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Inventor profile of:

David Michael Vigna

City:

Sterling, Virginia

Country:

United States

Published Applications:

6

Last publication date:

2023-12-07

Recent patent applications by Vigna David Michael

David Michael Vigna from Sterling, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2023-12-07
US20230396629A1
Electricity

DASHBOARD AND REPORT WIDGET LAYOUTS WITH VERSIONING FUNCTIONALTIY FOR MULTIPLE DISPLAYS AND CLASSIFICATION OF DATA SETS AND INPUTS

#2 | 2022-11-24
US20220377092A1
Electricity

Method of implementing enterprise cyber reports

#3 | 2022-10-20
US20220337404A1
Electricity

DATA CLASSIFICATION MODEL WITH KEY STORE FOR IMPORT, STORAGE, EXPORT AND SECURITY COMPLIANCE END POINTS CHECKS

#4 | 2022-05-26
US20220164431A1
Physics

WEB FRAMEWORK DESIGNED FOR SECURE LOCKED DOWN BROWSERS

#5 | 2021-03-18
US20210084050A1
Electricity

Data classification of columns for web reports and widgets

#6 | 2020-12-24
US20200401471A1
Physics

Enterprise reports, error handler and audits compartmentalized by web application

InventorID:

2944510 ⎘

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