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Inventor profile of:

Xiaoting Li

City:

Sunnyvale, California

Country:

United States

Published Applications:

5

Last publication date:

2026-01-08

Top Assignees for applications by Xiaoting Li

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

  • VISA INTERNATIONAL SERVICE ASSOCIATION 2 San Francisco, CA United States

Recent patent applications by Li Xiaoting

Xiaoting Li from Sunnyvale, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2026-01-08
US20260010778A1
Physics

System, Method, and Computer Program Product for Saving Memory During Training of Knowledge Graph Neural Networks

#2 | 2025-06-19
US20250200337A1
Physics

Method, System, and Computer Program Product for Simplifying Transformer for Sequential Recommendation

#3 | 2025-06-12
US20250190804A1
Physics

System, Method, and Computer Program Product for Active Learning in Graph Neural Networks Through Hybrid Uncertainty Reduction

#4 | 2025-04-03
US20250111213A1
Physics

System, Method, and Computer Program Product for Saving Memory During Training of Knowledge Graph Neural Networks

#5 | 2024-12-12
US20240412098A1
Physics

SYNTHESIZING REALISTIC TIME SERIES WITH OUTLIERS

InventorID:

6867514 ⎘

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