talk-data.com talk-data.com

Event

Workshop on A/B Testing

2024-09-07 – 2024-09-07 Meetup Visit website ↗

Activities tracked

1

Please register using the zoom link to get a reminder:

https://us02web.zoom.us/webinar/register/2217214092019/WN_1KGPLwKcQGudwymM2Xgo-Q

Enhance your analytical skills with our two-week workshop on A/B Testing. Perfect for students, data analysts, and professionals, this workshop covers essential concepts and practical applications of A/B testing to help you make data-driven decisions. Basic knowledge of statistics and Python is recommended.

Workshop Outline:

Week 1: Fundamentals of A/B Testing Understanding the concept and importance of A/B testing Formulating hypotheses and setting up experiments Key metrics and KPIs

Week 2: Designing and Running A/B Tests Randomization and sample size determination Implementing A/B tests using Python Analyzing test results and statistical significance

Agenda:

(PDT) 10:00 am - 10:05 am Arrival, socializing, and Opening (PDT) 10:05 am - 11:50 am Dr. Yasin Ceran, "Workshop on A/B Testing" (PDT) 11:50 am - 12:00 pm Q&A

About Dr. Yasin Ceran:

Yasin Ceran is passionate about all things data and holds a vast experience in data analysis, mathematical modeling and Apache Spark, and in SQL, Python and R. He is currently an associate professor at KAIST, South Korea, as well as teaching at San Jose State University at the heart of Silicon Valley. Yasin has worked rigorously on an array of data-related projects encompassing data mining, statistics, modeling, and is dedicated to sharing his experience and expertise with learners.

https://us02web.zoom.us/webinar/register/2217214092019/WN_1KGPLwKcQGudwymM2Xgo-Q

Webinar Passcode 519470

Sessions & talks

Showing 1–1 of 1 · Newest first

Search within this event →

Workshop on A/B Testing

talk
Dr. Yasin Ceran (KAIST)

Enhance your analytical skills with our two-week workshop on A/B Testing. Perfect for students, data analysts, and professionals, this workshop covers essential concepts and practical applications of A/B testing to help you make data-driven decisions. Basic knowledge of statistics and Python is recommended.