Invention Grant
- Patent Title: Method and apparatus for task scheduling based on deep reinforcement learning, and device
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Application No.: US17015269Application Date: 2020-09-09
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Publication No.: US11886993B2Publication Date: 2024-01-30
- Inventor: Qi Qi , Haifeng Sun , Jing Wang , Lingxin Zhang , Jingyu Wang , Jianxin Liao
- Applicant: Beijing University of Posts and Telecommunications
- Applicant Address: CN Beijing
- Assignee: BEIJING UNIVERSITY OF POSTS AND TELECOMMUNICATIONS
- Current Assignee: BEIJING UNIVERSITY OF POSTS AND TELECOMMUNICATIONS
- Current Assignee Address: CN Beijing
- Agency: PATENT PORTFOLIO BUILDERS PLLC
- Priority: CN 1910864432.X 2019.09.12
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N3/047

Abstract:
Disclosed are a method and apparatus for task scheduling based on deep reinforcement learning and a device. The method comprises: obtaining multiple target subtasks to be scheduled; building target state data corresponding to the multiple target subtasks, wherein the target state data comprises a first set, a second set, a third set, and a fourth set; inputting the target state data into a pre-trained task scheduling model, to obtain a scheduling result of each target subtask; wherein, the scheduling result of each target subtask comprises a probability that the target subtask is scheduled to each target node; for each target subtask, determining a target node to which the target subtask is to be scheduled based on the scheduling result of the target subtask, and scheduling the target subtask to the determined target node.
Public/Granted literature
- US20210081787A1 METHOD AND APPARATUS FOR TASK SCHEDULING BASED ON DEEP REINFORCEMENT LEARNING, AND DEVICE Public/Granted day:2021-03-18
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