Memristive Computing for Efficient Inference on Resource Constrained Devices
This is an incremental review paper proposing an ideology for improving deep learning on edge devices through memristive computing.
The paper reviews how memristive technology, specifically resistive RAM memory, can advance deep learning inference on resource-constrained edge devices by addressing deployment challenges caused by increasing neural network complexity.
The advent of deep learning has resulted in a number of applications which have transformed the landscape of the research area in which it has been applied. However, with an increase in popularity, the complexity of classical deep neural networks has increased over the years. As a result, this has leads to considerable problems during deployment on devices with space and time constraints. In this work, we perform a review of the present advancements in non-volatile memory and how the use of resistive RAM memory, particularly memristors, can help to progress the state of research in deep learning. In other words, we wish to present an ideology that advances in the field of memristive technology can greatly influence and impact deep learning inference on edge devices.