Nanotechnology Now – Press Release: CEA-Leti Reports Machine-Learning Breakthrough That Opens Way to Edge Learning: Article in Nature Electronics Details Method that Takes Advantage of RRAM Non-Idealities To Create Intelligent Systems that Have Potential Medical-Diagnostic Applications


Home > Press > CEA-Leti Reports Machine-Learning Breakthrough That Opens Way to Edge Learning: Article in Nature Electronics Details Method that Takes Advantage of RRAM Non-Idealities To Create Intelligent Systems that Have Potential Medical-Diagnostic Applications

Abstract:
CEA-Leti scientists have demonstrated a machine-learning technique exploiting what have been previously considered as “non-ideal” traits of resistive-RAM (RRAM) devices, overcoming barriers to developing RRAM-based edge-learning systems.

CEA-Leti Reports Machine-Learning Breakthrough That Opens Way to Edge Learning: Article in Nature Electronics Details Method that Takes Advantage of RRAM Non-Idealities To Create Intelligent Systems that Have Potential Medical-Diagnostic Applications


Grenoble, France | Posted on January 20th, 2021

Reported in a paper published in the January issue of Nature Electronics titled, “In-situ learning using intrinsic memristor variability via Markov chain Monte Carlo sampling”, the research team demonstrated how RRAM, or memristor, technology can be used to create intelligent systems that learn locally at the edge, independent of the cloud. The learning algorithms used in current RRAM-based edge approaches cannot be reconciled with device programming randomness, or variability, as well as other intrinsic non-idealities of the technology.

To get around that problem, the team developed a method that actively exploits that memristor randomness, implementing a Markov Chain Monte Carlo (MCMC) sampling learning algorithm in a fabricated chip that acts as a Bayesian machine-learning model.

The article notes that while machine learning provides the enabling models and algorithms for edge-learning systems, increased attention concerning how these algorithms map onto hardware is required to bring machine learning to the edge. Machine-learning models are normally trained using general purpose hardware based on a von Neumann architecture, which is unsuited for edge learning because of the energy required to continuously move information between separated processing and memory centers on-chip.

Intensive research in the microelectronics industry is currently focused on using RRAM as non-volatile analog devices in hardware-based artificial neural networks that can allow computation to be carried out in-memory, to drastically reduce these energy requirements. RRAM has been applied to in-memory implementations of backpropagation algorithms to implement in-situ learning on edge systems. However, because backpropogation requires high-precision memory elements, previous work has largely focused on how RRAM randomness can be mitigated – often necessitating energy-intensive techniques.

The CEA-Leti-based team’s breakthrough was an approach capable of leveraging this randomness, instead of trying to prevent it, and allowing in-situ learning to be realized in a highly efficient fashion through the application of nanosecond voltage pulses to nanoscale memory devices. This culminated in an extremely low-energy solution. The team explained that, relative to a CMOS implementation of its algorithm, the approach requires five orders of magnitude less energy. That is the rough equivalence of the difference in height between the tallest building in the world and a coin lying on the ground.

As a result, this approach is capable of bringing learning to edge-computing systems, which is impossible using existing commercial approaches. Such an application could be an implanted medical system that locally updates its operation based on the evolving state of a patient. To run a representative test of learning at the edge in such an environment, the team experimentally applied RRAM-based MCMC to train a multilayer Bayesian neural network to detect heart arrhythmias from electrocardiogram recordings – reporting a better detection rate than a standard neural network based on a von Neumann computing system.

“This highlights that, beyond being RRAM-compatible, Bayesian machine learning offers an alternative modelling method that appears well suited to the characteristics of edge learning,” the article says.

The team also applied their experimental system to solve further classification tasks including the diagnosis of malignant breast-tissue samples.

“Our system could be used as the foundation for the design and fabrication of a standalone and fully integrated RRAM-based MCMC sampling chip, for applications outside the laboratory,” the authors of the article conclude. That achievement will finally open the door to edge learning and an entirely new set of applications.

####

About CEA Leti
Leti, a technology research institute at CEA, is a global leader in miniaturization technologies enabling smart, energy-efficient and secure solutions for industry. Founded in 1967, CEA-Leti pioneers micro-& nanotechnologies, tailoring differentiating applicative solutions for global companies, SMEs and startups. CEA-Leti tackles critical challenges in healthcare, energy and digital migration. From sensors to data processing and computing solutions, CEA-Leti’s multidisciplinary teams deliver solid expertise, leveraging world-class pre-industrialization facilities. With a staff of more than 1,900, a portfolio of 3,100 patents, 10,000 sq. meters of cleanroom space and a clear IP policy, the institute is based in Grenoble, France, and has offices in Silicon Valley and Tokyo. CEA-Leti has launched 65 startups and is a

member of the Carnot Institutes network. Follow us on www.leti-cea.com and @CEA_Leti.

