Title :
Program Mapping onto Network Processors by Recursive Bipartitioning and Refining
Author :
Yu, Jia ; Yao, Jingnan ; Bhuyan, Laxmi ; Yang, Jun
Author_Institution :
Univ. of California Riverside, Riverside
Abstract :
Mapping packet processing applications onto embedded network processors (NP) is a challenging task due to the unique constraints of NP systems and the characteristics of network application domains. A remarkable difference with general multiprocessor task scheduling is that NPs are often programmed into a hybrid parallel and pipeline topology. In this paper, we introduce a multilevel balancing and refining algorithm for NP program mapping. We use a divide- and-conquer approach to recursively bipartition the task graph into disjoint subdomains. At each level of bipartition, the processing resources will be co-allocated so that an estimation of throughput can be derived. The bipartition continues until the code of the tasks can be fit into the instruction memory of processing elements. Then the algorithm iteratively refines the solution by migrating tasks from the bottleneck stage to other stages. The performance of our scheme is evaluated with a suite of NP benchmarks using SUIF/Machine SUIF compiler and Intel IXA Architecture Tool. The throughput improvement is significant: average throughput is increased by 20%, and the maximum is 108%.
Keywords :
computational complexity; divide and conquer methods; optimisation; pipeline processing; processor scheduling; Intel IXA Architecture Tool; SUIF/Machine SUIF compiler; divide- and-conquer approach; load balanced pipeline; multilevel balancing; network processors; program mapping; recursive bipartitioning; refining algorithm; Delay; Iterative algorithms; Logic; Network topology; Permission; Pipelines; Processor scheduling; Routing; Throughput; Transcoding; Algorithms; Network Processors; Performance; Program Mapping;
Conference_Titel :
Design Automation Conference, 2007. DAC '07. 44th ACM/IEEE
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-59593-627-1