Fitness Fusion: Maximizing Health Through Exercise and Calorie Control

Year : 2024 | Volume : 11 | Issue : 03 | Page : 113 118
    By

    Zalak Thakrar,

  • Atul M. Gonsai,

  • Karavadra Parth A.,

  • Joshi Vivek M.,

  • Karavadra Sahil P.,

  • Odedra Manan D.,

  1. Assistant Professor, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India
  2. Professor, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India
  3. Student, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India
  4. Student, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India
  5. Student, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India
  6. Student, Department of Computer Science, Shri V. J. Modha College of Information Technology, College in Porbandar, Gujarat, India

Abstract

The delicate balance between improving physical fitness and managing calorie intake has gained increasing significance as individuals aim to achieve their fitness goals while maintaining a healthy weight. This approach highlights the strategic integration of exercise, such as high-intensity interval training (HIIT), with controlled dietary practices to effectively manage weight, enhance physical performance, and support overall health. HIIT, known for its time-efficient ability to burn calories and improve cardiovascular fitness, is particularly appealing to those with busy lifestyles. In parallel, careful attention to diet—focusing on portion control, nutrient-dense foods, and consistent tracking of food intake—plays a crucial role in creating the calorie deficit necessary for weight loss or maintenance. Additionally, prioritizing balanced macronutrient intake and hydration supports optimal performance during workouts and aids recovery. By adopting a holistic and sustainable approach that combines effective exercise with mindful eating habits, individuals can not only achieve their immediate fitness goals but also promote long-term health, wellness, and weight management. This comprehensive strategy ensures that fitness improvements are not only attained but sustained, reducing the risk of overtraining, nutritional deficiencies, or metabolic imbalances.

Keywords: Biometric sensors, fitness, machine learning for fitness, high-intensity interval training (HIIT), wearable technology, fitness data visualization

[This article belongs to Journal of Artificial Intelligence Research & Advances ]

How to cite this article:
Zalak Thakrar, Atul M. Gonsai, Karavadra Parth A., Joshi Vivek M., Karavadra Sahil P., Odedra Manan D.. Fitness Fusion: Maximizing Health Through Exercise and Calorie Control. Journal of Artificial Intelligence Research & Advances. 2024; 11(03):113-118.
How to cite this URL:
Zalak Thakrar, Atul M. Gonsai, Karavadra Parth A., Joshi Vivek M., Karavadra Sahil P., Odedra Manan D.. Fitness Fusion: Maximizing Health Through Exercise and Calorie Control. Journal of Artificial Intelligence Research & Advances. 2024; 11(03):113-118. Available from: https://journals.stmjournals.com/joaira/article=2024/view=177236


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Regular Issue Subscription Review Article
Volume 11
Issue 03
Received 14/08/2024
Accepted 30/09/2024
Published 07/10/2024


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