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license: apache-2.0
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# π Student Eligibility Prediction System
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An AI-powered web application that predicts student eligibility using a Convolutional Neural Network (CNN) model built with TensorFlow/Keras.
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## π Features
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- **Single Prediction**: Real-time prediction for individual students
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- **Batch Prediction**: Upload CSV files for bulk predictions
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- **Interactive Dashboard**: Beautiful visualizations with prediction confidence
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- **Model Analytics**: Performance metrics and feature information
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- **Responsive Design**: Works on desktop and mobile devices
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## π€ Model Information
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- **Architecture**: 1D Convolutional Neural Network
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- **Framework**: TensorFlow/Keras
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- **Input**: Student features (grades, scores, etc.)
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- **Output**: Binary classification (Eligible/Not Eligible) with probability
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## π Usage
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### Single Prediction
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1. Enter student information in the input fields
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2. Click "Predict Eligibility"
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3. View the prediction, probability, and confidence scores
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4. Analyze the interactive visualization dashboard
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### Batch Prediction
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1. Prepare a CSV file with the required columns
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2. Upload the file using the file uploader
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3. Click "Process Batch" to get predictions for all rows
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4. Download the results with predictions and confidence scores
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## π Required Files for Deployment
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Make sure you have these files in your Hugging Face Space:
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1. `app.py` - Main application file
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2. `requirements.txt` - Python dependencies
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3. `final_model.h5` - Trained CNN model
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4. `scaler.pkl` - Fitted StandardScaler object
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5. `metadata.json` - Model metadata and performance metrics
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6. `README.md` - This documentation
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## π§ Setup Instructions
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1. Create a new Hugging Face Space
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2. Choose "Gradio" as the SDK
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3. Upload all required files
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4. The app will automatically deploy and be accessible via the provided URL
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## π Model Performance
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The model achieves high accuracy on student eligibility prediction with:
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- Comprehensive feature analysis
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- Regularization techniques (Dropout, BatchNormalization)
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- Early stopping and learning rate scheduling
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- ROC-AUC scoring for balanced evaluation
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## π€ Contributing
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Feel free to fork this project and submit pull requests for improvements!
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## π License
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This project is open source and available under the MIT License.
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Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference
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pinned: false
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license: apache-2.0
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