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Learning Sequential and Parallel Runtime Distributions for Randomized Algorithms

Authors: 

Alejandro Arbelaez, Charlotte Truchet, Barry O'Sullivan

Publication Type: 
Refereed Conference Meeting Proceeding
Abstract: 
In cloud systems, computation time can be rented by the hour and for a given number of processors. Thus, accurate predictions of the behaviour of both sequential and parallel algorithms has become an important issue, in particular in the case of costly methods such as randomized combinatorial optimization tools. In this work, our objective is to use machine learning algorithms to predict performance of sequential and parallel local search algorithms. In addition to classical features of the instances used by other machine learning tools, we consider data on the sequential runtime distributions of a local search method. This allows us to predict with a high accuracy the parallel computation time of a large class of instances, by learning the behaviour of the sequential version of the algorithm on a small number of instances. Experiments with three solvers on SAT and TSP instances indicate that our method works well, with a correlation coefficient of up to 0.85 for SAT instances and up to 0.95 for TSP instances.
Conference Name: 
ICTAI
Digital Object Identifer (DOI): 
NULL
Publication Date: 
06/11/2016
Conference Location: 
United States of America
Institution: 
National University of Ireland, Cork (UCC)
Open access repository: 
No
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