PAWS ๐Ÿพ Predicting View-Assignments with Support Samples

Related tags

Deep Learningsuncet
Overview

PAWS ๐Ÿพ Predicting View-Assignments with Support Samples

This repo provides a PyTorch implementation of PAWS (predicting view assignments with support samples), as described in the paper Semi-Supervised Learning of Visual Features by Non-Parametrically Predicting View Assignments with Support Samples.

CD21_260_SWAV2_PAWS_Flowchart_FINAL

PAWS is a method for semi-supervised learning that builds on the principles of self-supervised distance-metric learning. PAWS pre-trains a model to minimize a consistency loss, which ensures that different views of the same unlabeled image are assigned similar pseudo-labels. The pseudo-labels are generated non-parametrically, by comparing the representations of the image views to those of a set of randomly sampled labeled images. The distance between the view representations and labeled representations is used to provide a weighting over class labels, which we interpret as a soft pseudo-label. By non-parametrically incorporating labeled samples in this way, PAWS extends the distance-metric loss used in self-supervised methods such as BYOL and SwAV to the semi-supervised setting.

Also provided in this repo is a PyTorch implementation of the semi-supervised SimCLR+CT method described in the paper Supervision Accelerates Pretraining in Contrastive Semi-Supervised Learning of Visual Representations. SimCLR+CT combines the SimCLR self-supervised loss with the SuNCEt (supervised noise contrastive estimation) loss for semi-supervised learning.

Pretrained models

We provide the full checkpoints for the PAWS pre-trained models, both with and without fine-tuning. The full checkpoints for the pretrained models contain the backbone, projection head, and prediction head weights. The finetuned model checkpoints, on the other hand, only include the backbone and linear classifier head weights. Top-1 classification accuracy for the pretrained models is reported using a nearest neighbour classifier. Top-1 classification accuracy for the finetuned models is reported using the class labels predicted by the network's last linear layer.

1% labels 10% labels
epochs network pretrained (NN) finetuned pretrained (NN) finetuned
300 RN50 65.4% 66.5% 73.1% 75.5%
200 RN50 64.6% 66.1% 71.9% 75.0%
100 RN50 62.6% 63.8% 71.0% 73.9%

Running PAWS semi-supervised pre-training and fine-tuning

Config files

All experiment parameters are specified in config files (as opposed to command-line-arguments). Config files make it easier to keep track of different experiments, as well as launch batches of jobs at a time. See the configs/ directory for example config files.

Requirements

  • Python 3.8
  • PyTorch install 1.7.1
  • torchvision
  • CUDA 11.0
  • Apex with CUDA extension
  • Other dependencies: PyYaml, numpy, opencv, submitit

Labeled Training Splits

For reproducibilty, we have pre-specified the labeled training images as .txt files in the imagenet_subsets/ and cifar10_subsets/ directories. Based on your specifications in your experiment's config file, our implementation will automatically use the images specified in one of these .txt files as the set of labeled images. On ImageNet, if you happen to request a split of the data that is not contained in imagenet_subsets/ (for example, if you set unlabeled_frac !=0.9 and unlabeled_frac != 0.99, i.e., not 10% labeled or 1% labeled settings), then the code will independently flip a coin at the start of training for each training image with probability 1-unlabeled_frac to determine whether or not to keep the image's label.

Single-GPU training

PAWS is very simple to implement and experiment with. Our implementation starts from the main.py, which parses the experiment config file and runs the desired script (e.g., paws pre-training or fine-tuning) locally on a single GPU.

CIFAR10 pre-training

For example, to pre-train with PAWS on CIFAR10 locally, using a single GPU using the pre-training experiment configs specificed inside configs/paws/cifar10_train.yaml, run:

python main.py
  --sel paws_train
  --fname configs/paws/cifar10_train.yaml

CIFAR10 evaluation

To fine-tune the pre-trained model for a few optimization steps with the SuNCEt (supervised noise contrastive estimation) loss on a single GPU using the pre-training experiment configs specificed inside configs/paws/cifar10_snn.yaml, run:

python main.py
  --sel snn_fine_tune
  --fname configs/paws/cifar10_snn.yaml

To then evaluate the nearest-neighbours performance of the model, locally, on a single GPU, run:

python snn_eval.py
  --model-name wide_resnet28w2 --use-pred
  --pretrained $path_to_pretrained_model
  --unlabeled_frac $1.-fraction_of_labeled_train_data_to_support_nearest_neighbour_classification
  --root-path $path_to_root_datasets_directory
  --image-folder $image_directory_inside_root_path
  --dataset-name cifar10_fine_tune
  --split-seed $which_prespecified_seed_to_split_labeled_data

