In the rapidly evolving field of multimedia services, video streaming has
become increasingly prevalent, demanding innovative solutions to enhance user
experience and system efficiency. This paper introduces a novel approach that
integrates user digital twins-a dynamic digital representation of a user's
preferences and behaviors-with traditional video streaming systems. We explore
the potential of this integration to dynamically adjust video preferences and
optimize transcoding processes according to real-time data. The methodology
leverages advanced machine learning algorithms to continuously update the
user's digital twin, which in turn informs the transcoding service to adapt
video parameters for optimal quality and minimal buffering. Experimental
results show that our approach not only improves the personalization of content
delivery but also significantly enhances the overall efficiency of video
streaming services by reducing bandwidth usage and improving video playback
quality. The implications of such advancements suggest a shift towards more
adaptive, user-centric multimedia services, potentially transforming how video
content is consumed and delivered