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Practical Machine Learning on Databricks

You're reading from   Practical Machine Learning on Databricks Seamlessly transition ML models and MLOps on Databricks

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Product type Paperback
Published in Nov 2023
Publisher Packt
ISBN-13 9781801812030
Length 244 pages
Edition 1st Edition
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Author (1):
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Debu Sinha Debu Sinha
Author Profile Icon Debu Sinha
Debu Sinha
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Table of Contents (16) Chapters Close

Preface 1. Part 1: Introduction
2. Chapter 1: The ML Process and Its Challenges FREE CHAPTER 3. Chapter 2: Overview of ML on Databricks 4. Part 2: ML Pipeline Components and Implementation
5. Chapter 3: Utilizing the Feature Store 6. Chapter 4: Understanding MLflow Components on Databricks 7. Chapter 5: Create a Baseline Model Using Databricks AutoML 8. Part 3: ML Governance and Deployment
9. Chapter 6: Model Versioning and Webhooks 10. Chapter 7: Model Deployment Approaches 11. Chapter 8: Automating ML Workflows Using Databricks Jobs 12. Chapter 9: Model Drift Detection and Retraining 13. Chapter 10: Using CI/CD to Automate Model Retraining and Redeployment 14. Index 15. Other Books You May Enjoy

The motivation behind model monitoring

According to an article in Forbes magazine by Enrique Dans, July 21, 2019, 87% of data science projects never make it to production (https://www.forbes.com/sites/enriquedans/2019/07/21/stop-experimenting-with-machine-learning-and-start-actually-usingit/?sh=1004ff0c3365).

There are a lot of reasons why ML models fail; however, if we look purely at the reason for ML project failure in a production environment, it comes down to a lack of re-training and testing the deployed models for performance consistency over time.

The performance of the model keeps degrading over time. Many data scientists neglect the maintenance aspect of the models post-production. The following visualizations offer a comparative analysis between two distinct approaches to model management—one where the model is trained once and then deployed for an extended period and another where the model undergoes regular retraining with fresh data while being monitored for...

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