In-memory computing (IMC) utilizing synaptic crossbar arrays is promising for deep neural networks to attain high energy efficiency and integration density. Towards that end, various CMOS and post-CMOS technologies have been explored as promising synaptic device candidates which include SRAM, ReRAM, FeFET, SOT-MRAM, etc. However, each of these technologies has its own pros and cons, which need to be comparatively evaluated in the context of synaptic array designs. For a fair comparison, such an analysis must carefully optimize each technology, specifically for synaptic crossbar design accounting for device and circuit non-idealities in crossbar arrays such as variations, wire resistance, driver/sink resistance, etc. In this work, we perform...
MasterNowadays, bio-inspired neuromorphic computing has been researched for massive processing appli...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
The advent of Artificial Intelligence (AI) and big data era brought an unprecedented (and ever growi...
In-memory computing (IMC) utilizing synaptic crossbar arrays is promising for deep neural networks t...
In this study, we present CIMulator, a simulation platform for crossbar arrays based on synaptic ele...
abstract: Over the past few decades, the silicon complementary-metal-oxide-semiconductor (CMOS) tech...
The objective of this research is to accelerate deep neural networks (DNNs) with emerging non-volati...
In the conventional vonNeumann (VN) architecture, data?both operands and operations to be performed ...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
Metal-oxide-based resistive memory devices (ReRAM) are being actively researched as synaptic element...
Human brains demonstrate how simple computational primitives can be combined in massively parallel w...
Beyond CMOS, new technologies are emerging to extend electronic systems with features unavailable t...
Quantization of synaptic weights using emerging non-volatile memory devices has emerged as a promis...
The human brain intrinsically operates with a large number of synapses, more than 10(15). Therefore,...
MasterNowadays, bio-inspired neuromorphic computing has been researched for massive processing appli...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
The advent of Artificial Intelligence (AI) and big data era brought an unprecedented (and ever growi...
In-memory computing (IMC) utilizing synaptic crossbar arrays is promising for deep neural networks t...
In this study, we present CIMulator, a simulation platform for crossbar arrays based on synaptic ele...
abstract: Over the past few decades, the silicon complementary-metal-oxide-semiconductor (CMOS) tech...
The objective of this research is to accelerate deep neural networks (DNNs) with emerging non-volati...
In the conventional vonNeumann (VN) architecture, data?both operands and operations to be performed ...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
Metal-oxide-based resistive memory devices (ReRAM) are being actively researched as synaptic element...
Human brains demonstrate how simple computational primitives can be combined in massively parallel w...
Beyond CMOS, new technologies are emerging to extend electronic systems with features unavailable t...
Quantization of synaptic weights using emerging non-volatile memory devices has emerged as a promis...
The human brain intrinsically operates with a large number of synapses, more than 10(15). Therefore,...
MasterNowadays, bio-inspired neuromorphic computing has been researched for massive processing appli...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
The advent of Artificial Intelligence (AI) and big data era brought an unprecedented (and ever growi...