Implementing SYNTHESIZER: Rethinking Self-Attention in Transformer Models using Pytorch

Overview

Implementing SYNTHESIZER: Rethinking Self-Attention in Transformer Models using Pytorch

Reference

  • Paper URL

  • Author: Yi Tay, Dara Bahri, Donald Metzler, Da-Cheng Juan, Zhe Zhao, Che Zheng

  • Google Research

Method

model

1. Dense Synthesizer

2. Fixed Random Synthesizer

3. Random Synthesizer

4. Factorized Dense Synthesizer

5. Factorized Random Synthesizer

6. Mixture of Synthesizers

Usage

import torch

from synthesizer import Transformer, SynthesizerDense, SynthesizerRandom, FactorizedSynthesizerDense, FactorizedSynthesizerRandom, MixtureSynthesizers, get_n_params, calculate_flops


def main():
    batch_size, channel_dim, sentence_length = 2, 1024, 32
    x = torch.randn([batch_size, sentence_length, channel_dim])

    vanilla = Transformer(channel_dim)
    out, attention_map = vanilla(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(vanilla), calculate_flops(vanilla.children())
    print('vanilla, n_params: {}, flops: {}'.format(n_params, flops))

    dense_synthesizer = SynthesizerDense(channel_dim, sentence_length)
    out, attention_map = dense_synthesizer(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(dense_synthesizer), calculate_flops(dense_synthesizer.children())
    print('dense_synthesizer, n_params: {}, flops: {}'.format(n_params, flops))

    random_synthesizer = SynthesizerRandom(channel_dim, sentence_length)
    out, attention_map = random_synthesizer(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(random_synthesizer), calculate_flops(random_synthesizer.children())
    print('random_synthesizer, n_params: {}, flops: {}'.format(n_params, flops))

    random_synthesizer_fix = SynthesizerRandom(channel_dim, sentence_length, fixed=True)
    out, attention_map = random_synthesizer_fix(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(random_synthesizer_fix), calculate_flops(random_synthesizer_fix.children())
    print('random_synthesizer_fix, n_params: {}, flops: {}'.format(n_params, flops))

    factorized_synthesizer_random = FactorizedSynthesizerRandom(channel_dim)
    out, attention_map = factorized_synthesizer_random(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(factorized_synthesizer_random), calculate_flops(
        factorized_synthesizer_random.children())
    print('factorized_synthesizer_random, n_params: {}, flops: {}'.format(n_params, flops))

    factorized_synthesizer_dense = FactorizedSynthesizerDense(channel_dim, sentence_length)
    out, attention_map = factorized_synthesizer_dense(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(factorized_synthesizer_dense), calculate_flops(
        factorized_synthesizer_dense.children())
    print('factorized_synthesizer_dense, n_params: {}, flops: {}'.format(n_params, flops))

    mixture_synthesizer = MixtureSynthesizers(channel_dim, sentence_length)
    out, attention_map = mixture_synthesizer(x)
    print(out.size(), attention_map.size())
    n_params, flops = get_n_params(mixture_synthesizer), calculate_flops(mixture_synthesizer.children())
    print('mixture_synthesizer, n_params: {}, flops: {}'.format(n_params, flops))


if __name__ == '__main__':
    main()

Output

torch.Size([2, 32, 1024]) torch.Size([2, 32, 32])
vanilla, n_params: 3148800, flops: 3145729
torch.Size([2, 32, 1024]) torch.Size([2, 32, 32])
dense_synthesizer, n_params: 1083456, flops: 1082370
torch.Size([2, 32, 1024]) torch.Size([1, 32, 32])
random_synthesizer, n_params: 1050624, flops: 1048577
torch.Size([2, 32, 1024]) torch.Size([1, 32, 32])
random_synthesizer_fix, n_params: 1050624, flops: 1048577
torch.Size([2, 32, 1024]) torch.Size([2, 32, 32])
factorized_synthesizer_random, n_params: 1066000, flops: 1064961
torch.Size([2, 32, 1024]) torch.Size([2, 32, 32])
factorized_synthesizer_dense, n_params: 1061900, flops: 1060865
torch.Size([2, 32, 1024]) torch.Size([2, 32, 32])
mixture_synthesizer, n_params: 3149824, flops: 3145729

Paper Performance

eval

Owner
Myeongjun Kim
Computer Vision Research using Deep Learning
Myeongjun Kim
The Self-Supervised Learner can be used to train a classifier with fewer labeled examples needed using self-supervised learning.

