Polyhedral-based data reuse optimization for configurable computing

FPGA(2013)

引用 221|浏览382
暂无评分
摘要
Many applications, such as medical imaging, generate intensive data traffic between the FPGA and off-chip memory. Significant improvements in the execution time can be achieved with effective utilization of on-chip (scratchpad) memories, associated with careful software-based data reuse and communication scheduling techniques. We present a fully automated C-to-FPGA framework to address this problem. Our framework effectively implements data reuse through aggressive loop transformation-based program restructuring. In addition, our proposed framework automatically implements critical optimizations for performance such as task-level parallelization, loop pipelining, and data prefetching. We leverage the power and expressiveness of the polyhedral compilation model to develop a multi-objective optimization system for off-chip communications management. Our technique can satisfy hardware resource constraints (scratchpad size) while still aggressively exploiting data reuse. Our approach can also be used to reduce the on-chip buffer size subject to bandwidth constraint. We also implement a fast design space exploration technique for effective optimization of program performance using the Xilinx high-level synthesis tool.
更多
查看译文
关键词
effective optimization,loop pipelining,aggressive loop,communication scheduling technique,configurable computing,c-to-fpga framework,reuse optimization,proposed framework,polyhedral-based data,data reuse,intensive data traffic,careful software-based data reuse,effective utilization,high level synthesis
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