Search Results for author: Christopher H. Bennett

Found 12 papers, 0 papers with code

Shape-Dependent Multi-Weight Magnetic Artificial Synapses for Neuromorphic Computing

no code implementations22 Nov 2021 Thomas Leonard, Samuel Liu, Mahshid Alamdar, Can Cui, Otitoaleke G. Akinola, Lin Xue, T. Patrick Xiao, Joseph S. Friedman, Matthew J. Marinella, Christopher H. Bennett, Jean Anne C. Incorvia

In neuromorphic computing, artificial synapses provide a multi-weight conductance state that is set based on inputs from neurons, analogous to the brain.

On the Accuracy of Analog Neural Network Inference Accelerators

no code implementations3 Sep 2021 T. Patrick Xiao, Ben Feinberg, Christopher H. Bennett, Venkatraman Prabhakar, Prashant Saxena, Vineet Agrawal, Sapan Agarwal, Matthew J. Marinella

Specialized accelerators have recently garnered attention as a method to reduce the power consumption of neural network inference.

Controllable reset behavior in domain wall-magnetic tunnel junction artificial neurons for task-adaptable computation

no code implementations8 Jan 2021 Samuel Liu, Christopher H. Bennett, Joseph S. Friedman, Matthew J. Marinella, David Paydarfar, Jean Anne C. Incorvia

Neuromorphic computing with spintronic devices has been of interest due to the limitations of CMOS-driven von Neumann computing.

Mesoscale and Nanoscale Physics

Domain Wall Leaky Integrate-and-Fire Neurons with Shape-Based Configurable Activation Functions

no code implementations11 Nov 2020 Wesley H. Brigner, Naimul Hassan, Xuan Hu, Christopher H. Bennett, Felipe Garcia-Sanchez, Can Cui, Alvaro Velasquez, Matthew J. Marinella, Jean Anne C. Incorvia, Joseph S. Friedman

This work proposes modifications to these spintronic neurons that enable configuration of the activation functions through control of the shape of a magnetic domain wall track.

Evaluating complexity and resilience trade-offs in emerging memory inference machines

no code implementations25 Feb 2020 Christopher H. Bennett, Ryan Dellana, T. Patrick Xiao, Ben Feinberg, Sapan Agarwal, Suma Cardwell, Matthew J. Marinella, William Severa, Brad Aimone

Neuromorphic-style inference only works well if limited hardware resources are maximized properly, e. g. accuracy continues to scale with parameters and complexity in the face of potential disturbance.

CMOS-Free Multilayer Perceptron Enabled by Four-Terminal MTJ Device

no code implementations3 Feb 2020 Wesley H. Brigner, Naimul Hassan, Xuan Hu, Christopher H. Bennett, Felipe Garcia-Sanchez, Matthew J. Marinella, Jean Anne C. Incorvia, Joseph S. Friedman

Neuromorphic computing promises revolutionary improvements over conventional systems for applications that process unstructured information.

Spatio-temporal Learning with Arrays of Analog Nanosynapses

no code implementations12 Sep 2017 Christopher H. Bennett, Damien Querlioz, Jacques-Olivier Klein

By translating the database into the time domain and using variable integration windows, up to 95% classification accuracy is achieved.

Exploiting the Short-term to Long-term Plasticity Transition in Memristive Nanodevice Learning Architectures

no code implementations27 Jun 2016 Christopher H. Bennett, Selina La Barbera, Adrien F. Vincent, Fabien Alibart, Damien Querlioz

This approach outperforms a conventional ELM-inspired system when the first layer is imprinted before training and testing, and especially so when variability in device timing evolution is considered: variability is therefore transformed from an issue to a feature.

Classification General Classification

Cannot find the paper you are looking for? You can Submit a new open access paper.