Residential College | false |
Patent Number | PCT230622GZ |
Status | 申請中 Pending |
基於深度强化學習的邊緣計算網絡中的任務時間優化方法, PCT國際申請, Application Number: PCT230622GZ | |
Year Issued | 2023-06-05 |
2023-06-05 | |
Application Number | PCT230622GZ |
Wu Yuan; Tan Pengcheng | |
Country | China |
Subtype | 发明专利 Invention |
Abstract | This patent invents a task-processing latency optimization in edge computing networks. The invented methodology is based on the deep reinforcement learning and can effectively reduce the task-processing latency by flexibly scheduling different computation-tasks to different edge-nodes with heterogeneous computation-capacities. |
Document Type | Patent |
Collection | THE STATE KEY LABORATORY OF INTERNET OF THINGS FOR SMART CITY (UNIVERSITY OF MACAU) |
Recommended Citation GB/T 7714 | Wu Yuan,Tan Pengcheng. 基於深度强化學習的邊緣計算網絡中的任務時間優化方法, PCT國際申請, Application Number: PCT230622GZ. PCT230622GZ[P]. 2023-06-05. |
APA | Wu Yuan., & Tan Pengcheng 基於深度强化學習的邊緣計算網絡中的任務時間優化方法, PCT國際申請, Application Number: PCT230622GZ. |
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