An end-to-end machine learning application for predicting depression risk based on user lifestyle and stress-related inputs, deployed with Streamlit and Hugging Face.
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Updated
Apr 18, 2026 - Python
An end-to-end machine learning application for predicting depression risk based on user lifestyle and stress-related inputs, deployed with Streamlit and Hugging Face.
Projet de data science appliqué à la prédiction de la dépression avec optimisation des modèles et des variables
Demonstrate a comprehensive understanding of current advanced methods and techniques in data and text analytics. Design and implement data mining based applications to solve real-world problems. Critically analyse and evaluate the performance of different data mining techniques for text analysis and analyse and interpret the data mining results.
🧠 ML web app predicting student depression risks. Showcases a complete pipeline: baseline modeling, advanced data preprocessing, and optimized Logistic Regression.
A Machine Learning and Streamlit-based application for analyzing teen mental health patterns and predicting depression risk using social media usage, sleep habits, stress levels, anxiety, academic performance, and lifestyle factors.
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