最上等的
位(键)
张量(固有定义)
计算机科学
物理
光学
数学
计算机安全
方位角
纯数学
作者
Shifan Chen,Yixuan Zheng,Yifu Xu,Xiaotian Zhu,Sirui Huang,Shuai Wang,Xiaoyan Xu,Chan Xia,Zhihui Liu,Chaoran Huang,Roberto Morandotti,Sai T. Chu,Brent E. Little,Yuyang Liu,Yunping Bai,David Moss,Xingyuan Xu,Kun Xu
标识
DOI:10.1002/lpor.202401975
摘要
Abstract Tensor convolution is a fundamental operation in convolutional neural networks, especially for processing tensors, which are prevalent in real‐world applications. Current methods often convert tensor convolutions into matrix multiplications, leading to data replication, additional memory usage and increased hardware complexity. Here, a high‐bit‐efficiency optical tensor convolution accelerator with reduced data redundancy and lower memory consumption is presented. The bit‐efficiency of the optical tensor convolution accelerator is first explored, significantly improving its effective computing power by utilizing the spatial dimension. Consequently, the optical tensor convolutional accelerator operates at speeds exceeding 3 Tera Operations Per Second (TOPS)—the fastest single‐kernel optical convolutional accelerator to date, to the best of authors' knowledge. Its performance is validated on handwritten digit recognition and histopathologic cancer detection tasks, achieving 93.8% and 77% accuracy, respectively, closely matching in‐silico results. This approach simultaneously multiplexes the physical dimensions—wavelength, time, and space—and leverages the parallelism and high throughput of light, enabling efficient optical processing of tensor data with significant computational power.
科研通智能强力驱动
Strongly Powered by AbleSci AI