Charlotte, NC, United States of America

Holly Angevine

USPTO Granted Patents = 4 

Average Co-Inventor Count = 5.0

ph-index = 1


Company Filing History:


Years Active: 2022-2024

Loading Chart...
4 patents (USPTO):Explore Patents

Title: Holly Angevine: Innovator in Data Quality and Risk Assessment

Introduction

Holly Angevine is a prominent inventor based in Charlotte, NC (US). She has made significant contributions to the field of data management, holding a total of 4 patents. Her work focuses on enhancing data quality and assessing data risks, which are crucial in today's data-driven environment.

Latest Patents

Holly's latest patents include innovative systems and methods for data quality certification. These systems involve categorizing a data set by receiving both objective and subjective quality indicators. The method generates a comprehensive data quality rating and utilizes a feedback loop to continuously update this rating based on evaluations of the data's quality.

Another notable patent addresses data risk assessment. This invention includes monitoring the electronic usage of governed data sets within a computing environment. It employs a data compliance bot to identify usage requests and determine whether the electronic use of business elements is permissible, ensuring compliance with data governance standards.

Career Highlights

Holly Angevine is currently employed at Wells Fargo Bank, N.A., where she applies her expertise in data management. Her role involves developing and implementing innovative solutions that enhance data quality and compliance within the banking sector.

Collaborations

Holly collaborates with talented professionals such as Nadine Mooney and Elizabeth Hinshaw. Together, they work on advancing data management practices and ensuring the integrity of data usage in their projects.

Conclusion

Holly Angevine is a trailblazer in the field of data quality and risk assessment. Her innovative patents and contributions to Wells Fargo Bank, N.A. highlight her commitment to improving data management practices.

This text is generated by artificial intelligence and may not be accurate.
Please report any incorrect information to support@idiyas.com
Loading…