The Promise of Analog Deep Learning: Recent Advances, Challenges and Opportunities
Aditya Datar, Pramit Saha

TL;DR
This paper reviews recent progress, challenges, and opportunities in analog deep learning, highlighting its potential for future applications and current limitations in scalability and practical deployment.
Contribution
It provides a comprehensive analysis of eight analog deep learning methods, comparing their accuracy, speed, energy efficiency, and application domains.
Findings
Analog deep learning shows great future potential.
Most current methods are proof-of-concept, not scalable.
Significant challenges remain for large-scale deployment.
Abstract
Much of the present-day Artificial Intelligence (AI) utilizes artificial neural networks, which are sophisticated computational models designed to recognize patterns and solve complex problems by learning from data. However, a major bottleneck occurs during a device's calculation of weighted sums for forward propagation and optimization procedure for backpropagation, especially for deep neural networks, or networks with numerous layers. Exploration into different methods of implementing neural networks is necessary for further advancement of the area. While a great deal of research into AI hardware in both directions, analog and digital implementation widely exists, much of the existing survey works lacks discussion on the progress of analog deep learning. To this end, we attempt to evaluate and specify the advantages and disadvantages, along with the current progress with regards to…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Neural Networks and Applications
MethodsFocus
