Authors :
Tejaswini D; Dr. Rabindranath S
Volume/Issue :
Volume 10 - 2025, Issue 9 - September
Google Scholar :
https://tinyurl.com/msc8drav
Scribd :
https://tinyurl.com/372hrm4x
DOI :
https://doi.org/10.38124/ijisrt/25sep264
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Note : Google Scholar may take 30 to 40 days to display the article.
Abstract :
In an era where sedentary lifestyles are increasingly prevalent, the need for effective tools to manage personal
fitness has never been more critical. This paper presents the design and implementation of a "Personal Fitness Chart," a
web-based application designed to predict calorie expenditure with a high degree of personalization. The system leverages
a Gradient Boosting Regressor model, a powerful machine learning algorithm, trained on a comprehensive dataset
encompassing user attributes such as age, gender, height, weight, and exercise metrics including duration, heart rate, and
body temperature. The web application, developed using the Streamlit framework, offers an intuitive user interface for data
input and provides real-time predictions of calorie burn. A key innovation of this system is its integrated AI chatbot, powered
by large language models via the OpenRouter API, which delivers personalized fitness recommendations based on user data
and prediction results. Furthermore, the application can generate and email a personalized PDF fitness summary complete
with user data, prediction results, a visual chart, and the full AI chatbot conversation offering users a tangible and
comprehensive record of their session. This research demonstrates the significant potential of combining predictive machine
learning with generative AI to provide tailored fitness guidance, thereby empowering individuals to take a more active role
in their health and well-being.
Keywords :
Calorie Prediction; Fitness Tracker; Gradient Boosting; Machine Learning; Streamlit; AI Chatbot; OpenRouter.
References :
- Kadam, A., Patil, V. H., Shrivastava, A., Michaelson, J., Pawar, S. K., & Singh, A. (2023). Calories Burned Prediction Using Machine Learning. In 2023 6th International Conference on Contemporary Computing and Informatics (IC3I) (pp. 1712-1717). IEEE.
- Priscilla, M., Suriya, A., Srikanth, J., Jagadhishwaran, S., Kumar, M. N., & Yasvanth, D. (2024). Evolution of Artificial Intelligence based Burned Calories Prediction System using Novel Hybrid Learning Methodology. In 2024 Ninth International Conference on Science Technology Engineering and Mathematics (ICONSTEM) (pp. 1-7). IEEE.
- Arslan, M. M., Yang, X., Zhang, Z., Rahman, S. U., Ullah, M., & Abbasi, Q. H. (2024). Advancing Healthcare Monitoring: Integrating Machine Learning With Innovative Wearable and Wireless Systems for Comprehensive Patient Care. IEEE Sensors Journal, 24(18), 29199-29210.
- Chang, C. C., Wei, C. H., Wu, H. W., & Hsiao, S. (2023). A Fitness Movement Evaluation System Using Deep Learning. In 2023 15th International Conference on Knowledge and Systems Engineering (KSE) (pp. 1-6). IEEE.
- Nipas, M., et al. (2022). Burned Calories Prediction using Supervised Machine Learning: Regression Algorithm. In 2022 IEEE 12th International Conference on Prototype, Circuit and System (ICPC2T) (pp. 1-4). IEEE.
- Aziz, M. T., et al. (2023). CALORIES BURNT PREDICTION USING MACHINE LEARNING APPROACH. Current Integrative Engineering, 1(1), 29-36.
- Lin, J., et al. (2021). Wearable sensors and devices for real-time cardiovascular disease monitoring. Cell Reports Physical Science, 2(8), 100541.
- Chen, K. Y., Shin, J., Hasan, M. A. M., Liaw, J. J., Yuichi, O., & Tomioka, Y. (2022). Fitness Movement Types and Completeness Detection Using a Transfer-Learning-Based Deep Neural Network. Sensors, 22(15), 5700.
In an era where sedentary lifestyles are increasingly prevalent, the need for effective tools to manage personal
fitness has never been more critical. This paper presents the design and implementation of a "Personal Fitness Chart," a
web-based application designed to predict calorie expenditure with a high degree of personalization. The system leverages
a Gradient Boosting Regressor model, a powerful machine learning algorithm, trained on a comprehensive dataset
encompassing user attributes such as age, gender, height, weight, and exercise metrics including duration, heart rate, and
body temperature. The web application, developed using the Streamlit framework, offers an intuitive user interface for data
input and provides real-time predictions of calorie burn. A key innovation of this system is its integrated AI chatbot, powered
by large language models via the OpenRouter API, which delivers personalized fitness recommendations based on user data
and prediction results. Furthermore, the application can generate and email a personalized PDF fitness summary complete
with user data, prediction results, a visual chart, and the full AI chatbot conversation offering users a tangible and
comprehensive record of their session. This research demonstrates the significant potential of combining predictive machine
learning with generative AI to provide tailored fitness guidance, thereby empowering individuals to take a more active role
in their health and well-being.
Keywords :
Calorie Prediction; Fitness Tracker; Gradient Boosting; Machine Learning; Streamlit; AI Chatbot; OpenRouter.