[ICLR 2021] "CPT: Efficient Deep Neural Network Training via Cyclic Precision" by Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin

Overview

CPT: Efficient Deep Neural Network Training via Cyclic Precision

Yonggan Fu, Han Guo, Meng Li, Xin Yang, Yining Ding, Vikas Chandra, Yingyan Lin

Accepted at ICLR 2021 (Spotlight) [Paper Link].

Overview

Low-precision deep neural network (DNN) training has gained tremendous attention as reducing precision is one of the most effective knobs for boosting DNNs’ training time/energy efficiency. In this paper, we attempt to explore low-precision training from a new perspective as inspired by recent findings in understanding DNN training: we conjecture that DNNs’ precision might have a similar effect as the learning rate during DNN training, and advocate dynamic precision along the training trajectory for further boosting the time/energy efficiency of DNN training. Specifically, we propose Cyclic Precision Training (CPT) to cyclically vary the precision between two boundary values to balance the coarse-grained exploration of low precision and fine-grained optimization of high precision. Through experiments and visualization we show that CPT helps to (1) converge to a wider minima with a lower generalization error and (2) reduce training variance, which opens up a new design knob for simultaneously improving the optimization and efficiency of DNN training.

Experimental Results

We evaluate CPT on eleven models & five datasets (i.e., ResNet-38/74/110/152/164/MobileNetV2 on CIFAR-10/100, ResNet-18/34/50 on ImageNet, Transformer on WikiText-103, LSTM on PTB). Please refer to our paper for more results.

Results on CIFAR-100

  • Test accuracy vs. training computational cost

  • Loss landscape visualization

Results on ImageNet

  • Accuracy - training efficiency trade-off

  • Boosting optimality

Results on WikiText-103 and PTB

Code Usage

cpt_cifar and cpt_imagenet are the codes customized for CIFAR-10/100 and ImageNet, respectively, with a similar code structure.

Prerequisites

See env.yml for the complete conda environment. Create a new conda environment:

conda env create -f env.yml
conda activate pytorch

Training on CIFAR-10/100 with CPT

In addition to the commonly considered args, e.g., the target network, dataset, and data path via --arch, --dataset, and --datadir, respectively, you also need to: (1) enable cyclic precision training via --is_cyclic_precision; (2) specify the precision bounds for both forward (weights and activations) and backward (gradients and errors) with --cyclic_num_bits_schedule and --cyclic_num_grad_bits_schedule, respectively (note that in CPT, we adopt a constant precision during backward for more stable training process as analyzed in our appendix); (3) specify the number of cyclic periods via --num_cyclic_period which can be set as 32 in all experiments and more ablation studies can be found in Sec. 4.3 of our paper.

  • Example: Training ResNet-74 on CIFAR-100 with CPT (3~8-bit forward, 8-bit backward, and a cyclic periods of 32).
cd cpt_cifar
python train.py --save_folder ./logs --arch cifar100_resnet_74 --workers 4 --dataset cifar100 --datadir path-to-cifar100 --is_cyclic_precision --cyclic_num_bits_schedule 3 8 --cyclic_num_grad_bits_schedule 8 8 --num_cyclic_period 32

We also integrate SWA in our code although it is not used in the reported results of our paper.

Training on ImageNet with CPT

The args for ImageNet experiments are similar with the ones on CIFAR-10/100.

  • Example: Training ResNet-34 on ImageNet with CPT (3~8-bit forward, 8-bit backward, and a cyclic periods of 32).
cd cpt_imagenet
python train.py --save_folder ./logs --arch resnet34 --warm_up --datadir PATH_TO_IMAGENET --is_cyclic_precision --cyclic_num_bits_schedule 3 8 --cyclic_num_grad_bits_schedule 8 8 --num_cyclic_period 32 --automatic_resume

Citation

@article{fu2021cpt,
  title={CPT: Efficient Deep Neural Network Training via Cyclic Precision},
  author={Fu, Yonggan and Guo, Han and Li, Meng and Yang, Xin and Ding, Yining and Chandra, Vikas and Lin, Yingyan},
  journal={arXiv preprint arXiv:2101.09868},
  year={2021}
}

Our Related Work

Please also check our work on how to fractionally squeeze out more training cost savings from the most redundant bit level, progressively along the training trajectory and dynamically per input:

Yonggan Fu, Haoran You, Yang Zhao, Yue Wang, Chaojian Li, Kailash Gopalakrishnan, Zhangyang Wang, Yingyan Lin. "FracTrain: Fractionally Squeezing Bit Savings Both Temporally and Spatially for Efficient DNN Training". NeurIPS, 2020. [Paper Link] [Code]

Owner
Efficient and Intelligent Computing Lab
Vertex AI: Serverless framework for MLOPs (ESP / ENG)

Vertex AI: Serverless framework for MLOPs (ESP / ENG) Español Qué es esto? Este repo contiene un pipeline end to end diseñado usando el SDK de Kubeflo

Hernán Escudero 2 Apr 28, 2022
This repository contains the DendroMap implementation for scalable and interactive exploration of image datasets in machine learning.

