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公开(公告)号:US20250148412A1
公开(公告)日:2025-05-08
申请号:US18500930
申请日:2023-11-02
Applicant: Maplebear Inc.
Inventor: Charles Wesley , Brent Scheibelhut , Hua Xiao
IPC: G06Q10/083 , G08B21/18
Abstract: A trained computer model for automatic identification of a wrong delivery location for an order placed at an online system. The online system receives, via a user interface, a user input that includes a delivery location for the order. The online system compares the received delivery location with a stored delivery location for the user. Responsive to identifying that the received and stored delivery locations are different, the online system accesses and applies a computer model to predict, based on features of the order, a likelihood of the received delivery location being correct. The online system generates, based on the predicted likelihood, a confidence score of the received delivery location being correct. Responsive to the confidence score being below a threshold score, the online system causes a device of the user to display a user interface with a message prompting the user to verify accuracy of the received delivery location.
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公开(公告)号:US20240428125A1
公开(公告)日:2024-12-26
申请号:US18339203
申请日:2023-06-21
Applicant: Maplebear Inc. (dba Instacart)
Inventor: Amalia Rothschild-Keita , Brent Scheibelhut , Mark Oberemk , Hua Xiao , Shaun Navin Maharaj , Taha Amjad
IPC: G06N20/00
Abstract: An online concierge system uses a findability machine-learning model to predict the findability of items within a physical area. The findability model is a machine-learning model that is trained to compute findability scores, which are scores that represent the ease or difficulty of finding items within a physical area. The findability model computes findability scores for items based on an item map describing the locations of items within a physical area. The findability model is trained based on data describing pickers that collect items to service orders for the online concierge system. The online concierge system aggregates this information across a set of pickers to generate training examples to train the findability model. These training examples include item data for an item, an item map data describing an item map for the physical area, and a label that indicates a findability score for that item/item map pair.
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