Search Results for author: Titus Zaharia

Found 3 papers, 1 papers with code

Improve Convolutional Neural Network Pruning by Maximizing Filter Variety

no code implementations11 Mar 2022 Nathan Hubens, Matei Mancas, Bernard Gosselin, Marius Preda, Titus Zaharia

This technique ensures that the criteria of selection focuses on redundant filters, while retaining the rare ones, thus maximizing the variety of remaining filters.

Network Pruning

An Experimental Study of the Impact of Pre-training on the Pruning of a Convolutional Neural Network

no code implementations15 Dec 2021 Nathan Hubens, Matei Mancas, Bernard Gosselin, Marius Preda, Titus Zaharia

Neural networks usually involve a large number of parameters, which correspond to the weights of the network.

One-Cycle Pruning: Pruning ConvNets Under a Tight Training Budget

1 code implementation5 Jul 2021 Nathan Hubens, Matei Mancas, Bernard Gosselin, Marius Preda, Titus Zaharia

Most of the time, sparsity is introduced using a three-stage pipeline: 1) train the model to convergence, 2) prune the model according to some criterion, 3) fine-tune the pruned model to recover performance.

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