Thursday, January 30, 2020 at 6:00:00 PM Conway Hall 1107 Rockhurst Rd, Kansas City, MO

The combination of machine learning with network graphs promises deep insights with clarifying context. Join data scientists and KC Graph Database Meetup organizers Erin Schuberth and Nathan Smith on the campus of Rockhurst University to explore this potent combination. Learn how to incorporate graph features into traditional machine learning models, and find out about new research into graph-specific algorithms like node embeddings and graph convolutional networks.

The Data Science KC Meetup and Kansas City Graph Databases Meetup are combining forces for this event. Because space is limited, please reserve a ticket on Eventbrite. https://www.eventbrite.com/e/machine-learning-with-graphs-tickets-87372773317

6:00 Networking and snacks
6:15 Welcome and introductions
6:30 Presentation from Erin Schuberth and Nathan Smith
7:15 Q&A

The Rockhurst campus address is 1100 Rockhurst Road, Kansas City, MO 64110. The university is southeast of the Plaza and near 71 Highway and Emanuel Clever Blvd. Campus runs along 52nd Street between Paseo and Troost. You will park in the North Parking Garage which can be accessed on Troost (#20 on https://www.rockhurst.edu/map). The electronic gate will be up, so please park anywhere after going through the gate unless otherwise marked. Conway Hall is south of the parking garage across Rockhurst Road (#7 on the map).

Join us in room 103 in Conway Hall at Rockhurst University. Park in the north parking garage accessible from Troost. The electronic gate in the garage will be up. Park anywhere unless otherwise indicated. Click here for event

0 Response to "January 30: Kansas City Graph Databases Meetup - Machine Learning with Graphs"

Post a Comment

Group Tools

Random Prize Winner
Use this tool to generate random numbers for prize drawings.




Follow this twitter list of the twitter accounts for the user groups. Ask for your group to be added to this list: twitter list
Subscribe to the Kansas City User Group Newspaper at Paper.li

Blog Archive

Followers