Code for "Training Neural Networks with Fixed Sparse Masks" (NeurIPS 2021).

Related tags

Deep LearningFISH
Overview

Fisher Induced Sparse uncHanging (FISH) Mask

This repo contains the code for Fisher Induced Sparse uncHanging (FISH) Mask training, from "Training Neural Networks with Fixed Sparse Masks" by Yi-Lin Sung, Varun Nair, and Colin Raffel. To appear in Neural Information Processing Systems (NeurIPS) 2021.

Abstract: During typical gradient-based training of deep neural networks, all of the model's parameters are updated at each iteration. Recent work has shown that it is possible to update only a small subset of the model's parameters during training, which can alleviate storage and communication requirements. In this paper, we show that it is possible to induce a fixed sparse mask on the model’s parameters that selects a subset to update over many iterations. Our method constructs the mask out of the parameters with the largest Fisher information as a simple approximation as to which parameters are most important for the task at hand. In experiments on parameter-efficient transfer learning and distributed training, we show that our approach matches or exceeds the performance of other methods for training with sparse updates while being more efficient in terms of memory usage and communication costs.

Setup

pip install transformers/.
pip install datasets torch==1.8.0 tqdm torchvision==0.9.0

FISH Mask: GLUE Experiments

Parameter-Efficient Transfer Learning

To run the FISH Mask on a GLUE dataset, code can be run with the following format:

$ bash transformers/examples/text-classification/scripts/run_sparse_updates.sh <dataset-name> <seed> <top_k_percentage> <num_samples_for_fisher>

An example command used to generate Table 1 in the paper is as follows, where all GLUE tasks are provided at a seed of 0 and a FISH mask sparsity of 0.5%.

$ bash transformers/examples/text-classification/scripts/run_sparse_updates.sh "qqp mnli rte cola stsb sst2 mrpc qnli" 0 0.005 1024

Distributed Training

To use the FISH mask on the GLUE tasks in a distributed setting, one can use the following command.

$ bash transformers/examples/text-classification/scripts/distributed_training.sh <dataset-name> <seed> <num_workers> <training_epochs> <gpu_id>

Note the <dataset-name> here can only contain one task, so an example command could be

$ bash transformers/examples/text-classification/scripts/distributed_training.sh "mnli" 0 2 3.5 0

FISH Mask: CIFAR10 Experiments

To run the FISH mask on CIFAR10, code can be run with the following format:

Distributed Training

$ bash cifar10-fast/scripts/distributed_training_fish.sh <num_samples_for_fisher> <top_k_percentage> <training_epochs> <worker_updates> <learning_rate> <num_workers>

For example, in the paper, we compute the FISH mask of the 0.5% sparsity level by 256 samples and distribute the job to 2 workers for a total of 50 epochs training. Then the command would be

$ bash cifar10-fast/scripts/distributed_training_fish.sh 256 0.005 50 2 0.4 2

Efficient Checkpointing

$ bash cifar10-fast/scripts/small_checkpoints_fish.sh <num_samples_for_fisher> <top_k_percentage> <training_epochs> <learning_rate> <fix_mask>

The hyperparameters are almost the same as distributed training. However, the <fix_mask> is to indicate to fix the mask or not, and a valid input is either 0 or 1 (1 means to fix the mask).

Replicating Results

Replicating each of the tables and figures present in the original paper can be done by running the following:

# Table 1 - Parameter Efficient Fine-Tuning on GLUE

$ bash transformers/examples/text-classification/scripts/run_table_1.sh
# Figure 2 - Mask Sparsity Ablation and Sample Ablation

$ bash transformers/examples/text-classification/scripts/run_figure_2.sh
# Table 2 - Distributed Training on GLUE

$ bash transformers/examples/text-classification/scripts/run_table_2.sh
# Table 3 - Distributed Training on CIFAR10

$ bash cifar10-fast/scripts/distributed_training.sh

# Table 4 - Efficient Checkpointing

$ bash cifar10-fast/scripts/small_checkpoints.sh

Notes

  • For reproduction of Diff Pruning results from Table 1, see code here.

Acknowledgements

We thank Yoon Kim, Michael Matena, and Demi Guo for helpful discussions.

Owner
Varun Nair
Hi! I'm a student at Duke University studying CS. I'm interested in researching AI/ML and its applications in medicine, transportation, & education.
Varun Nair
Official NumPy Implementation of Deep Networks from the Principle of Rate Reduction (2021)

Deep Networks from the Principle of Rate Reduction This repository is the official NumPy implementation of the paper Deep Networks from the Principle

Ryan Chan 49 Dec 16, 2022
MLP-Numpy - A simple modular implementation of Multi Layer Perceptron in pure Numpy.

