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DAIS Project - Distributed Artificial Intelligence Systems: Objectives and Challenges

Published:05 April 2023Publication History
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Abstract

DAIS is a step forward in the area of artificial intelligence and edge computing. DAIS intends to create a complete framework for self-organizing, energy efficient and private-by-design distributed AI. DAIS is a European project with a consortium of 47 partners from 11 countries coordinated by RISE Research Institute of Sweden.

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