12–17 Jul 2026
University of Graz
Europe/Vienna timezone

Advanced Progresses in Population Models Driven by Natural and/or Artificial Intelligence (Part 2)

Not scheduled
20m
University of Graz

University of Graz

Speakers

Dr Daniel Cooney (University of Illinois Urbana-Champaign)Dr Junping Shi (College of William & Mary)Dr Kunquan Lan (Toronto Metropolitan University)Dr Samares Pal (University of Kalyani)

Description

Population models have long been grounded in natural intelligence: the human-driven theoretical frameworks that include nonlinear dynamics, bifurcation theory, PDEs, structured population models, and stochastic processes. These classical approaches remain indispensable for explaining underlying mechanisms, generating deep insight, and ensuring interpretability. In parallel, artificial intelligence provides powerful computational strategies that enable rapid calibration, enhanced forecasting, and the identification of hidden structure in complex datasets.

This minisymposium will explore the synergy between these complementary approaches and highlight recent advances in population modeling arising from both pillars of scientific inquiry. By bringing together these perspectives, the session aims to showcase cutting-edge developments in traditional theory-based modeling and AI-empowered methodologies, illustrating how their integration drives new understanding of population dynamics in ecology, epidemiology, and evolutionary biology.

Author

Zhisheng Shuai (University of Central Florida)

Presentation materials

There are no materials yet.