2022
DOI: 10.48550/arxiv.2205.13045
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QADAM: Quantization-Aware DNN Accelerator Modeling for Pareto-Optimality

Abstract: As the machine learning and systems communities strive to achieve higher energy-efficiency through custom deep neural network (DNN) accelerators, varied bit precision or quantization levels, there is a need for design space exploration frameworks that incorporate quantization-aware processing elements (PE) into the accelerator design space while having accurate and fast power, performance, and area models. In this work, we present QADAM, a highly parameterized quantizationaware power, performance, and area mod… Show more

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