Most state-of-the-art Machine-Learning (ML) algorithms do not consider the computational constraints of implementing the learned model on embedded devices. These constraints are, for example, the limited depth of the arithmetic unit, the memory availability, or the battery capacity. We propose a new learning framework, the Algorithmic-Risk-Minimization (ARM), which relies on Algorithmic-Stability, and includes these constraints inside the learning process itself. ARM allows to train advanced resource-sparing ML models and to efficiently deploy them on smart embedded systems. Finally, we show the advantages of our proposal on a smartphone-based Human Activity Recognition application by comparing it to a conventional ML approach
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
The implementation of Machine Learning (ML) algorithms on stand-alone small-scale devices allows the...
Tiny Machine Learning (TML) is a novel research area aiming at designing and developing Machine Lear...
Most state-of-the-art Machine-Learning (ML) algorithms do not consider the computational constraints...
Conventional Machine Learning (ML) algorithms do not contemplate computational constraints when lear...
Most state-of-the-art machine learning (ML) algorithms do not consider the computational constraints...
Mobile devices are resource-limited systems that provide a large number of services and features. Sm...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
With the introduction of edge analytics, IoT devices are becoming smart and ready for AI application...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Smartphones emerge from the incorporation of new services and features into mobile phones, allowing ...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
The implementation of Machine Learning (ML) algorithms on stand-alone small-scale devices allows the...
Tiny Machine Learning (TML) is a novel research area aiming at designing and developing Machine Lear...
Most state-of-the-art Machine-Learning (ML) algorithms do not consider the computational constraints...
Conventional Machine Learning (ML) algorithms do not contemplate computational constraints when lear...
Most state-of-the-art machine learning (ML) algorithms do not consider the computational constraints...
Mobile devices are resource-limited systems that provide a large number of services and features. Sm...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
With the introduction of edge analytics, IoT devices are becoming smart and ready for AI application...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Smartphones emerge from the incorporation of new services and features into mobile phones, allowing ...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
The implementation of Machine Learning (ML) algorithms on stand-alone small-scale devices allows the...
Tiny Machine Learning (TML) is a novel research area aiming at designing and developing Machine Lear...