This paper presents a new computational framework to address the challenges in deeply scaled technologies by implementing stochastic computing (SC) using the Spiking Neural P (SN P) Systems. SC is well known for its high fault tolerance and its ability to compute complex mathematical operations using minimal amount of resources. However, one of the key issues for SC is data correlation. This computation can be abstracted and elegantly modeled by using SN P systems where the stochastic bit-stream can be generated through the neurons spiking. Furthermore, since SN P systems are not affected by data correlations, this effectively mitigate the accuracy issue in the ordinary SC circuitry. A new stochastic scaled addition realized using SN P syst...
Stochastic Computing (SC) is an alternative design paradigm particularly useful for applications whe...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...
Thesis (Ph.D.)--University of Washington, 2019The end of Dennard scaling and demands for energy effi...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
computing devices inspired by the structure and functioning of neural cells. The presence of unrelia...
[eng] Spiking Neural Networks, the last generation of Artificial Neural Networks, are characterized ...
Stochastic computing offers an alternative computing method to standard systems. Stochastic resonanc...
[eng] This paper presents a new methodology for the hardware implementation of neural networks (NNs)...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
Stochastic computing has shown promising results for low-power area-efficient hardware implementatio...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
Solving constraint satisfaction problems (CSPs) is a notoriously expensive computational task. Recen...
As advances in integrated circuit (IC) fabrication technology reduce feature sizes to dimensions on ...
This paper addresses a simple way for neural network hardware implementation based on probabilistic ...
Stochastic computing (SC) is an unconventional technique that has recently re-emerged as an attracti...
Stochastic Computing (SC) is an alternative design paradigm particularly useful for applications whe...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...
Thesis (Ph.D.)--University of Washington, 2019The end of Dennard scaling and demands for energy effi...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
computing devices inspired by the structure and functioning of neural cells. The presence of unrelia...
[eng] Spiking Neural Networks, the last generation of Artificial Neural Networks, are characterized ...
Stochastic computing offers an alternative computing method to standard systems. Stochastic resonanc...
[eng] This paper presents a new methodology for the hardware implementation of neural networks (NNs)...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
Stochastic computing has shown promising results for low-power area-efficient hardware implementatio...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
Solving constraint satisfaction problems (CSPs) is a notoriously expensive computational task. Recen...
As advances in integrated circuit (IC) fabrication technology reduce feature sizes to dimensions on ...
This paper addresses a simple way for neural network hardware implementation based on probabilistic ...
Stochastic computing (SC) is an unconventional technique that has recently re-emerged as an attracti...
Stochastic Computing (SC) is an alternative design paradigm particularly useful for applications whe...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...
Thesis (Ph.D.)--University of Washington, 2019The end of Dennard scaling and demands for energy effi...