CASTLE
DEAD

Serial Number

97805833

Owner

CVS PHARMACY, INC.

Attorney

Erich G. Rhynhart

Filing Date

Feb 22, 2023

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CASTLE Trademark

Serial Number: 97805833

CASTLE is a trademark filed by CVS PHARMACY, INC. on February 22, 2023. The trademark is classified under Class 9 (Computers & Electronics), Class 42 (Computer & Scientific). The application is currently no longer active.

Owner Contact Info

CVS PHARMACY, INC. (1,087 trademarks)

WOONSOCKET, RI 02895

Entity Type: 03

Trademark Details

Filing Date

February 22, 2023

Registration Date

Not Registered

Published for Opposition

December 19, 2023

Goods & Services

Downloadable software for building machine learning models; Downloadable software for building machine learning models to predict clinical and patient outcomes; Downloadable software for building machine learning models for use by pharmaceutical companies, insurance companies, and hospitals; Downloadable software for developing predictive models in the pharmaceutical, insurance and healthcare fields; Downloadable software for developing predictive models related to patient care; Downloadable software for analyzing insurance data to create predictive models using machine learning

Providing temporary use of on-line non-downloadable software for building machine learning models; Providing temporary use of on-line non-downloadable software for building machine learning models to predict clinical and patient outcomes; Providing temporary use of online non-downloadable software for building machine learning models for use by pharmaceutical companies, insurance companies, and hospitals; Providing temporary use of on-line non-downloadable software for developing predictive models in the pharmaceutical, insurance and healthcare fields; Providing temporary use of on-line non-downloadable software for developing predictive models related to patient care; Providing temporary use of on-line non-downloadable software for analyzing insurance data to create predictive models using machine learning; developing software featuring machine learning technology for predictive modeling

Filing History

ABANDONMENT NOTICE E-MAILED - NO USE STATEMENT FILED
Oct 9, 2025 MAB6
ABANDONMENT - NO USE STATEMENT FILED
Oct 9, 2025 ABN6
NOTICE OF APPROVAL OF EXTENSION REQUEST E-MAILED
Jul 24, 2024 EXRA
SOU EXTENSION 1 GRANTED
Jul 23, 2024 EX1G
SOU EXTENSION 1 FILED
Jul 23, 2024 EXT1
SOU TEAS EXTENSION RECEIVED
Jul 23, 2024 EEXT
NOA E-MAILED - SOU REQUIRED FROM APPLICANT
Feb 13, 2024 NOAM
OFFICIAL GAZETTE PUBLICATION CONFIRMATION E-MAILED
Dec 19, 2023 NPUB
PUBLISHED FOR OPPOSITION
Dec 19, 2023 PUBO
NOTIFICATION OF NOTICE OF PUBLICATION E-MAILED
Nov 29, 2023 NONP
APPROVED FOR PUB - PRINCIPAL REGISTER
Nov 13, 2023 CNSA
TEAS/EMAIL CORRESPONDENCE ENTERED
Nov 10, 2023 TEME
CORRESPONDENCE RECEIVED IN LAW OFFICE
Nov 9, 2023 CRFA
TEAS RESPONSE TO OFFICE ACTION RECEIVED
Nov 9, 2023 TROA
NOTIFICATION OF NON-FINAL ACTION E-MAILED
Oct 6, 2023 GNRN
NON-FINAL ACTION E-MAILED
Oct 6, 2023 GNRT
NON-FINAL ACTION WRITTEN
Oct 6, 2023 CNRT
ASSIGNED TO EXAMINER
Sep 28, 2023 DOCK
NEW APPLICATION OFFICE SUPPLIED DATA ENTERED
Feb 28, 2023 NWOS
NEW APPLICATION ENTERED
Feb 25, 2023 NWAP