PyTorch implementation of some learning rate schedulers for deep learning researcher.

Overview

pytorch-lr-scheduler

PyTorch implementation of some learning rate schedulers for deep learning researcher.

Usage

WarmupReduceLROnPlateauScheduler

  • Visualize

  • Example code
import torch

from lr_scheduler.warmup_reduce_lr_on_plateau_scheduler import WarmupReduceLROnPlateauScheduler

if __name__ == '__main__':
    max_epochs, steps_in_epoch = 10, 10000

    model = [torch.nn.Parameter(torch.randn(2, 2, requires_grad=True))]
    optimizer = torch.optim.Adam(model, 1e-10)

    scheduler = WarmupReduceLROnPlateauScheduler(
        optimizer, 
        init_lr=1e-10, 
        peak_lr=1e-4, 
        warmup_steps=30000, 
        patience=1,
        factor=0.3,
    )

    for epoch in range(max_epochs):
        for timestep in range(steps_in_epoch):
            ...
            ...
            if timestep < warmup_steps:
                scheduler.step()
                
        val_loss = validate()
        scheduler.step(val_loss)

TransformerLRScheduler

  • Visualize

  • Example code
import torch

from lr_scheduler.transformer_lr_scheduler import TransformerLRScheduler

if __name__ == '__main__':
    max_epochs, steps_in_epoch = 10, 10000

    model = [torch.nn.Parameter(torch.randn(2, 2, requires_grad=True))]
    optimizer = torch.optim.Adam(model, 1e-10)

    scheduler = TransformerLRScheduler(
        optimizer=optimizer, 
        init_lr=1e-10, 
        peak_lr=0.1,
        final_lr=1e-4, 
        final_lr_scale=0.05,
        warmup_steps=3000, 
        decay_steps=17000,
    )

    for epoch in range(max_epochs):
        for timestep in range(steps_in_epoch):
            ...
            ...
            scheduler.step()

TriStageLRScheduler

  • Visualize

  • Example code
import torch

from lr_scheduler.tri_stage_lr_scheduler import TriStageLRScheduler

if __name__ == '__main__':
    max_epochs, steps_in_epoch = 10, 10000

    model = [torch.nn.Parameter(torch.randn(2, 2, requires_grad=True))]
    optimizer = torch.optim.Adam(model, 1e-10)

    scheduler = TriStageLRScheduler(
        optimizer, 
        init_lr=1e-10, 
        peak_lr=1e-4, 
        final_lr=1e-7, 
        init_lr_scale=0.01, 
        final_lr_scale=0.05,
        warmup_steps=30000, 
        hold_steps=70000, 
        decay_steps=100000,
        total_steps=200000,
    )

    for epoch in range(max_epochs):
        for timestep in range(steps_in_epoch):
            ...
            ...
            scheduler.step()

ReduceLROnPlateauScheduler

  • Visualize

  • Example code
import torch

from lr_scheduler.reduce_lr_on_plateau_lr_scheduler import ReduceLROnPlateauScheduler

if __name__ == '__main__':
    max_epochs, steps_in_epoch = 10, 10000

    model = [torch.nn.Parameter(torch.randn(2, 2, requires_grad=True))]
    optimizer = torch.optim.Adam(model, 1e-4)

    scheduler = ReduceLROnPlateauScheduler(optimizer, patience=1, factor=0.3)

    for epoch in range(max_epochs):
        for timestep in range(steps_in_epoch):
            ...
            ...
        
        val_loss = validate()
        scheduler.step(val_loss)

WarmupLRScheduler

  • Visualize

  • Example code
import torch

from lr_scheduler.warmup_lr_scheduler import WarmupLRScheduler

if __name__ == '__main__':
    max_epochs, steps_in_epoch = 10, 10000

    model = [torch.nn.Parameter(torch.randn(2, 2, requires_grad=True))]
    optimizer = torch.optim.Adam(model, 1e-10)

    scheduler = WarmupLRScheduler(
        optimizer, 
        init_lr=1e-10, 
        peak_lr=1e-4, 
        warmup_steps=4000,
    )

    for epoch in range(max_epochs):
        for timestep in range(steps_in_epoch):
            ...
            ...
            scheduler.step()

Troubleshoots and Contributing

If you have any questions, bug reports, and feature requests, please open an issue on Github.

I appreciate any kind of feedback or contribution. Feel free to proceed with small issues like bug fixes, documentation improvement. For major contributions and new features, please discuss with the collaborators in corresponding issues.

Code Style

I follow PEP-8 for code style. Especially the style of docstrings is important to generate documentation.

