Within the past decade, mobile computing has morphed into a principal form of human communication, business, and social interaction. Unfortunately, the energy demands of newer ambient intelligence and collaborative technologies on mobile devices have greatly overwhelmed modern energy storage abilities. This paper proposes several novel techniques that exploit spatiotemporal and device context to predict device interface configurations that can optimize energy consumption in mobile embedded systems. These techniques, which include variants of linear discriminant analysis, linear logistic regression, non-linear logistic regression with neural networks, and k-nearest neighbor are explored and compared on synthetic and user traces from real-wor...
The unprecedented penetration of "smart" mobile devices in everyday use case scenarios, along with t...
We study the design of energy-efficient stochastic leader-selection algorithms in environments which...
In recent years, a large portion of smartphone applications (Apps) has targeted context-aware servic...
Abstract—Within the past decade, mobile computing has morphed into a principal form of human communi...
As the end user requires more powerful functionality from the mobile device, the complexity of softw...
International audienceThe diverse range of wireless interfaces, sensors, processing components added...
Smartphones are widely used in daily life to access services and various functions require continuou...
High-end mobile devices now support displaying video in High Dynamic Range (HDR), delivering a signi...
pattern In recent times, many human-centric applications are being developed to leverage the diverse...
The mobile phone is no longer only a communication device, but also a powerful environmental sensing...
Nowadays, mobile devices are ubiquitous in modern life as they allow users to perform virtually any ...
International audienceThis paper features a novel modeling scheme for power consumption in embedded ...
With self-provisioning of resources as premise, dew computing aims at providing computing services b...
International audienceThis paper features a novel modeling scheme for power consumption in embedded ...
In recent years, the use of machine learning techniques in applications increased rapidly. More rese...
The unprecedented penetration of "smart" mobile devices in everyday use case scenarios, along with t...
We study the design of energy-efficient stochastic leader-selection algorithms in environments which...
In recent years, a large portion of smartphone applications (Apps) has targeted context-aware servic...
Abstract—Within the past decade, mobile computing has morphed into a principal form of human communi...
As the end user requires more powerful functionality from the mobile device, the complexity of softw...
International audienceThe diverse range of wireless interfaces, sensors, processing components added...
Smartphones are widely used in daily life to access services and various functions require continuou...
High-end mobile devices now support displaying video in High Dynamic Range (HDR), delivering a signi...
pattern In recent times, many human-centric applications are being developed to leverage the diverse...
The mobile phone is no longer only a communication device, but also a powerful environmental sensing...
Nowadays, mobile devices are ubiquitous in modern life as they allow users to perform virtually any ...
International audienceThis paper features a novel modeling scheme for power consumption in embedded ...
With self-provisioning of resources as premise, dew computing aims at providing computing services b...
International audienceThis paper features a novel modeling scheme for power consumption in embedded ...
In recent years, the use of machine learning techniques in applications increased rapidly. More rese...
The unprecedented penetration of "smart" mobile devices in everyday use case scenarios, along with t...
We study the design of energy-efficient stochastic leader-selection algorithms in environments which...
In recent years, a large portion of smartphone applications (Apps) has targeted context-aware servic...