Dmitri Nikonov
2019 Benchmarking Delay and Energy of Neural Inference Circuits DMITRI E. NIKONOV
Supplementary Materials for “Benchmarking Delay and Energy of Neural Inference Circuits”
A consistent and transparent methodology is proposed and used to benchmark this comprehensive set of options across
several application cases. Promising architecture/device combinations are identified.
Beyond CMOS computing with spin and polarization Sasikanth Manipatruni, Dmitri E. Nikonov and Ian A. Young
2018 Hybrid Piezoelectric-Magnetic Neurons: A Proposal for Energy-Efficient Machine Learning William Scott
Shannon-inspired Statistical Computing to Enable Spintronics
- Voltage and Energy-Delay Performance of Giant Spin Hall Effect Switching for Magnetic Memory and Logic Sasikanth Manipatruni
Coupled-Oscillator Associative Memory Array Operation for Pattern Recognition DMITRI E. NIKONOV
Intel
https://www.techspot.com/news/78859-intel-confirms-non-volatile-mram-produced-high-yield.html
https://www.eetimes.com/intel-says-finfet-based-embedded-mram-is-production-ready/