Date of Submission
7-12-2025
Date of Award
7-22-2025
Institute Name (Publisher)
Indian Statistical Institute
Document Type
Master's Dissertation
Degree Name
Master of Technology
Subject Name
Cryptology
Department
Cryptology and Security Research Unit (CSRU-Kolkata)
Supervisor
Sahoo, Debasis
Co-Supervisor (if any)
Chakraborty, Debrup
Abstract (Summary of the Work)
The rising interest in personalized health monitoring has created a demand for intelligent systems that not only evaluate an individual’s health status but also offer actionable recommendations. This dissertation presents a data-driven approach to assess overall health by calculating a weekly health score using multi-dimensional data sources such as sleep patterns, nutrition, cardiovascular activity, fitness levels, and metabolic parameters. The system integrates and processes data stored in MongoDB using Python, applies scoring logic tailored to each health domain, and aggregates them into a unified health score. Addi- tionally, the system generates a detailed summary and leverages a language model to extract personalized recommendations aimed at improving user well-being. A comprehensive PDF health report is produced, featuring score visualizations and advice tailored to the individual. The implementation was tested across multiple profiles, and evaluation metrics indicate that the approach is both adaptive and insightful. This work not only demonstrates a scalable pipeline for health analysis but also opens up opportunities for future integration of machine learning and deeper behavioral insights
Control Number
CrS2315
DOI
https://dspace.isical.ac.in/items/386affd7-2aab-41df-a365-63f21e907160
DSpace Identifier
http://hdl.handle.net/10263/7656
Recommended Citation
Pramanick, Priti, "Implementing a Health Recommendation System from Wearable Data" (2025). Doctoral Theses. 664.
https://digitalcommons.isical.ac.in/doctoral-theses/664
Comments
System generated keywords