Multi-GPU training

Running PAWS across multiple GPUs on a cluster is also very simple. In the multi-GPU setting, the implementation starts from main_distributed.py, which, in addition to parsing the config file and launching the desired script, also allows for specifying details about distributed training. For distributed training, we use the popular open-source submitit tool and provide examples for a SLURM cluster, but feel free to edit main_distributed.py for your purposes to specify a different approach to launching a multi-GPU job on a cluster.

ImageNet pre-training

For example, to pre-train with PAWS on 64 GPUs using the pre-training experiment configs specificed inside configs/paws/imgnt_train.yaml, run:

python main_distributed.py
  --sel paws_train
  --fname configs/paws/imgnt_train.yaml
  --partition $slurm_partition
  --nodes 8 --tasks-per-node 8
  --time 1000
  --device volta16gb

ImageNet fine-tuning

To fine-tune a pre-trained model on 4 GPUs using the fine-tuning experiment configs specified inside configs/paws/fine_tune.yaml, run:

python main_distributed.py
  --sel fine_tune
  --fname configs/paws/fine_tune.yaml
  --partition $slurm_partition
  --nodes 1 --tasks-per-node 4
  --time 1000
  --device volta16gb

To evaluate the fine-tuned model locally on a single GPU, use the same config file, configs/paws/fine_tune.yaml, but change training: true to training: false. Then run:

python main.py
  --sel fine_tune
  --fname configs/paws/fine_tune.yaml

Soft Nearest Neighbours evaluation

To evaluate the nearest-neighbours performance of a pre-trained ResNet50 model on a single GPU, run:

python snn_eval.py
  --model-name resnet50 --use-pred
  --pretrained $path_to_pretrained_model
  --unlabeled_frac $1.-fraction_of_labeled_train_data_to_support_nearest_neighbour_classification
  --root-path $path_to_root_datasets_directory
  --image-folder $image_directory_inside_root_path
  --dataset-name $one_of:[imagenet_fine_tune, cifar10_fine_tune]

License

See the LICENSE file for details about the license under which this code is made available.

Citation

If you find this repository useful in your research, please consider giving a star โญ and a citation ๐Ÿพ

@article{assran2021semisupervised,
  title={Semi-Supervised Learning of Visual Features by Non-Parametrically Predicting View Assignments with Support Samples}, 
  author={Assran, Mahmoud, and Caron, Mathilde, and Misra, Ishan, and Bojanowski, Piotr and Joulin, Armand, and Ballas, Nicolas, and Rabbat, Michael},
  journal={arXiv preprint arXiv:2104.13963},
  year={2021}
}
@article{assran2020supervision,
  title={Supervision Accelerates Pretraining in Contrastive Semi-Supervised Learning of Visual Representations},
  author={Assran, Mahmoud, and Ballas, Nicolas, and Castrejon, Lluis, and Rabbat, Michael},
  journal={arXiv preprint arXiv:2006.10803},
  year={2020}
}
Owner
Facebook Research
Facebook Research
StackRec: Efficient Training of Very Deep Sequential Recommender Models by Iterative Stacking

StackRec: Efficient Training of Very Deep Sequential Recommender Models by Iterative Stacking Datasets You can download datasets that have been pre-pr

25 May 29, 2022
QRec: A Python Framework for quick implementation of recommender systems (TensorFlow Based)

Introduction QRec is a Python framework for recommender systems (Supported by Python 3.7.4 and Tensorflow 1.14+) in which a number of influential and

Yu 1.4k Jan 01, 2023
PyTorch Implementation of "Non-Autoregressive Neural Machine Translation"

Non-Autoregressive Transformer Code release for Non-Autoregressive Neural Machine Translation by Jiatao Gu, James Bradbury, Caiming Xiong, Victor O.K.

Salesforce 261 Nov 12, 2022
This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to generate a dynamic forecast from your own data.

๐Ÿ“ˆ Automated Time Series Forecasting Background: This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to gene

Zach Renwick 42 Jan 04, 2023
This repository contains the source code of Auto-Lambda and baselines from the paper, Auto-Lambda: Disentangling Dynamic Task Relationships.

