International audienceWith the growing availability of large-scale datasets, and the popularization of affordable storage and computational capabilities, the energy consumed by AI is becoming a growing concern. To address this issue, in recent years, studies have focused on demonstrating how AI energy efficiency can be improved by tuning the model training strategy. Nevertheless, how modifications applied to datasets can impact the energy consumption of AI is still an open question. To fill this gap, in this exploratory study, we evaluate if datacentric approaches can be utilized to improve AI energy efficiency. To achieve our goal, we conduct an empirical experiment, executed by considering 6 different AI algorithms, a dataset comprising 5...
Data, in its purest nature, has an authority on the systems it accompanies by feeding an accurate re...
Energy has been a crucial element for human beings and sustainable development. The issues of global...
none3noVariational Autoencoders (VAEs) are powerful generative models that merge elements from stati...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
With the growing availability of large-scale datasets, and the popularization of affordable storage ...
This review critically examines the role of Data Science and Artificial Intelligence (AI) techniques...
In this work, we look at the intersection of Sustainable Software Engineering and AI engineering kno...
In order to curtail and reduce the impact that climate change has on our socio-economic live, saving...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
This study presents a comprehensive review of the impact of artificial intelligence (AI) and machine...
International audienceThis paper contributes towards better understanding the energy consumption tra...
AI-based solutions show great potential in various fields, including the context of sustainability. ...
Sustainability improvements in industrial production are essential for tackling climate change and t...
Energy consumption has been widely studied in the computer architecture field for decades. While the...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
Data, in its purest nature, has an authority on the systems it accompanies by feeding an accurate re...
Energy has been a crucial element for human beings and sustainable development. The issues of global...
none3noVariational Autoencoders (VAEs) are powerful generative models that merge elements from stati...
International audienceWith the growing availability of large-scale datasets, and the popularization ...
With the growing availability of large-scale datasets, and the popularization of affordable storage ...
This review critically examines the role of Data Science and Artificial Intelligence (AI) techniques...
In this work, we look at the intersection of Sustainable Software Engineering and AI engineering kno...
In order to curtail and reduce the impact that climate change has on our socio-economic live, saving...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
This study presents a comprehensive review of the impact of artificial intelligence (AI) and machine...
International audienceThis paper contributes towards better understanding the energy consumption tra...
AI-based solutions show great potential in various fields, including the context of sustainability. ...
Sustainability improvements in industrial production are essential for tackling climate change and t...
Energy consumption has been widely studied in the computer architecture field for decades. While the...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
Data, in its purest nature, has an authority on the systems it accompanies by feeding an accurate re...
Energy has been a crucial element for human beings and sustainable development. The issues of global...
none3noVariational Autoencoders (VAEs) are powerful generative models that merge elements from stati...