Data-Driven Modeling & Scientific Computation

Methods for Complex Systems & Big Data

Éditeur :

OUP Oxford

Paru le : 2013-08-08

The burgeoning field of data analysis is expanding at an incredible pace due to the proliferation of data collection in almost every area of science. The enormous data sets now routinely encountered in the sciences provide an incentive to develop mathematical techniques and computational algorithms ...
Voir tout
Ce livre est accessible aux handicaps Voir les informations d'accessibilité
Ebook téléchargement , DRM LCP 🛈 DRM Adobe 🛈
Compatible lecture en ligne (streaming)
42,52
Ajouter à ma liste d'envies
Téléchargement immédiat
Dès validation de votre commande
Image Louise Reader présentation

Louise Reader

Lisez ce titre sur l'application Louise Reader.

À propos


Éditeur

Collection
n.c

Parution
2013-08-08

Pages
608 pages

EAN papier
9780191635878

Auteur(s) du livre


Professor Kutz is the Robert Bolles and Yasuko Endo Professor of Applied Mathematics at the University of Washington. Prof. Kutz was awarded the B.S. in physics and mathematics from the University of Washington (Seattle, WA) in 1990 and the PhD in Applied Mathematics from Northwestern University (Evanston, IL) in 1994. He joined the Department of Applied Mathematics, University of Washington in 1998 and became Chair in 2007. Professor Kutz is especially interested in a unified approach to applied mathematics that includes modeling, computation and analysis. His area of current interest concerns phenomena in complex systems and data analysis (dimensionality reduction, compressive sensing, machine learning), neuroscience (neuro-sensory systems, networks of neurons), and the optical sciences (laser dynamics and modelocking, solitons, pattern formation in nonlinear optics).

Caractéristiques détaillées - droits

EAN PDF
9780191635878
Prix
42,52 €
Nombre pages copiables
0
Nombre pages imprimables
0
Taille du fichier
16783 Ko
EAN EPUB
9780191635885
Prix
42,52 €
Nombre pages copiables
0
Nombre pages imprimables
0
Taille du fichier
47944 Ko

Suggestions personnalisées