MathonAI Team

Mathematics meets Artificial Intelligence

MathonAI Team brings together faculty and students mainly from Tsinghua University and BIMSA. We study how mathematical structure can make modern AI and foundation models more principled, reliable, and useful for scientific discovery, with active work spanning generative modeling, agent systems, scientific machine learning, and AI for molecules, materials, and physics.

Research Interests

Primary Research Areas

Mathematical Foundations of AI

PDEs, numerical analysis, inverse problems, and dynamical-systems viewpoints for machine learning and foundation models.

Discrete and Generative Diffusion

Discrete diffusion, autoregressive diffusion, flow-based generation, and controllable generative modeling across modalities.

Agentic Models and Memory

Agentic model design, long-horizon memory, reasoning systems, and the infrastructure needed to support reliable agents.

Scientific Machine Learning

Data-driven discovery for PDEs and stochastic dynamics, together with machine learning models informed by scientific structure.

AI for Physics and Materials

Computational physics, topological materials, quantum systems, and scientific modeling at the interface of math and AI.

Molecules, Materials, and MOFs

Molecular structure generation, science foundation models, and AI for materials discovery including metal-organic frameworks.