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The Probability Companion For Engineering And Computer Science 1st Edition Adam Prügelbennett

  • SKU: BELL-10680694
The Probability Companion For Engineering And Computer Science 1st Edition Adam Prügelbennett
$ 31.00 $ 45.00 (-31%)

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The Probability Companion For Engineering And Computer Science 1st Edition Adam Prügelbennett instant download after payment.

Publisher: Cambridge University Press
File Extension: PDF
File size: 12.47 MB
Pages: 476
Author: Adam Prügel-Bennett
ISBN: 9781108480536, 9781108727709, 1108480535, 1108727700
Language: English
Year: 2019
Edition: 1

Product desciption

The Probability Companion For Engineering And Computer Science 1st Edition Adam Prügelbennett by Adam Prügel-bennett 9781108480536, 9781108727709, 1108480535, 1108727700 instant download after payment.

This friendly guide is the companion you need to convert pure mathematics into understanding and facility with a host of probabilistic tools. The book provides a high-level view of probability and its most powerful applications. It begins with the basic rules of probability and quickly progresses to some of the most sophisticated modern techniques in use, including Kalman filters, Monte Carlo techniques, machine learning methods, Bayesian inference and stochastic processes. It draws on thirty years of experience in applying probabilistic methods to problems in computational science and engineering, and numerous practical examples illustrate where these techniques are used in the real world. Topics of discussion range from carbon dating to Wasserstein GANs, one of the most recent developments in Deep Learning. The underlying mathematics is presented in full, but clarity takes priority over complete rigour, making this text a starting reference source for researchers and a readable overview for students.

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