Join us for the diiP Projects Day, an in-person event that will highlight past and upcoming projects, offer opportunities for discussions and networking, and host Prof. Joseph Sifakis (Turing Award winner, 2007) for the last Distinguished Lecture of 2023. Detailed information is listed below.
The diiP cordially invites you to its Projects Day
The diiP’s Projects Day will take place on Wednesday, December 6th, from 9 AM to 5:00 PM. This day will be an in-person event hosted at the Institut de Physique du Globe de Paris, 1 rue Jussieu (75005 Paris), in the Amphitheater, with a lunch hosted in the Médiathèque. During this event, diiP projects will present their problems and achievements thus far. It will also be an opportunity for researchers with an interest in data science to network and exchange new ideas.
In order to attend this event, please register using this form.
Event agenda
09:30 AM – 10:30 AM: Project presentations
10:30 AM – 11:00 AM: Coffee break + poster session
11:00 AM – 12:00 PM: Project presentations
12:00 PM – 02:00 PM: Lunch
03:30 PM – 04:00 PM: Coffee break + poster session
04:00 PM – 05:00 PM: Distinguished Lecture by Prof. Joseph Sifakis (Turing Award winner, 2007): Testing System Intelligence
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