Etalumis: bringing probabilistic programming to scientific simulators at scale
Main Authors: | Baydin, AG, Shao, L, Bhimji, W, Heinrich, L, Meadows, L, Liu, J, Munk, A, Naderiparizi, S, Gram-Hansen, B, Louppe, G, Ma, M, Zhao, X, Torr, PHS, Lee, V, Cranmer, K, Prabhat, Wood, F |
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Format: | Conference item |
Language: | English |
Published: |
ACM Digital Library
2019
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