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From Research to Production and Back: Ludicrously Fast Neural Machine Translation

机译:从研究到生产再到生产:可笑的快速神经机器翻译

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This paper describes the submissions of the "Marian" team to the WNGT 2019 efficiency shared task. Taking our dominating submissions to the previous edition of the shared task as a starting point, we develop improved teacher-student training via multi-agent dual-learning and noisy backward-forward translation for Transformer-based student models. For efficient CPU-based decoding, we propose pre-packed 8-bit matrix products, improved batched decoding, cache-friendly student architectures with parameter sharing and light-weight RNN-based decoder architectures. GPU-based decoding benefits from the same architecture changes, from pervasive 16-bit inference and concurrent streams. These modifications together with profiler-based C++ code optimization allow us to push the Pareto frontier established during the 2018 edition towards 24x (CPU) and 14x (GPU) faster models at comparable or higher BLEU values. Our fastest CPU model is more than 4x faster than last year's fastest submission at more than 3 points higher BLEU. Our fastest GPU model at 1.5 seconds translation time is slightly faster than last year's fastest RNN-based submissions, but outperforms them by more than 4 BLEU and 10 BLEU points respectively.
机译:本文介绍了``玛丽安''团队向WNGT 2019效率共享任务提交的意见。以我们对共享任务的上一版本的主要提交为出发点,我们通过多主体双学习和基于Transformer的学生模型的嘈杂的正向翻译来开发改进的师生训练。为了基于CPU的高效解码,我们提出了预打包的8位矩阵产品,改进的批量解码,具有参数共享功能的缓存友好型学生体系结构以及基于RNN的轻量级解码器体系结构。基于GPU的解码受益于相同的体系结构更改,包括普适的16位推理和并发流。这些修改以及基于Profiler的C ++代码优化使我们能够将2018年版本中建立的Pareto前沿推向可比或更高BLEU值的24倍(CPU)和14倍(GPU)更快的模型。我们最快的CPU模型比去年最快的CPU模型快4倍以上,BLEU则高出3个百分点。我们最快的GPU模型在1.5秒的翻译时间上比去年最快的基于RNN的提交速度稍快,但分别比它们高出4个BLEU和10个BLEU点。

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