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1
Introduction
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Show of hands
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Agenda
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Who am I
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City Scholars
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The Problem
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The Data
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The Doctrine Community
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Other stuff to do
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Docker
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Challenges
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Kubeflow doesnt know
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Everything starts wide open
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What is Kubeflow
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Secure Jupiter Notebooks
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TF Job
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Fraying Attributes
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MiniKF
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Demo Architecture
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User Interface
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Pipeline Dashboard
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Pipeline Demo
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Running a Pipeline Demo
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Pipeline Code Walkthrough
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Prediction Walkthrough
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Additional Content
Description:
Explore Kubeflow's potential to revolutionize Machine Learning DevOps in this 46-minute conference talk from GOTO Chicago 2019. Discover how this cutting-edge technology enables seamless transitions from development to production for data scientists and software engineers. Learn about Kubeflow's integration with Kubernetes clusters, secure Jupiter Notebooks, and TF Job implementation. Follow along with a comprehensive demo of Kubeflow's architecture, user interface, and pipeline dashboard. Gain insights into running and coding pipelines, as well as making predictions. Delve into the challenges faced in implementing Kubeflow and explore solutions to common issues. Perfect for those interested in advancing their knowledge of machine learning workflows and DevOps practices in the context of modern data science.

Accelerating Machine Learning DevOps with Kubeflow

GOTO Conferences
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