Energy-efficient machine learning models that can run directly on edge devices are of great interest in IoT applications, as they can reduce network pressure and response latency, and improve privacy. An effective way to obtain energy-efficiency with small accuracy drops is to sequentially execute a set of increasingly complex models, early-stopping the procedure for 'easy' inputs that can be confidently classified by the smallest models. As a stopping criterion, current methods employ a single threshold on the output probabilities produced by each model. In this work, we show that such a criterion is sub-optimal for datasets that include classes of different complexity, and we demonstrate a more general approach based on per-classes thresh...
The Internet of Things (IoT) is a growing network of heterogeneous devices, combining various sensin...
Learning at the edge is a challenging task from several perspectives, since data must be collected b...
Deep learning models have reached state of the art performance in many machine learning tasks. Benef...
Energy-efficient machine learning models that can run directly on edge devices are of great interest...
Large Machine Learning (ML) models require considerable computing resources and raise challenges for...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Random Forests (RFs) are widely used Machine Learning models in low-power embedded devices, due to t...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
The recent shift in machine learning towards the edge offers a new opportunity to realize intelligen...
In the paradigm of Internet-of-Things (IoT), smart devices will proliferate our living and working s...
The success of deep learning comes at the cost of very high computational complexity. Consequently, ...
With the introduction of edge analytics, IoT devices are becoming smart and ready for AI application...
Edge analytics refers to the application of data analytics and Machine Learning (ML) algorithms on I...
Recently, Smart Home Systems (SHSs) have gained enormous popularity with the rapid development of th...
The application of artificial intelligence enhances the ability of sensor and networking technologie...
The Internet of Things (IoT) is a growing network of heterogeneous devices, combining various sensin...
Learning at the edge is a challenging task from several perspectives, since data must be collected b...
Deep learning models have reached state of the art performance in many machine learning tasks. Benef...
Energy-efficient machine learning models that can run directly on edge devices are of great interest...
Large Machine Learning (ML) models require considerable computing resources and raise challenges for...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Random Forests (RFs) are widely used Machine Learning models in low-power embedded devices, due to t...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
The recent shift in machine learning towards the edge offers a new opportunity to realize intelligen...
In the paradigm of Internet-of-Things (IoT), smart devices will proliferate our living and working s...
The success of deep learning comes at the cost of very high computational complexity. Consequently, ...
With the introduction of edge analytics, IoT devices are becoming smart and ready for AI application...
Edge analytics refers to the application of data analytics and Machine Learning (ML) algorithms on I...
Recently, Smart Home Systems (SHSs) have gained enormous popularity with the rapid development of th...
The application of artificial intelligence enhances the ability of sensor and networking technologie...
The Internet of Things (IoT) is a growing network of heterogeneous devices, combining various sensin...
Learning at the edge is a challenging task from several perspectives, since data must be collected b...
Deep learning models have reached state of the art performance in many machine learning tasks. Benef...