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Who is coming to eRum 2018 in Budapest?

(This article was first published on Appsilon Data Science Blog, and kindly contributed to R-bloggers)

Discover who is coming to eRum 2018 in Budapest while playing with an interactive data visualization in D3.js. Vist visualization’s page.

You can meet me (Olga) at the conference where I’ll be speaking about cool and open source packages for Shiny.

See you in Budapest !

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