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Description
🎯 RELOAD'25 Task Submission
👤 Participant Information
- Full Name: Harsh Giri
- Email: 2006.harshgiri@gmail.com
- Phone: 9871696166
- College Roll No: 24154015
- Uni Roll no. 2400271540048
- Year & Branch: 2rd Year, CSE (Data Science)
🎯 Task Details
- Track: Developer 💻
- Task Completed: Teen Smartphone Usage Analysis
🔗 Submission Links
- GitHub Repository: https://github.com/giri-harsh/Phone-Addiction-Pred/tree/main
- Notebook File : https://github.com/giri-harsh/Phone-Addiction-Pred/blob/main/Teen%20Addiction%20Prediction.py
- Clean Dataset (.csv): https://github.com/giri-harsh/Phone-Addiction-Pred/blob/main/teen_phone_addiction_cleaned.csv
- Visualizations Folder: https://github.com/giri-harsh/Phone-Addiction-Pred/tree/main/Data%20Visualization
- EDA https://github.com/giri-harsh/Phone-Addiction-Pred/tree/main/EDA
🛠️ Technical Implementation
Tech Stack/Tools Used:
- Primary: Python 3.x
- Libraries: pandas, numpy, matplotlib, seaborn, plotly, scikit-learn
- Environment: VS Code Kernel
- Deployment: GitHub repository
✨ Features Showcase
Core Features Implemented:
- Data Cleaning: handled missing values, duplicates, and outliers
- EDA: smartphone usage patterns, academic performance correlation, sleep and mental health analysis
- Visualizations: histograms, box plots, scatter plots, bar charts, heatmaps
- Machine Learning: Random Forest regression model to predict addiction level
- Insights: 6+ key findings and actionable recommendations
Bonus Features Added:
- Interactive Visualizations with Plotly
- Clean, professional notebook presentation with markdown storytelling
✅ Checklist Confirmation
- Used proper Git workflow (no file uploads)
- Minimum 5 meaningful commits
- All features working as intended
- Repository is public and accessible
Additional Comments:
This project gave me deep insights into smartphone usage patterns among teenagers and helped me strengthen my EDA + ML modeling skills 🚀
- I was unable to use Jupyter Notebook or Google Colab for this project, so I have provided a fully functional Python script instead.
Please note that the graphs will not be displayed automatically unless you run the code. To address this, I have also included the generated graph outputs in the repository for reference, as mentioned earlier.
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