Title :
Machine learning predictive modelling high-level synthesis design space exploration
Author :
CARRION SCHAFER, Benjamin ; Wakabayashi, Kazutoshi
Author_Institution :
Syst. IP Core Lab., NEC Corp., Kawasaki, Japan
fDate :
5/1/2012 12:00:00 AM
Abstract :
A machine learning-based predictive model design space exploration (DSE) method for high-level synthesis (HLS) is presented. The method creates a predictive model for a training set until a given error threshold is reached and then continues with the exploration using the predictive model avoiding time-consuming synthesis and simulations of new configurations. Results show that the authors´ method is on average 1.92 times faster than a genetic-algorithm DSE method generating comparable results, whereas it achieves better results when constraining the DSE runtime. When compared with a previously developed simulated annealer (SA)-based method, the proposed method is on average 2.09 faster, although again achieving comparable results.
Keywords :
high level synthesis; learning (artificial intelligence); design space exploration; error threshold; genetic-algorithm DSE; high-level synthesis; machine learning; predictive modelling; simulated annealer; training set;
Journal_Title :
Computers & Digital Techniques, IET
DOI :
10.1049/iet-cdt.2011.0115