Implementation of Supervised Contrastive Learning with AMP, EMA, SWA, and many other tricks

Overview

SupCon-Framework

The repo is an implementation of Supervised Contrastive Learning. It's based on another implementation, but with several differencies:

  • Fixed bugs (incorrect ResNet implementations, which leads to a very small max batch size),
  • Offers a lot of additional functionality (first of all, rich validation).

To be more precise, in this implementations you will find:

  • Augmentations with albumentations
  • Hyperparameters are moved to .yml configs
  • t-SNE visualizations
  • 2-step validation (for features before and after the projection head) using metrics like AMI, NMI, mAP, precision_at_1, etc with PyTorch Metric Learning.
  • Exponential Moving Average for a more stable training, and Stochastic Moving Average for a better generalization and just overall performance.
  • Automatic Mixed Precision (torch version) training in order to be able to train with a bigger batch size (roughly by a factor of 2).
  • LabelSmoothing loss, and LRFinder for the second stage of the training (FC).
  • TensorBoard logs, checkpoints
  • Support of timm models, and pytorch-optimizer

Install

  1. Clone the repo:
git clone https://github.com/ivanpanshin/SupCon-Framework && cd SupCon-Framework/
  1. Create a clean virtual environment
python3 -m venv venv
source venv/bin/activate
  1. Install dependencies
python -m pip install --upgrade pip
pip install -r requirements.txt

Training

In order to execute Cifar10 training run:

python train.py --config_name configs/train/train_supcon_resnet18_cifar10_stage1.yml
python swa.py --config_name configs/train/swa_supcon_resnet18_cifar10_stage1.yml
python train.py --config_name configs/train/train_supcon_resnet18_cifar10_stage2.yml
python swa.py --config_name configs/train/swa_supcon_resnet18_cifar10_stage2.yml

In order to run LRFinder on the second stage of the training, run:

python learning_rate_finder.py --config_name configs/train/lr_finder_supcon_resnet18_cifar10_stage2.yml

The process of training Cifar100 is exactly the same, just change config names from cifar10 to cifar100.

After that you can check the results of the training either in logs or runs directory. For example, in order to check tensorboard logs for the first stage of Cifar10 training, run:

tensorboard --logdir runs/supcon_first_stage_cifar10

Visualizations

This repo is supplied with t-SNE visualizations so that you can check embeddings you get after the training. Check t-SNE.ipynb for details.

Those are t-SNE visualizations for Cifar10 for validation and train with SupCon (top), and validation and train with CE (bottom).

Those are t-SNE visualizations for Cifar100 for validation and train with SupCon (top), and validation and train with CE (bottom).

Results

Model Stage Dataset Accuracy
ResNet18 Frist CIFAR10 95.9
ResNet18 Second CIFAR10 94.9
ResNet18 Frist CIFAR100 79.0
ResNet18 Second CIFAR100 77.9

Note that even though the accuracy on the second stage is lower, it's not always the case. In my experience, the difference between stages is usually around 1 percent, including the difference that favors the second stage.

Training time for the whole pipeline (without any early stopping) on CIFAR10 or CIFAR100 is around 4 hours (single 2080Ti with AMP). However, with reasonable early stopping that value goes down to around 2.5-3 hours.

Custom datasets

It's fairly easy to adapt this pipeline to custom datasets. First, you need to check tools/datasets.py for that. Second, add a new class for your dataset. The only guideline here is to follow the same augmentation logic, that is

        if self.second_stage:
            image = self.transform(image=image)['image']
        else:
            image = self.transform(image)

Third, add your dataset to DATASETS dict still inside tools/datasets.py, and you're good to go.

FAQ

  • Q: What hyperparameters I should try to change?

    A: First of all, learning rate. Second of all, try to change the augmentation policy. SupCon is build around "cropping + color jittering" scheme, so you can try changing the cropping size or the intensity of jittering. Check tools.utils.build_transforms for that.

  • Q: What backbone and batch size should I use?

    A: This is quite simple. Take the biggest backbone you can, and after that take the highest batch size your GPU can offer. The reason for that: SupCon is more prone (than regular classification training with CE/LabelSmoothing/etc) to improving with stronger backbones. Moverover, it has a property of explicit hard positive and negative mining. It means that the higher the batch size - the more difficult and helpful samples you supply to your model.

  • Q: Do I need the second stage of the training?

    A: Not necessarily. You can do classification based only on embeddings. In order to do that compute embeddings for the train set, and at inference time do the following: take a sample, compute its embedding, take the closest one from the training, take its class. To make this fast and efficient, you something like faiss for similarity search. Note that this is actually how validation is done in this repo. Moveover, during training you will see a metric precision_at_1. This is actually just accuracy based solely on embeddings.

  • Q: Should I use AMP?

    A: If your GPU has tensor cores (like 2080Ti) - yes. If it doesn't (like 1080Ti) - check the speed with AMP and without. If the speed dropped slightly (or even increased by a bit) - use it, since SupCon works better with bigger batch sizes.

  • Q: How should I use EMA?

    A: You only need to choose the ema_decay_per_epoch parameter in the config. The heuristic is fairly simple. If your dataset is big, then something as small as 0.3 will do just fine. And as your dataset gets smaller, you can increase ema_decay_per_epoch. Thanks to bonlime for this idea. I advice you to check his great pytorch tools repo, it's a hidden gem.

  • Q: Is it better than training with Cross Entropy/Label Smoothing/etc?

    A: Unfortunately, in my experience, it's much easier to get better results with something like CE. It's more stable, faster to train, and simply produces better or the same results. For instance, in case on CIFAR10/100 it's trivial to train ResNet18 up tp 96/81 percent respectively. Of cource, I've seen cased where SupCon performs better, but it takes quite a bit of work to make it outperform CE.

