
] is comprehensive, exceptionally well organized, and thoroughly 'user friendly' in presentation."
—Midwest Book Review
"It’s a lovely book that doesn’t take long to read, while managing to cover lots of different ideas...Definitely worth a read if you want to play around modeling some equations."
—Frances Buontempo, The Magazine of the ACCU
"Through a blend of accessible science and practical examples, Downey's book demystifies the complex world of simulations, offering readers an invaluable arsenal of modeling techniques. With Python at its core, this guide illuminates the path from theory to application, making it an essential resource for anyone looking to master the art of simulation in science and technology."
—c't Magazin
"An excellent choice for students and professionals alike . . . Straightaway, the book takes us into modeling, using basic Python concepts. With each chapter more complex modeling use cases and language features are being introduced. . . . I like the way A. Downey combined teaching modeling with building Python development skills. It is, in my view, a very effective (and more enjoyable) way of learning."
—Peter Schmidt, host of the Code for Thought podcast and Senior Software Engineer at University of College London
"
Modeling and Simulation in Python
is an introduction to physical modeling using a computational approach . . . making it possible to work with more realistic models than what you typically see in a first-year physics class."
—Python Kitchen
“Downey’s top-down approach, context-rich and motivating, dramatically lowers the barrier to gaining literacy in programming and explicitly and insightfully teaches modeling. . . . I’m grateful for this book.”
—Phat Vu, Director of the Science & Mathematics Program, Soka University of America
“An impressive introduction to physical modeling and Python programming, featuring clear, concise explanations and examples. . . . perfect for readers of any level.”
—Christian Mayer, founder of the Coding Academy Finxter.com and author of
Python One-Liners
“Downey uses a combination of Python, calculus, bespoke helper functions, and easily accessible online materials to model a diverse and interesting set of simulation projects. In the process, he presents a practical and reusable framework for modeling dynamical systems with Python.”
—Lee Vaughan,
former Senior Principal Scientist for Geological Modeling at ExxonMobil and a
uthor of
Python Tools for Scientists
,
Real-World Python
, and
Impractical Python Projects
“Provides a wealth of instructive examples of all kinds of modeling. . . . a valuable textbook for classes on scientific computation or guide to exploration for interested amateurs.”
—Bradford Tuckfield, author of
Dive into Algorithms
and
Dive Into Data Science
"An ideal introduction to Python and its predictive applications, [
Modeling and Simulation in Python
] is comprehensive, exceptionally well organized, and thoroughly 'user friendly' in presentation."
—Midwest Book Review
"It’s a lovely book that doesn’t take long to read, while managing to cover lots of different ideas...Definitely worth a read if you want to play around modeling some equations."
—Frances Buontempo, The Magazine of the ACCU
"Through a blend of accessible science and practical examples, Downey's book demystifies the complex world of simulations, offering readers an invaluable arsenal of modeling techniques. With Python at its core, this guide illuminates the path from theory to application, making it an essential resource for anyone looking to master the art of simulation in science and technology."
—c't Magazin
Allen Downey
is a Staff Scientist at DrivenData and Professor Emeritus at Olin College, where he taught Modeling and Simulation and other classes related to software and data science. He is the author of several textbooks, including
Think Python
,
Think Bayes
, and
Elements of Data Science
. Previously, he taught at Wellesley College and Colby College. He received his Ph.D. in computer science from the University of California, Berkeley in 1997. His undergraduate and master's degrees are from the Civil Engineering department at MIT. He is the author of
Probably Overthinking It
, a blog about data science and Bayesian statistics.