Talks | Tutorials
Tutorial: From Notebook to Kubeflow Pipelines: An End-to-End Data Science Workflow

by | November 2019

1 min read

November 21, 2019 @ KubeCon + CloudNativeCon North America 2019 The tutorial will focus on two essential aspects: 1. Low barrier to entry: deploy a Jupyter Notebook to Kubeflow Pipelines on the cloud using a fully GUI-based approach. This workflow enables data scientists to exploit the scaling potential of K8s – no CLI commands, SDKs, […]
Kubecon San Diego - Tutorial - Kubeflow End to End Pipelines

November 21, 2019 @ KubeCon + CloudNativeCon North America 2019

The tutorial will focus on two essential aspects:

1. Low barrier to entry: deploy a Jupyter Notebook to Kubeflow Pipelines on the cloud using a fully GUI-based approach. This workflow enables data scientists to exploit the scaling potential of K8s – no CLI commands, SDKs, or K8s knowledge required.

2. Reproducibility: automatic data versioning and volume snapshots will enable full reproducibility and collaborative development, as well as fine grained analysis and visualizations after pipeline executions.

Stefano Fioravanzo

Stefano Fioravanzo is a Software Engineer at Arrikto. His interests lie in building AI platforms based on Cloud Native technologies, empowering local communities and producers with smart tools

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