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
Implementation of "Efficient Regional Memory Network for Video Object Segmentation" (Xie et al., CVPR 2021).

RMNet This repository contains the source code for the paper Efficient Regional Memory Network for Video Object Segmentation. Cite this work @inprocee

Haozhe Xie 76 Dec 14, 2022
LiDAR Distillation: Bridging the Beam-Induced Domain Gap for 3D Object Detection

LiDAR Distillation Paper | Model LiDAR Distillation: Bridging the Beam-Induced Domain Gap for 3D Object Detection Yi Wei, Zibu Wei, Yongming Rao, Jiax

Yi Wei 75 Dec 22, 2022
Spatial Action Maps for Mobile Manipulation (RSS 2020)

spatial-action-maps Update: Please see our new spatial-intention-maps repository, which extends this work to multi-agent settings. It contains many ne

Jimmy Wu 27 Nov 30, 2022
Invasive Plant Species Identification

Invasive_Plant_Species_Identification Used LiDAR Odometry and Mapping (LOAM) to create a 3D point cloud map which can be used to identify invasive pla

2 May 12, 2022
Spectrum Surveying: Active Radio Map Estimation with Autonomous UAVs

Spectrum Surveying: The Python code in this repository implements the simulations and plots the figures described in the paper “Spectrum Surveying: Ac

Universitetet i Agder 2 Dec 06, 2022
TCTrack: Temporal Contexts for Aerial Tracking (CVPR2022)

TCTrack: Temporal Contexts for Aerial Tracking (CVPR2022) Ziang Cao and Ziyuan Huang and Liang Pan and Shiwei Zhang and Ziwei Liu and Changhong Fu In

Intelligent Vision for Robotics in Complex Environment 100 Dec 19, 2022
This is the official pytorch implementation of Student Helping Teacher: Teacher Evolution via Self-Knowledge Distillation(TESKD)

Student Helping Teacher: Teacher Evolution via Self-Knowledge Distillation (TESKD) By Zheng Li[1,4], Xiang Li[2], Lingfeng Yang[2,4], Jian Yang[2], Zh

Zheng Li 9 Sep 26, 2022
Utilities and information for the signals.numer.ai tournament

dsignals Utilities and information for the signals.numer.ai tournament using eodhistoricaldata.com eodhistoricaldata.com provides excellent historical

Degerhan Usluel 23 Dec 18, 2022
Official implementation of Neural Bellman-Ford Networks (NeurIPS 2021)

NBFNet: Neural Bellman-Ford Networks This is the official codebase of the paper Neural Bellman-Ford Networks: A General Graph Neural Network Framework

MilaGraph 136 Dec 21, 2022
iBOT: Image BERT Pre-Training with Online Tokenizer

Image BERT Pre-Training with iBOT Official PyTorch implementation and pretrained models for paper iBOT: Image BERT Pre-Training with Online Tokenizer.

Bytedance Inc. 435 Jan 06, 2023
Code base for the paper "Scalable One-Pass Optimisation of High-Dimensional Weight-Update Hyperparameters by Implicit Differentiation"

This repository contains code for the paper Scalable One-Pass Optimisation of High-Dimensional Weight-Update Hyperparameters by Implicit Differentiati

8 Aug 28, 2022
PyTorch Live is an easy to use library of tools for creating on-device ML demos on Android and iOS.

PyTorch Live is an easy to use library of tools for creating on-device ML demos on Android and iOS. With Live, you can build a working mobile app ML demo in minutes.

559 Jan 01, 2023
MIM: MIM Installs OpenMMLab Packages

MIM provides a unified API for launching and installing OpenMMLab projects and their extensions, and managing the OpenMMLab model zoo.

OpenMMLab 254 Jan 04, 2023
Official DGL implementation of "Rethinking High-order Graph Convolutional Networks"

SE Aggregation This is the implementation for Rethinking High-order Graph Convolutional Networks. Here we show the codes for citation networks as an e

Tianqi Zhang (张天启) 32 Jul 19, 2022
Model Zoo for AI Model Efficiency Toolkit

We provide a collection of popular neural network models and compare their floating point and quantized performance.

Qualcomm Innovation Center 137 Jan 03, 2023
mmdetection version of TinyBenchmark.

introduction This project is an mmdetection version of TinyBenchmark. TODO list: add TinyPerson dataset and evaluation add crop and merge for image du

34 Aug 27, 2022
Source code for the paper "SEPP: Similarity Estimation of Predicted Probabilities for Defending and Detecting Adversarial Text" PACLIC 2021

Adversarial text generator Refer to "adversarial_text_generator"[https://github.com/quocnsh/SEPP_generator] project for generating adversarial texts A

0 Oct 05, 2021
Using OpenAI's CLIP to upscale and enhance images

CLIP Upscaler and Enhancer Using OpenAI's CLIP to upscale and enhance images Based on nshepperd's JAX CLIP Guided Diffusion v2.4 Sample Results Viewpo

Tripp Lyons 5 Jun 14, 2022
[Arxiv preprint] Causality-inspired Single-source Domain Generalization for Medical Image Segmentation (code&data-processing pipeline)

Causality-inspired Single-source Domain Generalization for Medical Image Segmentation Arxiv preprint Repository under construction. Might still be bug

Cheng 31 Dec 27, 2022
Source Code for Simulations in the Publication "Can the brain use waves to solve planning problems?"

Code for Simulations in the Publication Can the brain use waves to solve planning problems? Installing Required Python Packages Please use Python vers

EMD Group 2 Jul 01, 2022