Knowledge Condensation Distillation (ECCV 2022)(Link)
December 21, 2022 ยท View on GitHub
A Pytorch Implementation of ''Knowledge Condensation Distillation'' (Continuously being organized).

Introduction
In this project, we use Ubuntu 16.04.5, Python 3.7, Pytorch 1.9.1 and CUDA 10.2.
Running
Teacher Training
An example of teacher training is:
python train_teacher.py --model resnet32x4
Student Training
Fetch the pretrained teacher models by:
sh scripts/fetch_pretrained_teachers.sh
which will download and save the models to save/models
An example of student training by the proposed KCD is:
python super_train_student.py --epochs 240 --path_t ./save/models/resnet32x4_vanilla/ckpt_epoch_240.pth \
--distill kd --model_s resnet8x4 -r 0.1 -a 0.9 -b 0 --trial 1 --warmup 0 --purification 40 --threshold 0.7 --version v3
All the commands can be found in folder scripts.
Citation
If you find this repository useful, please consider citing our paper, thanks.
@article{li2022knowledge,
title={Knowledge Condensation Distillation},
author={Li, Chenxin and Lin, Mingbao and Ding, Zhiyuan and Lin, Nie and Zhuang, Yihong and Huang, Yue and Ding, Xinghao and Cao, Liujuan},
journal={arXiv preprint arXiv:2207.05409},
year={2022}
}
Acknowledgement
Some of our implementation is borrowed from CRD