[IJCAI-2021] A benchmark of data-free knowledge distillation from paper "Contrastive Model Inversion for Data-Free Knowledge Distillation"

Overview

DataFree

A benchmark of data-free knowledge distillation from paper "Contrastive Model Inversion for Data-Free Knowledge Distillation"

Authors: Gongfan Fang, Jie Song, Xinchao Wang, Chengchao Shen, Xingen Wang, Mingli Song

CMI (this work) DeepInv
ZSKT DFQ

Results

1. CIFAR-10

Method resnet-34
resnet-18
vgg-11
resnet-18
wrn-40-2
wrn-16-1
wrn-40-2
wrn-40-1
wrn-40-2
wrn-16-2
T. Scratch 95.70 92.25 94.87 94.87 94.87
S. Scratch 95.20 95.20 91.12 93.94 93.95
DAFL 92.22 81.10 65.71 81.33 81.55
ZSKT 93.32 89.46 83.74 86.07 89.66
DeepInv 93.26 90.36 83.04 86.85 89.72
DFQ 94.61 90.84 86.14 91.69 92.01
CMI 94.84 91.13 90.01 92.78 92.52

2. CIFAR-100

Method resnet-34
resnet-18
vgg-11
resnet-18
wrn-40-2
wrn-16-1
wrn-40-2
wrn-40-1
wrn-40-2
wrn-16-2
T. Scratch 78.05 71.32 75.83 75.83 75.83
S. Scratch 77.10 77.01 65.31 72.19 73.56
DAFL 74.47 57.29 22.50 34.66 40.00
ZSKT 67.74 34.72 30.15 29.73 28.44
DeepInv 61.32 54.13 53.77 61.33 61.34
DFQ 77.01 68.32 54.77 62.92 59.01
CMI 77.04 70.56 57.91 68.88 68.75

Quick Start

1. Visualize the inverted samples

Results will be saved as checkpoints/datafree-cmi/synthetic-cmi_for_vis.png

bash scripts/cmi/cmi_cifar10_for_vis.sh

2. Reproduce our results

Note: This repo was refactored from our experimental code and is still under development. I'm struggling to find the appropriate hyperparams for every methods (°ー°〃). So far, we only provide the hyperparameters to reproduce CIFAR-10 results for wrn-40-2 => wrn-16-1. You may need to tune the hyper-parameters for other models and datasets. More resources will be uploaded in the future update.

To reproduce our results, please download pre-trained teacher models from Dropbox-Models (266 MB) and extract them as checkpoints/pretrained. Also a pre-inverted data set with ~50k samples is available for wrn-40-2 teacher on CIFAR-10. You can download it from Dropbox-Data (133 MB) and extract them to run/cmi-preinverted-wrn402/.

  • Non-adversarial CMI: you can train a student model on inverted data directly. It should reach the accuracy of ~87.38% on CIFAR-10 as reported in Figure 3.

    bash scripts/cmi/nonadv_cmi_cifar10_wrn402_wrn161.sh
    
  • Adversarial CMI: or you can apply the adversarial distillation based on the pre-inverted data, where ~10k (256x40) new samples will be generated to improve the student. It should reach the accuracy of ~90.01% on CIFAR-10 as reported in Table 1.

    bash scripts/cmi/adv_cmi_cifar10_wrn402_wrn161.sh
    
  • Scratch CMI: It is OK to run the cmi algorithm wihout any pre-inverted data, but the student may overfit to early samples due to the limited data amount. It should reach the accuracy of ~88.82% on CIFAR-10, slightly worse than our reported results (90.01%).

    bash scripts/cmi/scratch_cmi_cifar10_wrn402_wrn161.sh
    

3. Scratch training

python train_scratch.py --model wrn40_2 --dataset cifar10 --batch-size 256 --lr 0.1 --epoch 200 --gpu 0

