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EURA NOVA Internships & Master Thesis

As of each year since its foundation, EURA NOVA proposes Master thesis subjects and research internships, led in collaboration with academic institutions.

In addition to our principal tracks in machine learning, graph processing and pattern detection, we welcome this year a new track in enterprise architecture. Continuing on its effort of the past years, EURA NOVA proposes internships in the area of machine learning, and more specifically deep learning, where impressive breakthroughs have been achieved recently.

A new feature of this year are the engineering internships. These give the opportunity to work in a dedicated team of engineers in order to create impact and value for the day-to-day business at EURA NOVA.

Places are limited, do not miss out this opportunity to work in a challenging and dynamic environment!

Thesis and internships subjects and application guidelines are available here: Internship and Master Thesis Offers.

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