Paper
13 April 2023 A study on the adaptive technology of intelligent learning system based on mobile terminal recognition
Xuekong Zhao, Shirong Long
Author Affiliations +
Proceedings Volume 12605, 2022 2nd Conference on High Performance Computing and Communication Engineering (HPCCE 2022); 126050E (2023) https://doi.org/10.1117/12.2673325
Event: Second Conference on High Performance Computing and Communication Engineering, 2022, Harbin, China
Abstract
With the rapid development of the mobile internet technology, m-learning is gradually becoming a key modern remote learning way. With the combination of mobile technology and digitalized technology, a learning mode based on mobile terminals is created to provide a learning environment unlimited by the time and space for learners, thus meeting the real-time learning needs of learners. However, the current mobile terminal-oriented learning system is still in the exploratory stage, and how to build an intelligent learning system for mobile terminal access is a hot spot concerned by numerous researchers. Based on this, this paper explores the Intelligent Mobile Learning System (IMLS) solution from the two technical dimensions of user terminal recognition and learning content adaptability and describes its development environment and key technologies. Experimental results show that users’ convenience and access can be enhanced to some extent by the system, which will further enhance their learning quality.
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Xuekong Zhao and Shirong Long "A study on the adaptive technology of intelligent learning system based on mobile terminal recognition", Proc. SPIE 12605, 2022 2nd Conference on High Performance Computing and Communication Engineering (HPCCE 2022), 126050E (13 April 2023); https://doi.org/10.1117/12.2673325
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KEYWORDS
Machine learning

Mobile devices

Intelligence systems

Databases

Data modeling

Internet technology

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