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SYSTRAN's Pure Neural Machine Translation Systems

18 October 2016
Josep Crego
Jungi Kim
Guillaume Klein
Anabel Rebollo
Kathy Yang
Jean Senellart
Egor Akhanov
Patrice Brunelle
Aurelien Coquard
Yongchao Deng
Satoshi Enoue
Chiyo Geiss
Joshua Johanson
Ardas Khalsa
Raoum Khiari
Byeongil Ko
Catherine Kobus
Jean Lorieux
L. Martins
Dang-Chuan Nguyen
A. Priori
Thomas Riccardi
N. Segal
Christophe Servan
Cyril Tiquet
Bo Wang
Jin Yang
Dakun Zhang
Jing Zhou
Peter Zoldan
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Abstract

Since the first online demonstration of Neural Machine Translation (NMT) by LISA, NMT development has recently moved from laboratory to production systems as demonstrated by several entities announcing roll-out of NMT engines to replace their existing technologies. NMT systems have a large number of training configurations and the training process of such systems is usually very long, often a few weeks, so role of experimentation is critical and important to share. In this work, we present our approach to production-ready systems simultaneously with release of online demonstrators covering a large variety of languages (12 languages, for 32 language pairs). We explore different practical choices: an efficient and evolutive open-source framework; data preparation; network architecture; additional implemented features; tuning for production; etc. We discuss about evaluation methodology, present our first findings and we finally outline further work. Our ultimate goal is to share our expertise to build competitive production systems for "generic" translation. We aim at contributing to set up a collaborative framework to speed-up adoption of the technology, foster further research efforts and enable the delivery and adoption to/by industry of use-case specific engines integrated in real production workflows. Mastering of the technology would allow us to build translation engines suited for particular needs, outperforming current simplest/uniform systems.

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