DocumentCode
3653704
Title
Hardware task scheduling for heterogeneous soc architectures
Author
Imène Benkermi;Daniel Chillet;Sébastien Pillement;Olivier Sentieys
Author_Institution
ENSSAT - Rennes I University, INRIA/IRISA - R2D2 Research Team, BP 80518 - 6 Rue de Kerampont 22305 LANNION - France
fYear
2007
Firstpage
1653
Lastpage
1657
Abstract
This paper presents our work on extending artificial neural networks use for real-time task scheduling to heterogeneous System-on-Chip architectures. The Hopfield model is the neural network model considered in this study. We introduce new constructing rules to design neural network so that architecture heterogeneity can be considered. We show that these new rules ensure the network stabilization on states that take into account the architecture heterogeneity while meeting the imposed task constraints.
Keywords
"Neurons","Artificial neural networks","Real-time systems","Scheduling algorithms","Convergence","Hardware"
Publisher
ieee
Conference_Titel
Signal Processing Conference, 2007 15th European
Print_ISBN
978-839-2134-04-6
Type
conf
Filename
7099087
Link To Document