Photonic Reconfigurable Accelerators for Efficient Inference of CNNs with Mixed-Sized Tensors
Sairam Sri Vatsavai, Ishan G Thakkar

TL;DR
This paper introduces a reconfigurable photonic accelerator design that adapts to mixed-sized CNN tensors, significantly improving speed and energy efficiency over previous fixed-layout MRR-based CNN accelerators.
Contribution
It proposes a novel reconfigurability method for MRR-based CNN accelerators, enhancing their flexibility and performance for diverse tensor sizes and CNN architectures.
Findings
Up to 1.8x FPS improvement
Up to 1.5x FPS/W efficiency gain
Enhanced hardware utilization for mixed-sized tensors
Abstract
Photonic Microring Resonator (MRR) based hardware accelerators have been shown to provide disruptive speedup and energy-efficiency improvements for processing deep Convolutional Neural Networks (CNNs). However, previous MRR-based CNN accelerators fail to provide efficient adaptability for CNNs with mixed-sized tensors. One example of such CNNs is depthwise separable CNNs. Performing inferences of CNNs with mixed-sized tensors on such inflexible accelerators often leads to low hardware utilization, which diminishes the achievable performance and energy efficiency from the accelerators. In this paper, we present a novel way of introducing reconfigurability in the MRR-based CNN accelerators, to enable dynamic maximization of the size compatibility between the accelerator hardware components and the CNN tensors that are processed using the hardware components. We classify the…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Photonic and Optical Devices · Model Reduction and Neural Networks
