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Dec 17, 2020

Tru Optik, a TransUnion company, an identity resolution leader across streaming and connected media, has integrated OmniSci’s real-time analytics platform into its leading OTT (Over-the-Top) campaign measurement service Cross-Screen Audience Validation (CAV).

Dec 2, 2020

We are actively preparing the release of Immerse 5.5. When you will open it, you will be invited to use our new chart architecture. Why should you care? You should not. Just try it and enjoy faster and more robust charts.

Nov 13, 2020

How do we take full advantage of the enormous quantities of data streaming around us every day? The key is visualization. Big data visualizations help raw data tell a story that humans can understand and learn from.

Oct 13, 2020

OmniSci is proud to announce that we’ve been named a finalist for the 7th annual Glotel Telecoms Awards in the Telecoms Transformation category. 

Sep 4, 2020

Learn about the ways GIS technologies are improving disaster response operations and the challenges facing disaster response teams.

Aug 18, 2020

Thank you to Robert Luciani for writing this guest post. He is from Foxrane, an OmniSci partner, and has supplied the logistics dataset and expertise used in OmniSci software.

OmniSci’s experimental Mac build now available to try, for 90 days - experience the power and possibilities of OmniSciDB and Immerse running on your Mac, bringing interactivity and scale together for data analytics.

OmniSci 5.3 includes new charts, deeper interactivity, simplified filtering & updated map experience enabling powering analysis for our end users.

May 15, 2020

Businesses are drowning in data but starving for insight, making the hiring of a data science team vital. But what makes up a data science team? What are the best practices for data science workflows? And what do data scientists need to execute their data science workflow to the best of their ability?