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Inventor profile of:

Philip Alvelda, VII

City:

Arlington, Virginia

Country:

United States

Published Applications:

4

Last publication date:

2021-12-23

Recent patent applications by Alvelda, VII Philip

Philip Alvelda, VII from Arlington, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2021-12-23
US20210397926A1
Physics

DATA REPRESENTATIONS AND ARCHITECTURES, SYSTEMS, AND METHODS FOR MULTI-SENSORY FUSION, COMPUTING, AND CROSS-DOMAIN GENERALIZATION

#2 | 2021-12-16
US20210390397A1
Physics

METHOD, MACHINE-READABLE MEDIUM AND SYSTEM TO PARAMETERIZE SEMANTIC CONCEPTS IN A MULTI-DIMENSIONAL VECTOR SPACE AND TO PERFORM CLASSIFICATION, PREDICTIVE, AND OTHER MACHINE LEARNING AND AI ALGORITHMS THEREON

#3 | 2020-04-02
US20200104726A1
Physics

MACHINE LEARNING DATA REPRESENTATIONS, ARCHITECTURES, AND SYSTEMS THAT INTRINSICALLY ENCODE AND REPRESENT BENEFIT, HARM, AND EMOTION TO OPTIMIZE LEARNING

#4 | 2020-04-02
US20200104641A1
Physics

MACHINE LEARNING USING SEMANTIC CONCEPTS REPRESENTED WITH TEMPORAL AND SPATIAL DATA

InventorID:

2691663 ⎘

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