TAMIDS SciML Lab Seminar Series: Chris Rackauckas: "Stiffness: Where Deep Learning Breaks and How Scientific Machine Learning Can Fix It" – TAMIDS Scientific Machine Learning Lab

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Abstract: Scientific machine learning (SciML) is the burgeoning field combining scientific knowledge with machine learning for data-efficient predictive modeling. We will introduce SciML as the key to effective learning in many engineering applications, such as improving the fidelity of climate models to accelerating clinical trials. This will lead us to the question on the frontier of SciML: what about stiffness? Stiffness is a pervasive quality throughout engineering systems and the most common cause of numerical difficulties in simulation. We will see that handling stiffness in learning, and thus real-world models, requires new training techniques.