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Evaluating Derivatives

Evaluating Derivatives

Principles and Techniques of Algorithmic Differentiation

by Andreas Griewank and Andrea Walther
Paperback
Publication Date: 06/11/2008

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$175.00
Algorithmic, or automatic, differentiation (AD) is a growing area of theoretical research and software development concerned with the accurate and efficient evaluation of derivatives for function evaluations given as computer programs. The resulting derivative values are useful for all scientific computations that are based on linear, quadratic, or higher order approximations to nonlinear scalar or vector functions. This second edition covers recent developments in applications and theory, including an elegant NP completeness argument and an introduction to scarcity. There is also added material on checkpointing and iterative differentiation. To improve readability the more detailed analysis of memory and complexity bounds has been relegated to separate, optional chapters. The book consists of: a stand-alone introduction to the fundamentals of AD and its software; a thorough treatment of methods for sparse problems; and final chapters on program-reversal schedules, higher derivatives, nonsmooth problems and iterative processes.
ISBN:
9780898716597
9780898716597
Category:
Differential calculus & equations
Format:
Paperback
Publication Date:
06-11-2008
Language:
English
Publisher:
Society for Industrial & Applied Mathematics,U.S.
Country of origin:
United States
Edition:
2nd Edition
Pages:
460
Dimensions (mm):
253x178x20mm
Weight:
0.81kg

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