Application that use deep learning incur a substantial amount of energy consumption. Reducing this energy footprint is important, especially for applications such as Internet of Things (IoT) Embedded Systems (ESs), where resources are scarce. Here, we present computational self-awareness as a promising solution for intelligently adapt machine learning algorithms at runtime to reduce their energy consumption. In particular, we focus on approximation as a key enabler knob for such adaptivity. We show that the benefits of such an approach can be up to 2.5 × energy savings
Edge intelligence is currently facing several important challenges hindering its performance, with t...
Energy-efficient machine learning models that can run directly on edge devices are of great interest...
Data analytics for streaming sensor data brings challenges for the resource efficiency of algorithms...
International audienceThe design and implementation of Deep Learning (DL) models is currently receiv...
Deep learning models have reached state of the art performance in many machine learning tasks. Benef...
International audienceWhen designing electronic systems, a standard technique to reduce the energy c...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
Approximate computing is an emerging design paradigm that leverages the intrinsic resilience of appl...
The success of deep learning comes at the cost of very high computational complexity. Consequently, ...
Deep learning models undergo a significant increase in the number of parameters they possess, leadin...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
© 2016 IEEE. Recently convolutional neural networks (ConvNets) have come up as state-of-the-art clas...
Machine learning algorithms are responsible for a significant amount of computations. These computat...
With the widespread use of smartphones, wearable devices and many applications of deep learning (DL)...
Edge intelligence is currently facing several important challenges hindering its performance, with t...
Energy-efficient machine learning models that can run directly on edge devices are of great interest...
Data analytics for streaming sensor data brings challenges for the resource efficiency of algorithms...
International audienceThe design and implementation of Deep Learning (DL) models is currently receiv...
Deep learning models have reached state of the art performance in many machine learning tasks. Benef...
International audienceWhen designing electronic systems, a standard technique to reduce the energy c...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
Approximate computing is an emerging design paradigm that leverages the intrinsic resilience of appl...
The success of deep learning comes at the cost of very high computational complexity. Consequently, ...
Deep learning models undergo a significant increase in the number of parameters they possess, leadin...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
© 2016 IEEE. Recently convolutional neural networks (ConvNets) have come up as state-of-the-art clas...
Machine learning algorithms are responsible for a significant amount of computations. These computat...
With the widespread use of smartphones, wearable devices and many applications of deep learning (DL)...
Edge intelligence is currently facing several important challenges hindering its performance, with t...
Energy-efficient machine learning models that can run directly on edge devices are of great interest...
Data analytics for streaming sensor data brings challenges for the resource efficiency of algorithms...