Integrating Machine Learning Models with Swift for Personalized User Experiences in iOS Applications

Authors

  • Venkata Kalyan Pasupuleti University of Cumberlands Author

DOI:

https://doi.org/10.47392/IRJASH.2025.134

Keywords:

Machine Learning, Swift, iOS Personalization, On-device AI

Abstract

The increased demand for the development of adaptive and intelligent mobile apps has led to the rapid implementation of machine learning models in native iOS development, specifically using Swift. In this review, Swift programming and machine learning are discussed as coming together to enable real-time personalization in iOS applications. Using the power of on-device inference, frameworks such as CoreML and SwiftData, along with powerful API solutions, developers can build user-centric experiences that are secure, responsive, and contextual. This paper focuses on recent progress in emotion-aware design, which combines machine learning methods for identifying and reacting to the emotional state of users in real time through the analysis of inputs such as facial expressions, voice tone, typing behavior, and interaction patterns. Mobile deep learning and cross-platform deployment strategies are also discussed as shaping the future of personalized applications. Through an analysis of emerging trends such as federated learning and topic modeling, this review highlights the robustness of Swift-based development in providing a solid foundation for scalable, privacy-compliant, and intelligent user experiences. The results indicate that the convergence of Swift and machine learning is likely to characterize the next generation of personalization in mobile software development.

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Published

2025-12-30