Towards a Multi-array Architecture for Accelerating Large-scale Matrix Multiplication on FPGAs

2018 IEEE International Symposium on Circuits and Systems (ISCAS)(2018)

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摘要
Large-scale floating-point matrix multiplication is a fundamental kernel in many scientific and engineering applications. Most existing work only focus on accelerating matrix multiplication on FPGA by adopting a linear systolic array. This paper towards the extension of this architecture by proposing a scalable and highly configurable multi-array architecture. In addition, we propose a work-stealing scheme to ensure the equality in the workload partition among multiple linear arrays. Furthermore, an analytical model is developed to determine the optimal design parameters. Experiments on a real-life convolutional neural network (CNN) show that we can obtain the optimal extension of the linear array architecture.
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关键词
work-stealing scheme,multiple linear arrays,linear array architecture,multiarray architecture,large-scale floating-point matrix multiplication,scientific engineering applications,linear systolic array,FPGA,convolutional neural network,CNN
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