GULAG: GUessing LAnGuages with neural networks

Related tags

Deep Learninggulag
Overview

GULAG: GUessing LAnGuages with neural networks

Main Code style: black Checked with mypy GitHub license GitHub stars

cannon on sparrows

Classify languages in text via neural networks.

> Привет! My name is Egor. Was für ein herrliches Frühlingswetter, хутка расцвітуць дрэвы.
ru -- Привет
en -- My name is Egor
de -- Was für ein herrliches Frühlingswetter
be -- хутка расцвітуць дрэвы

Usage

Use requirements.txt to install necessary dependencies:

pip install -r requirements.txt

After that you can either train model:

python -m src.main train --gin-file config/train.gin

Or run inference:

python -m src.main infer

Training

All training details are covered by PyTorch-Lightning. There are:

Both modules have explicit documentation, see source files for usage details.

Dataset

Since extracting languages from a text is a kind of synthetic task, then there is no exact dataset of that. A possible approach to handle this is to use general multilingual corpses to create a synthetic dataset with multiple languages per one text. Although there is a popular mC4 dataset with large texts in over 100 languages. It is too large for this pet project. Therefore, I used wikiann dataset that also supports over 100 languages including Russian, Ukrainian, Belarusian, Kazakh, Azerbaijani, Armenian, Georgian, Hebrew, English, and German. But this dataset consists of only small sentences for NER classification that make it more unnatural.

Synthetic data

To create a dataset with multiple languages per example, I use the following sampling strategy:

  1. Select number of languages in next example
  2. Select number of sentences for each language
  3. Sample sentences, shuffle them and concatenate into single text

For exact details about sampling algorithm see generate_example method.

This strategy allows training on a large non-repeating corpus. But for proper evaluation during training, we need a deterministic subset of data. For that, we can pre-generate a bunch of texts and then reuse them on each validation.

Model

As a training objective, I selected per-token classification. This automatically allows not only classifying languages in the text, but also specifying their ranges.

The model consists of two parts:

  1. The backbone model that embeds tokens into vectors
  2. Head classifier that predicts classes by embedding vector

As backbone model I selected vanilla BERT. This model already pretrained on large multilingual corpora including non-popular languages. During training on a target task, weights of BERT were frozen to enhance speed.

Head classifier is a simple MLP, see TokenClassifier for details.

Configuration

To handle big various of parameters, I used gin-config. config folder contains all configurations split by modules that used them.

Use --gin-file CLI argument to specify config file and --gin-param to manually overwrite some values. For example, to run debug mode on a small subset with a tiny model for 10 steps use

python -m src.main train --gin-file config/debug.gin --gin-param="train.n_steps = 10"

You can also use jupyter notebook to run training, this is a convenient way to train with Google Colab. See train.ipynb.

Artifacts

All training logs and artifacts are stored on W&B. See voudy/gulag for information about current runs, their losses and metrics. Any of the presented models may be used on inference.

Inference

In inference mode, you may play with the model to see whether it is good or not. This script requires a W&B run path where checkpoint is stored and checkpoint name. After that, you can interact with a model in a loop.

The final model is stored in voudy/gulag/a55dbee8 run. It was trained for 20 000 steps for ~9 hours on Tesla T4.

$ python -m src.main infer --wandb "voudy/gulag/a55dbee8" --ckpt "step_20000.ckpt"
...
Enter text to classify languages (Ctrl-C to exit):
> İrəli! Вперёд! Nach vorne!
az -- İrəli
ru -- Вперёд
de -- Nach vorne
Enter text to classify languages (Ctrl-C to exit):
> Давайте жити дружно
uk -- Давайте жити дружно
> ...

For now, text preprocessing removes all punctuation and digits. It makes the data more robust. But restoring them back is a straightforward technical work that I was lazy to do.

Of course, you can use model from the Jupyter Notebooks, see infer.ipynb

Further work

Next steps may include:

  • Improved dataset with more natural examples, e.g. adopt mC4.
  • Better tokenization to handle rare languages, this should help with problems on the bounds of similar texts.
  • Experiments with another embedders, e.g. mGPT-3 from Sber covers all interesting languages, but requires technical work to adopt for classification task.
Owner
Egor Spirin
DL guy
Egor Spirin
This provides the R code and data to replicate results in "The USS Trustee’s risky strategy"

USSBriefs2021 This provides the R code and data to replicate results in "The USS Trustee’s risky strategy" by Neil M Davies, Jackie Grant and Chin Yan

1 Oct 30, 2021
Spatially-Adaptive Pixelwise Networks for Fast Image Translation, CVPR 2021

Image Translation with ASAPNets Spatially-Adaptive Pixelwise Networks for Fast Image Translation, CVPR 2021 Webpage | Paper | Video Installation insta

