# ML Tools Integration Guide Data scientists can now use their preferred ML tools securely! ## Available Tools - **MLflow** - Experiment tracking and model registry - **Weights & Biases** - Experiment tracking and visualization - **Streamlit** - Interactive web apps - **Dash** - Plotly-based web dashboards - **Panel** - Data apps and dashboards - **Bokeh** - Interactive visualizations ## Quick Start ### 1. Test Tools Available ```bash cd podman python test_ml_tools.py ``` ### 2. Use MLflow ```python import mlflow # Start tracking with mlflow.start_run(): mlflow.log_param("epochs", 10) mlflow.log_metric("accuracy", 0.95) ``` ### 3. Launch Streamlit App ```bash # In your secure container streamlit run my_app.py --server.port 8501 ``` ### 4. Use Dash Dashboard ```python import dash import dash_core_components as dcc import dash_html_components as html app = dash.Dash(__name__) app.run_server(debug=True, host='0.0.0.0', port=8050) ``` ## Security Features - Network access limited to localhost only - Tools pre-approved in security policy - Container isolation maintained - No external internet access ## Custom Requirements Add your own tools via `requirements.txt`: ``` mlflow==2.7.0 wandb==0.16.0 streamlit==1.28.0 ``` ## Access URLs - Streamlit: http://localhost:8501 - Dash: http://localhost:8050 - MLflow UI: http://localhost:5000