Title :
Learning-based analytical cross-platform performance prediction
Author :
Xinnian Zheng;Pradeep Ravikumar;Lizy K. John;Andreas Gerstlauer
Author_Institution :
The University of Texas at Austin, USA
fDate :
7/1/2015 12:00:00 AM
Abstract :
As modern processors are becoming increasingly complex, fast and accurate performance prediction is crucial during the early phases of hardware and software co-development. To accurately and efficiently predict the performance of a given software workload is, however, a challenging problem. Traditional cycle-accurate simulation is often too slow, while analytical models are not sufficiently accurate or still require target-specific execution statistics that may be slow or difficult to obtain. In this paper, we propose a novel learning-based approach for synthesizing analytical models that can accurately predict the performance of a workload on a target platform from various performance statistics obtained directly on a host platform using built-in hardware counters. Our learning approach relies on a one-time training phase using a cycle-accurate reference of the chosen target processor. We train our models on over 15,000 program instances from the ACM-ICPC programming contest database, and demonstrate the prediction accuracy on standard benchmark suites. Result show that our approach achieves on average more than 90% accuracy at 160× the speed compared to a cycle-accurate reference simulation.
Keywords :
"Training","Hardware","Program processors","Computational modeling","Radiation detectors","Predictive models","Analytical models"
Conference_Titel :
Embedded Computer Systems: Architectures, Modeling, and Simulation (SAMOS), 2015 International Conference on
DOI :
10.1109/SAMOS.2015.7363659