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  3. CEMSE Weekly Updates - October 14, 2025

CEMSE Weekly Updates - October 14, 2025

Tue, Oct 14 2025

Newsletter Upcoming Events

Stay informed about the upcoming events and the latest news from CEMSE.

One-on-One Statistical Consulting for KAUST Researchers 2025

Oct 20, All day

B1 L4 R4102

In recognition of World Statistics Day, a United Nations–designated observance that highlights the importance of trustworthy data and sound statistical methods, the KAUST Student Chapter of the American Statistical Association (ASA) is hosting one-on-one consulting sessions for KAUST students and researchers. Graduate students and postdoctoral researchers from the Statistics Program will be available to provide personalized guidance on research-related statistical challenges. These consultations aim to strengthen the use of statistical methods across disciplines, support high-quality research

A Generalized Gaussian Min–Max Framework Inferring Post-Processing Effects in High-Dimensional Estimation

Abla Kammoun, Senior Research Scientist, Electrical and Computer Engineering
Oct 21, 14:30 - 15:30

B1 L3 R3119

statistical analysis

This talk introduces the Convex Gaussian Min–Max Theorem (CGMT) as a principled framework to analyze the performance of such solutions, and presents a new Gordon-type inequality to study functionals of the solutions that arise when direct deployment is infeasible.

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