Microsoft Fabric Updates Blog

Join us! Thursday 20 August, 2020 at 11:00 AM – 12:00  noon PDT with Gil Raviv!

Join us for a webinar on Thursday 20 August, 2020 at 11:00 AM – 12:00  noon PST, presented by Microsoft Data Platform MVP,  Gil Raviv from DataChant.  Gil will walk us through how to build your own Power BI report that analyses Covid-19 data. In this session, Gil will focus on Power Query, DAX, Time Intelligence and basic visualizations to help build a reliable Coronavirus dashboard.

 

Gil Raviv is an Author, Microsoft MVP, blogger.  As a former Senior Program Manager on the Microsoft Excel Product team, Gil led the design and integration of Power Query as the next-generation Get-Data and data-wrangling technology in Excel 2016, and he has been devoted M practitioner ever since (M=Power Query formula language).

With 20 years of software development experience, and four U.S. patents in the fields of social networks, cybersecurity, and analytics, Gil has held a variety of innovative roles in cybersecurity and data analytics, and he has delivered a wide range of software products from advanced threat detection enterprise systems to protection of children online.

Click here! to join us Thursday 20 August, 2020 at 11:00 AM – 12:00 noon PDT.

Here is more about Gil

 

 

Looking forward to seeing you at the webinar!

Kelly Kaye
Power BI MVP Lead, Power BI User Groups, Webinars, Community

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