Mixed-machine heterogeneous computing (HC) environments utilize a distributed suite of different high-performance machines, interconnected with high-speed links, to perform different computationally intensive applications that have diverse computational requirements. HC environments are well suited
β¦ LIBER β¦
Techniques for mapping tasks to machines in heterogeneous computing systems
β Scribed by Howard Jay Siegel; Shoukat Ali
- Book ID
- 104426341
- Publisher
- Elsevier Science
- Year
- 2000
- Tongue
- English
- Weight
- 413 KB
- Volume
- 46
- Category
- Article
- ISSN
- 1383-7621
No coin nor oath required. For personal study only.
π SIMILAR VOLUMES
A Comparison of Eleven Static Heuristics
β
Tracy D Braun; Howard Jay Siegel; Noah Beck; Ladislau L BΓΆlΓΆni; Muthucumaru Mahe
π
Article
π
2001
π
Elsevier Science
π
English
β 311 KB
An Integrated Technique for Task Matchin
β
Muhammad K. Dhodhi; Imtiaz Ahmad; Anwar Yatama; Ishfaq Ahmad
π
Article
π
2002
π
Elsevier Science
π
English
β 575 KB
This paper presents a problem-space genetic algorithm (PSGA)-based technique for efficient matching and scheduling of an application program that can be represented by a directed acyclic graph, onto a mixed-machine distributed heterogeneous computing (DHC) system. PSGA is an evolutionary technique t
Hybrid meta-heuristics algorithms for ta
β
Sancho Salcedo-Sanz; Yong Xu; Xin Yao
π
Article
π
2006
π
Elsevier Science
π
English
β 219 KB
A knowledge-based approach for task allo
β
Anita Lee; Chun Hung Cheng
π
Article
π
1995
π
John Wiley and Sons
π
English
β 862 KB
[Lecture Notes in Computer Science] Meth
β
Mira, JosΓ©; del Pobil, Angel Pasqual; Ali, Moonis
π
Article
π
1998
π
Springer Berlin Heidelberg
π
German
β 917 KB
Using evolutionary computation technique
β
Ho-Lung Hung
π
Article
π
2011
π
Elsevier Science
π
English
β 836 KB