- Indico style
- Indico style - inline minutes
- Indico style - numbered
- Indico style - numbered + minutes
- Indico Weeks View
These parallel breakout discussions will focus on how AI intersects with key scientific research tasks, such as hypothesis generation, modeling, data analysis, lab automation, and training. The aim is to identify common needs, challenges, and opportunities across disciplines. Outcomes from these discussions will help shape the direction and priorities of a future Faculty-wide AI Center for Science.
How can AI support the creative and analytical stages of discovery?
(e.g., LLMs, semantic tools, literature mining)
How is AI changing how we plan, conduct, and interpret experiments?
(automation, scheduling, robotics)
Can AI augment or even replace traditional simulations?
(surrogate modeling, emulators, simulation-based inference)
How do we best use AI across the data pipeline?
(from collection to analysis, with focus on infrastructure and reproducibility)
How can the center support the development of AI fluency among researchers, students, and staff?