Unleash the Power of ML with a Mighty Data Pipeline

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Wizards of the Coast and Alooma are co-hosting a meetup for data engineers and enthusiasts. Our featured speakers, Sarah Johnson and Brandyn Lee from Rover, will share how they’re innovating with data pipelines to support their machine learning initiatives.

Ready to bring some “Magic” to your data pipelines? Then join our gathering at the Wizards of the Coast offices!

Date: Tuesday, February 26th
Location: Wizards of the Coast HQ, 1600 Lind Ave SW, Renton WA 98057

*Please note: Everyone attending will need to check in at the front desk as a standard building security requirement. The event will be held in the Dominaria room on the first floor.

Agenda:
> 5:30 - 6:00pm: Enjoy some pizza and drinks!
> 6:00 - 6:45pm: Presentation with Sarah Johnson and Brandyn Lee from Rover
> 6:45 - 7:00pm: Question & Answer session
> 7:00 - 7:30pm: Networking and demos of Alooma Data Pipeline as a Service

Presentation summary:

More than half of companies today are implementing machine learning in some form. But getting value from ML depends heavily on the quality and volume of data you’re feeding in. Don’t let your data pipeline throttle your ML glory!

In this session, Brandyn and Sarah will share how they got started building their ML pipeline with Alooma, including their test-driven approach to implementation. Passing their Web Clickstream, PostgreSQL, MySQL and other business data through Alooma, they’re able to enrich and normalize their data in stream before it reaches their data warehouse. Mapper and Code Engine allow them to automate and ensure version control during the data integration process.

Join us on February 26th to learn what steps the team at Rover took to build out the infrastructure and processes that support their ML initiatives.

And stay for a live demo! See how Alooma Data Pipeline as a Service can empower your ML projects without the administrative overhead and constraints of managing a ML pipeline yourself.