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Likelihood-free cosmological parameter inference using theoretical high-order statistics predictions

December 16, 2021September 7, 2022 Jean-Luc Starck
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Likelihood-free cosmological parameter inference using theoretical high-order statistics predictions

Position: PhD
Deadline:  01/04/2022
Contact: Jean-Luc Starck, Sandrine Codis

Details about this position are provided in the following PDF.

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Author: Jean-Luc Starck

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