An open-source platform that allows users to create, deploy, and manage machine learning workflows on Kubernetes. Kubeflow Pipelines provides a way to define and execute complex pipelines consisting of interconnected steps, enabling users to easily orchestrate the entire machine learning process from data preparation to model training, evaluation, and deployment.
In this tutorial, you learn how to set up a stand-alone Kubeflow Pipelines on a local Kubernetes cluster using **kind**. Then, you can use Kubeflow Pipelines as a local development environment to compose and run ML pipelines.
Learn how ModelMesh intelligently loads and unloads AI models to and from memory to strike a tradeoff between responsiveness to users and the computational footprint.
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