Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are promising solutions for the development of ultra-low-power hardware for edge computing. Among these, SIMPLY, a smart logic-in-memory architecture, provides high reconfigurability and enables the in-memory computation of both logic operations and binarized neural networks (BNNs) inference. However, operation-specific hardware accelerators can result in better performance for a particular task, such as the analog computation of the multiply and accumulate operation for BNN inference, but lack reconfigurability. Nonetheless, a solution providing the flexibility of SIMPLY while also achieving the high performance of BNN-specific analog hardware acce...
The need for processing the continuously growing amount of data that is produced every day is promot...
The need for running complex Machine Learning (ML) algorithms, such as Convolutional Neural Networks...
With the increasing demand for convolutional neural networks (CNNs) in many edge computing scenarios...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
Edge computing has been shown to be a promising solution that could relax the burden imposed onto th...
Resistive Random access memory (RRAM) devices together with the material implication (IMPLY) logic a...
Many advanced neural network inference engines are bounded by the available memory bandwidth. The co...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
In this paper, we explore potentials of leveraging spin-based in-memory computing platform as an acc...
International audienceThe brain performs intelligent tasks with extremely low energy consumption. Th...
Recently, availability of big data and enormous processing power along with maturing of the applied ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
The proliferation of embedded Neural Processing Units (NPUs) is enabling the adoption of Tiny Machin...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
As AI applications become more prevalent and powerful, the performance of deep learning neural netwo...
The need for processing the continuously growing amount of data that is produced every day is promot...
The need for running complex Machine Learning (ML) algorithms, such as Convolutional Neural Networks...
With the increasing demand for convolutional neural networks (CNNs) in many edge computing scenarios...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
Edge computing has been shown to be a promising solution that could relax the burden imposed onto th...
Resistive Random access memory (RRAM) devices together with the material implication (IMPLY) logic a...
Many advanced neural network inference engines are bounded by the available memory bandwidth. The co...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
In this paper, we explore potentials of leveraging spin-based in-memory computing platform as an acc...
International audienceThe brain performs intelligent tasks with extremely low energy consumption. Th...
Recently, availability of big data and enormous processing power along with maturing of the applied ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
The proliferation of embedded Neural Processing Units (NPUs) is enabling the adoption of Tiny Machin...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
As AI applications become more prevalent and powerful, the performance of deep learning neural netwo...
The need for processing the continuously growing amount of data that is produced every day is promot...
The need for running complex Machine Learning (ML) algorithms, such as Convolutional Neural Networks...
With the increasing demand for convolutional neural networks (CNNs) in many edge computing scenarios...