
Analysis of artificial intelligence models for the smart home industry
- 1 Uppsala University
- 2 School of Digital Industry, Jimei University
* Author to whom correspondence should be addressed.
Abstract
Since ChatGPT's release, large AI models have gained significant attention, particularly in the integration with Smart Home 3.0, marking a new research direction. This paper reviews cutting-edge research on the intersection of smart homes and large AI models, highlighting challenges and trends. We focus on data, models, and execution to explore the advancement of smart home platforms globally. We discuss data collection and feature research progress within smart homes, using intelligent voice assistants like Amazon Alexa and Google Bard as examples. We examine the applications, potentials, and challenges of AI models in smart homes and offer insights into future applications of large AI models in this field.
Keywords
Smart Home, Artificial Intelligence, Large Language Models
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Cite this article
Chen,Y.;Ren,Y. (2024). Analysis of artificial intelligence models for the smart home industry. Applied and Computational Engineering,77,117-123.
Data availability
The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.
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Volume title: Proceedings of the 2nd International Conference on Software Engineering and Machine Learning
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