AdamW optimizer and cosine learning rate annealing with restarts

Overview

AdamW optimizer and cosine learning rate annealing with restarts

This repository contains an implementation of AdamW optimization algorithm and cosine learning rate scheduler described in "Decoupled Weight Decay Regularization". AdamW implementation is straightforward and does not differ much from existing Adam implementation for PyTorch, except that it separates weight decaying from batch gradient calculations. Cosine annealing scheduler with restarts allows model to converge to a (possibly) different local minimum on every restart and normalizes weight decay hyperparameter value according to the length of restart period. Unlike schedulers presented in standard PyTorch scheduler suite this scheduler adjusts optimizer's learning rate not on every epoch, but on every batch update, according to the paper.

Cyclical Learning Rates

Besides "cosine" and "arccosine" policies (arccosine has steeper profile at the limiting points), there are "triangular", triangular2 and exp_range, which implement policies proposed in "Cyclical Learning Rates for Training Neural Networks". The ratio of increasing and decreasing phases for triangular policy could be adjusted with triangular_step parameter. Minimum allowed lr is adjusted by min_lr parameter.

  • triangular schedule is enabled by passing policy="triangular" parameter.
  • triangular2 schedule reduces maximum lr by half on each restart cycle and is enabled by passing policy="triangular2" parameter, or by combining parameters policy="triangular", eta_on_restart_cb=ReduceMaxLROnRestart(ratio=0.5). The ratio parameter regulates the factor by which lr is scaled on each restart.
  • exp_range schedule is enabled by passing policy="exp_range" parameter. It exponentially scales maximum lr depending on iteration count. The base of exponentiation is set by gamma parameter.

These schedules could be combined with shrinking/expanding restart periods, weight decay normalization and could be used with AdamW and other PyTorch optimizers.

Example:

    batch_size = 32
    epoch_size = 1024
    model = resnet()
    optimizer = AdamW(model.parameters(), lr=1e-3, weight_decay=1e-5)
    scheduler = CyclicLRWithRestarts(optimizer, batch_size, epoch_size, restart_period=5, t_mult=1.2, policy="cosine")
    for epoch in range(100):
        scheduler.step()
        train_for_every_batch(...)
            ...
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()
            scheduler.batch_step()
        validate(...)
Owner
Maksym Pyrozhok
Maksym Pyrozhok
A modified version of DeepMind's Alphafold2 to divide CPU part (MSA and template searching) and GPU part (prediction model)

ParallelFold Author: Bozitao Zhong This is a modified version of DeepMind's Alphafold2 to divide CPU part (MSA and template searching) and GPU part (p

Bozitao Zhong 77 Dec 22, 2022
Principled Detection of Out-of-Distribution Examples in Neural Networks

ODIN: Out-of-Distribution Detector for Neural Networks This is a PyTorch implementation for detecting out-of-distribution examples in neural networks.

189 Nov 29, 2022
This repository contains the code for the binaural-detection model used in the publication arXiv:2111.04637

This repository contains the code for the binaural-detection model used in the publication arXiv:2111.04637 Dependencies The model depends on the foll

Jörg Encke 2 Oct 14, 2022
This example implements the end-to-end MLOps process using Vertex AI platform and Smart Analytics technology capabilities

MLOps with Vertex AI This example implements the end-to-end MLOps process using Vertex AI platform and Smart Analytics technology capabilities. The ex

Google Cloud Platform 238 Dec 21, 2022
Code for the Convolutional Vision Transformer (ConViT)

ConViT : Vision Transformers with Convolutional Inductive Biases This repository contains PyTorch code for ConViT. It builds on code from the Data-Eff

Facebook Research 418 Jan 06, 2023
Official code for paper "ISNet: Costless and Implicit Image Segmentation for Deep Classifiers, with Application in COVID-19 Detection"

Official code for paper "ISNet: Costless and Implicit Image Segmentation for Deep Classifiers, with Application in COVID-19 Detection". LRPDenseNet.py

Pedro Ricardo Ariel Salvador Bassi 2 Sep 21, 2022
A keras implementation of ENet (abandoned for the foreseeable future)

ENet-keras This is an implementation of ENet: A Deep Neural Network Architecture for Real-Time Semantic Segmentation, ported from ENet-training (lua-t

Pavlos 115 Nov 23, 2021
Simple data balancing baselines for worst-group-accuracy benchmarks.

BalancingGroups Code to replicate the experimental results from Simple data balancing baselines achieve competitive worst-group-accuracy. Replicating

Meta Research 29 Dec 02, 2022
CCP dataset from Clothing Co-Parsing by Joint Image Segmentation and Labeling

Clothing Co-Parsing (CCP) Dataset Clothing Co-Parsing (CCP) dataset is a new clothing database including elaborately annotated clothing items. 2, 098

Wei Yang 434 Dec 24, 2022
Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can ! 🤡

Customers Segmentation using PHP and Rubix ML PHP Library Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can !

Mickaël Andrieu 11 Oct 08, 2022
A Python library for Deep Probabilistic Modeling

Abstract DeeProb-kit is a Python library that implements deep probabilistic models such as various kinds of Sum-Product Networks, Normalizing Flows an

DeeProb-org 46 Dec 26, 2022
This is the official implementation of the paper "Object Propagation via Inter-Frame Attentions for Temporally Stable Video Instance Segmentation".

ObjProp Introduction This is the official implementation of the paper "Object Propagation via Inter-Frame Attentions for Temporally Stable Video Insta

Anirudh S Chakravarthy 6 May 03, 2022
MASA-SR: Matching Acceleration and Spatial Adaptation for Reference-Based Image Super-Resolution (CVPR2021)

MASA-SR Official PyTorch implementation of our CVPR2021 paper MASA-SR: Matching Acceleration and Spatial Adaptation for Reference-Based Image Super-Re

DV Lab 126 Dec 20, 2022
f-BRS: Rethinking Backpropagating Refinement for Interactive Segmentation

f-BRS: Rethinking Backpropagating Refinement for Interactive Segmentation [Paper] [PyTorch] [MXNet] [Video] This repository provides code for training

Visual Understanding Lab @ Samsung AI Center Moscow 516 Dec 21, 2022
DatasetGAN: Efficient Labeled Data Factory with Minimal Human Effort

DatasetGAN This is the official code and data release for: DatasetGAN: Efficient Labeled Data Factory with Minimal Human Effort Yuxuan Zhang*, Huan Li

302 Jan 05, 2023
Segmentation models with pretrained backbones. Keras and TensorFlow Keras.

Python library with Neural Networks for Image Segmentation based on Keras and TensorFlow. The main features of this library are: High level API (just

Pavel Yakubovskiy 4.2k Jan 09, 2023
A Partition Filter Network for Joint Entity and Relation Extraction EMNLP 2021

EMNLP 2021 - A Partition Filter Network for Joint Entity and Relation Extraction

zhy 127 Jan 04, 2023
Generate fine-tuning samples & Fine-tuning the model & Generate samples by transferring Note On

UPMT Generate fine-tuning samples & Fine-tuning the model & Generate samples by transferring Note On See main.py as an example: from model import PopM

7 Sep 01, 2022
Trajectory Extraction of road users via Traffic Camera

Traffic Monitoring Citation The associated paper for this project will be published here as soon as possible. When using this software, please cite th

Julian Strosahl 14 Dec 17, 2022