Published by SpaceML • About SpaceML • Quick Colab Example Self-Supervised Learner The Self-Supervised Learner can be used to train a classifier with

SpaceML 92 Nov 30, 2022
Code for "Adversarial Training for a Hybrid Approach to Aspect-Based Sentiment Analysis

HAABSAStar Code for "Adversarial Training for a Hybrid Approach to Aspect-Based Sentiment Analysis". This project builds on the code from https://gith

1 Sep 14, 2020
Pytorch implementation of "Grad-TTS: A Diffusion Probabilistic Model for Text-to-Speech"

GradTTS Unofficial Pytorch implementation of "Grad-TTS: A Diffusion Probabilistic Model for Text-to-Speech" (arxiv) About this repo This is an unoffic

HeyangXue1997 103 Dec 23, 2022
Official implementation of "Implicit Neural Representations with Periodic Activation Functions"

Implicit Neural Representations with Periodic Activation Functions Project Page | Paper | Data Vincent Sitzmann*, Julien N. P. Martel*, Alexander W. B

Vincent Sitzmann 1.4k Jan 06, 2023
Header-only library for using Keras models in C++.

frugally-deep Use Keras models in C++ with ease Table of contents Introduction Usage Performance Requirements and Installation FAQ Introduction Would

Tobias Hermann 927 Jan 05, 2023
GLNet for Memory-Efficient Segmentation of Ultra-High Resolution Images

GLNet for Memory-Efficient Segmentation of Ultra-High Resolution Images Collaborative Global-Local Networks for Memory-Efficient Segmentation of Ultra-

VITA 298 Dec 12, 2022
Torch code for our CVPR 2018 paper "Residual Dense Network for Image Super-Resolution" (Spotlight)

Residual Dense Network for Image Super-Resolution This repository is for RDN introduced in the following paper Yulun Zhang, Yapeng Tian, Yu Kong, Bine

Yulun Zhang 494 Dec 30, 2022
App customer segmentation cohort rfm clustering

CUSTOMER SEGMENTATION COHORT RFM CLUSTERING TỔNG QUAN VỀ HỆ THỐNG DỮ LIỆU Nên chuyển qua theme màu dark thì sẽ nhìn đẹp hơn https://customer-segmentat

hieulmsc 3 Dec 18, 2021
A state-of-the-art semi-supervised method for image recognition

Mean teachers are better role models Paper ---- NIPS 2017 poster ---- NIPS 2017 spotlight slides ---- Blog post By Antti Tarvainen, Harri Valpola (The

Curious AI 1.4k Jan 06, 2023
[NeurIPS 2021] Low-Rank Subspaces in GANs

Low-Rank Subspaces in GANs Figure: Image editing results using LowRankGAN on StyleGAN2 (first three columns) and BigGAN (last column). Low-Rank Subspa

112 Dec 28, 2022
UnpNet - Rethinking 3-D LiDAR Point Cloud Segmentation(IEEE TNNLS)

UnpNet Citation Please cite the following paper if you use this repository in your reseach. @article {PMID:34914599, Title = {Rethinking 3-D LiDAR Po

Shijie Li 4 Jul 15, 2022
Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation Introduction This is a PyTorch

XMed-Lab 30 Sep 23, 2022
Monocular Depth Estimation - Weighted-average prediction from multiple pre-trained depth estimation models

merged_depth runs (1) AdaBins, (2) DiverseDepth, (3) MiDaS, (4) SGDepth, and (5) Monodepth2, and calculates a weighted-average per-pixel absolute dept

Pranav 39 Nov 21, 2022
COPA-SSE contains crowdsourced explanations for the Balanced COPA dataset

COPA-SSE Repository for COPA-SSE: Semi-Structured Explanations for Commonsense Reasoning. COPA-SSE contains crowdsourced explanations for the Balanced

Ana Brassard 5 Jul 31, 2022
Trained on Simulated Data, Tested in the Real World

Trained on Simulated Data, Tested in the Real World

livox 43 Nov 18, 2022
Official implementation of "Robust channel-wise illumination estimation"

This repository provides the official implementation of "Robust channel-wise illumination estimation." accepted in BMVC (2021).

Firas Laakom 4 Nov 08, 2022
Official PyTorch Implementation for "Recurrent Video Deblurring with Blur-Invariant Motion Estimation and Pixel Volumes"

PVDNet: Recurrent Video Deblurring with Blur-Invariant Motion Estimation and Pixel Volumes This repository contains the official PyTorch implementatio

Junyong Lee 98 Nov 06, 2022
A PyTorch implementation of "Predict then Propagate: Graph Neural Networks meet Personalized PageRank" (ICLR 2019).

APPNP ⠀ A PyTorch implementation of Predict then Propagate: Graph Neural Networks meet Personalized PageRank (ICLR 2019). Abstract Neural message pass

Benedek Rozemberczki 329 Dec 30, 2022
A baseline code for VSPW

A baseline code for VSPW Preparation Download VSPW dataset The VSPW dataset with extracted frames and masks is available here.

28 Aug 22, 2022
PyTorch code for training MM-DistillNet for multimodal knowledge distillation

There is More than Meets the Eye: Self-Supervised Multi-Object Detection and Tracking with Sound by Distilling Multimodal Knowledge MM-DistillNet is a

51 Dec 20, 2022