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Chris Rackauckas

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Differentiating Metropolis-Hastings to Optimize Intractable Densities

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Jun 16, 2023
Gaurav Arya, Ruben Seyer, Frank Schäfer, Alexander K. Lew, Mathieu Huot, Vikash K. Mansinghka, Chris Rackauckas, Kartik Chandra, Moritz Schauer

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A Practitioner's Guide to Bayesian Inference in Pharmacometrics using Pumas

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Mar 31, 2023
Mohamed Tarek, Jose Storopoli, Casey Davis, Chris Elrod, Julius Krumbiegel, Chris Rackauckas, Vijay Ivaturi

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Efficient hybrid modeling and sorption model discovery for non-linear advection-diffusion-sorption systems: A systematic scientific machine learning approach

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Mar 30, 2023
Vinicius V. Santana, Erbet Costa, Carine M. Rebello, Ana Mafalda Ribeiro, Chris Rackauckas, Idelfonso B. R. Nogueira

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Locally Regularized Neural Differential Equations: Some Black Boxes Were Meant to Remain Closed!

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Mar 10, 2023
Avik Pal, Alan Edelman, Chris Rackauckas

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Differentiable modeling to unify machine learning and physical models and advance Geosciences

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Jan 10, 2023
Chaopeng Shen, Alison P. Appling, Pierre Gentine, Toshiyuki Bandai, Hoshin Gupta, Alexandre Tartakovsky, Marco Baity-Jesi, Fabrizio Fenicia, Daniel Kifer, Li Li, Xiaofeng Liu, Wei Ren, Yi Zheng, Ciaran J. Harman, Martyn Clark, Matthew Farthing, Dapeng Feng, Praveen Kumar, Doaa Aboelyazeed, Farshid Rahmani, Hylke E. Beck, Tadd Bindas, Dipankar Dwivedi, Kuai Fang, Marvin Höge, Chris Rackauckas, Tirthankar Roy, Chonggang Xu, Kathryn Lawson

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Automatic Differentiation of Programs with Discrete Randomness

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Oct 18, 2022
Gaurav Arya, Moritz Schauer, Frank Schäfer, Chris Rackauckas

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ReservoirComputing.jl: An Efficient and Modular Library for Reservoir Computing Models

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Apr 08, 2022
Francesco Martinuzzi, Chris Rackauckas, Anas Abdelrehim, Miguel D. Mahecha, Karin Mora

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Physics-enhanced deep surrogates for PDEs

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Nov 10, 2021
Raphaël Pestourie, Youssef Mroueh, Chris Rackauckas, Payel Das, Steven G. Johnson

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AbstractDifferentiation.jl: Backend-Agnostic Differentiable Programming in Julia

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Sep 25, 2021
Frank Schäfer, Mohamed Tarek, Lyndon White, Chris Rackauckas

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