AE

Loading...

No REST till Production – Building and Deploying 9 Models to Production in 3 Weeks

10 views

Loading...

Loading...

Transcript

The interactive transcript could not be loaded.

Loading...

Rating is available when the video has been rented.
This feature is not available right now. Please try again later.
Uploaded on Nov 21, 2019

The state of the art in productionizing machine learning models today primarily addresses building RESTful APIs. In the digital ecosystem, RESTful APIs are a necessary, but not sufficient, part of the complete solution for productionizing ML models. And according to recent research by the McKinsey Global Institute, applying AI in marketing and sales has the most potential value.

In the digital ecosystem, productionizing ML models at an accelerated pace becomes easy with:

• Feature Store with commonly used features that is available for all data scientists

• Feature Stores that distill visitor behavior is ready to use feature vectors in a semi supervised manner

• Data pipeline that can support the challenging demands of the digital ecosystem to feed the Feature Store on an ongoing basis

• Pipeline templates that support the challenging demands of the digital ecosystem that feed feature store, predict and distribute predictions on an ongoing basis. With these, a major electronics manufacturer was able to build and productionize a new model in 3 weeks.

View all the slides on SlideShare: http://bit.ly/2PwOc82

Loading...

to add this to Watch Later

Add to

Loading playlists...