In-memory computing using electrical and photonic memory devices
Abu Sebastian
CLEO/Europe-EQEC 2019
Traditional von Neumann computing systems involve separate processing and memory units. However, data movement is costly in terms of time and energy and this problem is aggravated by the recent explosive growth in highly data-centric applications related to artificial intelligence. This calls for a radical departure from the traditional systems and one such non-von Neumann computational approach is in-memory computing. Hereby certain computational tasks are performed in place in the memory itself by exploiting the physical attributes of the memory devices. Both charge-based and resistance-based memory devices are being explored for in-memory computing. In this Review, we provide a broad overview of the key computational primitives enabled by these memory devices as well as their applications spanning scientific computing, signal processing, optimization, machine learning, deep learning and stochastic computing.
Abu Sebastian
CLEO/Europe-EQEC 2019
Manuel Le Gallo, Tomas Tuma, et al.
ESSDERC 2016
Manuel Le Gallo, Abu Sebastian, et al.
IEDM 2017
Manuel Le Gallo, Abu Sebastian
Journal of Physics D: Applied Physics