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The Genesis of ML² ML², a subset of the larger CILVR Lab (Computational Intelligence, Learning, Vision, and Robotics), has its roots in the collective vision of CDS Associate Professor of Linguistics and Data Science Sam Bowman and CDS Associate Professor of ComputerScience and Data Science Kyunghyun Cho.
Some people want both, and those people, if attending NYU, join the Math and Data research group at the Center for Data Science (CDS) , which, thanks to the ever-broader applicability of AI, is now working on some of the most important problems currently facing humanity.
The introduction of generative AI into society shines a bright spotlight on these educators. So education leaders are investing in new training and professional development for teachers on the best use cases for AI. These generative AI tools work on the web, and quite a few of them are available at no or very low cost.
While a bachelor’s degree in statistics is ideal, you can also major in fields like mathematics, economics, or computerscience with a strong focus on statistics coursework. Networking: Attend conferences, seminars, and workshops related to statistics and data analysis.
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