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Inventor profile of:

Xiaochen Zhang

City:

Toronto

Country:

Canada

Published Applications:

7

Last publication date:

2024-12-12

Top Assignees for applications by Xiaochen Zhang

The entities that hold a legal rights for patent applications filed by inventor Zhang Xiaochen:

  • Geotab Inc. 2 Oakville, Canada

Recent patent applications by Zhang Xiaochen

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

#1 | 2024-12-12
US20240412083A1
Physics

MODULAR AND CONFIGURABLE COMPUTATIONAL FRAMEWORKS FOR REAL-TIME INFERENCING IN DISTRIBUTED COMPUTING ENVIRONMENTS

#2 | 2024-09-12
US20240303551A1
Physics

REAL-TIME PREDICTION OF FUTURE EVENTS USING TRAINED ARTIFICIAL INTELLIGENCE PROCESSES AND INFERRED GROUND-TRUTH LABELS

#3 | 2024-08-22
US20240281808A1
Physics

REAL-TIME PRE-APPROVAL OF DATA EXCHANGES USING TRAINED ARTIFICIAL INTELLIGENCE PROCESSES

#4 | 2021-05-13
US20210142596A1
Physics

Vehicle vocation system

#5 | 2021-05-13
US20210142595A1
Physics

VEHICLE BENCHMARKING METHOD

#6 | 2021-05-13
US20210140775A1
Physics

VEHICLE VOCATION METHOD

#7 | 2020-10-08
US20200320865A1
Physics

Method for defining intersections using machine learning

InventorID:

5077972 ⎘

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