JP7163381B2 - ニューラル・ネットワークの効率の促進 - Google Patents

ニューラル・ネットワークの効率の促進 Download PDF

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JP7163381B2
JP7163381B2 JP2020521465A JP2020521465A JP7163381B2 JP 7163381 B2 JP7163381 B2 JP 7163381B2 JP 2020521465 A JP2020521465 A JP 2020521465A JP 2020521465 A JP2020521465 A JP 2020521465A JP 7163381 B2 JP7163381 B2 JP 7163381B2
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ワン、ヂオ
チェ、ジンウク
ゴパラクリシュナン、カイラッシュ
ヴェンカタマニ、スワガス
サカ、チャーベル
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JP2020521465A 2017-10-24 2018-10-04 ニューラル・ネットワークの効率の促進 Active JP7163381B2 (ja)

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US15/792,733 US11195096B2 (en) 2017-10-24 2017-10-24 Facilitating neural network efficiency
PCT/IB2018/057712 WO2019082005A1 (en) 2017-10-24 2018-10-04 FACILITATING THE EFFECTIVENESS OF ARTIFICIAL NEURONIC NETWORK

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CN111226233A (zh) 2020-06-02
US11195096B2 (en) 2021-12-07
DE112018004693T5 (de) 2020-06-18
WO2019082005A1 (en) 2019-05-02
US20190122116A1 (en) 2019-04-25
GB202006969D0 (en) 2020-06-24
JP2021500654A (ja) 2021-01-07
GB2581728A (en) 2020-08-26

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