↓ Skip to main content

PLOS

AHaH Computing–From Metastable Switches to Attractors to Machine Learning

Overview of attention for article published in PLOS ONE, February 2014
Altmetric Badge

Mentioned by

twitter
49 X users
patent
2 patents
facebook
3 Facebook pages
wikipedia
1 Wikipedia page
googleplus
6 Google+ users
reddit
4 Redditors
video
1 YouTube creator

Citations

dimensions_citation
38 Dimensions

Readers on

mendeley
132 Mendeley
Title
AHaH Computing–From Metastable Switches to Attractors to Machine Learning
Published in
PLOS ONE, February 2014
DOI 10.1371/journal.pone.0085175
Pubmed ID
Authors

Michael Alexander Nugent, Timothy Wesley Molter

Abstract

Modern computing architecture based on the separation of memory and processing leads to a well known problem called the von Neumann bottleneck, a restrictive limit on the data bandwidth between CPU and RAM. This paper introduces a new approach to computing we call AHaH computing where memory and processing are combined. The idea is based on the attractor dynamics of volatile dissipative electronics inspired by biological systems, presenting an attractive alternative architecture that is able to adapt, self-repair, and learn from interactions with the environment. We envision that both von Neumann and AHaH computing architectures will operate together on the same machine, but that the AHaH computing processor may reduce the power consumption and processing time for certain adaptive learning tasks by orders of magnitude. The paper begins by drawing a connection between the properties of volatility, thermodynamics, and Anti-Hebbian and Hebbian (AHaH) plasticity. We show how AHaH synaptic plasticity leads to attractor states that extract the independent components of applied data streams and how they form a computationally complete set of logic functions. After introducing a general memristive device model based on collections of metastable switches, we show how adaptive synaptic weights can be formed from differential pairs of incremental memristors. We also disclose how arrays of synaptic weights can be used to build a neural node circuit operating AHaH plasticity. By configuring the attractor states of the AHaH node in different ways, high level machine learning functions are demonstrated. This includes unsupervised clustering, supervised and unsupervised classification, complex signal prediction, unsupervised robotic actuation and combinatorial optimization of procedures-all key capabilities of biological nervous systems and modern machine learning algorithms with real world application.

X Demographics

X Demographics

The data shown below were collected from the profiles of 49 X users who shared this research output. Click here to find out more about how the information was compiled.
Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 132 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 4 3%
Russia 2 2%
Belgium 1 <1%
Finland 1 <1%
United Kingdom 1 <1%
Luxembourg 1 <1%
Unknown 122 92%

Demographic breakdown

Readers by professional status Count As %
Researcher 27 20%
Student > Ph. D. Student 25 19%
Student > Master 16 12%
Student > Bachelor 13 10%
Other 8 6%
Other 21 16%
Unknown 22 17%
Readers by discipline Count As %
Engineering 41 31%
Computer Science 26 20%
Physics and Astronomy 6 5%
Agricultural and Biological Sciences 5 4%
Neuroscience 5 4%
Other 24 18%
Unknown 25 19%