Hyper Personalization Using AI: Elevate Fitness

Year : 2025 | Volume : 12 | Issue : 03 | Page : 10 21
    By

    Nikhil Nishad,

  • Ritika, Tanisha,

  • Saransh Prakash,

  1. Student, Department of Computer Applications, Echelon Institute of Technology Faridabad, Haryana, India
  2. Student, Department of Computer Applications, Echelon Institute of Technology Faridabad, Haryana, India
  3. Student, Department of Computer Applications, Echelon Institute of Technology Faridabad, Haryana, India

Abstract

In the modern era, many individuals find it challenging to prioritize their health and well-being due to busy lifestyles filled with work, academic, and personal obligations. Conventional fitness and nutrition programs often apply uniform strategies that overlook individual differences in body type, preferences, and goals. This lack of real-time feedback and contextual customization often leads to poor user engagement and unsatisfactory results over time. Elevate is a comprehensive, AI-powered fitness and wellness platform created to overcome these limitations by delivering highly personalized digital health solutions. Users benefit from an interactive, full-body interface showcasing over 1,500 exercises, along with built-in wellness utilities such as BMI, body fat percentage, and macronutrient calculators. By integrating detailed user context, the platform generates dietary recommendations that are accurate, relevant, and aligned with individual needs. Built on Next.js 15, Elevate delivers smooth and efficient frontend interactions, while Tailwind CSS v4 helps craft a layout that automatically adapts to different screen sizes, offering a user-friendly experience on both mobile and desktop devices. The platform also uses Zustand for efficient state management and Supabase to handle real-time data updates and secure user sessions. At its core is an intelligent personalization engine that adapts workouts and nutrition plans to each user based on ongoing feedback and health data. Leveraging Groq APIs and OpenAI’s advanced language models via edge functions, the system delivers fast, context-aware results. Additional tools include a full-body interactive map, nutrition calculators, and integrations with Google OAuth, analytics, and n8n-based automation. This study focuses on enhancing Elevate’s AI nutrition capabilities through advanced prompt engineering to improve the precision and personalization of its dietary guidance.

Keywords: Digital health, personalized fitness, personalized nutrition, AI in health, machine learning, large language models, recommendation systems, user modeling

[This article belongs to Journal of Mobile Computing, Communications & Mobile Networks ]

How to cite this article:
Nikhil Nishad, Ritika, Tanisha, Saransh Prakash. Hyper Personalization Using AI: Elevate Fitness. Journal of Mobile Computing, Communications & Mobile Networks. 2025; 12(03):10-21.
How to cite this URL:
Nikhil Nishad, Ritika, Tanisha, Saransh Prakash. Hyper Personalization Using AI: Elevate Fitness. Journal of Mobile Computing, Communications & Mobile Networks. 2025; 12(03):10-21. Available from: https://journals.stmjournals.com/jomccmn/article=2025/view=228331


References

  1. Islam SR, Kwak D, Kabir MH, Hossain M, Kwak KS. The internet of things for health care: a comprehensive survey. IEEE Access. 2015 Jun 1; 3: 678–708.
  2. Morton F, Benavides TT, González-Treviño E. Taking customer-centricity to new heights: exploring the intersection of AI, hyper-personalization, and customer-centricity in organizations. In: Smart Engineering Management. Cham: Springer International Publishing; 2024 Mar 1; 23–41.
  3. Choudhary S, Iyer G, Smith BM, Li J, Sippel M, Criminisi A, Heymsfield SB. Development and validation of an accurate smartphone application for measuring waist-to-hip circumference ratio. NPJ Digit Med. 2023 Sep 11; 6(1): 168.
  4. Mohammed AS. AI and big data in healthcare: Impacts and challenges in Covid-19 outbreak prediction and management. Int J Sci Res Publ. 2023; 13(5): 1–2.
  5. Caruccio L, Cirillo S, Polese G, Solimando G, Sundaramurthy S, Tortora G. Can ChatGPT provide intelligent diagnoses? A comparative study between predictive models and ChatGPT to define a new medical diagnostic bot. Expert Syst Appl. 2024 Jan 1; 235: 121186.
  6. Rajšp A, Fister I. A systematic literature review of intelligent data analysis methods for smart sport training. Appl Sci. 2020 Jan; 10(9): 3013.
  7. Kranz M, Möller A, Hammerla N, Diewald S, Plötz T, Olivier P, Roalter L. The mobile fitness coach: Towards individualized skill assessment using personalized mobile devices. Pervasive and Mob Comput. 2013 Apr 1; 9(2): 203–15.
  8. Salma B, Fatima T, Sara A, Merieme B. Artificial intelligence in social media: From content personalization to user engagement. In The International Workshop on Big Data and Business Intelligence. Cham: Springer Nature Switzerland; 2024 Apr 23; 45–52.
  9. Tan AZ, Yu H, Cui L, Yang Q. Towards personalized federated learning. IEEE Trans Neural Netw Learn Syst. 2022 Mar 28; 34(12): 9587–603.
  10. Patil S, Bhat A, Jain N, Javalkar V. Integrating Research on AI-Driven Hyper-Personalization: A Review and Framework for Scalable Social Media Campaigns. In 2025 IEEE International Conference on Pervasive Computational Technologies (ICPCT). 2025 Feb 8; 766–771.
  11. Park J, Chung SY, Park JH. Real-time exercise feedback through a convolutional neural network: a machine learning-based motion-detecting mobile exercise coaching application. Yonsei Med J. 2022 Jan 6; 63(Suppl): S34.
  12. Bedi P, Das S, Goyal SB, Shaw RN, Ghosh A. Leveraging generative AI for personalized recommendation system. In International Conference on Advanced Computing and Intelligent Technologies. Singapore: Springer Nature Singapore; 2023 Dec 8; 587–596.

Regular Issue Subscription Review Article
Volume 12
Issue 03
Received 28/06/2025
Accepted 20/07/2025
Published 29/09/2025
Publication Time 93 Days


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