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Using MLflow and Databricks to Deploy ML Models in Production

Explore MLflow and Databricks for production ML model deployment. Learn end-to-end management, model tracking, and deployment strategies, plus Databricks' Feature Store and AutoML.
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Data Science Festival

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58 minutes

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अवलोकन

Explore MLflow and Databricks for production ML model deployment. Learn end-to-end management, model tracking, and deployment strategies, plus Databricks' Feature Store and AutoML.

पाठ्यक्रम

  • **Introduction to MLflow and Databricks**
  • Overview of MLflow
    Introduction to Databricks platform
    Understanding the Production ML Workflow
  • **MLflow for Model Management**
  • Installing and Setting up MLflow
    Tracking Experiments and Runs
    Managing ML Models with MLflow Registry
  • **Model Deployment Strategies**
  • Batch vs. Real-Time Deployment
    Deploying Models with MLflow
    Managing Model Versions and Rollbacks
  • **Integrating Databricks with MLflow**
  • Configuring MLflow with Databricks
    Logging and Tracking Experiments in Databricks
    Utilizing Databricks Notebooks for ML Experiments
  • **Databricks Feature Store**
  • Introduction to Feature Stores
    Managing Features in Databricks
    Feature Reusability and Sharing
  • **AutoML in Databricks**
  • Overview of AutoML
    Using Databricks AutoML for Automated Model Training
    Evaluating and Deploying AutoML Models
  • **Real-World Application and Case Studies**
  • Case Study: End-to-End Model Deployment
    Best Practices for ML Deployment
    Challenges and Troubleshooting in Production
  • **Conclusion and Future Trends**
  • Future Trends in ML Model Deployment
    Advanced Features in Databricks and MLflow
    Continuous Learning and Improvement Strategies

विषय

Data Science