  • Q: How long should I train with SupCon?

    A: The answer is tricky. On one hand, authors of the original paper claim that the longer you train with SupCon, the better it gets. However, I did not observe such a behavior in my tests. So the only recommendation I can give is the following: start with 100 epochs for easy datasets (like CIFAR10/100), and 1000 for more industrial ones. Then - monitor the training process. If the validaton metric (such as precision_at_1) doesn't impove for several dozens of epochs - you can stop the training. You might incorporate early stopping for this reason into the pipeline.

Owner
Ivan Panshin
Machine Learning Engineer: CV, NLP, tabular data. Kaggle (top 0.003% worldwide) and Open Source
Ivan Panshin
Flask user session management.

Flask-Login Flask-Login provides user session management for Flask. It handles the common tasks of logging in, logging out, and remembering your users

Max Countryman 3.2k Dec 28, 2022
Local server that gives you your OAuth 2.0 tokens needed to interact with the Conta Azul's API

What's this? This is a django project meant to be run locally that gives you your OAuth 2.0 tokens needed to interact with Conta Azul's API Prerequisi

Fábio David Freitas 3 Apr 13, 2022
A recipe sharing API built using Django rest framework.

Recipe Sharing API This is the backend API for the recipe sharing platform at https://mesob-recipe.netlify.app/ This API allows users to share recipes

Hannah 21 Dec 30, 2022
Simple Login - Login Extension for Flask - maintainer @cuducos

Login Extension for Flask The simplest way to add login to flask! How it works First, install it from PyPI: $ pip install flask_simplelogin Then, use

Flask Extensions 181 Jan 01, 2023
Social auth made simple

Python Social Auth Python Social Auth is an easy-to-setup social authentication/registration mechanism with support for several frameworks and auth pr

Matías Aguirre 2.8k Dec 24, 2022
A Python library for OAuth 1.0/a, 2.0, and Ofly.

Rauth A simple Python OAuth 1.0/a, OAuth 2.0, and Ofly consumer library built on top of Requests. Features Supports OAuth 1.0/a, 2.0 and Ofly Service

litl 1.6k Dec 08, 2022
Some scripts to utilise device code authorization for phishing.

OAuth Device Code Authorization Phishing Some scripts to utilise device code authorization for phishing. High level overview as per the instructions a

Daniel Underhay 6 Oct 03, 2022
Implements authentication and authorization as FastAPI dependencies

FastAPI Security Implements authentication and authorization as dependencies in FastAPI. Features Authentication via JWT-based OAuth 2 access tokens a

Jacob Magnusson 111 Jan 07, 2023
Simple yet powerful authorization / authentication client library for Python web applications.

Authomatic Authomatic is a framework agnostic library for Python web applications with a minimalistic but powerful interface which simplifies authenti

1k Dec 28, 2022
Flask Implementation of a login page and some basic functionality.

login_page Flask Implementation of a login page and some basic functionality. How to Run $ chmod +x run.sh setup.sh $ # run setup.sh only if the datab

3 Jun 03, 2021
A Python inplementation for OAuth2

OAuth2-Python Discord Inplementation for OAuth2 login systems. This is a simple Python 'app' made to inplement in your programs that require (shitty)

Prifixy 0 Jan 06, 2022
Accounts for Django made beautifully simple

Django Userena Userena is a Django application that supplies your Django project with full account management. It's a fully customizable application t

Bread & Pepper 1.3k Sep 18, 2022
A Python package, that allows you to acquire your RecNet authorization bearer token with your account credentials!

RecNet-Login This is a Python package, that allows you to acquire your RecNet bearer token with your account credentials! Installation Done via git: p

Jesse 6 Aug 18, 2022
RSA Cryptography Authentication Proof-of-Concept

RSA Cryptography Authentication Proof-of-Concept This project was a request by Structured Programming lectures in Computer Science college. It runs wi

Dennys Marcos 1 Jan 22, 2022
The ultimate Python library in building OAuth, OpenID Connect clients and servers. JWS,JWE,JWK,JWA,JWT included.

Authlib The ultimate Python library in building OAuth and OpenID Connect servers. JWS, JWK, JWA, JWT are included. Authlib is compatible with Python2.

Hsiaoming Yang 3.4k Jan 04, 2023
An open source Flask extension that provides JWT support (with batteries included)!

Flask-JWT-Extended Features Flask-JWT-Extended not only adds support for using JSON Web Tokens (JWT) to Flask for protecting views, but also many help

Landon Gilbert-Bland 1.4k Jan 04, 2023
Get inside your stronghold and make all your Django views default login_required

Stronghold Get inside your stronghold and make all your Django views default login_required Stronghold is a very small and easy to use django app that

Mike Grouchy 384 Nov 23, 2022
A fully tested, abstract interface to creating OAuth clients and servers.

Note: This library implements OAuth 1.0 and not OAuth 2.0. Overview python-oauth2 is a python oauth library fully compatible with python versions: 2.6

Joe Stump 3k Jan 02, 2023
Implementation of Supervised Contrastive Learning with AMP, EMA, SWA, and many other tricks

SupCon-Framework The repo is an implementation of Supervised Contrastive Learning. It's based on another implementation, but with several differencies

Ivan Panshin 132 Dec 14, 2022
Login-python - Login system made in Python, using native libraries

login-python Sistema de login feito 100% em Python, utilizando bibliotecas nativ

Nicholas Gabriel De Matos Leal 2 Jan 28, 2022