• Stars
    star
    1,075
  • Rank 41,482 (Top 0.9 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created over 3 years ago
  • Updated 5 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Easy to use, state-of-the-art Neural Machine Translation for 100+ languages

EasyNMT - Easy to use, state-of-the-art Neural Machine Translation

This package provides easy to use, state-of-the-art machine translation for more than 100+ languages. The highlights of this package are:

  • Easy installation and usage: Use state-of-the-art machine translation with 3 lines of code
  • Automatic download of pre-trained machine translation models
  • Translation between 150+ languages
  • Automatic language detection for 170+ languages
  • Sentence and document translation
  • Multi-GPU and multi-process translation

At the moment, we provide the following models:

Examples:

Docker & REST-API

We provide ready-to-use Docker images, that wrap EasyNMT in a REST API:

docker run -p 24080:80 easynmt/api:2.0-cpu

Calling the REST API:

http://localhost:24080/translate?target_lang=en&text=Hallo%20Welt

See docker/ for more information on the different Docker images and the REST API endpoints.

Also check our EasyNMT Google Colab REST API Hosting example, on how to use Google Colab and the free GPU to host a translation API.

Installation for Python

You can install the package via:

pip install -U easynmt

The models are based on PyTorch. If you have a GPU available, see how to install PyTorch with GPU support. If you use Windows and have issues with the installation, see this issue how to solve it.

Usage

The usage is simple:

from easynmt import EasyNMT
model = EasyNMT('opus-mt')

#Translate a single sentence to German
print(model.translate('This is a sentence we want to translate to German', target_lang='de'))

#Translate several sentences to German
sentences = ['You can define a list with sentences.',
             'All sentences are translated to your target language.',
             'Note, you could also mix the languages of the sentences.']
print(model.translate(sentences, target_lang='de'))

Document Translation

The available models are based on the Transformer architecture, which provide state-of-the-art translation quality. However, the input length is limited to 512 word pieces for the opus-mt model and 1024 word pieces for the M2M models.

The translate() performs automatic sentence splitting to be able to translate also longer documents:

from easynmt import EasyNMT
model = EasyNMT('opus-mt')

document = """Berlin is the capital and largest city of Germany by both area and population.[6][7] Its 3,769,495 inhabitants as of 31 December 2019[2] make it the most-populous city of the European Union, according to population within city limits.[8] The city is also one of Germany's 16 federal states. It is surrounded by the state of Brandenburg, and contiguous with Potsdam, Brandenburg's capital. The two cities are at the center of the Berlin-Brandenburg capital region, which is, with about six million inhabitants and an area of more than 30,000 km2,[9] Germany's third-largest metropolitan region after the Rhine-Ruhr and Rhine-Main regions. Berlin straddles the banks of the River Spree, which flows into the River Havel (a tributary of the River Elbe) in the western borough of Spandau. Among the city's main topographical features are the many lakes in the western and southeastern boroughs formed by the Spree, Havel, and Dahme rivers (the largest of which is Lake Müggelsee). Due to its location in the European Plain, Berlin is influenced by a temperate seasonal climate. About one-third of the city's area is composed of forests, parks, gardens, rivers, canals and lakes.[10] The city lies in the Central German dialect area, the Berlin dialect being a variant of the Lusatian-New Marchian dialects.

First documented in the 13th century and at the crossing of two important historic trade routes,[11] Berlin became the capital of the Margraviate of Brandenburg (1417–1701), the Kingdom of Prussia (1701–1918), the German Empire (1871–1918), the Weimar Republic (1919–1933), and the Third Reich (1933–1945).[12] Berlin in the 1920s was the third-largest municipality in the world.[13] After World War II and its subsequent occupation by the victorious countries, the city was divided; West Berlin became a de facto West German exclave, surrounded by the Berlin Wall (1961–1989) and East German territory.[14] East Berlin was declared capital of East Germany, while Bonn became the West German capital. Following German reunification in 1990, Berlin once again became the capital of all of Germany.