License

This project is licensed under the MIT LICENSE - see the LICENSE.md file for details

Owner
Soohwan Kim
Toward human-like A.I.
Soohwan Kim
codes for paper Combining Dynamic Local Context Focus and Dependency Cluster Attention for Aspect-level sentiment classification

DLCF-DCA codes for paper Combining Dynamic Local Context Focus and Dependency Cluster Attention for Aspect-level sentiment classification. submitted t

15 Aug 30, 2022
A Runtime method overload decorator which should behave like a compiled language

strongtyping-pyoverload A Runtime method overload decorator which should behave like a compiled language there is a override decorator from typing whi

20 Oct 31, 2022
Unofficial implementation (replicates paper results!) of MINER: Multiscale Implicit Neural Representations in pytorch-lightning

MINER_pl Unofficial implementation of MINER: Multiscale Implicit Neural Representations in pytorch-lightning. 📖 Ref readings Laplacian pyramid explan

AI葵 51 Nov 28, 2022
Official PyTorch repo for JoJoGAN: One Shot Face Stylization

JoJoGAN: One Shot Face Stylization This is the PyTorch implementation of JoJoGAN: One Shot Face Stylization. Abstract: While there have been recent ad

1.3k Dec 29, 2022
ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプル

ByteTrack-ONNX-Sample ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプルです。 ONNXに変換したモデルも同梱しています。 変換自体を試したい方はByteT

KazuhitoTakahashi 16 Oct 26, 2022
Pytorch tutorials for Neural Style transfert

PyTorch Tutorials This tutorial is no longer maintained. Please use the official version: https://pytorch.org/tutorials/advanced/neural_style_tutorial

Alexis David Jacq 135 Jun 26, 2022
How Effective is Incongruity? Implications for Code-mix Sarcasm Detection.

Code for the paper: How Effective is Incongruity? Implications for Code-mix Sarcasm Detection - ICON ACL 2021

2 Jun 05, 2022
Tianshou - An elegant PyTorch deep reinforcement learning library.

Tianshou (天授) is a reinforcement learning platform based on pure PyTorch. Unlike existing reinforcement learning libraries, which are mainly based on

Tsinghua Machine Learning Group 5.5k Jan 05, 2023
Behavioral "black-box" testing for recommender systems

RecList RecList Free software: MIT license Documentation: https://reclist.readthedocs.io. Overview RecList is an open source library providing behavio

Jacopo Tagliabue 375 Dec 30, 2022
An educational tool to introduce AI planning concepts using mobile manipulator robots.

JEDAI Explains Decision-Making AI Virtual Machine Image The recommended way of using JEDAI is to use pre-configured Virtual Machine image that is avai

Autonomous Agents and Intelligent Robots 13 Nov 15, 2022
Deep-learning-roadmap - All You Need to Know About Deep Learning - A kick-starter

Deep Learning - All You Need to Know Sponsorship To support maintaining and upgrading this project, please kindly consider Sponsoring the project deve

Instill AI 4.4k Dec 26, 2022
Efficient electromagnetic solver based on rigorous coupled-wave analysis for 3D and 2D multi-layered structures with in-plane periodicity

Efficient electromagnetic solver based on rigorous coupled-wave analysis for 3D and 2D multi-layered structures with in-plane periodicity, such as gratings, photonic-crystal slabs, metasurfaces, surf

Alex Song 17 Dec 19, 2022
Tutorial on scikit-learn and IPython for parallel machine learning

Parallel Machine Learning with scikit-learn and IPython Video recording of this tutorial given at PyCon in 2013. The tutorial material has been rearra

Olivier Grisel 1.6k Dec 26, 2022
Yolov5-opencv-cpp-python - Example of using ultralytics YOLO V5 with OpenCV 4.5.4, C++ and Python

yolov5-opencv-cpp-python Example of performing inference with ultralytics YOLO V

183 Jan 09, 2023
Why Are You Weird? Infusing Interpretability in Isolation Forest for Anomaly Detection

Why, hello there! This is the supporting notebook for the research paper — Why Are You Weird? Infusing Interpretability in Isolation Forest for Anomal

2 Dec 14, 2021
Incorporating Transformer and LSTM to Kalman Filter with EM algorithm

Deep learning based state estimation: incorporating Transformer and LSTM to Kalman Filter with EM algorithm Overview Kalman Filter requires the true p

zshicode 57 Dec 27, 2022
This repository is for Competition for ML_data class

This repository is for Competition for ML_data class. Based on mmsegmentatoin,mainly using swin transformer to completed the competition.

jianlong 2 Oct 23, 2022
YOLTv5 rapidly detects objects in arbitrarily large aerial or satellite images that far exceed the ~600×600 pixel size typically ingested by deep learning object detection frameworks

YOLTv5 rapidly detects objects in arbitrarily large aerial or satellite images that far exceed the ~600×600 pixel size typically ingested by deep learning object detection frameworks.

Adam Van Etten 145 Jan 01, 2023
Code for Neurips2021 Paper "Topology-Imbalance Learning for Semi-Supervised Node Classification".

Topology-Imbalance Learning for Semi-Supervised Node Classification Introduction Code for NeurIPS 2021 paper "Topology-Imbalance Learning for Semi-Sup

Victor Chen 40 Nov 23, 2022
Use of Attention Gates in a Convolutional Neural Network / Medical Image Classification and Segmentation

Attention Gated Networks (Image Classification & Segmentation) Pytorch implementation of attention gates used in U-Net and VGG-16 models. The framewor

Ozan Oktay 1.6k Dec 30, 2022