BPLight-CNN: A Photonics-Based Backpropagation Accelerator for Deep Learning

Author:

Dang Dharanidhar1ORCID,Chittamuru Sai Vineel Reddy2,Pasricha Sudeep3,Mahapatra Rabi4,Sahoo Debashis1

Affiliation:

1. UC San Diego, La Jolla, CA

2. Micron Technology, Austin, Texas

3. Colorado State University, Fort Collins, CO

4. Texas A&M University, College Station, Texas

Abstract

Training deep learning networks involves continuous weight updates across the various layers of the deep network while using a backpropagation (BP) algorithm. This results in expensive computation overheads during training. Consequently, most deep learning accelerators today employ pretrained weights and focus only on improving the design of the inference phase. The recent trend is to build a complete deep learning accelerator by incorporating the training module. Such efforts require an ultra-fast chip architecture for executing the BP algorithm. In this article, we propose a novel photonics-based backpropagation accelerator for high-performance deep learning training. We present the design for a convolutional neural network (CNN), BPLight-CNN , which incorporates the silicon photonics-based backpropagation accelerator. BPLight-CNN is a first-of-its-kind photonic and memristor-based CNN architecture for end-to-end training and prediction. We evaluate BPLight-CNN using a photonic CAD framework (IPKISS) on deep learning benchmark models, including LeNet and VGG-Net. The proposed design achieves (i) at least 34× speedup, 34× improvement in computational efficiency, and 38.5× energy savings during training; and (ii) 29× speedup, 31× improvement in computational efficiency, and 38.7× improvement in energy savings during inference compared with the state-of-the-art designs. All of these comparisons are done at a 16-bit resolution, and BPLight-CNN achieves these improvements at a cost of approximately 6% lower accuracy compared with the state-of-the-art.

Funder

American Association of Immunologists

College of Engineering, Texas A&M University

Publisher

Association for Computing Machinery (ACM)

Subject

Electrical and Electronic Engineering,Hardware and Architecture,Software

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1. Inverse Design of Continuous Domain Bound State All-Dielectric Metasurface Based on Deep Learning;2024 22nd International Conference on Optical Communications and Networks (ICOCN);2024-07-26

2. A review of emerging trends in photonic deep learning accelerators;Frontiers in Physics;2024-07-15

3. A Comprehensive Review of Convolutional Neural Networks for Defect Detection in Industrial Applications;IEEE Access;2024

4. Design of Sparsity Optimized Photonic Deep Learning Accelerators;Embedded Machine Learning for Cyber-Physical, IoT, and Edge Computing;2023-10-10

5. STADIA: Photonic Stochastic Gradient Descent for Neural Network Accelerators;ACM Transactions on Embedded Computing Systems;2023-09-09

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