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UID:pretalx-pycon-lt-2023-EMJJ7R@pretalx.com
DTSTART;TZID=EET:20230519T140000
DTEND;TZID=EET:20230519T142500
DESCRIPTION:MLOps tools today are dime a dozen\, but do you really need eve
 rything to build your machine learning pipelines? If you are just getting 
 started you do not need an army of tools to set up your ML pipelines. In t
 his talk\, I will introduce you to the general concept of MLOps\, why it i
 s becoming more important these days and then focus on a super interesting
  MLOps framework in Python called ZenML. ZenML helps you structure your co
 de and pipelines systematically right from the word go\, ensuring that you
  are always building pipelines that can be easily deployed in production. 
 ZenML has a lot of custom components that can be used in different ways. I
  will take you through the many concepts (steps\, pipelines\, stacks\, int
 egrations) used by ZenML and how you could use them to build your producti
 on ready Machine Learning pipelines.
DTSTAMP:20260307T215627Z
LOCATION:Saphire B - PyData
SUMMARY:Production ready Machine Learning pipelines using ZenML for MLOps m
 anagement - Imaad Mohamed Khan
URL:https://pretalx.com/pycon-lt-2023/talk/EMJJ7R/
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