Towards Foundational Models for Molecular Learning on Large-Scale Multi-Task Datasets
Dominique Beaini, Dominic Masters, Michał Koziarski(University of Toronto), Prudencio Tossou, Zhaocheng Zhu(Mila - Quebec Artificial Intelligence Institute), Mirco Ravanelli(Concordia University), Reihaneh Rabbany, Luis T. Díaz Müller, Ali Parviz, Błażej Banaszewski, Michael Craig(Trinity College Dublin), Frederik Wenkel(Mila - Quebec Artificial Intelligence Institute), Jama Hussein Mohamud, Jian Tang(China National Hybrid Rice R&D Central Hunan Hybrid Rice Reserch Center), Cristian Gabellini, Hadrien Mary, Gabriela Moisescu-Pareja, Zhiyi Li, Jiarui Lu(Mila - Quebec Artificial Intelligence Institute), Joao Alex Cunha, Shenyang Huang(Centre Universitaire de Mila), Samuel Maddrell-Mander, Oleksandr Dymov, Christopher G. Morris(University of Florida Health), Callum McLean(Graphcore (United Kingdom)), Guy Wolf(Université de Montréal), Chad Martin(Graphcore (United Kingdom)), Guillaume Rabusseau
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