Patent Assignment Details
NOTE:Results display only for issued patents and published applications.
For pending or abandoned applications please consult USPTO staff.
|
Reel/Frame: | 064857/0677 | |
| Pages: | 7 |
| | Recorded: | 09/11/2023 | | |
Attorney Dkt #: | CARTESIAM TO STI TRANSFER |
Conveyance: | ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). |
|
Total properties:
5
|
|
Patent #:
|
|
Issue Dt:
|
05/24/2022
|
Application #:
|
16880133
|
Filing Dt:
|
05/21/2020
|
Publication #:
|
|
Pub Dt:
|
11/26/2020
| | | | |
Title:
|
LEARNING METHOD FOR THE DETECTION OF ANOMALIES IMPLEMENTED ON A MICROCONTROLLER AND ASSOCIATED METHOD FOR DETECTING ANOMALIES
|
|
|
Patent #:
|
NONE
|
Issue Dt:
|
|
Application #:
|
17277126
|
Filing Dt:
|
03/17/2021
|
Publication #:
|
|
Pub Dt:
|
01/13/2022
| | | | |
Title:
|
METHOD FOR MONITORING THE OPERATION OF A MACHINE GENERATING VIBRATIONS AND DEVICE FOR THE IMPLEMENTATION OF SUCH A METHOD
|
|
|
Patent #:
|
|
Issue Dt:
|
01/30/2024
|
Application #:
|
17483014
|
Filing Dt:
|
09/23/2021
|
Publication #:
|
|
Pub Dt:
|
03/24/2022
| | | | |
Title:
|
METHOD FOR MONITORING A MACHINE ON THE BASIS OF ELECTRIC CURRENT SIGNALS AND DEVICE FOR IMPLEMENTING SUCH A METHOD
|
|
|
Patent #:
|
|
Issue Dt:
|
01/09/2024
|
Application #:
|
17660548
|
Filing Dt:
|
04/25/2022
|
Publication #:
|
|
Pub Dt:
|
08/04/2022
| | | | |
Title:
|
LEARNING METHOD FOR THE DETECTION OF ANOMALIES IMPLEMENTED ON A MICROCONTROLLER AND ASSOCIATED METHOD FOR DETECTING ANOMALIES
|
|
|
Patent #:
|
NONE
|
Issue Dt:
|
|
Application #:
|
18145984
|
Filing Dt:
|
12/23/2022
|
Publication #:
|
|
Pub Dt:
|
04/27/2023
| | | | |
Title:
|
LEARNING METHOD FOR THE DETECTION OF ANOMALIES FROM MULTIVARIATE DATA SETS AND ASSOCIATED ANOMALY DETECTION METHOD
|
|
Assignee
|
|
|
CHEMIN DU CHAMP-DES-FILLES 39 |
1228 PLAN-LES-OUATES |
GENEVA, SWITZERLAND |
|
Correspondence name and address
|
|
STMICROELECTRONICS, INC.
|
|
750 CANYON DRIVE
|
|
SUITE 300
|
|
COPPELL, TX 75019
|
Search Results as of:
06/21/2024 01:49 PM
If you have any comments or questions concerning the data displayed,
contact
PRD / Assignments at 571-272-3350. v.2.6
Web interface last modified:
August 25, 2017 v.2.6
|