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In the context of [[artificial neural network]], '''pruning''' is the practice of removing parameters (which may entail removing individual parameters, or parameters in groups such as by [[artificial neurons|neurons]]) from an existing network.<ref>{{
A basic algorithm for pruning is as follows:<ref>Molchanov, P., Tyree, S., Karras, T., Aila, T., & Kautz, J. (2016). ''Pruning convolutional neural networks for resource efficient inference''. arXiv preprint arXiv:1611.06440.</ref><ref>[https://jacobgil.github.io/deeplearning/pruning-deep-learning Pruning deep neural networks to make them fast and small].</ref>
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