Structured Data Gradient Pruning (SDGP)

Related tags

Deep Learningsdgp
Overview

Structured Data Gradient Pruning (SDGP)

Weight pruning is a technique to make Deep Neural Network (DNN) inference more computationally efficient by reducing the number of model parameters over the course of training. However, most weight pruning techniques generally does not speed up DNN training and can even require more iterations to reach model convergence. In this work, we propose a novel Structured Data Gradient Pruning (SDGP) method that can speed up training without impacting model convergence. This approach enforces a specific sparsity structure, where only N out of every M elements in a matrix can be nonzero, making it amenable to hardware acceleration. Modern accelerators such as the Nvidia A100 GPU support this type of structured sparsity for 2 nonzeros per 4 elements in a reduction. Assuming hardware support for 2:4 sparsity, our approach can achieve a 15-25% reduction in total training time without significant impact to performance.

Implementation Details

Check out sdgp.py for details on how the data gradients are pruned during backpropagation. To make the pruning more efficient under group-level sorting, we implemented our own CUDA kernel. This is tested only with CUDA 11.3 and PyTorch 1.10.2 using Python 3.9.

Training Configuration

Training generally follows the configuration details in the excellent ffcv library. To fit ImageNet in a system with 256 GB of RAM using the ffcv data loader, we decreased the image size and other settings from (500, 0.5, 90) which takes 337GB to (448, 0.60, 90) which takes 229GB. We did not observe any decrease in performance comapared to the results posted in the ffcv repository on either ResNet-18 or ResNet-50 using these slightly smaller images.

CIFAR-10

SDGP Prune Function Non zeros Group size Top-1 Acc. Config Checkpoint
None (dense) 4 4 95.3 link link
Random 2 4 94.5 link link
Magnitude 2 4 95.2 link link
Rescale Mag. 1 4 95.1 link link
Rescale Mag. 2 4 95.2 link link
Rescale Mag. 1 8 94.7 link link
Rescale Mag. 2 8 95.1 link link
Rescale Mag. 4 8 95.2 link link
Rescale Mag. 2 16 95.1 link link
Rescale Mag. 4 16 95.2 link link
Rescale Mag. 8 16 95.2 link link
Rescale Mag. 4 32 94.9 link link
Rescale Mag. 8 32 95.3 link link
Rescale Mag. 16 32 95.3 link link

ImageNet

Model SDGP Prune Function Non zeros Group size Top-1 Acc. Config Checkpoint
ResNet-18 None (dense) 4 4 71.4 link link
ResNet-18 Random 2 4 64.3 link link
ResNet-18 Magnitude 2 4 72.1 link link
ResNet-18 Rescale Mag. 2 4 72.4 link link
ResNet-50 None (dense) 4 4 78.1 link link
ResNet-50 Random 2 4 70.3 link link
ResNet-50 Magnitude 2 4 77.7 link link
ResNet-50 Rescale Mag. 2 4 77.6 link link
RegNetX-400MF None (dense) 4 4 73.3 link link
RegNetX-400MF Random 2 4 64.3 link link
RegNetX-400MF Magnitude 2 4 72.1 link link
RegNetX-400MF Rescale Mag. 2 4 72.4 link link
Owner
Bradley McDanel
Bradley McDanel
I3-master-layout - Simple master and stack layout script

Simple master and stack layout script | ------ | ----- | | | | | Ma

Tobias S 18 Dec 05, 2022
SiT: Self-supervised vIsion Transformer

This repository contains the official PyTorch self-supervised pretraining, finetuning, and evaluation codes for SiT (Self-supervised image Transformer).

Sara Ahmed 275 Dec 28, 2022
Implementation of parameterized soft-exponential activation function.

Soft-Exponential-Activation-Function: Implementation of parameterized soft-exponential activation function. In this implementation, the parameters are

Shuvrajeet Das 1 Feb 23, 2022
Edge Restoration Quality Assessment

ERQA - Edge Restoration Quality Assessment ERQA - a full-reference quality metric designed to analyze how good image and video restoration methods (SR

MSU Video Group 27 Dec 17, 2022
iNAS: Integral NAS for Device-Aware Salient Object Detection

iNAS: Integral NAS for Device-Aware Salient Object Detection Introduction Integral search design (jointly consider backbone/head structures, design/de

顾宇超 77 Dec 02, 2022
U^2-Net - Portrait matting This repository explores possibilities of using the original u^2-net model for portrait matting.

