ABSTRACT
No abstract available.
- 1.A. Acharya, G. Edjlali, and J. Saltz. Tile utility of exploiting idle workstations for parallel computation. In Proceedings of SIGMETRICS'97, 1997. Google ScholarDigital Library
- 2.R. Arpaci, A. Dusseau, A. Vahdat, L. Liu, T. Anderson, and D. Patterson. The Interaction of Parallel and Sequential Workloads on a Network of Workstations. In Proceedings of the 1995 A CM SIGMETRICS Joint International Conference on Measurement and Modeling of Computer Systems, pages 267-78, May 1995. Google ScholarDigital Library
- 3.N. Carriero, D. Gelernter, M. Jourdenais, and D. Kaminsky. Piranha Scheduling: Strategies and Their implementation. International Journal of Parallel Programruing, 23(1):5-33, Feb 1995. Google ScholarDigital Library
- 4.A. Chowdhury, L. Nicklas, S. Setia, and E. Whie. Supporting dynamic space-sharing on clusters of nondedicated workstations. In Proceedings of the 17th International conference on distributed computing, 1997. Google ScholarDigital Library
- 5.M. Litzkow and M. Livny. Experiences with the Condor Distributed Batch System. In Proceedings of the IEEE Workshop on Experimental Distributed Systems, pages 97-101, Oct 1990.Google ScholarCross Ref
- 6.J. Moreira, V. Naik, and R. Konuru. A Programming Environment for Dynamic Resource Allocation and Data Distribution. Technical Report RC 20239, IBM Research, May 1996:Google Scholar
- 7.M. Uysal, A. Acharya, and J. Saltz. Requirements of I/O systems for parallel machines: An application-driven study. Technical Report CS-TR-3802, Department of Computer Science, University of Maryland, 1997. Google ScholarDigital Library
Index Terms
- Using idle memory for data-intensive computations (extended abstract)
Recommendations
Data-intensive CyberShake computations on an opportunistic cyberinfrastructure
TG '11: Proceedings of the 2011 TeraGrid Conference: Extreme Digital DiscoveryThis abstract describes the aggregation of TeraGrid and Open Science Grid to run the SCEC CyberShake application faster than on TeraGrid alone. Because the resources are distributed and data movement is required to use more than one resource, a careful ...
A Survey of Data-Intensive Scientific Workflow Management
Nowadays, more and more computer-based scientific experiments need to handle massive amounts of data. Their data processing consists of multiple computational steps and dependencies within them. A data-intensive scientific workflow is useful for ...
Comments