Title
Mapping of synchronous dataflow graphs on MPSoCs based on parallelism enhancement.
Abstract
Multi-processor systems-on-chips are widely adopted in implementing modern streaming applications to satisfy the ever increasing computation requirements. To take advantage of this kind of platform, it is necessary to map tasks of the application properly to different processors, so as to fully exploit the inherent task-level parallelism and satisfy the stringent timing requirements. We propose the Parallelism Graph to capture the task-level parallelism of the application and transform the mapping problem to a graph partitioning problem. The graph partitioning problem is formulated as an Integer Linear Programming problem, which is solved optimally using the ILP solver. To reduce the complexity, a two-step local search algorithm, i.e., the greedy partition and refinement algorithm, is proposed. Since one-shot heuristics cannot guarantee the solution quality, evolutionary algorithms are widely used to search the solution space such that better results can be found. We also integrate the idea of parallelism enhancement into the genetic algorithm and propose a hybrid genetic algorithm to improve the performance. Sets of synthesized Synchronous Data Flow Graphs and some practical applications are used to evaluate the performance of the proposed algorithms. Experiment results demonstrate that the proposed algorithms outperform available algorithms. Parallelism graph for modeling the degree of parallelism.The algorithm for constructing the parallelism graph.An ILP model for solving the mapping problem based on the parallelism graph.A heuristic for solving the mapping problem based on the parallelism graph.A hybrid genetic algorithm integrating the concept of parallelism enhancement.
Year
DOI
Venue
2017
10.1016/j.jpdc.2016.11.012
J. Parallel Distrib. Comput.
Keywords
Field
DocType
Synchronous dataflow graph,Multiprocessor,Mapping,Graph partition,Genetic algorithm
Instruction-level parallelism,Implicit parallelism,Computer science,Task parallelism,Parallel computing,Theoretical computer science,Data parallelism,Scalable parallelism,Local search (optimization),Graph partition,Genetic algorithm,Distributed computing
Journal
Volume
Issue
ISSN
101
C
0743-7315
Citations 
PageRank 
References 
5
0.45
18
Authors
5
Name
Order
Citations
PageRank
Qi Tang14014.11
Twan Basten21833132.45
Marc Geilen3134684.30
Sander Stuijk4107870.45
Jibo Wei541944.40