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1
Introduction
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Agenda
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ML Lifecycle
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Q4 Pipeline
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Python SDK
6
Q4 Pipelines
7
Track artifacts
8
Replicate public experience
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Scope
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ML pipelines
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IBM Toolchain
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CICD Pipeline
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Demo Process
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Challenges
15
Resources
Description:
Explore DevOps practices for machine learning pipeline development in this 22-minute conference talk from KubeCon + CloudNativeCon North America 2021. Discover how IBM's Tommy Li and Yihong Wang integrate DevOps methodologies into ML workflows using Kubeflow Pipelines with Tekton. Learn about consolidating end-to-end ML scenarios, building deployment status dashboards, and implementing Slack channel notifications. Gain insights into overcoming challenges in the CI/CD process for Kubernetes clusters, and explore tools and services that facilitate seamless integration of ML pipelines into DevOps practices. Dive into topics such as ML lifecycle, Q4 Pipeline, Python SDK, artifact tracking, and the IBM Toolchain for efficient CICD pipeline implementation.

Embrace DevOps Practices to ML Pipeline Development

CNCF [Cloud Native Computing Foundation]
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