Lookup NU author(s): Dr Stephen McGough,
Dr Matthew Forshaw
This is the authors' accepted manuscript of a conference proceedings (inc. abstract) that has been published in its final definitive form by ACM, 2017.
For re-use rights please refer to the publisher's terms and conditions.
© 2017 ACM. When performing a trace-driven simulation of a High Through- put Computing system we are limited to the knowledge which should be available to the system at the current point within the simulation. However, the trace-log contains information we would not be privy to during the simulation. Through the use of Machine Learning we can extract the latent patterns within the trace-log allowing us to accurately predict characteristics of tasks based only on the information we would know. These characteristics will allow us to make better decisions within simulations allowing us to derive better policies for saving energy. We demonstrate that we can accurately predict (up-To 99% accuracy), using oversampling and deep learning, those tasks which will complete while at the same time provide accurate predictions for the task execution time and memory footprint using Random Forest Regression.
Author(s): McGough AS, Moubayed NA, Forshaw M
Publication type: Conference Proceedings (inc. Abstract)
Publication status: Published
Conference Name: ICPE 2017 Companion: Proceedings of the 8th ACM/SPEC on International Conference on Performance Engineering
Year of Conference: 2017
Online publication date: 18/04/2017
Acceptance date: 02/04/2016
Date deposited: 10/07/2017
Library holdings: Search Newcastle University Library for this item