Long Term
Long-term prediction and reasoning are crucial challenges across diverse scientific domains, aiming to accurately forecast future states or behaviors based on past observations and understanding complex temporal dynamics. Current research focuses on developing robust models, including transformers, diffusion models, and recurrent neural networks, often incorporating memory mechanisms and leveraging multi-modal data (e.g., text, images, sensor readings) to improve prediction accuracy and handle uncertainty. These advancements have significant implications for various fields, from robotics and autonomous systems (e.g., navigation, manipulation) to climate modeling and traffic flow prediction, enabling more reliable and efficient systems and improved decision-making.
Papers
Discovering stochastic dynamical equations from biological time series data
Arshed Nabeel, Ashwin Karichannavar, Shuaib Palathingal, Jitesh Jhawar, David B. Brückner, Danny Raj M., Vishwesha Guttal
Towards Fast Simulation of Environmental Fluid Mechanics with Multi-Scale Graph Neural Networks
Mario Lino, Stathi Fotiadis, Anil A. Bharath, Chris Cantwell