The increasing performance demands in emerging Internet of Things applications clash with the low energy budgets of end-nodes. Therefore, hardware operators able to reconfigure their computational precision at runtime are increasingly employed in these devices, to obtain good-enough results at minimal energy costs. Among the many methods proposed to implement such operators, Dynamic Voltage and Accuracy Scaling (DVAS) is particularly promising, due to its broad applicability and low overheads. However, a straight-forward application of DVAS conflicts with the optimizations performed by classic EDA algorithms, and does not yield the expected results. In this paper, we propose a novel synthesis algorithm for reconfigurable-precision circuits,...
Abstract Emerging technologies, such as the Internet of Things (IoT), Deep Neural Network (DNN) bas...
Deep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable of meeti...
On the one hand, accelerating convolution neural networks (CNNs) on FPGAs requires ever increasing h...
© 2017 IEEE. Several applications in machine learning and machine-to-human interactions tolerate sma...
© 2015 IEEE. A wide variety of existing and emerging applications in recognition, mining and synthes...
Mobile and IoT applications must balance increasing processing demands with limited power and cost b...
Energy-quality scalable systems are a promising solution to cope with the small energy budgets and h...
Smart Systems applications often include error resilient computations, due to the presence of noisy ...
Deep neural networks virtually dominate the domain of most modern vision systems, providing high per...
The current trend for deep learning has come with an enormous computational need for billions of Mul...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
The slowdown of Moore's law, which has been the driving force of the electronics industry over the l...
With intensive research in the fields of machine learning and neural networks to improve its accurac...
International audienceVoltage scaling has been used as a prominent technique to improve energy effic...
Deep Neural Networks (DNN) has transformed the automation of a wide range of industries and finds in...
Abstract Emerging technologies, such as the Internet of Things (IoT), Deep Neural Network (DNN) bas...
Deep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable of meeti...
On the one hand, accelerating convolution neural networks (CNNs) on FPGAs requires ever increasing h...
© 2017 IEEE. Several applications in machine learning and machine-to-human interactions tolerate sma...
© 2015 IEEE. A wide variety of existing and emerging applications in recognition, mining and synthes...
Mobile and IoT applications must balance increasing processing demands with limited power and cost b...
Energy-quality scalable systems are a promising solution to cope with the small energy budgets and h...
Smart Systems applications often include error resilient computations, due to the presence of noisy ...
Deep neural networks virtually dominate the domain of most modern vision systems, providing high per...
The current trend for deep learning has come with an enormous computational need for billions of Mul...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
The slowdown of Moore's law, which has been the driving force of the electronics industry over the l...
With intensive research in the fields of machine learning and neural networks to improve its accurac...
International audienceVoltage scaling has been used as a prominent technique to improve energy effic...
Deep Neural Networks (DNN) has transformed the automation of a wide range of industries and finds in...
Abstract Emerging technologies, such as the Internet of Things (IoT), Deep Neural Network (DNN) bas...
Deep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable of meeti...
On the one hand, accelerating convolution neural networks (CNNs) on FPGAs requires ever increasing h...