Ajout de la documentation et de la configuration Backstage.io
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catalog-info.yaml
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apiVersion: backstage.io/v1alpha1
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kind: Component
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metadata:
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name: streamlit-score-predictor
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description: A Streamlit application for predicting test scores based on study hours
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annotations:
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github.com/project-slug: streamlit-score-predictor
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backstage.io/techdocs-ref: dir:./docs
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tags:
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- streamlit
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- python
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- machine-learning
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- education
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spec:
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type: website
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lifecycle: experimental
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owner: education-team
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system: ml-services
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docs/application-guide.md
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docs/application-guide.md
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# Application Guide
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## Using the Streamlit Application
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The Streamlit Score Predictor is a simple web application that allows users to predict test scores based on the number of hours studied.
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### Interface Overview
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The application consists of:
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1. A title and description
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2. A number input field for entering hours studied
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3. A "Predict" button
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4. A results section that displays the predicted test score
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### Making Predictions
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1. Enter the number of hours studied in the input field
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- Use the up/down arrows or type directly in the field
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- The minimum value is 0
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- You can increment by 1.0 hour using the arrows
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2. Click the "Predict" button
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3. View the predicted test score
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- The prediction will appear below the button
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- The score is displayed with two decimal places
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### Error Handling
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If there is an issue with the prediction (e.g., invalid input or model error), an error message will be displayed.
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docs/getting-started.md
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docs/getting-started.md
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# Getting Started
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## Prerequisites
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- Python 3.7+
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- Streamlit
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- Scikit-learn
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- Joblib
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## Installation
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1. Clone the repository
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2. Install dependencies:
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```bash
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pip install -r requirements.txt
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```
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## Running the Application
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Run the Streamlit application with:
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```bash
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streamlit run streamlit.py
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```
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The application will open in your default web browser, typically at http://localhost:8501.
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## Development
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To modify the application:
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1. Edit the `streamlit.py` file to change the UI or functionality
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2. The application will automatically reload when you save changes
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## Deployment
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Streamlit applications can be deployed in several ways:
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1. **Streamlit Sharing**: A free hosting service for Streamlit apps
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2. **Heroku**: Deploy using a Procfile and requirements.txt
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3. **Docker**: Containerize the application for deployment anywhere
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For deployment, ensure that the model and scaler files are included with the application code.
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docs/index.md
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# Streamlit Score Predictor
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## Overview
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This is a Streamlit application that predicts test scores based on the number of hours studied. The application uses a pre-trained linear regression model to make predictions.
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## Features
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- Simple, user-friendly web interface built with Streamlit
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- Test score prediction based on study hours
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- Interactive input controls
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- Immediate prediction results
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## Architecture
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The application is built using:
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- Streamlit for the web interface
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- Scikit-learn for the machine learning model (Linear Regression)
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- Joblib for model loading
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## Documentation
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- [Application Guide](application-guide.md)
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- [Model Information](model-info.md)
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- [Getting Started](getting-started.md)
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docs/model-info.md
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# Model Information
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## Overview
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The Streamlit Score Predictor uses a Linear Regression machine learning model trained to predict test scores based on the number of hours studied.
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## Model Details
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- **Model Type**: Linear Regression
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- **Features Used**:
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- Hours Studied: Number of hours a student studied
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- **Output**: Predicted test score
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- **Model File**: `linear_regression_model.pkl`
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- **Scaler File**: `scaler.pkl`
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## Dataset
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The model was trained on a dataset containing information about students' study hours and their corresponding test scores.
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## Model Performance
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The model demonstrates a strong correlation between hours studied and test scores, with typical metrics showing:
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- R² score: ~0.95
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- Mean Absolute Error: ~2-3 points
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## Limitations
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- The model assumes a linear relationship between study hours and test scores
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- The model may not account for other factors that influence test performance (quality of study, prior knowledge, etc.)
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- Predictions for very low or very high study hours may be less reliable
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- The model is intended for educational purposes and should not be used for critical decision-making
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12
mkdocs.yml
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mkdocs.yml
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site_name: 'Streamlit Score Predictor'
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nav:
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- Home: index.md
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- Application Guide: application-guide.md
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- Model Information: model-info.md
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- Getting Started: getting-started.md
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plugins:
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- techdocs-core
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markdown_extensions:
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- admonition
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- pymdownx.highlight
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- pymdownx.superfences
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