In order to curtail and reduce the impact that climate change has on our socio-economic live, saving energy is key. Data centers in general and modern-day AI applications in particular are electricity super-users. Recent studies have attempted at estimating the carbon footprint of common large-scale AI applications, highlighting the unsustainable, environmentally questionable path of current AI research. Despite this research, reducing or even monitoring the necessary energy consumption needed for computational approaches in medical imaging are still poorly investigated. To counteract this situation, i.e. model development purely under the perspective of predictive performance while disregarding the accompanied environmental consequences, w...
Modern-day life is driven by electronic devices connected to the internet. The emerging research fie...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Machine learning algorithms are usually evaluated and developed in terms of predictive performance. ...
Deep learning has produced some of the most accurate and most versatile techniques for many applicat...
In this work, we look at the intersection of Sustainable Software Engineering and AI engineering kno...
International audienceThis paper contributes towards better understanding the energy consumption tra...
The main goal of this paper is to compare the energy efficiency of quantized neural networks to perf...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
Context: energy consumption represents an important issue with limited and embedded devices. Such de...
Energy consumption has been widely studied in the computer architecture field for decades. While the...
Manuscrito enviado para su revisión por la revista "Engineering Applications of Artificial Intellige...
Modern-day life is driven by electronic devices connected to the internet. The emerging research fie...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Machine learning algorithms are usually evaluated and developed in terms of predictive performance. ...
Deep learning has produced some of the most accurate and most versatile techniques for many applicat...
In this work, we look at the intersection of Sustainable Software Engineering and AI engineering kno...
International audienceThis paper contributes towards better understanding the energy consumption tra...
The main goal of this paper is to compare the energy efficiency of quantized neural networks to perf...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
Context: energy consumption represents an important issue with limited and embedded devices. Such de...
Energy consumption has been widely studied in the computer architecture field for decades. While the...
Manuscrito enviado para su revisión por la revista "Engineering Applications of Artificial Intellige...
Modern-day life is driven by electronic devices connected to the internet. The emerging research fie...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Machine learning algorithms are usually evaluated and developed in terms of predictive performance. ...