✂️ Dataset Culling: Faster training of domain specific models with distillation ✂️ (IEEE ICIP 2019)
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Updated
Jan 31, 2020 - Python
✂️ Dataset Culling: Faster training of domain specific models with distillation ✂️ (IEEE ICIP 2019)
Code for "OnlineAugment: Online Data Augmentation with Less Domain Knowledge" (ECCV 2020)
PyTorch implementation of X3D models with Multigrid training.
[CVPR 2020] L2-GCN: Layer-Wise and Learned Efficient Training of Graph Convolutional Networks
[NeurIPS 2020] "FracTrain: Fractionally Squeezing Bit Savings Both Temporally and Spatially for Efficient DNN Training" by Yonggan Fu, Haoran You, Yang Zhao, Yue Wang, Chaojian Li, Kailash Gopalakrishnan, Zhangyang Wang, Yingyan Lin
[ICLR 2021] "CPT: Efficient Deep Neural Network Training via Cyclic Precision" by Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin
(CVPR 2022) Automated Progressive Learning for Efficient Training of Vision Transformers
Salient Video Frames Sampling Method Using the Mean of Deep Features for Efficient Model Training (KIBME 2021)
[ACCV 2022] The official repository of ''COLLIDER: A Robust Training Framework for Backdoor Data''.
Can We Find Strong Lottery Tickets in Generative Models? - Official Code (Pytorch)
[ICLR 2023] Link Prediction with Non-Contrastive Learning
[ICLR 2023] MLPInit: Embarrassingly Simple GNN Training Acceleration with MLP Initialization
[ECCV 2022] The official repository of ''$\ell_\infty$-Robustness and Beyond: Unleashing Efficient Adversarial Training''.
[ICLR 2023] "Learning to Grow Pretrained Models for Efficient Transformer Training" by Peihao Wang, Rameswar Panda, Lucas Torroba Hennigen, Philip Greengard, Leonid Karlinsky, Rogerio Feris, David Cox, Zhangyang Wang, Yoon Kim
Official code for our ECCV'22 paper "A Fast Knowledge Distillation Framework for Visual Recognition"
Code release for "Training a Large Video Model on a Single Machine in a Day"
1.5−3.0× lossless training or pre-training speedup. An off-the-shelf, easy-to-implement algorithm for the efficient training of foundation visual backbones.
Pure PyTorch Implementation of NVIDIA paper on Instant Training of Neural Graphics primitives: https://nvlabs.github.io/instant-ngp/
This is the official repo for Densely-Anchored Sampling for Deep Metric Learning (ECCV 22).
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