ADVANTAGES OF USING MACHINE LEARNING MODELS IN MOBILE APPLICATIONS: A SMART SOLUTION TO INTELLIGENT USER EXPERIENCE

Authors

  • Qurbonov Behruz Amrulloyevich Author

Abstract

Abstract: In the age of smart devices, mobile applications have become an integral part of everyday life. From healthcare to finance, education to entertainment, users rely on mobile apps for personalized, fast, and accurate services. However, a growing concern in app development is how to make applications more intelligent, adaptive, and user-centric without compromising speed or resource efficiency.

References

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Published

2025-06-28

How to Cite

Qurbonov Behruz Amrulloyevich. (2025). ADVANTAGES OF USING MACHINE LEARNING MODELS IN MOBILE APPLICATIONS: A SMART SOLUTION TO INTELLIGENT USER EXPERIENCE. JOURNAL OF NEW CENTURY INNOVATIONS, 79(2), 306-309. https://scientific-jl.com/new/article/view/23645