Cupertino, CA, United States of America

Like Gao


Average Co-Inventor Count = 4.0

ph-index = 1

Forward Citations = 1(Granted Patents)


Company Filing History:


Years Active: 2021

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

Title: Innovations by Like Gao

Introduction

Like Gao is an accomplished inventor based in Cupertino, California. He has made significant contributions to the field of graph data management. His innovative approach has led to the development of a unique system that enhances the efficiency of handling graph data.

Latest Patents

Like Gao holds a patent for a "System and method for managing graph data." This invention provides a comprehensive solution for managing graph data and outlines methods for its implementation. The system allows for the generation of a loading plan based on a loading job, enabling source data to be loaded into a graph model effectively. The loading job can be defined declaratively, and an interpreter encodes it to create a loading plan with a tree structure. This plan instructs a loading engine to load the source data, which can be compiled independently of the loading plan. The design of the loading engine allows it to interpret any loading plan while filtering or transforming source data at runtime. This innovation saves time in compiling the loading engine and reading source data, offering high flexibility and performance in graph data loading.

Career Highlights

Like Gao is currently employed at TigerGraph, Inc., where he continues to push the boundaries of graph data management. His work has been instrumental in advancing the capabilities of the company's offerings in this domain.

Collaborations

Some of Like Gao's notable coworkers include Zixuan Zhuang and Mingxi Wu. Their collaboration contributes to the innovative environment at TigerGraph, Inc.

Conclusion

Like Gao's contributions to graph data management exemplify the impact of innovative thinking in technology. His patent and work at TigerGraph, Inc. highlight the importance of efficiency and performance in data handling.

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