4. Vanilla KD

# KD with original training data (beta>0 to use hard targets)
python vanilla_kd.py --teacher wrn40_2 --student wrn16_1 --dataset cifar10 --transfer_set cifar10 --beta 0.1 --batch-size 128 --lr 0.1 --epoch 200 --gpu 0 

# KD with unlabeled data
python vanilla_kd.py --teacher wrn40_2 --student wrn16_1 --dataset cifar10 --transfer_set cifar100 --beta 0 --batch-size 128 --lr 0.1 --epoch 200 --gpu 0 

# KD with unlabeled data from a specified folder
python vanilla_kd.py --teacher wrn40_2 --student wrn16_1 --dataset cifar10 --transfer_set run/cmi --beta 0 --batch-size 128 --lr 0.1 --epoch 200 --gpu 0 

5. Data-free KD

bash scripts/xxx/xxx.sh # e.g. scripts/zskt/zskt_cifar10_wrn402_wrn161.sh

Hyper-parameters used by different methods:

Method adv bn oh balance act cr GAN Example
DAFL - - - scripts/dafl_cifar10.sh
ZSKT - - - - - scripts/zskt_cifar10.sh
DeepInv - - - - scripts/deepinv_cifar10.sh
DFQ - - scripts/dfq_cifar10.sh
CMI - - scripts/cmi_cifar10_scratch.sh

4. Use your models/datasets

You can register your models and datasets in registry.py by modifying NORMALIZE_DICT, MODEL_DICT and get_dataset. Then you can run the above commands to train your own models. As DAFL requires intermediate features from the penultimate layer, your model should accept an return_features=True parameter and return a (logits, features) tuple for DAFL.

5. Implement your algorithms

Your algorithms should inherent datafree.synthesis.BaseSynthesizer to implement two interfaces: 1) BaseSynthesizer.synthesize takes several steps to craft new samples and return an image dict for visualization; 2) BaseSynthesizer.sample fetches a batch of training data for KD.

Citation

If you found this work useful for your research, please cite our paper:

@misc{fang2021contrastive,
      title={Contrastive Model Inversion for Data-Free Knowledge Distillation}, 
      author={Gongfan Fang and Jie Song and Xinchao Wang and Chengchao Shen and Xingen Wang and Mingli Song},
      year={2021},
      eprint={2105.08584},
      archivePrefix={arXiv},
      primaryClass={cs.AI}
}

Reference

Owner
ZJU-VIPA
Laboratory of Visual Intelligence and Pattern Analysis
ZJU-VIPA
A robust camera and Lidar fusion based velocity estimator to undistort the pointcloud.

Lidar with Velocity A robust camera and Lidar fusion based velocity estimator to undistort the pointcloud. related paper: Lidar with Velocity : Motion

ISEE Research Group 164 Dec 30, 2022
Release of the ConditionalQA dataset

ConditionalQA Datasets accompanying the paper ConditionalQA: A Complex Reading Comprehension Dataset with Conditional Answers. Disclaimer This dataset

14 Oct 17, 2022
Microsoft Cognitive Toolkit (CNTK), an open source deep-learning toolkit

CNTK Chat Windows build status Linux build status The Microsoft Cognitive Toolkit (https://cntk.ai) is a unified deep learning toolkit that describes

Microsoft 17.3k Dec 29, 2022
Pytorch implementation of "A simple neural network module for relational reasoning" (Relational Networks)

Pytorch implementation of Relational Networks - A simple neural network module for relational reasoning Implemented & tested on Sort-of-CLEVR task. So

Kim Heecheol 800 Dec 05, 2022
CBREN: Convolutional Neural Networks for Constant Bit Rate Video Quality Enhancement

CBREN This is the Pytorch implementation for our IEEE TCSVT paper : CBREN: Convolutional Neural Networks for Constant Bit Rate Video Quality Enhanceme

Zhao Hengrun 3 Nov 04, 2022
Individual Tree Crown classification on WorldView-2 Images using Autoencoder -- Group 9 Weak learners - Final Project (Machine Learning 2020 Course)