Auto-Lambda This repository contains the source code of Auto-Lambda and baselines from the paper, Auto-Lambda: Disentangling Dynamic Task Relationship

Shikun Liu 76 Dec 20, 2022
Temporal Segment Networks (TSN) in PyTorch

TSN-Pytorch We have released MMAction, a full-fledged action understanding toolbox based on PyTorch. It includes implementation for TSN as well as oth

1k Jan 03, 2023
Code for Discriminative Sounding Objects Localization (NeurIPS 2020)

Discriminative Sounding Objects Localization Code for our NeurIPS 2020 paper Discriminative Sounding Objects Localization via Self-supervised Audiovis

51 Dec 11, 2022
The official code for PRIMER: Pyramid-based Masked Sentence Pre-training for Multi-document Summarization

PRIMER The official code for PRIMER: Pyramid-based Masked Sentence Pre-training for Multi-document Summarization. PRIMER is a pre-trained model for mu

AI2 111 Dec 18, 2022
the code for paper "Energy-Based Open-World Uncertainty Modeling for Confidence Calibration"

EOW-Softmax This code is for the paper "Energy-Based Open-World Uncertainty Modeling for Confidence Calibration". Accepted by ICCV21. Usage Commnd exa

Yezhen Wang 36 Dec 02, 2022
๐Ÿ‘OpenHands : Making Sign Language Recognition Accessible (WiP ๐Ÿšง๐Ÿ‘ทโ€โ™‚๏ธ๐Ÿ—)

๐Ÿ‘ OpenHands: Sign Language Recognition Library Making Sign Language Recognition Accessible Check the documentation on how to use the library: ReadThe

AI4Bhฤrat 69 Dec 12, 2022
House-GAN++: Generative Adversarial Layout Refinement Network towards Intelligent Computational Agent for Professional Architects

House-GAN++ Code and instructions for our paper: House-GAN++: Generative Adversarial Layout Refinement Network towards Intelligent Computational Agent

122 Dec 28, 2022
Code repo for "Cross-Scale Internal Graph Neural Network for Image Super-Resolution" (NeurIPS'20)

IGNN Code repo for "Cross-Scale Internal Graph Neural Network for Image Super-Resolution" [paper] [supp] Prepare datasets 1 Download training dataset

Shangchen Zhou 278 Jan 03, 2023
State of the Art Neural Networks for Generative Deep Learning

pyradox-generative State of the Art Neural Networks for Generative Deep Learning Table of Contents pyradox-generative Table of Contents Installation U

Ritvik Rastogi 8 Sep 29, 2022
Prompt Tuning with Rules

PTR Code and datasets for our paper "PTR: Prompt Tuning with Rules for Text Classification" If you use the code, please cite the following paper: @art

THUNLP 118 Dec 30, 2022
Iran Open Source Hackathon

Iran Open Source Hackathon is an open-source hackathon (duh) with the aim of encouraging participation in open-source contribution amongst Iranian dev

OSS Hackathon 121 Dec 25, 2022
simple demo codes for Learning to Teach with Dynamic Loss Functions

Learning to Teach with Dynamic Loss Functions This repo contains the simple demo for the NeurIPS-18 paper: Learning to Teach with Dynamic Loss Functio

Lijun Wu 15 Dec 30, 2021
Inflated i3d network with inception backbone, weights transfered from tensorflow

I3D models transfered from Tensorflow to PyTorch This repo contains several scripts that allow to transfer the weights from the tensorflow implementat

Yana 479 Dec 08, 2022
PyTorch code for DriveGAN: Towards a Controllable High-Quality Neural Simulation

PyTorch code for DriveGAN: Towards a Controllable High-Quality Neural Simulation

76 Dec 24, 2022
An official implementation of MobileStyleGAN in PyTorch

MobileStyleGAN: A Lightweight Convolutional Neural Network for High-Fidelity Image Synthesis Official PyTorch Implementation The accompanying videos c

Sergei Belousov 602 Jan 07, 2023
A Pytorch Implementation for Compact Bilinear Pooling.

CompactBilinearPooling-Pytorch A Pytorch Implementation for Compact Bilinear Pooling. Adapted from tensorflow_compact_bilinear_pooling Prerequisites I

169 Dec 23, 2022