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Entrepreneurial Vision and MotivationAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Dr Alexandra Huener. Impulse-MaxwellCentre-NanoDTC-Innovation Seminar Series We would like to invite you to the next Innovation Seminar Series talk on 22 January 2018, 17:00 – 19:30, Small Lecture Theatre, Cavendish Laboratory. Prof Andy Hopper will talk about “Entrepreneurial Vision and Motivation” - Vision - Unbelievable Truth - Practical examples of different start-ups - Interface between academic and business world - Leadership Role Andy Hopper, Professor of Computer Technology at the University of Cambridge and Head of the Department of Computer Science and Technology has pursued academic and industrial careers simultaneously. In the industrial context he has co-founded thirteen spin-outs and start-ups, three of which floated on stock markets, as well as working for multinational companies. In recent years the companies he co-founded have received five Queen’s Awards for Enterprise. Agenda of the talk: 17:00 – 18:00 Talk 18:00 – 18:30 Discussion 18:30 – 19:30 Networking Come and join the talk with Andy. Spaces are limited so please register today. Send an email to impulse@maxwell.cam.ac.uk or register via eventbrite http://bit.ly/2Dklwv9 We look forward to welcoming you. For further information about Impulse please visit www.maxwell.cam.ac.uk/programmes/impulse or email us impulse@maxwell.cam.ac.uk This talk is part of the ah930's list series. This talk is included in these lists:Note that ex-directory lists are not shown. |
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