Ricerca di contatti, progetti,
corsi e pubblicazioni

OSCAR: an Optimization Methodology Exploiting Spatial Correlation in Multi-core Design Space

Informazioni aggiuntive

Autori
Mariani G., Palermo G., Silvano C., Zaccaria V.
Tipo
Articolo pubblicato in rivista scientifica
Anno
2012
Lingua
Inglese
Sommario
This paper presents OSCAR, an Optimization methodology exploiting Spatial CorrelAtion of multi-coRe design space. The paper builds upon the observation that power consumption and performance metrics of spatially close design configurations (or points) are statistically correlated. We propose to exploit the correlation by using a Response Surface Model (RSM), i.e., a closed-form expression suitable for predicting the quality of non-simulated design points. This model is useful during the design space exploration (DSE) phase to quickly converge to the Pareto set of the multi-objective problem without executing lengthy simulations. We compare the proposed heuristic with state-of-the-art approaches (conventional, RSM-based and structured DOEs). Experimental results show that OSCAR is a faster heuristic with respect to state of the art techniques such as Response-Surface Pareto Iterative Refinement - ReSPIR and Nondominated Sorting Genetic Algorithm - NSGA-II. Reported results also show that OSCAR can significantly improve structured DOE approaches by slightly increasing the number of experiments.
Parole chiave
chip multi processor, correlation based design, design space exploration, multi-core, multi-objective optimization, OSCAR
Periodico
IEEE Transactions on Computer-Aided Design
Volume
21
Numero ( Mese )
- ( May )
Pagine (o numero dell’articolo)
740-753