Jay Kachhadia | Data-Driven Decision Making | Data Science Excellence Award

Mr. Jay Kachhadia | Data-Driven Decision Making | Data Science Excellence Award

Data Science Manager | Paramount | United States

Mr. Jay Kachhadia is a Data Science Manager at Paramount in the United States, specializing in data-driven decision making. His work focuses on applying machine learning, statistical analysis, and large-scale data modeling to support strategic business decisions. He leverages user behavior data and predictive analytics to optimize content performance, personalization, and audience engagement. His research and applied work also explore natural language processing and graph-based methods for insight generation. Overall, his contributions bridge advanced analytics with practical, high-impact decision systems in industry settings.

Citation Metrics (Google Scholar)

40
30
20
10
5
0

Citations
33

Document
1

h-index
1

                     ■ Citations                ■ Document               ■ h-index


View Google Scholar Profile

Featured Publications


PoliBERT: Classifying Political Social Media Messages with BERT

– Social, Cultural and Behavioral Modeling (SBP-BRIMS) Conference, 2020

Jihyun Kim | Data-Driven Decision Making | Research Excellence Award

Ms. Jihyun Kim | Data-Driven Decision Making | Research Excellence Award

Professor | University of Seoul | South Korea

Ms. Jihyun Kim is a researcher in Transportation Engineering with a focus on data-driven analysis of traffic systems and emerging mobility technologies. Her research explores traveler behavior, safety, and operational performance using advanced statistical modeling and simulation-based approaches. She has conducted studies on e-scooter operations on sidewalks using VR simulators to evaluate safety and applicability under realistic conditions. Her work also includes the development of intersection- and roundabout-specific gap acceptance models, incorporating environmental factors such as rainfall. Through her research, she contributes evidence-based insights to support safer, smarter, and more efficient urban transportation systems.

Research Metrics (Google Scholar)

8

6

4

2

0

Citations
0

Publications
2

h-index
0


View Google Scholar Profile View Orcid Profile

Featured Publications