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FastFusionNet: New State-of-the-Art for DAWNBench SQuAD

28 February 2019
Felix Wu
Boyi Li
Lequn Wang
Ni Lao
John Blitzer
Kilian Q. Weinberger
    FedML
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Abstract

In this technical report, we introduce FastFusionNet, an efficient variant of FusionNet [12]. FusionNet is a high performing reading comprehension architecture, which was designed primarily for maximum retrieval accuracy with less regard towards computational requirements. For FastFusionNets we remove the expensive CoVe layers [21] and substitute the BiLSTMs with far more efficient SRU layers [19]. The resulting architecture obtains state-of-the-art results on DAWNBench [5] while achieving the lowest training and inference time on SQuAD [25] to-date. The code is available at https://github.com/felixgwu/FastFusionNet.

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