The growing data volume and complexity of deep neural networks (DNNs) require new architectures to surpass the limitation of the von-Neumann bottleneck, with computing-in-memory (CIM) as a promising direction for implementing energy-efficient neural networks. However, CIM’s peripheral sensing circuits are usually power- and area-hungry components. We propose a time-multiplexing CIM architecture (TM-CIM) based on memristive analog computing to share the peripheral circuits and process one column at a time. The memristor array is arranged in a column-wise manner that avoids wasting power/energy on unselected columns. In addition, digital-to-analog converter (DAC) power and energy efficiency, which turns out to be an even greater overhe...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
Realizing increasingly complex artificial intelligence (AI) functionalities directly on edge devices...
Analog compute schemes and compute-in-memory (CIM) have emerged in an effort to reduce the increasin...
Recently, numerous studies have investigated computing in-memory (CIM) architectures for neural netw...
With the explosion of AI in recent years, there has been an exponential rise in the demand for compu...
With the increase in computational parallelism and low-power Integrated Circuits (ICs) design, neuro...
As AI applications become more prevalent and powerful, the performance of deep learning neural netwo...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
In this Review, memristors are examined from the frameworks of both von Neumann and neuromorphic com...
In-memory computing (IMC) has emerged as a promising technique for enhancing energy-efficiency of de...
Compact online learning architectures can be used to enhance internet of things devices, allowing th...
Machine Learning is finding applications in a wide variety of areas ranging from autonomous cars to ...
For decades, innovations to surmount the processor versus memory gap and move beyond conventional vo...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
Realizing increasingly complex artificial intelligence (AI) functionalities directly on edge devices...
Analog compute schemes and compute-in-memory (CIM) have emerged in an effort to reduce the increasin...
Recently, numerous studies have investigated computing in-memory (CIM) architectures for neural netw...
With the explosion of AI in recent years, there has been an exponential rise in the demand for compu...
With the increase in computational parallelism and low-power Integrated Circuits (ICs) design, neuro...
As AI applications become more prevalent and powerful, the performance of deep learning neural netwo...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
In this Review, memristors are examined from the frameworks of both von Neumann and neuromorphic com...
In-memory computing (IMC) has emerged as a promising technique for enhancing energy-efficiency of de...
Compact online learning architectures can be used to enhance internet of things devices, allowing th...
Machine Learning is finding applications in a wide variety of areas ranging from autonomous cars to ...
For decades, innovations to surmount the processor versus memory gap and move beyond conventional vo...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
Realizing increasingly complex artificial intelligence (AI) functionalities directly on edge devices...