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Deep speech 2: End-to-end speech recognition in english and mandarin D Amodei, S Ananthanarayanan, R Anubhai, J Bai, E Battenberg, C Case, ... International conference on machine learning, 173-182, 2016 | 3780 | 2016 |
A cross-platform toolkit for mass spectrometry and proteomics MC Chambers, B Maclean, R Burke, D Amodei, DL Ruderman, ... Nature biotechnology 30 (10), 918-920, 2012 | 3433 | 2012 |
Evaluating large language models trained on code M Chen, J Tworek, H Jun, Q Yuan, HPDO Pinto, J Kaplan, H Edwards, ... arXiv preprint arXiv:2107.03374, 2021 | 2934 | 2021 |
Concrete problems in AI safety D Amodei, C Olah, J Steinhardt, P Christiano, J Schulman, D Mané arXiv preprint arXiv:1606.06565, 2016 | 2887 | 2016 |
Deep reinforcement learning from human preferences PF Christiano, J Leike, T Brown, M Martic, S Legg, D Amodei Advances in neural information processing systems 30, 2017 | 2830 | 2017 |
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Fine-tuning language models from human preferences DM Ziegler, N Stiennon, J Wu, TB Brown, A Radford, D Amodei, ... arXiv preprint arXiv:1909.08593, 2019 | 1229 | 2019 |
Training a helpful and harmless assistant with reinforcement learning from human feedback Y Bai, A Jones, K Ndousse, A Askell, A Chen, N DasSarma, D Drain, ... arXiv preprint arXiv:2204.05862, 2022 | 1190 | 2022 |
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Benchmarking safe exploration in deep reinforcement learning A Ray, J Achiam, D Amodei arXiv preprint arXiv:1910.01708 7 (1), 2, 2019 | 419 | 2019 |
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 | 405 | 2013 |
Reward learning from human preferences and demonstrations in atari B Ibarz, J Leike, T Pohlen, G Irving, S Legg, D Amodei Advances in neural information processing systems 31, 2018 | 401 | 2018 |
Building high-quality assay libraries for targeted analysis of SWATH MS data OT Schubert, LC Gillet, BC Collins, P Navarro, G Rosenberger, WE Wolski, ... Nature protocols 10 (3), 426-441, 2015 | 359 | 2015 |
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