Contact Information:
| E-Mail |
skumar2@uiuc.edu |
| Phone: |
217-333-5827 |
| S-mail: |
2508 DCL 1304 W. Springfield Ave. Urbana, IL 61801 |
|
Sameer Kumar
Department of Computer Science
University of Illinois at Urbana-Champaign
A graduate student working with Dr. Kale in the Parallel
Programming Laboratory.
Publications:
00-02
L. V. Kale, Sameer Kumar, and Jayant DeSouza;
An Adaptive Job Scheduler for Timeshared Parallel Machines
01-06
Sameer Kumar;
Thesis: An Adaptive Job Scheduler for Timeshared Parallel Machines
02-01
L. V. Kale, Sameer Kumar, and Jayant DeSouza;
A Malleable-Job System for Timeshared Parallel Machines
02-07
James C. Phillips, Gengbin Zheng, Sameer Kumar, Laxmikant V. Kale;
NAMD: Biomolecular Simulation on Thousands of Processors
02-10
L. V. Kale and Sameer Kumar and Krishnan Vardarajan;
A Framework for Collective Personalized Communication
03-01
L.V.Kale, Sameer Kumar, Jayant DeSouza, Mani Potnuru, and Sindhura Bandhakavi;
Faucets: Efficient Resource Allocation on the Computational Grid
03-03
Laxmikant V. Kale, Sameer Kumar, Gengbin Zheng, Chee Wai Lee;
Scaling Molecular Dynamics to 3000 Processors with Projections: A Performance Analysis Case Study
03-04
L. V. Kale and Sameer Kumar;
Scaling Collective Multicast on High Performance Clusters
03-11
Sameer Kumar and L. V. Kale;
Scaling Collective Multicast on Fat-tree Networks
03-15
Sameer Kumar and L. V. Kale;
Opportunities and Challenges of Modern Communication Architectures:
Case Study with QsNet
04-05
Laxmikant V. Kale, Gengbin Zheng, Chee Wai Lee, Sameer Kumar;
Scaling Applications to Massively Parallel Machines Using Projections Performance Analysis Tool
04-09
L.V.Kale, Sameer Kumar, Jayant DeSouza, Mani Potnuru, and Sindhura Bandhakavi;
Faucets: Efficient Resource Allocation on the Computational Grid
05-02
Sameer Kumar, Laxmikant V. Kale and Craig Stunkel ;
Architecture for supporting Hardware Collectives in Output-Queued High-Radix Routers
05-04
Chao Huang, Gengbin Zheng, Sameer Kumar, Laxmikant V. Kale;
Performance Evaluation of Adaptive MPI
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