Evaluating Derivatives: Principles and Techniques of Algorithmic Differentiation
Andreas Griewank
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Algorithmic, or automatic, differentiation (AD) is concerned with the accurate and efficient evaluation of derivatives for functions defined by computer programs. No truncation errors are incurred, and the resulting numerical derivative values can be used for all scientific computations that are based on linear, quadratic, or even higher order approximations to nonlinear scalar or vector functions. In particular, AD has been applied to optimization, parameter identification, equation solving, the numerical integration of differential equations, and combinations thereof. Apart from quantifying sensitivities numerically, AD techniques can also provide structural information, e.g., sparsity pattern and generic rank of Jacobian matrices.
Book Details
Publisher: Society for Industrial and Applied Mathematic
Publish Date: Jan 1st, 1987
Pages: 390
Language: English
Edition: undefined - undefined
Dimensions: 0.00in - 0.00in - 0.00in - 0.00lb
EAN: 9780898714517
Categories: • Differential Equations - General• Programming - General
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