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nmtpytorch
allows training of various end-to-end neural architectures including
but not limited to neural machine translation, image captioning and automatic
speech recognition systems. The initial codebase was in Theano
and was
inspired from the famous dl4mt-tutorial
codebase.
nmtpytorch
is mainly developed by the Language and Speech Team of Le Mans University but
receives valuable contributions from the Grounded Sequence-to-sequence Transduction Team
of Frederick Jelinek Memorial Summer Workshop 2018:
Loic Barrault, Ozan Caglayan, Amanda Duarte, Desmond Elliott, Spandana Gella, Nils Holzenberger, Chirag Lala, Jasmine (Sun Jae) Lee, Jindřich Libovický, Pranava Madhyastha, Florian Metze, Karl Mulligan, Alissa Ostapenko, Shruti Palaskar, Ramon Sanabria, Lucia Specia and Josiah Wang.
If you use nmtpytorch, you may want to cite the following paper:
@article{nmtpy2017,
author = {Ozan Caglayan and
Mercedes Garc\'{i}a-Mart\'{i}nez and
Adrien Bardet and
Walid Aransa and
Fethi Bougares and
Lo\"{i}c Barrault},
title = {NMTPY: A Flexible Toolkit for Advanced Neural Machine Translation Systems},
journal = {Prague Bull. Math. Linguistics},
volume = {109},
pages = {15--28},
year = {2017},
url = {https://ufal.mff.cuni.cz/pbml/109/art-caglayan-et-al.pdf},
doi = {10.1515/pralin-2017-0035},
timestamp = {Tue, 12 Sep 2017 10:01:08 +0100}
}
nmtpytorch is developed in Informatics Lab / Le Mans University - France