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Jamie Smith

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Neural General Circulation Models

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Nov 28, 2023
Dmitrii Kochkov, Janni Yuval, Ian Langmore, Peter Norgaard, Jamie Smith, Griffin Mooers, James Lottes, Stephan Rasp, Peter Düben, Milan Klöwer, Sam Hatfield, Peter Battaglia, Alvaro Sanchez-Gonzalez, Matthew Willson, Michael P. Brenner, Stephan Hoyer

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Score-Based Diffusion Models as Principled Priors for Inverse Imaging

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Apr 23, 2023
Berthy T. Feng, Jamie Smith, Michael Rubinstein, Huiwen Chang, Katherine L. Bouman, William T. Freeman

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Ensembling over Classifiers: a Bias-Variance Perspective

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Jun 21, 2022
Neha Gupta, Jamie Smith, Ben Adlam, Zelda Mariet

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Understanding the bias-variance tradeoff of Bregman divergences

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Feb 10, 2022
Ben Adlam, Neha Gupta, Zelda Mariet, Jamie Smith

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Scalable and Flexible Deep Bayesian Optimization with Auxiliary Information for Scientific Problems

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Apr 23, 2021
Samuel Kim, Peter Y. Lu, Charlotte Loh, Jamie Smith, Jasper Snoek, Marin Soljačić

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Estimating the Spectral Density of Large Implicit Matrices

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Feb 09, 2018
Ryan P. Adams, Jeffrey Pennington, Matthew J. Johnson, Jamie Smith, Yaniv Ovadia, Brian Patton, James Saunderson

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TensorFlow Estimators: Managing Simplicity vs. Flexibility in High-Level Machine Learning Frameworks

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Aug 08, 2017
Heng-Tze Cheng, Zakaria Haque, Lichan Hong, Mustafa Ispir, Clemens Mewald, Illia Polosukhin, Georgios Roumpos, D Sculley, Jamie Smith, David Soergel, Yuan Tang, Philipp Tucker, Martin Wicke, Cassandra Xia, Jianwei Xie

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