Breaking the scaling limits of analog computing

Energy Daily

Published

Boston MA (SPX) Dec 02, 2022

As machine-learning models become larger and more complex, they require faster and more energy-efficient hardware to perform computations. Conventional digital computers are struggling to keep up. An analog optical neural network could perform the same tasks as a digital one, such as image classification or speech recognition, but because computations are performed using light instead of e

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