OpenNMT-tf - Neural machine translation and sequence learning using TensorFlow

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and all of the above can be used simultaneously to train novel and complex architectures. See the predefined models to discover how they are defined and the API documentation to customize them. Additional experimental models are available in the config/models/ directory and can be used with the option --model .

http://opennmt.net/
https://github.com/OpenNMT/OpenNMT-tf

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