We propose a CMOS Analog Vector-Matrix Multiplier for Deep Neural Networks, implemented in a standard single-poly 180 nm CMOS technology. The learning weights are stored in analog floating-gate memory cells embedded in current mirrors implementing the multiplication operations. We experimentally verify the analog storage capability of designed single-poly floating-gate cells, the accuracy of the multiplying function of proposed tunable current mirrors, and the effective number of bits of the analog operation. We perform system-level simulations to show that an analog deep neural network based on the proposed vector-matrix multiplier can achieve an inference accuracy comparable to digital solutions with an energy efficiency of 26.4 TOPs/J, a...
Machine learning systems provide automated data processing and see a wide range of applications. Dir...
Il rapido sviluppo delle reti neurali ha rivoluzionato il settore della tecnologia dell'informazione...
Targeted at high-energy physics research applications, our special-purpose analog neural processor c...
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...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
There are several possible hardware implementations of neural networks based either on digital, anal...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
Two analog very large scale integration (VLSI) vector matrix multiplier integrated circuit chips wer...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Matrix-Vector Multiplications (MVMs) represent a heavy workload for both training and inference in D...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
Machine learning systems provide automated data processing and see a wide range of applications. Dir...
Il rapido sviluppo delle reti neurali ha rivoluzionato il settore della tecnologia dell'informazione...
Targeted at high-energy physics research applications, our special-purpose analog neural processor c...
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...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
There are several possible hardware implementations of neural networks based either on digital, anal...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
Two analog very large scale integration (VLSI) vector matrix multiplier integrated circuit chips wer...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Matrix-Vector Multiplications (MVMs) represent a heavy workload for both training and inference in D...
Embedding advanced cognitive capabilities in battery-constrained edge devices requires specialized h...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
Machine learning systems provide automated data processing and see a wide range of applications. Dir...
Il rapido sviluppo delle reti neurali ha rivoluzionato il settore della tecnologia dell'informazione...
Targeted at high-energy physics research applications, our special-purpose analog neural processor c...