Fr. 266.00

Acta Numerica 2019: Volume 28

English · Hardback

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Description

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The highest rated journal available as a book. Contains state-of-the-art overviews of numerical mathematics and scientific computing.

List of contents










1. Solving inverse problems using data-driven models Simon Arridge, Peter Maass, Ozan Öktem and Carola-Bibiane Schönlieb; 2. Numerical analysis of hemivariational inequalities in contact mechanics Weimin Han and Mircea Sofonea; 3. Derivative-free optimization methods Jeffrey Larson, Matt Menickelly and Stefan M. Wild; 4. Numerical methods for Kohn-Sham density functional theory Lin Lin, Jianfeng Lu and Lexing Ying; 5. Approximation algorithms in combinatorial scientific computing Alex Pothen, S. M. Ferdous and Fredrik Manne; 6. Data assimilation: the Schrödinger perspective Sebastian Reich.

Summary

Acta Numerica is an annual publication containing invited survey papers by leading researchers in numerical mathematics and scientific computing. The papers present overviews of recent developments in their area and provide state-of-the-art techniques and analysis.

Product details

Authors Arieh Iserles, Arieh (University of Cambridge) Iserles
Assisted by Arieh Iserles (Editor), Arieh (University of Cambridge) Iserles (Editor), Iserles Arieh (Editor)
Publisher Cambridge University Press ELT
 
Languages English
Product format Hardback
Released 31.10.2019
 
EAN 9781108478687
ISBN 978-1-108-47868-7
No. of pages 716
Series Acta Numerica
Subjects Natural sciences, medicine, IT, technology > IT, data processing > IT

MATHEMATICS / Mathematical Analysis, Numerical analysis, Maths for computer scientists

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