Nonvolatile Spintronic Memory Cells for Neural Networks

05/29/2019
by   Andrew W. Stephan, et al.
0

A new spintronic nonvolatile memory cell analogous to 1T DRAM with non-destructive read is proposed. The cells can be used as neural computing units. A dual-circuit neural network architecture is proposed to leverage these devices against the complex operations involved in convolutional networks. Simulations based on HSPICE and Matlab were performed to study the performance of this architecture when classifying images as well as the effect of varying the size and stability of the nanomagnets. The spintronic cells outperform a purely charge-based implementation of the same network, consuming about 100 pJ total per image processed.

READ FULL TEXT

page 1

page 4

research
10/04/2022

Analysis of the performance of U-Net neural networks for the segmentation of living cells

The automated analysis of microscopy images is a challenge in the contex...
research
01/28/2012

Cognitive Memory Network

A resistive memory network that has no crossover wiring is proposed to o...
research
12/08/2014

Cells in Multidimensional Recurrent Neural Networks

The transcription of handwritten text on images is one task in machine l...
research
02/01/2019

Hybrid Cell Assignment and Sizing for Power, Area, Delay Product Optimization of SRAM Arrays

Memory accounts for a considerable portion of the total power budget and...
research
03/30/2022

STeP-CiM: Strain-enabled Ternary Precision Computation-in-Memory based on Non-Volatile 2D Piezoelectric Transistors

We propose 2D Piezoelectric FET (PeFET) based compute-enabled non-volati...
research
06/02/2010

Emergence of Complex-Like Cells in a Temporal Product Network with Local Receptive Fields

We introduce a new neural architecture and an unsupervised algorithm for...
research
08/23/2019

Image based cellular contractile force evaluation with small-world network inspired CNN: SW-UNet

We propose an image-based cellular contractile force evaluation method u...

Please sign up or login with your details

Forgot password? Click here to reset