Physical Artificial Intelligence: The Concept Expansion of
Next-Generation Artificial Intelligence
- URL: http://arxiv.org/abs/2105.06564v2
- Date: Mon, 17 May 2021 00:38:03 GMT
- Title: Physical Artificial Intelligence: The Concept Expansion of
Next-Generation Artificial Intelligence
- Authors: Yingbo Li, Yucong Duan, Anamaria-Beatrice Spulber, Haoyang Che,
Zakaria Maamar, Zhao Li, Chen Yang, Yu lei
- Abstract summary: concepts of Digital Artificial Intelligence and Physicial Artifical Intelligence have emerged and this can be considered a big step in the theoretical development of Artifical Intelligence.
The paper will also examine the trend and governance of Physicial Artifical Intelligence.
- Score: 8.372451098017693
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Artificial Intelligence has been a growth catalyst to our society and is
cosidered across all idustries as a fundamental technology. However, its
development has been limited to the signal processing domain that relies on the
generated and collected data from other sensors. In recent research, concepts
of Digital Artificial Intelligence and Physicial Artifical Intelligence have
emerged and this can be considered a big step in the theoretical development of
Artifical Intelligence. In this paper we explore the concept of Physicial
Artifical Intelligence and propose two subdomains: Integrated Physicial
Artifical Intelligence and Distributed Physicial Artifical Intelligence. The
paper will also examine the trend and governance of Physicial Artifical
Intelligence.
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