DendroMap DendroMap is an interactive tool to explore large-scale image datasets used for machine learning. A deep understanding of your data can be v

DIV Lab 33 Dec 30, 2022
This repository contains the code for the ICCV 2019 paper "Occupancy Flow - 4D Reconstruction by Learning Particle Dynamics"

Occupancy Flow This repository contains the code for the project Occupancy Flow - 4D Reconstruction by Learning Particle Dynamics. You can find detail

189 Dec 29, 2022
A scikit-learn compatible neural network library that wraps PyTorch

A scikit-learn compatible neural network library that wraps PyTorch. Resources Documentation Source Code Examples To see more elaborate examples, look

4.9k Dec 31, 2022
Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021)

Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021) Introduction This is the official repository for the PyTorch implementation

165 Dec 07, 2022
This repository contains notebook implementations of the following Neural Process variants: Conditional Neural Processes (CNPs), Neural Processes (NPs), Attentive Neural Processes (ANPs).

The Neural Process Family This repository contains notebook implementations of the following Neural Process variants: Conditional Neural Processes (CN

DeepMind 892 Dec 28, 2022
This is an open source python repository for various python tests

Welcome to Py-tests This is an open source python repository for various python tests. This is in response to the hacktoberfest2021 challenge. It is a

Yada Martins Tisan 3 Oct 31, 2021
Official repository for the ISBI 2021 paper Transformer Assisted Convolutional Neural Network for Cell Instance Segmentation

SegPC-2021 This is the official repository for the ISBI 2021 paper Transformer Assisted Convolutional Neural Network for Cell Instance Segmentation by

Datascience IIT-ISM 13 Dec 14, 2022
Self-Supervised depth kalilia

Self-Supervised depth kalilia

24 Oct 15, 2022
A Python package for time series augmentation

tsaug tsaug is a Python package for time series augmentation. It offers a set of augmentation methods for time series, as well as a simple API to conn

Arundo Analytics 278 Jan 01, 2023
Project ArXiv Citation Network

Project ArXiv Citation Network Overview This project involved the analysis of the ArXiv citation network. Usage The complete code of this project is i

Dennis Núñez-Fernández 5 Oct 20, 2022
Time Dependent DFT in Tamm-Dancoff Approximation

Density Function Theory Program - kspy-tddft(tda) This is an implementation of Time-Dependent Density Functional Theory(TDDFT) using the Tamm-Dancoff

Peter Borthwick 2 Nov 17, 2022
Genetic feature selection module for scikit-learn

sklearn-genetic Genetic feature selection module for scikit-learn Genetic algorithms mimic the process of natural selection to search for optimal valu

Manuel Calzolari 260 Dec 14, 2022
Geometric Sensitivity Decomposition

Geometric Sensitivity Decomposition This repo is the official implementation of A Geometric Perspective towards Neural Calibration via Sensitivity Dec

16 Dec 26, 2022
NeurIPS-2021: Neural Auto-Curricula in Two-Player Zero-Sum Games.

NAC Official PyTorch implementation of NAC from the paper: Neural Auto-Curricula in Two-Player Zero-Sum Games. We release code for: Gradient based ora

Xidong Feng 19 Nov 11, 2022
Development Kit for the SoccerNet Challenge

SoccerNetv2-DevKit Welcome to the SoccerNet-V2 Development Kit for the SoccerNet Benchmark and Challenge. This kit is meant as a help to get started w

Silvio Giancola 117 Dec 30, 2022
PIGLeT: Language Grounding Through Neuro-Symbolic Interaction in a 3D World [ACL 2021]

piglet PIGLeT: Language Grounding Through Neuro-Symbolic Interaction in a 3D World [ACL 2021] This repo contains code and data for PIGLeT. If you like

Rowan Zellers 51 Oct 08, 2022
Official repository of the paper Privacy-friendly Synthetic Data for the Development of Face Morphing Attack Detectors

SMDD-Synthetic-Face-Morphing-Attack-Detection-Development-dataset Official repository of the paper Privacy-friendly Synthetic Data for the Development

10 Dec 12, 2022
The code for SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network.

SAG-DTA The code is the implementation for the paper 'SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network'. Requirements py

Shugang Zhang 7 Aug 02, 2022
A cross-lingual COVID-19 fake news dataset

CrossFake An English-Chinese COVID-19 fake&real news dataset from the ICDMW 2021 paper below: Cross-lingual COVID-19 Fake News Detection. Jiangshu Du,

Yingtong Dou 11 Dec 01, 2022