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公开(公告)号:US11663814B2
公开(公告)日:2023-05-30
申请号:US16855681
申请日:2020-04-22
Applicant: Arm Limited
Inventor: Urmish Ajit Thakker , Jin Tao , Ganesh Suryanarayan Dasika , Jesse Garrett Beu
CPC classification number: G06N3/082 , G06F17/18 , G06K9/6267 , G06N3/0472
Abstract: The present disclosure advantageously provides a system and a method for skipping recurrent neural network (RNN) state updates using a skip predictor. Sequential input data are received and divided into sequences of input data values, each input data value being associated with a different time step for a pre-trained RNN model. At each time step, the hidden state vector for a prior time step is received from the pre-trained RNN model, and a determination, based on the input data value and the hidden state vector for at least one prior time step, is made whether to provide or not provide the input data value associated with the time step to the pre-trained RNN model for processing. When the input data value is not provided, the pre-trained RNN model does not update its hidden state vector. Importantly, the skip predictor is trained without retraining the pre-trained RNN model.
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公开(公告)号:US20210056422A1
公开(公告)日:2021-02-25
申请号:US16855681
申请日:2020-04-22
Applicant: Arm Limited
Inventor: Urmish Ajit Thakker , Jin Tao , Ganesh Suryanarayan Dasika , Jesse Garrett Beu
Abstract: The present disclosure advantageously provides a system and a method for skipping recurrent neural network (RNN) state updates using a skip predictor. Sequential input data are received and divided into sequences of input data values, each input data value being associated with a different time step for a pre-trained RNN model. At each time step, the hidden state vector for a prior time step is received from the pre-trained RNN model, and a determination, based on the input data value and the hidden state vector for at least one prior time step, is made whether to provide or not provide the input data value associated with the time step to the pre-trained RNN model for processing. When the input data value is not provided, the pre-trained RNN model does not update its hidden state vector. Importantly, the skip predictor is trained without retraining the pre-trained RNN model.
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