Every new generation of scientific computers has opened up new areas of science for exploration through the use of more realistic numerical models or the ability to process ever larger amounts of data. Concomitantly, scientists, because of the success of past models and the wide range of physical ph
β¦ LIBER β¦
Emerging programming paradigms for large-scale scientific computing
β Scribed by Leonid Oliker; Rajesh Nishtala; Rupak Biswas
- Book ID
- 113840066
- Publisher
- Elsevier Science
- Year
- 2011
- Tongue
- English
- Weight
- 119 KB
- Volume
- 37
- Category
- Article
- ISSN
- 0167-8191
No coin nor oath required. For personal study only.
π SIMILAR VOLUMES
Large scale scientific computing - futur
β
G.S. Patterson Jr.
π
Article
π
1982
π
Elsevier Science
π
English
β 695 KB
Suprenum - A MIMD multiprocessor system
β
U. Trottenberg
π
Article
π
1986
π
Elsevier Science
β 34 KB
Component-based, problem-solving environ
β
Chris Johnson; Steve Parker; David Weinstein; Sean Heffernan
π
Article
π
2002
π
John Wiley and Sons
π
English
β 957 KB
Large scale scientific computation via m
β
Henry F. Schaefer III; William H. Miller
π
Article
π
1977
π
Elsevier Science
π
English
β 671 KB
Large scale scientific computations: Edi
β
Zahari Zlatev; IstvΓ‘n FaragΓ³; Peter L. Simon
π
Article
π
2009
π
Elsevier Science
π
English
β 215 KB
[Studies in Fuzziness and Soft Computing
β
Sakawa, Masatoshi
π
Article
π
2000
π
Physica-Verlag HD
π
English
β 943 KB
Simultaneous considerations of multiobjectiveness, fuzziness and block angular structures involved in the real-world decision making problems lead us to the new field of interactive multiobjective optimization for large scale programming problems under fuzziness. The aim of this book is to introduce