MRI
MRI India Journals Vol. 13 No. 1S (2026): Special Issue: Integration of AI Management Engineering and Technology

Calorie Tracker with Food Classification and Nutritional Analysis

Authors

  • Krishna Dhokde Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India
  • Pradnya Patange Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India
  • Swapnil Dolare Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India
  • Madhura Nikam Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India
  • Sayali Jadhav Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India
  • Shravani Kolape Department of Information Technology, Genba Sopanrao Moze College of Engineering, Balewadi, Pune/SPPU/India

DOI:

https://doi.org/10.65521/mjret.v13i1S.3028

Keywords:

Calorie Tracking Food Classification Machine Learning Body Mass Index (BMI) Nutritional Analysis Spoonacular API Data Visualization Flask Web Application Health and Wellness Tracking

Abstract

This paper presents a web-based application designed for efficient calorie tracking, food classification, and nutritional analysis. The system enables users to log their daily food intake and obtain detailed nutritional information, including macronutrients and selected micronutrients, through integration with the Spoonacular API. A machine learning model built using the Scikit-learn library is employed to classify food items into categories such as high-protein, low-carb, and high-fat, helping users make informed dietary decisions. To enhance personalization and usability, the application incorporates a secure user authentication system that allows individuals to maintain their dietary records and track progress over time. Additionally, a Body Mass Index (BMI) calculator is integrated to assess users’ health status based on their height and weight, enabling them to set appropriate fitness goals such as weight loss, gain, or maintenance. The system is developed using Flask and provides an interactive interface supported by real-time data visualization. Overall, the application serves as a comprehensive and user friendly platform for promoting healthier lifestyle choices through data-driven insights and personalized health monitoring.

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Published

2026-05-20

How to Cite

Dhokde, K., Patange, P., Dolare, S., Nikam, M., Jadhav, S., & Kolape, S. (2026). Calorie Tracker with Food Classification and Nutritional Analysis. Multidisciplinary Journal of Research in Engineering and Technology, 13(1S), 43–46. https://doi.org/10.65521/mjret.v13i1S.3028

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