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University of Cambridge > Talks.cam > C.U. Ethics in Mathematics Society (CUEiMS) > Ethics for the working mathematician, discussion 6: Understanding the behaviour of the mathematical community
Ethics for the working mathematician, discussion 6: Understanding the behaviour of the mathematical communityAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Artem Khovanov. Just like every other academic field, mathematicians form their own community, with their own conventions, common beliefs, and schools of thought. We hand our teachings down through the generations, and this process goes all the way back to Euclid. But the ways of thinking we employ when doing mathematics in an abstract research setting may not serve us well in an industrial setting. It is important to be aware that not all the actions that make us good at mathematics will necessarily lead to us producing good solutions to industrial or social problems. In fact, some of our ways of viewing and approaching problems will hold us back when working outside academia. For more information about this series of discussions, please see https://cueims.soc.srcf.net/2021. This talk is part of the C.U. Ethics in Mathematics Society (CUEiMS) series. This talk is included in these lists:
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