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PySNIP

Unofficial implementation of SNIP (ICLR 19) in PyTorch. SNIP is a single shot neural network prunning technique which prunes the network before training based on sensitivity of connections of the randomly initialized weights.

Usage

from snip_prunner import Prunner
from model import my_model
from loss_func import my_loss

prunner = Prunner(my_model, my_loss, train_dataloader)
prunned_model, masks = prunner.prun(compression_factor=0.9, num_batch_sampling=1)

"""
Now continue training prunned_model 
as you would do in normal setup
"""

Refer test_mnist.ipynb for experiments on MNIST

MNIST Results

Parameters / Batches 1 10
90% 97.74 97.70
75% 97.79 97.79
50% 97.74 97.67
10% 96.69 96.69
2% 93.01 93.69

ToDo

Run experiments using ResNet Model on CIFAR 10

Paper

SNIP

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Single shot neural network pruning before training the model, based on connection sensitivity

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