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公开(公告)号:US11625320B2
公开(公告)日:2023-04-11
申请号:US16946690
申请日:2020-07-01
Inventor: Xuanhua Shi , Xuan Peng , Hai Jin , Hulin Dai , Weiliang Ma , Qian Xiong
IPC: G06F12/02 , G06F12/0806 , G06N5/046 , G06T1/60
Abstract: The present disclosure relates to a tensor-based optimization method for GPU memory management of deep learning, at least comprising steps of: executing at least one computing operation, which gets tensors as input and generates tensors as output; when one said computing operation is executed, tracking access information of the tensors, and setting up a memory management optimization decision based on the access information, during a first iteration of training, performing memory swapping operations passively between a CPU memory and a GPU memory so as to obtain the access information about the tensors regarding a complete iteration; according to the obtained access information about the tensors regarding the complete iteration, setting up a memory management optimization decision; and in a successive iteration, dynamically adjusting the set optimization decision of memory management according to operational feedbacks.