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Machine Learning with LightGBM and Python

You're reading from   Machine Learning with LightGBM and Python A practitioner's guide to developing production-ready machine learning systems

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Product type Paperback
Published in Sep 2023
Publisher Packt
ISBN-13 9781800564749
Length 252 pages
Edition 1st Edition
Languages
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Author (1):
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Andrich van Wyk Andrich van Wyk
Author Profile Icon Andrich van Wyk
Andrich van Wyk
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Toc

Table of Contents (17) Chapters Close

Preface 1. Part 1: Gradient Boosting and LightGBM Fundamentals
2. Chapter 1: Introducing Machine Learning FREE CHAPTER 3. Chapter 2: Ensemble Learning – Bagging and Boosting 4. Chapter 3: An Overview of LightGBM in Python 5. Chapter 4: Comparing LightGBM, XGBoost, and Deep Learning 6. Part 2: Practical Machine Learning with LightGBM
7. Chapter 5: LightGBM Parameter Optimization with Optuna 8. Chapter 6: Solving Real-World Data Science Problems with LightGBM 9. Chapter 7: AutoML with LightGBM and FLAML 10. Part 3: Production-ready Machine Learning with LightGBM
11. Chapter 8: Machine Learning Pipelines and MLOps with LightGBM 12. Chapter 9: LightGBM MLOps with AWS SageMaker 13. Chapter 10: LightGBM Models with PostgresML 14. Chapter 11: Distributed and GPU-Based Learning with LightGBM 15. Index 16. Other Books You May Enjoy

Summary

This chapter introduced AWS and Amazon SageMaker as a platform for building and deploying ML solutions. An overview of the SageMaker service was given, including the Clarify service, which provides advanced features such as model bias checks and explainability.

We then proceeded to build a complete ML pipeline with the SageMaker service. The pipeline includes all steps of the ML life cycle, including data preparation, model training, tuning, model evaluation, bias checks, explainability reports, validation against test data, and deployment to cloud-native, scalable infrastructure.

Specific examples were given to build each step within the pipeline, emphasizing full automation, looking to enable straightforward retraining and constant monitoring of data and model processes.

The next chapter looks at another MLOps platform called PostgresML. PostgresML offers ML capabilities on top of a staple of the server landscape: the Postgres database.

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