Created by Olga Sutyrina, Sarah Elemili, Abduragim Shtanchaev and Artur Bille Individual Tree Crown classification on WorldView-2 Images using Autoenc

2 Dec 08, 2022
Official PyTorch implementation of UACANet: Uncertainty Aware Context Attention for Polyp Segmentation

UACANet: Uncertainty Aware Context Attention for Polyp Segmentation Official pytorch implementation of UACANet: Uncertainty Aware Context Attention fo

Taehun Kim 85 Dec 14, 2022
Intrinsic Image Harmonization

Intrinsic Image Harmonization [Paper] Zonghui Guo, Haiyong Zheng, Yufeng Jiang, Zhaorui Gu, Bing Zheng Here we provide PyTorch implementation and the

VISION @ OUC 44 Dec 21, 2022
Efficient training of deep recommenders on cloud.

HybridBackend Introduction HybridBackend is a training framework for deep recommenders which bridges the gap between evolving cloud infrastructure and

Alibaba 111 Dec 23, 2022
Özlem Taşkın 0 Feb 23, 2022
This respository includes implementations on Manifoldron: Direct Space Partition via Manifold Discovery

Manifoldron: Direct Space Partition via Manifold Discovery This respository includes implementations on Manifoldron: Direct Space Partition via Manifo

dayang_wang 4 Apr 28, 2022
Fast Scattering Transform with CuPy/PyTorch

Announcement 11/18 This package is no longer supported. We have now released kymatio: http://www.kymat.io/ , https://github.com/kymatio/kymatio which

Edouard Oyallon 289 Dec 07, 2022
A Multi-modal Model Chinese Spell Checker Released on ACL2021.

ReaLiSe ReaLiSe is a multi-modal Chinese spell checking model. This the office code for the paper Read, Listen, and See: Leveraging Multimodal Informa

DaDa 106 Dec 29, 2022
A repo to show how to use custom dataset to train s2anet, and change backbone to resnext101

A repo to show how to use custom dataset to train s2anet, and change backbone to resnext101

jedibobo 3 Dec 28, 2022
[NeurIPS'21] "AugMax: Adversarial Composition of Random Augmentations for Robust Training" by Haotao Wang, Chaowei Xiao, Jean Kossaifi, Zhiding Yu, Animashree Anandkumar, and Zhangyang Wang.

[NeurIPS'21] "AugMax: Adversarial Composition of Random Augmentations for Robust Training" by Haotao Wang, Chaowei Xiao, Jean Kossaifi, Zhiding Yu, Animashree Anandkumar, and Zhangyang Wang.

VITA 112 Nov 07, 2022
Vision-Language Transformer and Query Generation for Referring Segmentation (ICCV 2021)

Vision-Language Transformer and Query Generation for Referring Segmentation Please consider citing our paper in your publications if the project helps

Henghui Ding 143 Dec 23, 2022
Code and models for "Rethinking Deep Image Prior for Denoising" (ICCV 2021)

DIP-denosing This is a code repo for Rethinking Deep Image Prior for Denoising (ICCV 2021). Addressing the relationship between Deep image prior and e

Computer Vision Lab. @ GIST 36 Dec 29, 2022
CityLearn Challenge Multi-Agent Reinforcement Learning for Intelligent Energy Management, 2020, PikaPika team

Citylearn Challenge This is the PyTorch implementation for PikaPika team, CityLearn Challenge Multi-Agent Reinforcement Learning for Intelligent Energ

bigAIdream projects 10 Oct 10, 2022
A Neural Net Training Interface on TensorFlow, with focus on speed + flexibility

Tensorpack is a neural network training interface based on TensorFlow. Features: It's Yet Another TF high-level API, with speed, and flexibility built

Tensorpack 6.2k Jan 01, 2023
Python-experiments - A Repository which contains python scripts to automate things and make your life easier with python

Python Experiments A Repository which contains python scripts to automate things

Vivek Kumar Singh 11 Sep 25, 2022