Title
Scheduling with Untrusted Predictions.
Abstract
Using machine-learned predictions to create algorithms with better approximation guarantees is a very fresh and active field. In this work, we study classic scheduling problems under the learning augmented setting. More specifically, we consider the problem of scheduling jobs with arbitrary release dates on a single machine and the problem of scheduling jobs with a common release date on multiple machines. Our objective is to minimize the sum of completion times. For both problems, we propose algorithms which use predictions for taking their decisions. Our algorithms are consistent -- i.e. when the predictions are accurate, the performances of our algorithms are close to those of an optimal offline algorithm--, and robust -- i.e. when the predictions are wrong, the performance of our algorithms are close to those of an online algorithm without predictions. In addition, we confirm the above theoretical bounds by conducting experimental evaluation comparing the proposed algorithms to the offline optimal ones for both the single and multiple machines settings.
Year
DOI
Venue
2022
10.24963/ijcai.2022/636
European Conference on Artificial Intelligence
Keywords
DocType
Citations 
Planning and Scheduling: Scheduling,Planning and Scheduling: Learning in Planning and Scheduling,Uncertainty in AI: Nonprobabilistic Models
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Evripidis Bampis112.05
Konstantinos Dogeas211.37
Alexander Kononov313215.69
Giorgio Lucarelli401.01
Fanny Pascual59714.48