[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
Learning to Map Large-scale Sparse Graphs on Memristive Crossbar

Release of AutoGMap:Learning to Map Large-scale Sparse Graphs on Memristive Crossbar For reproduction of our searched model, the Ubuntu OS is recommen

2 Aug 23, 2022
PyTorch implementation of Self-supervised Contrastive Regularization for DG (SelfReg)

SelfReg PyTorch official implementation of Self-supervised Contrastive Regularization for Domain Generalization (SelfReg, https://arxiv.org/abs/2104.0

64 Dec 16, 2022
All public open-source implementations of convnets benchmarks

convnet-benchmarks Easy benchmarking of all public open-source implementations of convnets. A summary is provided in the section below. Machine: 6-cor

Soumith Chintala 2.7k Dec 30, 2022
Official implementation of the RAVE model: a Realtime Audio Variational autoEncoder

RAVE: Realtime Audio Variational autoEncoder Official implementation of RAVE: A variational autoencoder for fast and high-quality neural audio synthes

ACIDS 587 Jan 01, 2023
Code repository for "Free View Synthesis", ECCV 2020.

Free View Synthesis Code repository for "Free View Synthesis", ECCV 2020. Setup Install the following Python packages in your Python environment - num

Intelligent Systems Lab Org 253 Dec 07, 2022
A novel method to tune language models. Codes and datasets for paper ``GPT understands, too''.

P-tuning A novel method to tune language models. Codes and datasets for paper ``GPT understands, too''. How to use our code We have released the code

THUDM 562 Dec 27, 2022
T2F: text to face generation using Deep Learning

⭐ [NEW] ⭐ T2F - 2.0 Teaser (coming soon ...) Please note that all the faces in the above samples are generated ones. The T2F 2.0 will be using MSG-GAN

Animesh Karnewar 533 Dec 22, 2022
Image-popularity-score - A novel deep regression method for image scoring.

Image-popularity-score - A novel deep regression method for image scoring.

Shoaib ahmed 1 Dec 26, 2021
PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE).

GRACE The official PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE). For a thorough resource collection of self-superv

Big Data and Multi-modal Computing Group, CRIPAC 186 Dec 27, 2022
TransNet V2: Shot Boundary Detection Neural Network

TransNet V2: Shot Boundary Detection Neural Network This repository contains code for TransNet V2: An effective deep network architecture for fast sho

Tomáš Souček 212 Dec 27, 2022
MutualGuide is a compact object detector specially designed for embedded devices

Introduction MutualGuide is a compact object detector specially designed for embedded devices. Comparing to existing detectors, this repo contains two

ZHANG Heng 103 Dec 13, 2022
PyTorch wrappers for using your model in audacity!

audacitorch This package contains utilities for prepping PyTorch audio models for use in Audacity. More specifically, it provides abstract classes for

Hugo Flores García 130 Dec 14, 2022
code for EMNLP 2019 paper Text Summarization with Pretrained Encoders

PreSumm This code is for EMNLP 2019 paper Text Summarization with Pretrained Encoders Updates Jan 22 2020: Now you can Summarize Raw Text Input!. Swit

Yang Liu 1.2k Dec 28, 2022
LabelImg is a graphical image annotation tool.

LabelImgPlus LabelImg is a graphical image annotation tool. This project is not updated with new functions now. More functions are supported with Labe

lzx1413 200 Dec 20, 2022
Python implementation of cover trees, near-drop-in replacement for scipy.spatial.kdtree

This is a Python implementation of cover trees, a data structure for finding nearest neighbors in a general metric space (e.g., a 3D box with periodic

Patrick Varilly 28 Nov 25, 2022
The official repo for CVPR2021——ViPNAS: Efficient Video Pose Estimation via Neural Architecture Search.

ViPNAS: Efficient Video Pose Estimation via Neural Architecture Search [paper] Introduction This is the official implementation of ViPNAS: Efficient V

Lumin 42 Sep 26, 2022
Fully Convolutional DenseNet (A.K.A 100 layer tiramisu) for semantic segmentation of images implemented in TensorFlow.

FC-DenseNet-Tensorflow This is a re-implementation of the 100 layer tiramisu, technically a fully convolutional DenseNet, in TensorFlow (Tiramisu). Th

Hasnain Raza 121 Oct 12, 2022
A PyTorch implementation of the WaveGlow: A Flow-based Generative Network for Speech Synthesis

WaveGlow A PyTorch implementation of the WaveGlow: A Flow-based Generative Network for Speech Synthesis Quick Start: Install requirements: pip install

Yuchao Zhang 204 Jul 14, 2022
Official repository for "PAIR: Planning and Iterative Refinement in Pre-trained Transformers for Long Text Generation"

pair-emnlp2020 Official repository for the paper: Xinyu Hua and Lu Wang: PAIR: Planning and Iterative Refinement in Pre-trained Transformers for Long

Xinyu Hua 31 Oct 13, 2022
PyTorch implementation of Grokking: Generalization Beyond Overfitting on Small Algorithmic Datasets

Simple PyTorch Implementation of "Grokking" Implementation of Grokking: Generalization Beyond Overfitting on Small Algorithmic Datasets Usage Running

Teddy Koker 15 Sep 29, 2022