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      QUIDAM: A Framework for Quantization-Aware DNN Accelerator and Model Co-Exploration

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          Abstract

          As the machine learning and systems communities strive to achieve higher energy-efficiency through custom deep neural network (DNN) accelerators, varied precision or quantization levels, and model compression techniques, there is a need for design space exploration frameworks that incorporate quantization-aware processing elements into the accelerator design space while having accurate and fast power, performance, and area models. In this work, we present QUIDAM, a highly parameterized quantization-aware DNN accelerator and model co-exploration framework. Our framework can facilitate future research on design space exploration of DNN accelerators for various design choices such as bit precision, processing element type, scratchpad sizes of processing elements, global buffer size, number of total processing elements, and DNN configurations. Our results show that different bit precisions and processing element types lead to significant differences in terms of performance per area and energy. Specifically, our framework identifies a wide range of design points where performance per area and energy varies more than 5x and 35x, respectively. With the proposed framework, we show that lightweight processing elements achieve on par accuracy results and up to 5.7x more performance per area and energy improvement when compared to the best INT16 based implementation. Finally, due to the efficiency of the pre-characterized power, performance, and area models, QUIDAM can speed up the design exploration process by 3-4 orders of magnitude as it removes the need for expensive synthesis and characterization of each design.

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          Author and article information

          Journal
          30 June 2022
          Article
          2206.15463
          ce802e1c-e572-48d8-929f-b1cefd66e08f

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          25 pages, 12 figures. arXiv admin note: substantial text overlap with arXiv:2205.13045, arXiv:2205.08648
          cs.AR cs.LG

          Artificial intelligence,Hardware architecture
          Artificial intelligence, Hardware architecture

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