MPI-INF Logo
Campus Event Calendar

Event Entry

What and Who

[Cancelled] A Novel Prediction Setup for Online Speed-Scaling

Golnoosh Shahkarami
Max-Planck-Institut für Informatik - D1
AG1 Mittagsseminar (own work)
AG 1  
AG Audience
English

Date, Time and Location

Friday, 17 June 2022
13:00
30 Minutes
E1 4 (MPII)
024
Saarbrücken

Abstract

Given the rapid rise in energy demand by data centers and computing systems in general, it is fundamental to incorporate energy considerations when designing (scheduling) algorithms. Machine learning can be a useful approach in practice by predicting the future load of the system based on, for example, historical data. However, the effectiveness of such an approach highly depends on the quality of the predictions and can be quite far from optimal when predictions are sub-par. On the other hand, while providing a worst-case guarantee, classical online algorithms can be pessimistic for large classes of inputs arising in practice.

This paper, in the spirit of the new area of machine learning augmented algorithms, attempts to obtain the best of both worlds for the classical, deadline based, online speed-scaling problem: Based on the introduction of a novel prediction setup, we develop algorithms that (i) obtain provably low energy-consumption in the presence of adequate predictions, and (ii) are robust against inadequate predictions, and (iii) are smooth, i.e., their performance gradually degrades as the prediction error increases.

The paper will appear in SWAT'22.

Contact

Roohani Sharma
+49 681 9325 1116

Virtual Meeting Details

Zoom
527 278 8807
passcode not visible
logged in users only

Tags, Category, Keywords and additional notes

This talk has been cancelled.

Roohani Sharma, 06/16/2022 10:24
Roohani Sharma, 06/09/2022 14:08 -- Created document.