Skip to main content

Gradient Agreement Filtering (GAF) Package

Project description

Gradient Agreement Filtering (GAF)

This package implements the Gradient Agreement Filtering (GAF) optimization algorithm.

GAF is a novel optimization algorithm that improves gradient-based optimization by filtering out gradients of data batches that do not agree with each other and nearly eliminates the need for a validation set without risk of overfitting (even with noisy labels). It bolts on top of existing optimization procedures such as SGD, SGD with Nesterov momentum, Adam, AdamW, RMSProp, etc and outperforms in all cases. Full paper here:

TODO: Insert arxiv paper link.

Repo Features

  • Supports multiple optimizers: SGD, SGD with Nesterov momentum, Adam, AdamW, RMSProp.
  • Implements Gradient Agreement Filtering based on cosine distance.
  • Allows for label noise injection by flipping a percentage of labels.
  • Customizable hyperparameters via command-line arguments.
  • Logging and tracking with Weights & Biases (wandb).

Requirements

  • Python 3.6 or higher
  • PyTorch 1.7 or higher
  • torchvision 0.8 or higher
  • numpy
  • wandb

Installation

git clone https://github.com/<insert your username>/gradient_agreement_filtering.git
cd gradient_agreement_filtering
pip install .

Usage

We provide two ways to easily incorporate GAF into your existing training.

  1. step_GAF(): If you want to use GAF inside your existing train loop, you can just replace your typical:

    ...
    optimizer.zero_grad()
    outputs = model(batch)
    loss = criterion(outputs, labels)
    loss.backward()
    optimizer.step()
    ...
    

    with one call to step_GAF() as per below:

    from gaf import step_GAF
    ...
    results = step_GAF(model, 
              optimizer, 
              criterion, 
              list_of_microbatches,
              wandb=True,
              verbose=True,
              cos_distance_thresh=0.97,
              device=gpu_device)
    ...
    
  2. train_GAF():

    If you want to use GAF as the train loop, you can just replace your typical hugging face / keras style interface:

    trainer.Train()
    

    with one call to train_GAF() as per below:

    from gaf import train_GAF
    ...
    train_GAF(model,
               args,
               train_dataset,
               val_dataset,
               optimizer,
               criterion,
               wandb=True,
               verbose=True,
               cos_distance_thresh=0.97,
               device=gpu_device)
    ...
    

Examples

NOTE: running with wandb

For all of the scripts below, if you want to run with wandb, you can either fill in the:

os.environ["WANDB_API_KEY"] = "<your-wandb-api-key>"

Or you can prepend any of the calls below with:

WANDB_API_KEY=<your-wandb-api-key> python *.py 

Or you can login on the system first then run the .py via:

wandb login <your-wandb-api-key>

Or you can run without it. Choice is yours.

Now please review the examples below.

1_cifar_100_train_loop_exposed.py

This file uses step_GAF() to train a ResNet18 model on the CIFAR-100 dataset using PyTorch with the ability to add noise to the labels to observe how GAF performs under noisy conditions. The code supports various optimizers and configurations, allowing you to experiment with different settings to understand the impact of GAF on model training.

Example call:

python examples/1_cifar_100_train_loop_exposed.py --GAF True --optimizer "SGD+Nesterov+val_plateau" --learning_rate 0.01 --momentum 0.9 --nesterov True --wandb True --verbose True --num_samples_per_class_per_batch 1 --num_batches_to_force_agreement 2 --label_error_percentage 0.15 --cos_distance_thresh 0.97

2_cifar_100_trainer.py

This file uses train_GAF() to train a ResNet18 model on the CIFAR-100 dataset using PyTorch just to show how it works.

Example call:

python examples/2_cifar_100_trainer.py 

3_cifar_100N_train_loop_exposed.py

This file uses step_GAF() to train a ResNet34 model on the CIFAR-100N-Fine dataset using PyTorch to observe how GAF performs under typical labeling noise. The code supports various optimizers and configurations, allowing you to experiment with different settings to understand the impact of GAF on model training.

Example call:

python examples/3_cifar_100N_Fine_train_loop_exposed.py --GAF True --optimizer "SGD+Nesterov+val_plateau"  --cifarn True --learning_rate 0.01 --momentum 0.9 --nesterov True --wandb True --verbose True --num_samples_per_class_per_batch 2 --num_batches_to_force_agreement 2 --cos_distance_thresh 0.97

Acknowledgement

To cite this work, please use the following BibTeX entry:

TODO

Citing GAF

Insert bibtex

License

This package is licensed under the MIT license. See LICENSE for details.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

gradient_agreement_filtering-0.1.0.tar.gz (4.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

gradient_agreement_filtering-0.1.0-py3-none-any.whl (4.5 kB view details)

Uploaded Python 3

File details

Details for the file gradient_agreement_filtering-0.1.0.tar.gz.

File metadata

File hashes

Hashes for gradient_agreement_filtering-0.1.0.tar.gz
Algorithm Hash digest
SHA256 c5226b5057fd1f10f16072ca91dc7a11de387ca74b81df09879d200c51da5f42
MD5 83d52b4411c2e1ed518d28d065f1b91a
BLAKE2b-256 a3c6e514a340c2cc862945861bbbfabcf2ce5ed5c783ae37c51629d60db4277c

See more details on using hashes here.

File details

Details for the file gradient_agreement_filtering-0.1.0-py3-none-any.whl.

File metadata

File hashes

Hashes for gradient_agreement_filtering-0.1.0-py3-none-any.whl
Algorithm Hash digest
SHA256 e88ff4f45e288adbd972d53ba8e373bf68326af16dd4743ea22ad27441b64043
MD5 8f6cdd2277b1bb347be3b8fd951f4abf
BLAKE2b-256 251c8fe4c774918b59698424371b46b76d890c56fa279e2f6fec9784fe2e371d

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page