San Jose, CA, United States of America

Niru Appikatala


Average Co-Inventor Count = 4.3

ph-index = 1


Location History:

  • San Jose, CA (US) (2022)
  • Fremont, CA (US) (2023)

Company Filing History:


Years Active: 2022-2024

Loading Chart...
3 patents (USPTO):

Title: Niru Appikatala: Innovator in Data Analysis and Experimentation

Introduction

Niru Appikatala is a prominent inventor based in San Jose, CA. He has made significant contributions to the field of data analysis and online experimentation. With a total of 3 patents to his name, Niru has developed innovative methods that enhance the accuracy and reliability of data-driven decision-making.

Latest Patents

Niru's latest patents include a method and system for detecting data bucket inconsistencies for A/B experimentation. This invention focuses on identifying data bucket overlap within online experiments. By obtaining data representing identifiers associated with different data buckets, Niru's system can determine inconsistencies and generate flags to indicate potential issues. Another notable patent involves determining salient entities and generating salient entity tags based on articles. This process analyzes articles to identify relevant entity terms and generates tags that enhance the understanding of the content.

Career Highlights

Throughout his career, Niru has worked with notable companies such as Yahoo Ad Tech LLC and Verizon Media Inc. His experience in these organizations has allowed him to refine his skills in data analysis and experimentation, contributing to his success as an inventor.

Collaborations

Niru has collaborated with talented individuals in his field, including Miao Chen and Sudhir Chauhan. These partnerships have fostered innovation and have been instrumental in the development of his patented technologies.

Conclusion

Niru Appikatala stands out as an innovative inventor in the realm of data analysis and experimentation. His contributions through his patents reflect his commitment to advancing technology and improving data-driven methodologies.

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