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Implements quantized distillation. Code for our paper "Model compression via distillation and quantization"

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Model compression via distillation and quantization

This code has been written to experiment with quantized distillation and differentiable quantization, techniques developed in our paper "Model compression via distillation and quantization".

If you find this code useful in your research, please cite the paper:

@article{2018arXiv180205668P,
   author = {{Polino}, A. and {Pascanu}, R. and {Alistarh}, D.},
    title = "{Model compression via distillation and quantization}",
  journal = {ArXiv e-prints},
archivePrefix = "arXiv",
   eprint = {1802.05668},
 keywords = {Computer Science - Neural and Evolutionary Computing, Computer Science - Learning},
     year = 2018,
    month = feb,
}

The code is written in Pytorch 0.3 using Python 3.6. It is not backward compatible with Python2.x

Note Pytorch 0.4 introduced some major breaking changes. To use this code, please use Pytorch 0.3.

Check for the compatible version of torchvision. To run the code, use torchvision 0.2.0.

pip install torchvision==0.2.0

This should be done after installing the requirements.

Getting started

Prerequisites

This code is mostly self contained. Only a few additional libraries are requires, specified in requirements.txt. The repository already contains a fork of the openNMT-py project. Note that, due to the rapidly changing nature of the openNMT-py codebase and the substantial time and effort required to make it compatible with our code, it is unlikely that we will support newer versions of openNMT-py.

Summary of folder's content

This is a short explanation of the contents of each folder:

  • datasets is a package that automatically downloads and process several datasets, including CIFAR10, PennTreeBank, WMT2013, etc.
  • quantization contains the quantization functions that are used.
  • perl_scripts contains some perl scripts taken from the moses project to help with the translation task.
  • onmt contains the code from openNMT-py project. It is slightly modified to make it consistent with our codebase.
  • helpers contains some functions used across the whole project.
  • model_manager.py contains a useful class that implements common I/O operations on saved models. It is especially useful when training multiple similar models, as it keeps track of the options with which the models were trained and the results of each training run. Note: it does not support concurrent access to the same files. I am working on a version that does; if you are interested, drop me a line.
  • First-level files like cifar10_test.py are the main files that implement the experiments using the rest of the codebase.
  • Other folders contain model definitions and training routines, depending on the task.

Running the code

The first thing to do is to import some dataset and create the train and test set loaders. Define a folder where you want to save all your datasets; they will be automatically downloaded and processed in the folder specified. The following example shows how to load the CIFAR10 dataset, create and train a model.

import datasets
datasets.BASE_DATA_FOLDER = '/home/saved_datasets'

batch_size = 50
cifar10 = datasets.CIFAR10() #-> will be saved in /home/saved_datasets/cifar10
train_loader, test_loader = cifar10.getTrainLoader(batch_size), cifar10.getTestLoader(batch_size)

Now we can use train_loader and test_loader as generators from which to get the train and test data as pytorch tensors.

At this point we just need to define a model and train it:

import os
import cnn_models.conv_forward_model as convForwModel
import cnn_models.help_fun as cnn_hf
teacherModel = convForwModel.ConvolForwardNet(**convForwModel.teacherModelSpec,
                                              useBatchNorm=True,
                                              useAffineTransformInBatchNorm=True)
convForwModel.train_model(teacherModel, train_loader, test_loader, epochs_to_train=200)

As mentioned before, it is often better to use the ModelManager class to be able to automatically save the results and retrieve them later. So we would typically write

import os
import cnn_models.conv_forward_model as convForwModel
import cnn_models.help_fun as cnn_hf
import model_manager
cifar10Manager = model_manager.ModelManager('model_manager_cifar10.tst',
                                            'model_manager', create_new_model_manager=False)#the first time set this to True
model_name = 'cifar10_teacher'
cifar10modelsFolder = '~/quantized_distillation/'
teacherModelPath = os.path.join(cifar10modelsFolder, model_name)
teacherModel = convForwModel.ConvolForwardNet(**convForwModel.teacherModelSpec,
                                              useBatchNorm=True,
                                              useAffineTransformInBatchNorm=True)
if not model_name in cifar10Manager.saved_models:
    cifar10Manager.add_new_model(model_name, teacherModelPath,
            arguments_creator_function={**convForwModel.teacherModelSpec,
                                        'useBatchNorm':True,
                                        'useAffineTransformInBatchNorm':True})
cifar10Manager.train_model(teacherModel, model_name=model_name,
                           train_function=convForwModel.train_model,
                           arguments_train_function={'epochs_to_train': 200},
                           train_loader=train_loader, test_loader=test_loader)

This is the general structure necessary to use the code. For more examples, please look at one of the main files that are used to run the experiments.

Authors

  • Antonio Polino
  • Razvan Pascanu
  • Dan Alistarh

License

The code is licensed under the MIT Licence. See the LICENSE.md file for detail.

Acknowledgements

We would like to thank Ce Zhang (ETH Zürich), Hantian Zhang (ETH Zürich) and Martin Jaggi (EPFL) for their support with experiments and valuable feedback.

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Implements quantized distillation. Code for our paper "Model compression via distillation and quantization"

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