EIT Manufacturing Info session - The first call
We invite all interested parties within Aalto (primarily professors, researchers and teachers) to hear about and discuss the innovation and education activity opportunities offered by the EIT Manufacturing Community to Aalto community.
Event date
08/02/2019
Location
Open Innovation House, 2nd Floor, Red Sofa area
Agenda
Background – Facts
Introduction – Contents, plans, activities
Next steps – Request for proposals
Groupwork - Ideas, pitches:
- Purpose: Generate project proposals/ideas for the first call to be opened in the spring
- Grouping according to flagships
- Pitching template (please find it as an attachment)
Submission of activity idea proposals: zoltan.javor@aalto.fi
About EIT Manufacturing
EIT Manufacturing will establish an innovation community and build a network of ecosystems where people
will acquire skills and encounter opportunities; and where innovators are able to attract investors and
acquire venture capital.
For more information about EIT Manufacturing Community please read the attached Factsheet or visit the link: https://eit.europa.eu/eit-community/eit-manufacturing
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