Kent, OH, United States of America

Nicholas Tietz


Average Co-Inventor Count = 4.0

ph-index = 1

Forward Citations = 2(Granted Patents)


Company Filing History:


Years Active: 2020

Loading Chart...
1 patent (USPTO):Explore Patents

Title: Innovations of Nicholas Tietz

Introduction

Nicholas Tietz is an accomplished inventor based in Kent, OH (US). He has made significant contributions to the field of technology, particularly in the area of real-time recommendations. His innovative approach has led to the development of a unique patent that enhances the way personalized recommendations are generated.

Latest Patents

Nicholas Tietz holds a patent for a "System and method for real-time graph-based recommendations." This patent describes systems and methods for generating real-time, personalized recommendations. The method operates on an electronic data collection organized as a network of vertices and edge connections. It provides recommendations by iteratively traversing edges that meet search criteria, leading to a new set of vertices. Each new set is filtered to satisfy the search criteria, resulting in a final set of recommended entities. The method also includes a control vector that describes the relationships between the requester and the recommended items. This innovative approach allows for flexibility and rapid execution of recommendation queries without the need for precomputed intermediate results. Nicholas Tietz has 1 patent to his name.

Career Highlights

Throughout his career, Nicholas has worked with notable organizations such as Graphsql, Inc. and Kent State University. His experience in these institutions has allowed him to refine his skills and contribute to groundbreaking projects in the field of technology.

Collaborations

Nicholas has collaborated with talented individuals, including Ruoming Jin and Adam P Anthony. These partnerships have further enriched his work and led to innovative solutions in his projects.

Conclusion

Nicholas Tietz is a notable inventor whose work in real-time graph-based recommendations has made a significant impact in technology. His innovative methods and collaborations highlight his dedication to advancing the field.

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