Fr. 300.00

Acta Numerica 2025: Volume 34

English · Hardback

Shipping usually within 1 to 3 weeks (not available at short notice)

Description

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'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.

List of contents










1. Cut finite element methods Erik Burman, Peter Hansbo, Mats G. Larson and Sara Zahedi; 2. Ensemble Kalman methods: a mean-field perspective Edoardo Calvello, Sebastian Reich and Andrew M. Stuart; 3. The discontinuous Petrov-Galerkin method Leszek Demkowicz and Jay Gopalakrishnan; 4. Time parallelization for hyperbolic and parabolic problems Martin J. Gander, Shu-Lin Wu and Tao Zhou; 5. Optimization problems governed by systems of PDEs with uncertainties Matthias Heinkenschloss and Drew P. Kouri; 6. Distributionally robust optimization Daniel Kuhn, Soroosh Shafiee and Wolfram Wiesemann; 7. Acceleration methods for fixed-point iterations Yousef Saad; 8. Sparse linear least-squares problems Jennifer Scott and Miroslav T¿ma.

About the author

Douglas Arnold is McKnight Presidential Professor of Mathematics at the University of Minnesota.

Product details

Authors Douglas (University of Minnesota) Arnold
Assisted by Douglas Arnold (Editor)
Publisher Cambridge University Press ELT
 
Languages English
Product format Hardback
Released 30.10.2025
 
EAN 9781009708043
ISBN 978-1-0-0970804-3
No. of pages 1018
Series Acta Numerica
Subjects Natural sciences, medicine, IT, technology > Mathematics > Analysis

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

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