Authors
Silvio Lattanzi, Thomas Lavastida, Benjamin Moseley, Sergei Vassilvitskii
Publication date
2020
Book
Proceedings of the Fourteenth Annual ACM-SIAM Symposium on Discrete Algorithms
Pages
1859-1877
Publisher
Society for Industrial and Applied Mathematics
Description
Online algorithms are a hallmark of worst case optimization under uncertainty. On the other hand, in practice, the input is often far from worst case, and has some predictable characteristics. A recent line of work has shown how to use machine learned predictions to circumvent strong lower bounds on competitive ratios in classic online problems such as ski rental and caching. We study how predictive techniques can be used to break through worst case barriers in online scheduling.
The makespan minimization problem with restricted assignments is a classic problem in online scheduling theory. Worst case analysis of this problem gives Ω(log m) lower bounds on the competitive ratio in the online setting. We identify a robust quantity that can be predicted and then used to guide online algorithms to achieve better performance. Our predictions are compact in size, having dimension linear in the number of machines …
Total citations
20192020202120222023202411628545739
Scholar articles
S Lattanzi, T Lavastida, B Moseley, S Vassilvitskii - Proceedings of the Fourteenth Annual ACM-SIAM …, 2020
B Moseley, S Vassilvitskii, S Lattanzi, T Lavastida - SODA 2020, 2020