Dynamic Optimization of On-Chip Memories for HLS Targeting Many-Accelerator Platforms
Many-accelerator platforms have been introduced for maximizing FPGA's throughput. However, as the high saturation rate of the FPGA's on-chip memories limits the number of synthesized accelerators, frameworks for Dynamic Memory Management (DMM) that allow the synthesized designs to allocate...
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Veröffentlicht in: | IEEE computer architecture letters 2022-07, Vol.21 (2), p.41-44 |
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Sprache: | eng |
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Zusammenfassung: | Many-accelerator platforms have been introduced for maximizing FPGA's throughput. However, as the high saturation rate of the FPGA's on-chip memories limits the number of synthesized accelerators, frameworks for Dynamic Memory Management (DMM) that allow the synthesized designs to allocate/de-allocate on-chip memory resources during run-time have been suggested. Although, those frameworks manage to increase the accelerators' density by minimizing the utilized memory resources, the parallel execution of many-accelerators may cause severe memory fragmentation and thus memory allocation failures. In this work, a framework that optimizes the memory usage by performing memory defragmentation operations in HLS many-accelerator architectures that share on-chip memories is proposed. Experimental results highlight the effectiveness of the proposed solution to eliminate memory allocation failures due to memory fragmentation, reduce memory allocation failures up to 32% on average and decrease the memory size requirements up to 5% with controllable latency and resource utilization overhead. |
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ISSN: | 1556-6056 1556-6064 |
DOI: | 10.1109/LCA.2022.3190048 |