SmartPoshan – Poshan Tracking for Students



EOI: 10.11242/viva-tech.01.07.022

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Citation

Prathmesh Parekar, Ganesh Fartade, Aditya Jawle, Prof. Akshata S. Raut, "SmartPoshan – Poshan Tracking for Students", VIVA-IJRI Volume 1, Issue 7, Article COMP_22, pp. 1-7, 2024. Published by Computer Engineering Department, VIVA Institute of Technology, Virar, India.

Abstract

SmartPoshan is an innovative tracking system designed to monitor and manage nutritional intake among students. The system aims to provide an effective solution to track students' food consumption habits, ensuring they receive balanced and nutritious meals. Through the use of modern technologies such as machine learning and data analytics, SmartPoshan helps identify nutritional gaps and suggests personalized food recommendations for improving student health and wellness. The application of this system not only benefits individual students but can also assist schools and colleges in promoting better health and nutrition awareness among young learners.

Keywords

SmartPoshan, Poshan Tracking, Nutrition, Students, Food Consumption, Machine Learning, Personalized Recommendations, Health Monitoring.

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