U^2-Net - Portrait matting This repository explores possibilities of using the original u^2-net model for portrait matting.

Dennis Bappert 104 Nov 25, 2022
Really awesome semantic segmentation

really-awesome-semantic-segmentation A list of all papers on Semantic Segmentation and the datasets they use. This site is maintained by Holger Caesar

Holger Caesar 400 Nov 28, 2022
Code for testing various M1 Chip benchmarks with TensorFlow.

M1, M1 Pro, M1 Max Machine Learning Speed Test Comparison This repo contains some sample code to benchmark the new M1 MacBooks (M1 Pro and M1 Max) aga

Daniel Bourke 348 Jan 04, 2023
The code repository for EMNLP 2021 paper "Vision Guided Generative Pre-trained Language Models for Multimodal Abstractive Summarization".

Vision Guided Generative Pre-trained Language Models for Multimodal Abstractive Summarization [Paper] accepted at the EMNLP 2021: Vision Guided Genera

CAiRE 42 Jan 07, 2023
Pytorch implementation of VAEs for heterogeneous likelihoods.

Heterogeneous VAEs Beware: This repository is under construction 🛠️ Pytorch implementation of different VAE models to model heterogeneous data. Here,

Adrián Javaloy 35 Nov 29, 2022
Implementation of "Semi-supervised Domain Adaptive Structure Learning"

Semi-supervised Domain Adaptive Structure Learning - ASDA This repo contains the source code and dataset for our ASDA paper. Illustration of the propo

3 Dec 13, 2021
Source code of D-HAN: Dynamic News Recommendation with Hierarchical Attention Network

D-HAN The source code of D-HAN This is the source code of D-HAN: Dynamic News Recommendation with Hierarchical Attention Network. However, only the co

30 Sep 22, 2022
a pytorch implementation of auto-punctuation learned character by character

Learning Auto-Punctuation by Reading Engadget Articles Link to Other of my work 🌟 Deep Learning Notes: A collection of my notes going from basic mult

Ge Yang 137 Nov 09, 2022
CNN designed for pansharpening

PROGRESSIVE BAND-SEPARATED CONVOLUTIONAL NEURAL NETWORK FOR MULTISPECTRAL PANSHARPENING This repository contains main code for the paper PROGRESSIVE B

SerendipitysX 3 Dec 29, 2021
Codes for “A Deeply Supervised Attention Metric-Based Network and an Open Aerial Image Dataset for Remote Sensing Change Detection”

DSAMNet The pytorch implementation for "A Deeply-supervised Attention Metric-based Network and an Open Aerial Image Dataset for Remote Sensing Change

Mengxi Liu 41 Dec 14, 2022
Python implementation of "Multi-Instance Pose Networks: Rethinking Top-Down Pose Estimation"

MIPNet: Multi-Instance Pose Networks This repository is the official pytorch python implementation of "Multi-Instance Pose Networks: Rethinking Top-Do

Rawal Khirodkar 57 Dec 12, 2022
Runtime type annotations for the shape, dtype etc. of PyTorch Tensors.

torchtyping Type annotations for a tensor's shape, dtype, names, ... Turn this: def batch_outer_product(x: torch.Tensor, y: torch.Tensor) - torch.Ten

Patrick Kidger 1.2k Jan 03, 2023
Real-Time SLAM for Monocular, Stereo and RGB-D Cameras, with Loop Detection and Relocalization Capabilities

ORB-SLAM2 Authors: Raul Mur-Artal, Juan D. Tardos, J. M. M. Montiel and Dorian Galvez-Lopez (DBoW2) 13 Jan 2017: OpenCV 3 and Eigen 3.3 are now suppor

Raul Mur-Artal 7.8k Dec 30, 2022
Unsupervised Learning of Multi-Frame Optical Flow with Occlusions

This is a Pytorch implementation of Janai, J., Güney, F., Ranjan, A., Black, M. and Geiger, A., Unsupervised Learning of Multi-Frame Optical Flow with

Anurag Ranjan 110 Nov 02, 2022
Implementation of the bachelor's thesis "Real-time stock predictions with deep learning and news scraping".

Real-time stock predictions with deep learning and news scraping This repository contains a partial implementation of my bachelor's thesis "Real-time

David Álvarez de la Torre 0 Feb 09, 2022