The chapter explores utilizing neural network potentials to predict behaviors and forces in quantum chemistry calculations, enabling faster and more efficient solutions to complex problems. It discusses the history of neural net potentials, the sizes of data sets and models, and the importance of reducing parameter counts for efficient simulations. Additionally, the chapter delves into the concept of equivariance in neural networks in the context of chemistry and molecular simulations, highlighting advancements that reduce the amount of training data required for accurate analysis.

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