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Covid Risk Assessment from Network Logs

As employees go back to work in offices in some countries, employers can use Network and Wifi connection logs to assess risk of disease transmission for high-traffic areas and proximity to individuals that are found to be infected.
Recorded Oct 14 2020 20 mins
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Presented by
Mike Hinchey, Solutions Architect, OmniSci & Dr. Mike Flaxman, Spatial Data Science Practice Lead, OmniSci

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    Training Goals:

    1. What is GPU analytics and why should I care? How can I get it?

    2. How to create powerful geotemporal dashboards in Immerse

    3. Using omniSQL to handle geotemporal data at scale

    4. Leverage Jupyter notebook integration to optimize data pipelines supporting interactive use cases
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  • Title: Covid Risk Assessment from Network Logs
  • Live at: Oct 14 2020 5:50 pm
  • Presented by: Mike Hinchey, Solutions Architect, OmniSci & Dr. Mike Flaxman, Spatial Data Science Practice Lead, OmniSci
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