Edge computing has been shown to be a promising solution that could relax the burden imposed onto the network infrastructure by the increasing amount of data produced by smart devices. However, reconfigurable ultra-low power computing architectures are needed. RRAM devices together with the material implication logic (IMPLY) are a promising solution for the development of low-power reconfigurable logic-in-memory (LiM) hardware. Nevertheless, traditional approaches suffer from several issues introduced by the circuit topology and device non-idealities. Recently, SIMPLY, a smart LiM architecture based on the IMPLY, has been proposed and shown to solve the common issues of traditional architectures. Here, we use a physics-based RRAM compact mo...
The ever-increasing energy demands of traditional computing platforms (CPU, GPU) for large-scale dep...
Smart material implication (SIMPLY) logic has been recently proposed for the design of energy-effici...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
Resistive Random access memory (RRAM) devices together with the material implication (IMPLY) logic a...
The need for processing the continuously growing amount of data that is produced every day is promot...
Low-power smart devices are becoming pervasive in our world. Thus, relevant research efforts are dir...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
In this work, we introduce a new RRAM-based Smart IMPLY (SIMPLY) logic scheme with unique benefits f...
In this work, we explore the RRAM-based IMPLY logic by means of circuit simulations. Differently fro...
Logic circuits based on Resistive RAM (RRAM) devices and the material implication logic (IMPLY) are ...
Training and recognition with neural networks generally require high throughput, high energy efficie...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
The Logic-in-Memory paradigm is considered a promising solution for improving the energy efficiency ...
In-memory computing architectures based on Resistive random access memory technologies (RRAM) are a ...
The ever-increasing energy demands of traditional computing platforms (CPU, GPU) for large-scale dep...
Smart material implication (SIMPLY) logic has been recently proposed for the design of energy-effici...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
Resistive Random access memory (RRAM) devices together with the material implication (IMPLY) logic a...
The need for processing the continuously growing amount of data that is produced every day is promot...
Low-power smart devices are becoming pervasive in our world. Thus, relevant research efforts are dir...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
Different in-memory computing paradigms enabled by emerging non-volatile memory technologies are pro...
In this work, we introduce a new RRAM-based Smart IMPLY (SIMPLY) logic scheme with unique benefits f...
In this work, we explore the RRAM-based IMPLY logic by means of circuit simulations. Differently fro...
Logic circuits based on Resistive RAM (RRAM) devices and the material implication logic (IMPLY) are ...
Training and recognition with neural networks generally require high throughput, high energy efficie...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
The Logic-in-Memory paradigm is considered a promising solution for improving the energy efficiency ...
In-memory computing architectures based on Resistive random access memory technologies (RRAM) are a ...
The ever-increasing energy demands of traditional computing platforms (CPU, GPU) for large-scale dep...
Smart material implication (SIMPLY) logic has been recently proposed for the design of energy-effici...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...