Stochastic Computing (SC) is a computing paradigm that allows for the low-cost and low-power computation of various arithmetic operations using stochastic bit streams and digital logic. In contrast to conventional representation schemes used within the binary domain, the sequence of bit streams in the stochastic domain is inconsequential, and computation is usually non-deterministic. In this brief, we exploit the stochasticity during switching of probabilistic Conductive Bridging RAM (CBRAM) devices to efficiently generate stochastic bit streams in order to perform Deep Learning (DL) parameter optimization, reducing the size of Multiply and Accumulate (MAC) units by 5 orders of magnitude. We demonstrate that in using a 40-nm Complementary M...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
Hardware processors for neuromorphic computing are gaining significant interest as they offer the po...
Hardware implementing spiking neural networks (SNNs) has the potential to provide transformative gai...
Stochastic Computing (SC) is a computing paradigm that allows for the low-cost and low-power computa...
Stochastic Computing (SC) presents a low-cost and low-power alternative to conventional binary compu...
Deep Neural Networks (DNN) have proven to be highly effective in extracting high level abstractions ...
Biological neural networks outperform current computer technology in terms of power consumption and ...
Stochastic computing (SC) is a promising computing paradigm that can help address both the uncertain...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
Stochastic computing (SC) allows for extremely low cost and low power implementations of common arit...
abstract: Hardware implementation of neuromorphic computing is attractive as a computing paradigm be...
For energy efficiency, many low-bit quantization methods for deep neural networks (DNNs) have been p...
International audienceNovel computing architectures based on resistive switching memories (also know...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
Hardware processors for neuromorphic computing are gaining significant interest as they offer the po...
Hardware implementing spiking neural networks (SNNs) has the potential to provide transformative gai...
Stochastic Computing (SC) is a computing paradigm that allows for the low-cost and low-power computa...
Stochastic Computing (SC) presents a low-cost and low-power alternative to conventional binary compu...
Deep Neural Networks (DNN) have proven to be highly effective in extracting high level abstractions ...
Biological neural networks outperform current computer technology in terms of power consumption and ...
Stochastic computing (SC) is a promising computing paradigm that can help address both the uncertain...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
Stochastic computing (SC) allows for extremely low cost and low power implementations of common arit...
abstract: Hardware implementation of neuromorphic computing is attractive as a computing paradigm be...
For energy efficiency, many low-bit quantization methods for deep neural networks (DNNs) have been p...
International audienceNovel computing architectures based on resistive switching memories (also know...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
Hardware processors for neuromorphic computing are gaining significant interest as they offer the po...
Hardware implementing spiking neural networks (SNNs) has the potential to provide transformative gai...