Tamar Rott Shaham 100 Dec 28, 2022
Code in conjunction with the publication 'Contrastive Representation Learning for Hand Shape Estimation'

HanCo Dataset & Contrastive Representation Learning for Hand Shape Estimation Code in conjunction with the publication: Contrastive Representation Lea

Computer Vision Group, Albert-Ludwigs-Universität Freiburg 38 Dec 13, 2022
A treasure chest for visual recognition powered by PaddlePaddle

简体中文 | English PaddleClas 简介 飞桨图像识别套件PaddleClas是飞桨为工业界和学术界所准备的一个图像识别任务的工具集,助力使用者训练出更好的视觉模型和应用落地。 近期更新 2021.11.1 发布PP-ShiTu技术报告,新增饮料识别demo 2021.10.23 发

4.6k Dec 31, 2022
🗣️ Microsoft Edge TTS for Home Assistant, no need for app_key

Microsoft Edge TTS for Home Assistant This component is based on the TTS service of Microsoft Edge browser, no need to apply for app_key. Install Down

152 Dec 31, 2022
Consensus Learning from Heterogeneous Objectives for One-Class Collaborative Filtering

Consensus Learning from Heterogeneous Objectives for One-Class Collaborative Filtering This repository provides the source code of "Consensus Learning

SeongKu-Kang 6 Apr 29, 2022
A model which classifies reviews as positive or negative.

SentiMent Analysis In this project I built a model to classify movie reviews fromn the IMDB dataset of 50K reviews. WordtoVec : Neural networks only w

Rishabh Bali 2 Feb 09, 2022
ConE: Cone Embeddings for Multi-Hop Reasoning over Knowledge Graphs

ConE: Cone Embeddings for Multi-Hop Reasoning over Knowledge Graphs This is the code of paper ConE: Cone Embeddings for Multi-Hop Reasoning over Knowl

MIRA Lab 33 Dec 07, 2022
Definition of a business problem according to Wilson Lower Bound Score and Time Based Average Rating

Wilson Lower Bound Score, Time Based Rating Average In this study I tried to calculate the product rating and sorting reviews more accurately. I have

3 Sep 30, 2021
NAS-Bench-x11 and the Power of Learning Curves

NAS-Bench-x11 NAS-Bench-x11 and the Power of Learning Curves Shen Yan, Colin White, Yash Savani, Frank Hutter. NeurIPS 2021. Surrogate NAS benchmarks

AutoML-Freiburg-Hannover 13 Nov 18, 2022
50-days-of-Statistics-for-Data-Science - This repository consist of a 50-day program

50-days-of-Statistics-for-Data-Science - This repository consist of a 50-day program. All the statistics required for the complete understanding of data science will be uploaded in this repository.

komal_lamba 22 Dec 09, 2022
The `rtdl` library + The official implementation of the paper

The `rtdl` library + The official implementation of the paper "Revisiting Deep Learning Models for Tabular Data"

Yandex Research 510 Dec 30, 2022
[CVPR 2021] Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach

Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach This is the repo to host the dataset TextSeg and code for TexRNe

SHI Lab 174 Dec 19, 2022
Official pytorch implementation of paper "Image-to-image Translation via Hierarchical Style Disentanglement".

HiSD: Image-to-image Translation via Hierarchical Style Disentanglement Official pytorch implementation of paper "Image-to-image Translation

364 Dec 14, 2022
This repository contains the code for "SBEVNet: End-to-End Deep Stereo Layout Estimation" paper by Divam Gupta, Wei Pu, Trenton Tabor, Jeff Schneider

SBEVNet: End-to-End Deep Stereo Layout Estimation This repository contains the code for "SBEVNet: End-to-End Deep Stereo Layout Estimation" paper by D

Divam Gupta 19 Dec 17, 2022
Implementation of Sequence Generative Adversarial Nets with Policy Gradient

SeqGAN Requirements: Tensorflow r1.0.1 Python 2.7 CUDA 7.5+ (For GPU) Introduction Apply Generative Adversarial Nets to generating sequences of discre

Lantao Yu 2k Dec 29, 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
Code for "Modeling Indirect Illumination for Inverse Rendering", CVPR 2022

Modeling Indirect Illumination for Inverse Rendering Project Page | Paper | Data Preparation Set up the python environment conda create -n invrender p

ZJU3DV 116 Jan 03, 2023
disentanglement_lib is an open-source library for research on learning disentangled representations.

disentanglement_lib disentanglement_lib is an open-source library for research on learning disentangled representation. It supports a variety of diffe

Google Research 1.3k Dec 28, 2022
A mini library for Policy Gradients with Parameter-based Exploration, with reference implementation of the ClipUp optimizer from NNAISENSE.

PGPElib A mini library for Policy Gradients with Parameter-based Exploration [1] and friends. This library serves as a clean re-implementation of the

NNAISENSE 56 Jan 01, 2023