MLP-Numpy A simple modular implementation of Multi Layer Perceptron in pure Numpy. I used the Iris dataset from scikit-learn library for the experimen

Soroush Omranpour 1 Jan 01, 2022
Deep Reinforcement Learning for mobile robot navigation in ROS Gazebo simulator

DRL-robot-navigation Deep Reinforcement Learning for mobile robot navigation in ROS Gazebo simulator. Using Twin Delayed Deep Deterministic Policy Gra

87 Jan 07, 2023
Computationally efficient algorithm that identifies boundary points of a point cloud.

BoundaryTest Included are MATLAB and Python packages, each of which implement efficient algorithms for boundary detection and normal vector estimation

6 Dec 09, 2022
A PyTorch Implementation of "SINE: Scalable Incomplete Network Embedding" (ICDM 2018).

Scalable Incomplete Network Embedding ⠀⠀ A PyTorch implementation of Scalable Incomplete Network Embedding (ICDM 2018). Abstract Attributed network em

Benedek Rozemberczki 69 Sep 22, 2022
Implementation for the "Surface Reconstruction from 3D Line Segments" paper.

Surface Reconstruction from 3D Line Segments Surface reconstruction from 3d line segments. Langlois, P. A., Boulch, A., & Marlet, R. In 2019 Internati

85 Jan 04, 2023
Paddle implementation for "Cross-Lingual Word Embedding Refinement by ℓ1 Norm Optimisation" (NAACL 2021)

L1-Refinement Paddle implementation for "Cross-Lingual Word Embedding Refinement by ℓ1 Norm Optimisation" (NAACL 2021) 🙈 A more detailed readme is co

Lincedo Lab 4 Jun 09, 2021
All the essential resources and template code needed to understand and practice data structures and algorithms in python with few small projects to demonstrate their practical application.

Data Structures and Algorithms Python INDEX 1. Resources - Books Data Structures - Reema Thareja competitiveCoding Big-O Cheat Sheet DAA Syllabus Inte

Shushrut Kumar 129 Dec 15, 2022
Thermal Control of Laser Powder Bed Fusion using Deep Reinforcement Learning

This repository is the implementation of the paper "Thermal Control of Laser Powder Bed Fusion Using Deep Reinforcement Learning", linked here. The project makes use of the Deep Reinforcement Library

BaratiLab 11 Dec 27, 2022
An implementation of shampoo

shampoo.pytorch An implementation of shampoo, proposed in Shampoo : Preconditioned Stochastic Tensor Optimization by Vineet Gupta, Tomer Koren and Yor

Ryuichiro Hataya 69 Sep 10, 2022
Large-scale Hyperspectral Image Clustering Using Contrastive Learning, CIKM 21 Workshop

Spectral-spatial contrastive clustering (SSCC) Yaoming Cai, Yan Liu, Zijia Zhang, Zhihua Cai, and Xiaobo Liu, Large-scale Hyperspectral Image Clusteri

Yaoming Cai 4 Nov 02, 2022
Agent-based model simulator for air quality and pandemic risk assessment in architectural spaces

Agent-based model simulation for air quality and pandemic risk assessment in architectural spaces. User Guide archABM is a fast and open source agent-

Vicomtech 10 Dec 05, 2022
Code implementation of "Sparsity Probe: Analysis tool for Deep Learning Models"

Sparsity Probe: Analysis tool for Deep Learning Models This repository is a limited implementation of Sparsity Probe: Analysis tool for Deep Learning

3 Jun 09, 2021
HyperaPy: An automatic hyperparameter optimization framework ⚡🚀

hyperpy HyperPy: An automatic hyperparameter optimization framework Description HyperPy: Library for automatic hyperparameter optimization. Build on t

Sergio Mora 7 Sep 06, 2022
Code release for "Detecting Twenty-thousand Classes using Image-level Supervision".

Detecting Twenty-thousand Classes using Image-level Supervision Detic: A Detector with image classes that can use image-level labels to easily train d

Meta Research 1.3k Jan 04, 2023
NEATEST: Evolving Neural Networks Through Augmenting Topologies with Evolution Strategy Training

NEATEST: Evolving Neural Networks Through Augmenting Topologies with Evolution Strategy Training

Göktuğ Karakaşlı 16 Dec 05, 2022
Multi-Objective Reinforced Active Learning

Multi-Objective Reinforced Active Learning Dependencies wandb tqdm pytorch = 1.7.0 numpy = 1.20.0 scipy = 1.1.0 pycolab == 1.2 Weights and Biases O

Markus Peschl 6 Nov 19, 2022
A curated list of awesome Deep Learning tutorials, projects and communities.

Awesome Deep Learning Table of Contents Books Courses Videos and Lectures Papers Tutorials Researchers Websites Datasets Conferences Frameworks Tools

Christos 20k Jan 05, 2023
A general framework for deep learning experiments under PyTorch based on pytorch-lightning

torchx Torchx is a general framework for deep learning experiments under PyTorch based on pytorch-lightning. TODO list gan-like training wrapper text

Yingtian Liu 6 Mar 17, 2022
MetaTTE: a Meta-Learning Based Travel Time Estimation Model for Multi-city Scenarios

MetaTTE: a Meta-Learning Based Travel Time Estimation Model for Multi-city Scenarios This is the official TensorFlow implementation of MetaTTE in the

morningstarwang 4 Dec 14, 2022