Increasing the energy efficiency of deep learning systems is critical for improving the cognitive capability of edge devices, often battery-operated, as well as for data centers, constrained by the total power envelope. Specialized architectures accelerated by analog vector-matrix multipliers (VMMs) can reduce by orders of magnitude the energy per operation, since the reduced precision of analog computation does not undermine the classification accuracy of the neural network. We show an analog vector-matrix multiplier fabricated with industry-standard 0.18 μm CMOS process, exploiting a single-transistor non-volatile analog memory cell and dedicated technology circuit co-design. The design is focused on implementation in neural networks perf...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
We propose a CMOS Analog Vector-Matrix Multiplier for Deep Neural Networks, implemented in a standar...
In this paper, we explore the use of a 180 nm CMOS single-poly technology platform for realizing ana...
Recently, availability of big data and enormous processing power along with maturing of the applied ...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
There are several possible hardware implementations of neural networks based either on digital, anal...
Nervous systems inspired neurocomputing has shown its great advantage in object detection, speech re...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
Crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implementing hi...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
Recent developments in artificial intelligence (AI) have been possible due to the increased computin...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
We propose a CMOS Analog Vector-Matrix Multiplier for Deep Neural Networks, implemented in a standar...
In this paper, we explore the use of a 180 nm CMOS single-poly technology platform for realizing ana...
Recently, availability of big data and enormous processing power along with maturing of the applied ...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
There are several possible hardware implementations of neural networks based either on digital, anal...
Nervous systems inspired neurocomputing has shown its great advantage in object detection, speech re...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
Crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implementing hi...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
Recent developments in artificial intelligence (AI) have been possible due to the increased computin...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...