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公开(公告)号:US12265980B2
公开(公告)日:2025-04-01
申请号:US18240798
申请日:2023-08-31
Applicant: Maplebear Inc.
Inventor: Shuo Feng , Chia-Eng Chang , Aoshi Li , Pak Hong Wong , Leo Kwan , Mengyu Zhang , Van Nguyen , Aman Jain , Ziwei Shi , Ajay Pankaj Sampat , Rucheng Xiao
IPC: G06Q30/0201
Abstract: An online system receives information describing an order placed by a user of the online system and a set of contextual features associated with servicing the order. The online system also retrieves a set of user features associated with the user. The online system accesses a machine learning model trained to predict a tip amount the user is likely to provide for servicing the order and applies the machine learning model to a set of inputs, in which the set of inputs includes the information describing the order, the set of user features, and the set of contextual features. The online system then determines a suggested tip amount for servicing the order based on the predicted tip amount.
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公开(公告)号:US20250111303A1
公开(公告)日:2025-04-03
申请号:US18374457
申请日:2023-09-28
Applicant: Maplebear Inc.
Inventor: Rucheng Xiao , Aoshi Li , Youdan Xu , Mengyu Zhang , Chen Zhang , Ziwei Shi , Matthew Donghyun Kim
IPC: G06Q10/0631
Abstract: An online concierge system identifies a set of attributes of one or more future time periods and accesses a machine learning model trained to predict a set of working hours for a picker during a future time period, in which the set of working hours describes an availability of the picker to service orders placed with the online concierge system. The online concierge system then applies the machine learning model to the set of attributes to predict the set of working hours for the picker during the future time periods and stores the predicted set of working hours for the picker during the future time periods.
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3.
公开(公告)号:US20250078105A1
公开(公告)日:2025-03-06
申请号:US18240798
申请日:2023-08-31
Applicant: Maplebear Inc.
Inventor: Shuo Feng , Chia-Eng Chang , Aoshi Li , Pak Hong Wong , Leo Kwan , Mengyu Zhang , Van Nguyen , Aman Jain , Ziwei Shi , Ajay Pankaj Sampat , Rucheng Xiao
IPC: G06Q30/0201
Abstract: An online system receives information describing an order placed by a user of the online system and a set of contextual features associated with servicing the order. The online system also retrieves a set of user features associated with the user. The online system accesses a machine learning model trained to predict a tip amount the user is likely to provide for servicing the order and applies the machine learning model to a set of inputs, in which the set of inputs includes the information describing the order, the set of user features, and the set of contextual features. The online system then determines a suggested tip amount for servicing the order based on the predicted tip amount.
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