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Deep learning for galaxy redshift estimation from photometry measurements

November 27, 2017September 21, 2018 Jean-Luc Starck
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Position: Internship
Deadline:  28/02/2018
Contact: J.Bobin & Joana Frontera-Pons

 

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Author: Jean-Luc Starck

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< Tackling compressed sensing recovery and component separation jointly from (very) large-scale radio-interferometric data
The Sunyaev-Zel’dovich effect: measurement of the distortion of primordial radiation by galaxy clusters >

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