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UID:pretalx-2023-YHEYVY@cfp.scipy.org
DTSTART;TZID=CST:20230711T133000
DTEND;TZID=CST:20230711T173000
DESCRIPTION:One of the biggest challenges for data scientists and machine l
 earning engineers alike is the friction caused by the iteration cycle betw
 een prototyping and production. It’s not enough to deploy a working mode
 l to a serving app. The iterative process itself needs to be a tight feedb
 ack loop between experimentation\, data and model refinement\, deploying t
 o production\, and dealing with data drift. In this tutorial\, attendees w
 ill learn how to unify the common tools in the Python Data/ML scientific s
 tack into a single orchestration plane using Flyte so that you can reduce 
 the friction between prototyping and production.
DTSTAMP:20260607T112506Z
LOCATION:Classroom 104
SUMMARY:A Hands-on Introduction to Production-grade Data Science Orchestrat
 ion with Flyte - Niels Bantilan
URL:https://cfp.scipy.org/2023/talk/YHEYVY/
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