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Michal Valko | Romuald Elie | Andrew Jaegle | Thore Graepel | Ian Graham | Kris Cao | Alexandre Galashov | Nicolas Heess | Pauline Luc | Zhe Wang | Karl Tuyls | Pablo Sprechmann | Ali Eslami | Marta Garnelo | Demis Hassabis | Mark Rowland | Julien Perolat | Bart De Vylder | Remi Munos | Alex Bridgland | Praneet Dutta | Trevor Back | Pol Moreno | Shayegan Omidshafiei | Paul Muller | Jerome Connor | Daniel Hennes | William Spearman | Tim Waskett | Dafydd Steele | Adria Recasens | Gregory Thornton | Razia Ahamed | Simon Bouton | Nathalie Beauguerlange | Jackson Broshear | Jerome T. Connor | D. Hassabis | N. Heess | R. Munos | Mark Rowland | Pol Moreno | T. Graepel | K. Tuyls | J. Pérolat | P. Sprechmann | Michal Valko | M. Garnelo | Alexandre Galashov | Shayegan Omidshafiei | Adrià Recasens | T. Back | Andrew Jaegle | Daniel Hennes | Kris Cao | W. Spearman | Alex Bridgland | Zhe Wang | R. Elie | Paul Muller | I. Graham | A. Eslami | Pauline Luc | B. D. Vylder | Nathalie Beauguerlange | Praneet Dutta | D. Steele | Gregory Thornton | M. Rowland | Jackson Broshear | Simon Bouton | Tim Waskett | Razia Ahamed | R. Élie
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