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Architecture, Dataflow and Physical Design Implications of 3D-ICs for DNN-Accelerators

机译:用于DNN-Accelerator的3D-ICS的体系结构,数据流和物理设计含义

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The everlasting demand for higher computing power for deep neural networks (DNNs) drives the development of parallel computing architectures. 3D integration, in which chips are integrated and connected vertically, can further increase performance because it introduces another level of spatial parallelism. Therefore, we analyze dataflows, performance, area, power and temperature of such 3D-DNN-accelerators. Monolithic and TSV-based stacked 3D-ICs are compared against 2D-ICs. We identify workload properties and architectural parameters for efficient 3D-ICs and achieve up to 9. 14x speedup of 3Dvs.2D. We discuss area-performance trade-offs. We demonstrate applicability as the 3D-IC draws similar power as 2D-ICs and is not thermal limited.
机译:深度神经网络(DNNS)更高计算能力的永恒需求驱动了并行计算架构的开发。 3D集成,其中芯片垂直集成并连接,可以进一步提高性能,因为它引入了另一个水平的空间并行性。 因此,我们分析了这种3D-DNN加速器的数据流,性能,面积,功率和温度。 将单片和基于TSV的堆叠3D-IC与2D-IC进行比较。 我们识别工作负载属性和架构参数,以实现高效的3D-IC,最多可以实现3.3dvs的9.14倍。 我们讨论面积性能权衡。 我们展示适用性,因为3D-IC将类似的电源绘制为2D-IC,而不是热量有限。

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