Executive Guide to Deploying, Monitoring, and Maintaining Models
58mBeginner2024-04-08
Authors

Keith McCormick
Data Miner, Trainer, Speaker, Author
Course details
With recent developments in the AI space, workflows for deploying, monitoring, and maintaining ML models have changed. In this course, Keith McCormick—an independent data miner, trainer, speaker, and author—breaks down the phases of an ML project and guides you through model evaluation, scoring, deployment, and model maintenance. Learn about data engineering and MLOps in the ML lifecycle, as well as the basics of ML modeling. Get a useful deployment checklist that you can use in model evaluation. Find out how to score traditional ML models, a “black box” model, and an ensemble. Go over batch and real-time scoring. Plus, explore model monitoring and the best frequency for model rebuilding.
Skills covered
Machine LearningArtificial Intelligence (AI)One-Off
Concepts
0. Introduction
- 01 - Getting models deployed
1. The Phases of a Machine Learning Project
- 02 - Data and supervised machine learning
- 03 - Data engineering and MLOps in the ML lifecycle
- 04 - Why ML projects fail to be deployed
- 05 - The basics of ML modeling
2. Model Evaluation
- 06 - The business evaluation phase
- 07 - A deployment checklist
3. Scoring
- 08 - Scoring traditional ML models
- 09 - Scoring a black box model
- 10 - Scoring an ensemble
4. Deployment
- 11 - Batch vs. real-time scoring
- 12 - Data prep and scoring
- 13 - Combining batch and real-time scoring
5. Monitoring and Maintenance
- 14 - What is model monitoring
- 15 - How often should you rebuild
Conclusion
- 16 - Next steps
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