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Machine Learning for Euclid Mass Mapping and Cosmological Parameter Estimation

Posted on November 18, 2019September 28, 2020 by Jean-Luc Starck

Deep Learning on the Sphere and Reconstruction of Dark Matter Mass Maps

Position: PhD
Deadline:  28/02/2020
Contact: J.-L. Starck and F. Lanusse

Details about this position are provided in the following PDF.

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