Computer Science – Distributed – Parallel – and Cluster Computing
Scientific paper
2012-02-17
Technical Report CI-TR-13-0911. Computation Institute, University of Chicago & Argonne National Laboratory. 2012. http://www.c
Computer Science
Distributed, Parallel, and Cluster Computing
Scientific paper
This report discusses many-task computing (MTC) generically and in the context of the proposed Blue Waters systems, which is planned to be the largest NSF-funded supercomputer when it begins production use in 2012. The aim of this report is to inform the BW project about MTC, including understanding aspects of MTC applications that can be used to characterize the domain and understanding the implications of these aspects to middleware and policies. Many MTC applications do not neatly fit the stereotypes of high-performance computing (HPC) or high-throughput computing (HTC) applications. Like HTC applications, by definition MTC applications are structured as graphs of discrete tasks, with explicit input and output dependencies forming the graph edges. However, MTC applications have significant features that distinguish them from typical HTC applications. In particular, different engineering constraints for hardware and software must be met in order to support these applications. HTC applications have traditionally run on platforms such as grids and clusters, through either workflow systems or parallel programming systems. MTC applications, in contrast, will often demand a short time to solution, may be communication intensive or data intensive, and may comprise very short tasks. Therefore, hardware and software for MTC must be engineered to support the additional communication and I/O and must minimize task dispatch overheads. The hardware of large-scale HPC systems, with its high degree of parallelism and support for intensive communication, is well suited for MTC applications. However, HPC systems often lack a dynamic resource-provisioning feature, are not ideal for task communication via the file system, and have an I/O system that is not optimized for MTC-style applications. Hence, additional software support is likely to be required to gain full benefit from the HPC hardware.
Armstrong Timothy G.
Katz Daniel S.
Wilde Michael
Wozniak Justin M.
Zhang Zhao
No associations
LandOfFree
Many-Task Computing and Blue Waters does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.
If you have personal experience with Many-Task Computing and Blue Waters, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Many-Task Computing and Blue Waters will most certainly appreciate the feedback.
Profile ID: LFWR-SCP-O-36273