Abstract
AbstractNew developments in hardware-based ‘accelerators’ range from electronic tensor cores and memristor-based arrays to photonic implementations. The goal of these approaches is to handle the exponentially growing computational load of machine learning, which currently requires the doubling of hardware capability approximately every 3.5 months. One solution is increasing the data dimensionality that is processable by such hardware. Although two-dimensional data processing by multiplexing space and wavelength has been previously reported, the use of three-dimensional processing has not yet been implemented in hardware. In this paper, we introduce the radio-frequency modulation of photonic signals to increase parallelization, adding an additional dimension to the data alongside spatially distributed non-volatile memories and wavelength multiplexing. We leverage higher-dimensional processing to configure such a system to an architecture compatible with edge computing frameworks. Our system achieves a parallelism of 100, two orders higher than implementations using only the spatial and wavelength degrees of freedom. We demonstrate this by performing a synchronous convolution of 100 clinical electrocardiogram signals from patients with cardiovascular diseases, and constructing a convolutional neural network capable of identifying patients at sudden death risk with 93.5% accuracy.
Funder
EC | Horizon 2020 Framework Programme
Agency for Science, Technology and Research
A*Star International Fellowship
Publisher
Springer Science and Business Media LLC
Subject
Atomic and Molecular Physics, and Optics,Electronic, Optical and Magnetic Materials
Reference57 articles.
1. Statista Research Department. Amount of data created, consumed, and stored 2010-2020, with forecasts to 2025. Statista https://www.statista.com/statistics/871513/worldwide-data-created/ (2022).
2. Zhou, L., Pan, S., Wang, J. & Vasilakos, A. V. Machine learning on big data: opportunities and challenges. Neurocomputing 237, 350–361 (2017).
3. Lecun, Y., Bengio, Y. & Hinton, G. Deep learning. Nature 521, 436–444 (2015).
4. Iigaya, K., Yi, S., Wahle, I. A., Tanwisuth, K. & O’Doherty, J. P. Aesthetic preference for art can be predicted from a mixture of low- and high-level visual features. Nat. Hum. Behav. 5, 743–755 (2021).
5. Han, C. et al. Speaker-independent auditory attention decoding without access to clean speech sources. Sci. Adv. 5, eaav6134 (2019).
Cited by
23 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献