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1
Introduction
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One stop solution
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Agenda
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Who am I
5
What is ML pipeline
6
Why do we need this pipeline
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Why automate it
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Reduce the cost of any project
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When should we use it
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When to scale
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Building blocks
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Continuous Integration
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Continuous Delivery
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Automated Pipeline
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Continuous Delivery Process
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Monitoring
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Engineering
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Debugging
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Top 3 debugging issues
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Python libraries
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QA time
Description:
Explore the importance of building end-to-end machine learning pipelines from day one in this 32-minute EuroPython Conference talk by Alyona Galyeva. Learn why ML pipelines are necessary, when to use them, and their key building blocks for both training and inference. Discover techniques for engineering around failures, optimizing performance, debugging, and monitoring ML pipelines. Gain insights into useful open-source Python libraries that can save time in pipeline development. Ideal for data scientists, analysts, engineers, ML engineers, product owners, and Python developers working or interested in machine learning. Basic knowledge of Data Science, ML, and Python is recommended to fully benefit from this comprehensive overview of ML pipeline development and implementation.

We Build a ML Pipeline After We Deploy

EuroPython Conference
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