Memristor-based binarized spiking neural networks: Challenges and applications
Memristive arrays are a natural fit to implement spiking neural network (SNN) acceleration.
Representing information as digital spiking events can improve noise margins and tolerance …
Representing information as digital spiking events can improve noise margins and tolerance …
Filament-free memristors for computing
Memristors have attracted increasing attention due to their tremendous potential to
accelerate data-centric computing systems. The dynamic reconfiguration of memristive …
accelerate data-centric computing systems. The dynamic reconfiguration of memristive …
Exploring compute-in-memory architecture granularity for structured pruning of neural networks
Compute-in-Memory (CIM) implemented with Resistive-Random-Access-Memory (RRAM)
crossbars is a promising approach for Deep Neural Network (DNN) acceleration. As the …
crossbars is a promising approach for Deep Neural Network (DNN) acceleration. As the …
Safe, secure and trustworthy compute-in-memory accelerators
Abstract Compute-in-memory (CIM) accelerators based on emerging memory devices are of
potential use in edge artificial intelligence and machine learning applications due to their …
potential use in edge artificial intelligence and machine learning applications due to their …
Rm-ntt: An rram-based compute-in-memory number theoretic transform accelerator
As more cloud computing resources are used for machine learning training and inference
processes, privacy-preserving techniques that protect data from revealing at the cloud …
processes, privacy-preserving techniques that protect data from revealing at the cloud …
Columnar learning networks for multisensory spatiotemporal learning
Network features found in the brain may help implement more efficient and robust neural
networks. Spiking neural networks (SNNs) process spikes in the spatiotemporal domain and …
networks. Spiking neural networks (SNNs) process spikes in the spatiotemporal domain and …
Compute-in-memory technologies for deep learning acceleration
F Meng, WD Lu - IEEE Nanotechnology Magazine, 2024 - ieeexplore.ieee.org
Deep learning accelerators (DLAs) based on compute-in-memory (CIM) technologies have
been considered promising candidates to drastically improve the throughput and energy …
been considered promising candidates to drastically improve the throughput and energy …
WAGONN: Weight Bit Agglomeration in Crossbar Arrays for Reduced Impact of Interconnect Resistance on DNN Inference Accuracy
Deep neural network (DNN) accelerators employing crossbar arrays capable of in-memory
computing (IMC) are highly promising for neural computing platforms. However, in deeply …
computing (IMC) are highly promising for neural computing platforms. However, in deeply …
Analog image denoising with an adaptive memristive crossbar network
Noise in image sensors led to the development of a whole range of denoising filters. A noisy
image can become hard to recognize and often require several types of post-processing …
image can become hard to recognize and often require several types of post-processing …
[HTML][HTML] Perspective: Entropy-stabilized oxide memristors
A memristor array has emerged as a potential computing hardware for artificial intelligence
(AI). It has an inherent memory effect that allows information storage in the form of easily …
(AI). It has an inherent memory effect that allows information storage in the form of easily …