Technological expertise

CEA has a key role in transferring scientific knowledge and innovation from research to industry. This high-level technological research is carried out in particular in electronic and integrated systems, from microscale to nanoscale. It has a wide range of industrial applications in the fields of transport, health, safety and telecommunications, contributing to the creation of high-quality and competitive products.

For more information: www.cea.fr/english

For more information, please click here

Contacts:
Press Contact

Agency

+33 6 74 93 23 47

Copyright © CEA Leti

If you have a comment, please Contact us.

Issuers of news releases, not 7th Wave, Inc. or Nanotechnology Now, are solely responsible for the accuracy of the content.

Bookmark:
Delicious
Digg
Newsvine
Google
Yahoo
Reddit
Magnoliacom
Furl
Facebook

News and information

Boosting the efficiency of carbon capture and conversion systems: New design could speed reaction rates in electrochemical systems for pulling carbon out of power plant emissions January 25th, 2021

Arrowhead Pharmaceuticals Files IND for Phase 2b Study of ARO-ANG3 for Treatment of Mixed Dyslipidemia January 25th, 2021

Researchers develop new graphene nanochannel water filters January 22nd, 2021

Pioneering new technique could revolutionise super-resolution imaging systems January 22nd, 2021

Memristors

New insights into memristive devices by combining incipient ferroelectrics and graphene November 27th, 2020

Engineers put tens of thousands of artificial brain synapses on a single chip: The design could advance the development of small, portable AI devices June 8th, 2020

The concept of creating «brain-on-chip» revealed: A team of scientists is working to create brain-like memristive systems providing the highest degree of adaptability for implementing compact and efficient neural interfaces, new-generation robotics, artificial intelligence, perso May 29th, 2020

Thanks for the memory: NIST takes a deep look at memristors January 20th, 2018

Possible Futures

Boosting the efficiency of carbon capture and conversion systems: New design could speed reaction rates in electrochemical systems for pulling carbon out of power plant emissions January 25th, 2021

Arrowhead Pharmaceuticals Files IND for Phase 2b Study of ARO-ANG3 for Treatment of Mixed Dyslipidemia January 25th, 2021

Researchers develop new graphene nanochannel water filters January 22nd, 2021

Pioneering new technique could revolutionise super-resolution imaging systems January 22nd, 2021

Chip Technology

Bringing Atoms to a Standstill: NIST Miniaturizes Laser Cooling January January 21st, 2021

Scientists’ discovery is paving the way for novel ultrafast quantum computers January 15th, 2021

Conductive nature in crystal structures revealed at magnification of 10 million times: University of Minnesota study opens up possibilities for new transparent materials that conduct electricity January 15th, 2021

New way to control electrical charge in 2D materials: Put a flake on it January 15th, 2021

Discoveries

Boosting the efficiency of carbon capture and conversion systems: New design could speed reaction rates in electrochemical systems for pulling carbon out of power plant emissions January 25th, 2021

New technique builds super-hard metals from nanoparticles January 22nd, 2021

Squeezing a rock-star material could make it stable enough for solar cells: A promising lead halide perovskite is great at converting sunlight to electricity, but it breaks down at room temperature; now scientists have discovered how to stabilize it with pressure from a diamond a January 22nd, 2021

Researchers develop new graphene nanochannel water filters January 22nd, 2021

Announcements

Boosting the efficiency of carbon capture and conversion systems: New design could speed reaction rates in electrochemical systems for pulling carbon out of power plant emissions January 25th, 2021

Arrowhead Pharmaceuticals Files IND for Phase 2b Study of ARO-ANG3 for Treatment of Mixed Dyslipidemia January 25th, 2021

Researchers develop new graphene nanochannel water filters January 22nd, 2021

Pioneering new technique could revolutionise super-resolution imaging systems January 22nd, 2021

Artificial Intelligence

New super-resolution method reveals fine details without constantly needing to zoom in August 12th, 2020

Machine learning reveals recipe for building artificial proteins July 24th, 2020

Teaching physics to neural networks removes ‘chaos blindness’ June 19th, 2020

Engineers put tens of thousands of artificial brain synapses on a single chip: The design could advance the development of small, portable AI devices June 8th, 2020

Leave a Reply

Your email address will not be published. Required fields are marked *