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Book Overview & Buying
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Table Of Contents
Machine Learning with LightGBM and Python
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This chapter shifts the focus from data science and modeling problems to building production services for our ML solutions. We introduce the concept of machine learning pipelines, a systematic approach to processing data, and building models that ensure consistency and correctness.
We also introduce the concept of MLOps, a practice that blends DevOps and ML and addresses the need to deploy and maintain production-capable ML systems.
The chapter includes an example of building an ML pipeline using scikit-learn, encapsulating data processing, model building, and tuning. We show how to wrap the pipeline in a web API, exposing a secure endpoint for prediction. Finally, we also look at the containerization of the system and deployment to Google Cloud.
The main topics of this chapter are as follows: