Building products for Continous Delivery in Machine Learning | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=r5qO-nszgfI



Duration: 1:30:12
648 views
10


For slides and more information on the paper, visit https://aisc.ai.science/events/2019-11-11

Discussion lead: Alan Lu, Cole Clifford


Motivation:
Business operations, services, and products across all industries are becoming increasingly powered by Machine Learning systems. However, managing the process for developing, deploying, and continuously improving machine learning models pose new challenges that can't be solved using traditional IT Continuous Delivery approach or ad-hoc processes. In this event, we will discuss how the lessons learned from deploying ML systems into production at enterprises can be leveraged to build products for Machine Learning Continuous Delivery.




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