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Course Outline

Introduction

  • Machine Learning models vs traditional software

Overview of the DevOps Workflow

Overview of the Machine Learning Workflow

ML as Code Plus Data

Components of an ML System

Case Study: A Sales Forecasting Application

Accessing Data

Validating Data

Data Transformation

From Data Pipeline to ML Pipeline

Building the Data Model

Training the Model

Validating the Model

Reproducing Model Training

Deploying a Model

Serving a Trained Model to Production

Testing an ML System

Continuous Delivery Orchestration

Monitoring the Model

Data Versioning

Adapting, Scaling and Maintaining an MLOps Platform

Troubleshooting

Summary and Conclusion

Requirements

  • A solid understanding of the software development lifecycle.
  • Experience in building or working with Machine Learning models.
  • Familiarity with Python programming.

Audience

  • ML engineers.
  • DevOps engineers.
  • Data engineers.
  • Infrastructure engineers.
  • Software developers.
 35 Hours

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