DataRobot PartnersUnify your AI stack with our open platform, extend your cloud investments, and connect with service providers to help you build, deploy, or migrate to DataRobot.
This post was originally part of the DataRobot Community. Visit now to browse discussions and ask questions about DataRobot, AI Platform, data science, and more.
In version 6.1, DataRobot released Location AI for AutoML which enables geospatial capabilities in machine learning models. Geospatial analysis is critical to a wide variety of industries and use cases, and the combination of machine learning and geospatial analysis is emerging as a valuable tool for improving modeling in these domains.
The new Location AI tools provide DataRobot users with tools for geospatial file ingest, geospatial visualizations, spatial modeling, and geospatial model insights.
In this learning session, we will introduce DataRobot’s Location AI capabilities and survey the industries and use cases that stand to benefit immediately from the emerging use of geospatial analysis in their machine learning workflows. We will also cover some data preparation and modeling strategies; these will help you get up and running with Location AI to make sure you get the most out of your geospatial data.
Hosts
Kevin Stofan (DataRobot, Data Scientist)
Rajiv Shah (DataRobot, Customer Facing Data Scientist)