Understanding measurement perturbation in trace-based data
Todd Mytkowicz, Amer Diwan, et al.
IPDPS 2007
The design of algorithms that can run unchanged yet efficiently on a variety of machines characterized by different degrees of parallelism and communication capabilities is a highly desirable goal. We propose a framework for network-obliviousness based on a model of computation where the only parameter is the problem's input size. Algorithms are then evaluated on a model with two parameters, capturing parallelism and granularity of communication. We show that, for a wide class of network-oblivious algorithms, optimality in the latter model implies optimality in a block-variant of the Decomposable BSP model, which effectively describes a wide and significant class of parallel platforms. We illustrate our framework by providing optimal network-oblivious algorithms for a few key problems, and also establish some negative results. © 2007 IEEE.
Todd Mytkowicz, Amer Diwan, et al.
IPDPS 2007
Fabrizio Petrini, Gordon Fossum, et al.
IPDPS 2007
David A. Bacigalupo, James W. J. Xue, et al.
IPDPS 2007
Gianfranco Bilardi, Kattamuri Ekanadham, et al.
CF 2017