Tight Bounds and Probabilistic Analysis of Two Heuristics for Parallel Processor Scheduling
- 1 February 1984
- journal article
- Published by Institute for Operations Research and the Management Sciences (INFORMS) in Mathematics of Operations Research
- Vol. 9 (1) , 142-150
- https://doi.org/10.1287/moor.9.1.142
Abstract
We study the partitioning problem, consisting in partitioning a sublist of n positive numbers into m disjoint sublists such that the maximum sublist is minimized. This is equivalent to minimizing the completion time of n jobs on m parallel identical processors. We establish upper bounds on the deviation from optimality of two heuristics: the well-known LPT heuristic, and the on-line RLP heuristic. These bounds serve to establish a probabilistic analysis of these heuristics; for both of them, the absolute deviation from optimality remains finite, when the size of the list of numbers becomes infinite. This is a stronger result than previous convergence theorems, and it is valid whenever the processing times are iid random variables with finite mean and arbitrary distributions.Keywords
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