POEMS

End-to-End Performance Modeling of Large Heterogeneous Adaptive Parallel/Distributed Computer/Communication Systems

Principal Investigators: Elias Houstis, John R. Rice, Kihong Park

Collaborators: J. Browne - University of Texas at Austin (Project Management), V. Adve - Rice University, R. Bagrodia - UCLA, Olaf Lubeck - Los Alamos Nat. Lab., P. Teller - University of Texas at El Paso, and M. Vernon - University of Wisconsin

Support: DARPA

The POEMS project will create and demonstrate a capability for prediction of the end-to-end performance of parallel/distributed implementations of large scale adaptive applications. The POEMS modeling capability will span applications, operating systems including parallel I/O, and architecture. Research will focus on the areas where there is little convention wisdom available in the execution behaviors of adaptive algorithms on multi-level memory hierarchies and in parallel I/O operations. POEMS will provide:

The POEMS development is driven by modeling a full-scale Department of Energy ASCI (Accelerated Scientific Computing Initiative) application code executing on an ASCI architecture. This version of POEMS focuses on high performance computational applications and architectures. The intent is that the POEMS technology can be applied to other large complex dynamic computer/communication systems such as GloMo and Quorum.

For more information about POEMS please see POEMS - End-to-End Performance Modeling of Large Heterogeneous Adaptive Parallel/Distributed Computer/Communication Systems.