Research on Intelligent Application Design Based on Artificial Intelligence and Adaptive Interface
DOI:
https://doi.org/10.53469/wjimt.2024.07(02).01Keywords:
Artificial Intelligence, Adaptive Interface, Intelligent Application Design, UI DesignAbstract
The purpose of this study is to explore the intelligent application design based on artificial intelligence and adaptive interface. First, we outline the basic principles of artificial intelligence technology and its important role in application design, as well as the basic concepts and principles of adaptive interface design. Then, by analyzing practical cases, we discuss the close combination of artificial intelligence and UI page design, including design practices in the fields of intelligent recommendation system, intelligent voice assistant and intelligent search engine. Through these case studies, we delve into how AI and adaptive interfaces can work together to drive smart and personalized application design. Finally, we summarize the research results and look forward to the development trend and research direction of intelligent application design in the future.
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