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Characterizing deformability and surface friction of cancer cells S Byun, S Son, D Amodei, N Cermak, J Shaw, JH Kang, VC Hecht, ... Proceedings of the National Academy of Sciences 110 (19), 7580-7585, 2013 | 411 | 2013 |
Red teaming language models to reduce harms: Methods, scaling behaviors, and lessons learned D Ganguli, L Lovitt, J Kernion, A Askell, Y Bai, S Kadavath, B Mann, ... arXiv preprint arXiv:2209.07858, 2022 | 403 | 2022 |
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