The chapter explores how neural network potentials are used to simulate dynamics by learning matching energy surfaces, drawing parallels to language models fitting probability surfaces for word prediction. It discusses the simulation of water self-ionization and the challenges of predicting processes accurately outside the training data. Strategies like active learning through neural networks and adjusting simulation temperatures are highlighted to improve predictions and simulate chemical reactions effectively.

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