Reconfiguration and Communication-Aware Task Scheduling for High-Performance Reconfigurable Computing

TRETS(2010)

引用 41|浏览13
暂无评分
摘要
High-performance reconfigurable computing involves acceleration of significant portions of an application using reconfigurable hardware. When the hardware tasks of an application cannot simultaneously fit in an FPGA, the task graph needs to be partitioned and scheduled into multiple FPGA configurations, in a way that minimizes the total execution time. This article proposes the Reduced Data Movement Scheduling (RDMS) algorithm that aims to improve the overall performance of hardware tasks by taking into account the reconfiguration time, data dependency between tasks, intertask communication as well as task resource utilization. The proposed algorithm uses the dynamic programming method. A mathematical analysis of the algorithm shows that the execution time would at most exceed the optimal solution by a factor of around 1.6, in the worst-case. Simulations on randomly generated task graphs indicate that RDMS algorithm can reduce interconfiguration communication time by 11% and 44% respectively, compared with two other approaches that consider data dependency and hardware resource utilization only. The practicality, as well as efficiency of the proposed algorithm over other approaches, is demonstrated by simulating a task graph from a real-life application - N-body simulation - along with constraints for bandwidth and FPGA parameters from existing high-performance reconfigurable computers. Experiments on SRC-6 are carried out to validate the approach.
更多
查看译文
关键词
execution time,task graph,algorithm shows,data dependency,communication-aware task scheduling,proposed algorithm,reconfigurable computing,hardware task,hardware resource utilization,reconfigurable hardware,high-performance reconfigurable computing,rdms algorithm,interconfiguration communication time,hardware task scheduling,mathematical analysis,resource utilization
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要