If you're training a machine learning model but aren't sure how to put it into production, this book will get you there. Kubeflow provides a collection of cloud native tools for different stages of a model's lifecycle, from data exploration, feature preparation, and model training to model serving. This guide helps data scientists build production-grade machine learning implementations with Kubeflow and shows data engineers how to make models scalable and reliable.
Using examples throughout the book, authors Holden Karau, Trevor Grant, Ilan Filonenko, Richard Liu, and Boris Lublinsky explain how to use Kubeflow to train and serve your machine learning models on top of Kubernetes in the cloud or in a development environment on-premises.
Understand Kubeflow's design, core components, and the problems it solves
Learn how to set up Kubeflow on a cloud provider or on an in-house cluster
Train models using Kubeflow with popular tools including scikit-learn, TensorFlow, and Apache Spark
Learn how to add custom stages such as serving and prediction
Keep your model up-to-date with Kubeflow Pipelines
Understand how to validate machine learning pipelines