Resistive switching memory (RRAM) is considered as one of the most promising devices for parallel computing solutions that may overcome the von Neumann bottleneck of today's electronic systems. However, the existing RRAM-based parallel computing architectures suffer from practical problems such as device variations and extra computing circuits. In this work, we propose a novel parallel computing architecture for pattern recognition by implementing k-nearest neighbor classification on metal-oxide RRAM crossbar arrays. Metal-oxide RRAM with gradual RESET behaviors is chosen as both the storage and computing components. The proposed architecture is tested by the MNIST database. High speed (similar to 100 ns per example) and high recogniti...
The modern-day computing technologies are continuously undergoing a rapid changing landscape; thus, ...
AbstractThis paper proposes a parallel programming scheme for the cross-point array with resistive r...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...
Utilizing the binary RRAM devices, a hardware implemented network based on the modified k-nearest ne...
Abstract—The matrix-vector multiplication is the key operation for many computationally intensive al...
Resistive switching behaviors of oxide-based resistive random access memory (RRAM) and the applicati...
With the continuous scaling of transistor devices reaching their physical limits, emerging non-volat...
The Internet data has reached exa-scale (1018 bytes), which has introduced emerging need to re-exami...
Devices that exhibit resistive switching are promising components for future nanoelectronics with ap...
As the demand for processing artificial intelligence (AI), big data, and cognitive tasks increases, ...
Abstract A binary spike-time-dependent plasticity (STDP) protocol based on one resistive-switching r...
Oxide-based resistive random access memory(RRAM) has been widely studied as the promising candidate ...
Training and recognition with neural networks generally require high throughput, high energy efficie...
Pattern recognition as a computing task is very well suited for machine learning algorithms utilizin...
Abstract—Approximate computing is a promising design paradigm for better performance and power effic...
The modern-day computing technologies are continuously undergoing a rapid changing landscape; thus, ...
AbstractThis paper proposes a parallel programming scheme for the cross-point array with resistive r...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...
Utilizing the binary RRAM devices, a hardware implemented network based on the modified k-nearest ne...
Abstract—The matrix-vector multiplication is the key operation for many computationally intensive al...
Resistive switching behaviors of oxide-based resistive random access memory (RRAM) and the applicati...
With the continuous scaling of transistor devices reaching their physical limits, emerging non-volat...
The Internet data has reached exa-scale (1018 bytes), which has introduced emerging need to re-exami...
Devices that exhibit resistive switching are promising components for future nanoelectronics with ap...
As the demand for processing artificial intelligence (AI), big data, and cognitive tasks increases, ...
Abstract A binary spike-time-dependent plasticity (STDP) protocol based on one resistive-switching r...
Oxide-based resistive random access memory(RRAM) has been widely studied as the promising candidate ...
Training and recognition with neural networks generally require high throughput, high energy efficie...
Pattern recognition as a computing task is very well suited for machine learning algorithms utilizin...
Abstract—Approximate computing is a promising design paradigm for better performance and power effic...
The modern-day computing technologies are continuously undergoing a rapid changing landscape; thus, ...
AbstractThis paper proposes a parallel programming scheme for the cross-point array with resistive r...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...