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Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D

Publication ,  Conference
Chen, F; Song, L; Li, H; Chen, Y
Published in: Proceedings -Design, Automation and Test in Europe, DATE
February 1, 2021

Resistive memory (ReRAM) based Deep Neural Network (DNN) accelerators have achieved state-of-the-art DNN inference throughput. However, the power efficiency of such resistive accelerators is greatly limited by their peripheral circuitry including analog-to-digital converters (ADCs), digital-to-analog converters (DACs), SRAM registers, and eDRAM buffers. These power-hungry components consume 87% of the total system power, despite of the high power efficiency of ReRAM computing cores. In this paper, we propose Marvel, a monolithic 3D stacked resistive DNN accelerator, which consists of carbon nanotube field-effect transistors (CNFETs) based low-power ADC/DACs, CNFET logic, CNFET SRAM, and high-density global buffers implemented by cross-point Spin Transfer Torque Magnetic RAM (STT-MRAM). To compensate for the loss of inference throughput that is incurred by the slow CNFET ADCs, we propose to integrate more ADC layers into Marvel. Unlike the CMOS-based ADCs that can only be implemented in the bottom layer of the 3D structure, multiple CNFET layers can be implemented using a monolithic 3D stacking technique. Compared to prior ReRAM-based DNN accelerators, on average, Marvel achieves the same inference throughput with 4.5× improvement on performance per Watt. We also demonstrated that increasing the number of integration layers enables Marvelto further achieve 2× inference throughput with 7.6× improved power efficiency.

Duke Scholars

Published In

Proceedings -Design, Automation and Test in Europe, DATE

DOI

ISSN

1530-1591

ISBN

9783981926354

Publication Date

February 1, 2021

Volume

2021-February

Start / End Page

1240 / 1245
 

Citation

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Chen, F., Song, L., Li, H., & Chen, Y. (2021). Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D. In Proceedings -Design, Automation and Test in Europe, DATE (Vol. 2021-February, pp. 1240–1245). https://doi.org/10.23919/DATE51398.2021.9474208
Chen, F., L. Song, H. Li, and Y. Chen. “Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D.” In Proceedings -Design, Automation and Test in Europe, DATE, 2021-February:1240–45, 2021. https://doi.org/10.23919/DATE51398.2021.9474208.
Chen F, Song L, Li H, Chen Y. Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D. In: Proceedings -Design, Automation and Test in Europe, DATE. 2021. p. 1240–5.
Chen, F., et al. “Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D.” Proceedings -Design, Automation and Test in Europe, DATE, vol. 2021-February, 2021, pp. 1240–45. Scopus, doi:10.23919/DATE51398.2021.9474208.
Chen F, Song L, Li H, Chen Y. Marvel: A Vertical Resistive Accelerator for Low-Power Deep Learning Inference in Monolithic 3D. Proceedings -Design, Automation and Test in Europe, DATE. 2021. p. 1240–1245.

Published In

Proceedings -Design, Automation and Test in Europe, DATE

DOI

ISSN

1530-1591

ISBN

9783981926354

Publication Date

February 1, 2021

Volume

2021-February

Start / End Page

1240 / 1245