METHOD AND APPARATUS FOR SCHEDULING CLOUD SERVER

    公开(公告)号:US20180084039A1

    公开(公告)日:2018-03-22

    申请号:US15429386

    申请日:2017-02-10

    CPC classification number: H04L67/1023 G06F9/5083 H04L67/1095 H04L67/32

    Abstract: The present disclosure provides a method and apparatus for scheduling a cloud server. A specific implementation mode of the method comprises: monitoring whether current time is in a first pre-set time period; in response to the monitoring that the current time is in the first pre-set time period, scheduling a cloud server in a first cloud server cluster having a running state being an idle state, as a target cloud server, to a second cloud sever cluster, so that the target cloud server executes a task obtained by the second cloud server cluster; monitoring whether the current time is in a second pre-set time period; in response to the monitoring that the current time is in the second pre-set time period, rescheduling the target cloud server to the first cloud sever cluster, so that the target cloud server executes a task obtained by the first cloud server cluster.

    METHOD AND APPARATUS FOR UPDATING DEEP LEARNING MODEL

    公开(公告)号:US20190012576A1

    公开(公告)日:2019-01-10

    申请号:US16026976

    申请日:2018-07-03

    Abstract: The disclosure discloses a method and apparatus for updating a deep learning model. An embodiment of the method comprises: executing following updating: acquiring a training dataset under a preset path, training a preset deep learning model based on the training dataset to obtain a new deep learning model; updating the preset deep learning model to the new deep learning model; increasing training iterations; determining whether a number of training iterations reaches a threshold of training iterations; stopping executing the updating if the number of training iterations reaches the threshold of training iterations; and continuing to execute the updating after an interval of a preset time length if the number of training iterations fails to reach the threshold of training iterations. This embodiment has improved the model updating efficiency.

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