COOKIES: By using this website you agree that we can place Google Analytics Cookies on your device for performance monitoring. |
University of Cambridge > Talks.cam > Cambridge Enterprise > Creating research impact through commercialisation
Creating research impact through commercialisationAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Speaker to be confirmed. Register here: https://bit.ly/3GgHH1x If you are an academic, researcher or PhD student based within the University of Cambridge, and would like to learn more about how to commercialise the outcomes of your research, including protecting your intellectual property, or disclosing your inventions to the University; Cambridge Enterprise will be holding this webinar to explain how it‘s done. The webinar will include: An introduction to intellectual property, with details on how to protect and license IP. The benefits of sharing your knowledge as a consultant. Details of how to license research tools and what these include (reagents, software, copyright, database rights etc.). Information on forming a spin-out company and how Cambridge Enterprise can help. Feedback from academics who have worked with us, and a Q&A session Webinar details: Date: Tuesday 22 February. Time: 13:00 – 14:00. Platform: Microsoft Teams (joining link sent out 48hrs before event). Register here: https://bit.ly/3GgHH1x This talk is part of the Cambridge Enterprise series. This talk is included in these lists:Note that ex-directory lists are not shown. |
Other listsCollective Phenomena group meeting French Graduate Research Seminar Series (FGRS) Fitzwilliam Museum lunchtime talkOther talksThe long road of building a nervous system - smooth travels and accidents on the journey to get the shape and size. Gateway OfB MWS No Dollar Too Dark: Free Trade, Piracy, Privateering and Illegal Slave Trading in the Northeast Caribbean, Early 19th Century Chinese natural history objects in 18th-century Paris: reflections on the non-circulation of knowledge Mathematical Foundations of Deep Learning: Potential, Limitations, and Future Directions Welcome & Introduction |