Difference between revisions of "Summer Talks: Training and the problem of data"
m (Hd-onions moved page Training and the problem of data: What would it take to adopt fugitive statistics to Summer Talks: Training and the problem of data: What would it take to adopt fugitive statistics)
Revision as of 16:17, 13 November 2015
Template:Events Training and the problem of data: What would it take to adopt a fugitive statistics? by Ramon Amaro during the Hackers & Designers Summer Talks 2015
Ramon Amaro is a PhD researcher at the Centre for Cultural Studies, Goldsmiths, University of London and Assistant Editor of Big Data & Society, a SAGE journal. Ramon is a Mechanical Engineer and Social Scientist with a background in Technology and Engineering Policy, Engineering Quality Design, and Sociological Research. His doctoral research looks at the ethics of machine learning, artificial intelligence, and big data mining.
Ramon holds a Masters degree in Sociological Research from the University of Essex, and a BSe in Mechanical Engineering from the University of Michigan, Ann Arbor. Prior to my doctoral research, he was a policy manager for the American Society of Mechanical Engineers (ASME), Alternative Fuels Division and a quality design engineer for General Motors Corporation
This lecture was part of the Hackers & Designers Summer Talks 2015 7 August 2015 in De PUNT Amsterdam http://summer.hackersanddesigners.nl