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Ahmed Elnaggar

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Ankh: Optimized Protein Language Model Unlocks General-Purpose Modelling

Jan 16, 2023
Ahmed Elnaggar, Hazem Essam, Wafaa Salah-Eldin, Walid Moustafa, Mohamed Elkerdawy, Charlotte Rochereau, Burkhard Rost

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CodeTrans: Towards Cracking the Language of Silicone's Code Through Self-Supervised Deep Learning and High Performance Computing

Apr 06, 2021
Ahmed Elnaggar, Wei Ding, Llion Jones, Tom Gibbs, Tamas Feher, Christoph Angerer, Silvia Severini, Florian Matthes, Burkhard Rost

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ProtTrans: Towards Cracking the Language of Life's Code Through Self-Supervised Deep Learning and High Performance Computing

Jul 20, 2020
Ahmed Elnaggar, Michael Heinzinger, Christian Dallago, Ghalia Rihawi, Yu Wang, Llion Jones, Tom Gibbs, Tamas Feher, Christoph Angerer, Martin Steinegger, Debsindhu Bhowmik, Burkhard Rost

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Multi-Task Deep Learning for Legal Document Translation, Summarization and Multi-Label Classification

Oct 16, 2018
Ahmed Elnaggar, Christoph Gebendorfer, Ingo Glaser, Florian Matthes

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Named-Entity Linking Using Deep Learning For Legal Documents: A Transfer Learning Approach

Oct 15, 2018
Ahmed Elnaggar, Robin Otto, Florian Matthes

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Stop Illegal Comments: A Multi-Task Deep Learning Approach

Oct 15, 2018
Ahmed Elnaggar, Bernhard Waltl, Ingo Glaser, Jörg Landthaler, Elena Scepankova, Florian Matthes

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