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Inventor profile of:

Aoshi Li

City:

Toronto

Country:

Canada

Published Applications:

6

Last publication date:

2025-10-02

Top Assignees for applications by Aoshi Li

The entities that hold a legal rights for patent applications filed by inventor Li Aoshi:

  • Maplebear Inc. 4 San Francisco, CA United States

Recent patent applications by Li Aoshi

Aoshi Li from Toronto, CA has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2025-10-02
US20250306860A1
Physics

VALIDATING CODE OWNERSHIP OF SOFTWARE COMPONENTS IN A SOFTWARE DEVELOPMENT SYSTEM

#2 | 2025-04-03
US20250111303A1
Physics

MACHINE LEARNING PREDICTION OF WORKING HOURS FOR PICKERS OF A FULFILLMENT SERVICE

#3 | 2025-03-06
US20250078105A1
Physics

Using a predictive model to identify context features causing above-average tip amount

#4 | 2025-03-06
US20250078056A1
Physics

PREDICTING ITEM WEIGHTS USING A TRAINED MACHINE LEARNING MODEL

#5 | 2024-12-26
US20240427559A1
Physics

VALIDATING CODE OWNERSHIP OF SOFTWARE COMPONENTS IN A SOFTWARE DEVELOPMENT SYSTEM

#6 | 2024-12-05
US20240403826A1
Physics

DETECTION AND REMEDIATION OF IMPROPER VALUE MODIFICATION USING MACHINE LEARNING

InventorID:

6860382 ⎘

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