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#IJCAI2019 main conference in tweets – day 2


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14 August 2019



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Like yesterday, we bring you the best tweets covering major talks and events at IJCAI 2019.

Talks

Paper and Poster Presentations

https://twitter.com/ShohrehHd/status/1161471117640343552

Demos

https://twitter.com/ShohrehHd/status/1161497465935343619

50 years old IJCAI panel discussion

Start of industry days

Women’s Lunch

 




Nedjma Ousidhoum is a postdoc at the University of Cambridge.
Nedjma Ousidhoum is a postdoc at the University of Cambridge.




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