Berlin is a world city of culture, politics, media and science.[15][16][17][18] Its economy is based on high-tech firms and the service sector, encompassing a diverse range of creative industries, research facilities, media corporations and convention venues.[19][20] Berlin serves as a continental hub for air and rail traffic and has a highly complex public transportation network. The metropolis is a popular tourist destination.[21] Significant industries also include IT, pharmaceuticals, biomedical engineering, clean tech, biotechnology, construction and electronics."""

#Translate the document to German
print(model.translate(document, target_lang='de'))

The function breaks down the document into sentences and then translates the sentences individually using the specified model.

Automatic Language Detection

You can set the source_lang for the translate method to define the source language. If source_lang is not set, fastText will be used to automatically determine the source language. This also allows you to provide a list with sentences / documents that have various languages:

from easynmt import EasyNMT
model = EasyNMT('opus-mt')

#Translate several sentences to English
sentences = ['Dies ist ein Satz in Deutsch.',   #This is a German sentence
             '这是一个中文句子',    #This is a chinese sentence
             'Esta es una oración en español.'] #This is a spanish sentence
print(model.translate(sentences, target_lang='en'))

Available Models

The following models are currently available. They provide translations between 150+ languages.

Model Reference #Languages Size Speed GPU (Sentences/Sec on V100) Speed CPU (Sentences/Sec) Comment
opus-mt Helsinki-NLP 186 300 MB 50 6 Inidivudal models (~300 MB) per translation direction
mbart50_m2m Facebook Research 52 2.3 GB 25 -
mbart50_m2en Facebook Research 52 2.3 GB 25 - Can only translate from the other languages to English.
mbart50_en2m Facebook Research 52 2.3 GB 25 - Can only translate from English to the other languages.
m2m_100_418M Facebook Research 100 1.8 GB 22 -
m2m_100_1.2B Facebook Research 100 5.0 GB 13 -

Translation Quality

Comparing model translation quality will be added soon here. So far, my personal subjective impression is, that opus-mt and m2m_100_1.2B yield the best translations.

Opus-MT

We provide a wrapper for the pre-trained models from Opus-MT.

Opus-MT provides 1200+ different translation models, each capable to translate one direction (e.g. from German to English). Each model is about 300 MB of size.

Supported languages: aav, aed, af, alv, am, ar, art, ase, az, bat, bcl, be, bem, ber, bg, bi, bn, bnt, bzs, ca, cau, ccs, ceb, cel, chk, cpf, crs, cs, csg, csn, cus, cy, da, de, dra, ee, efi, el, en, eo, es, et, eu, euq, fi, fj, fr, fse, ga, gaa, gil, gl, grk, guw, gv, ha, he, hi, hil, ho, hr, ht, hu, hy, id, ig, ilo, is, iso, it, ja, jap, ka, kab, kg, kj, kl, ko, kqn, kwn, kwy, lg, ln, loz, lt, lu, lua, lue, lun, luo, lus, lv, map, mfe, mfs, mg, mh, mk, mkh, ml, mos, mr, ms, mt, mul, ng, nic, niu, nl, no, nso, ny, nyk, om, pa, pag, pap, phi, pis, pl, pon, poz, pqe, pqw, prl, pt, rn, rnd, ro, roa, ru, run, rw, sal, sg, sh, sit, sk, sl, sm, sn, sq, srn, ss, ssp, st, sv, sw, swc, taw, tdt, th, ti, tiv, tl, tll, tn, to, toi, tpi, tr, trk, ts, tum, tut, tvl, tw, ty, tzo, uk, umb, ur, ve, vi, vsl, wa, wal, war, wls, xh, yap, yo, yua, zai, zh, zne

Usage:

from easynmt import EasyNMT
model = EasyNMT('opus-mt', max_loaded_models=10)

The system will automatically detect the suitable Opus-MT model and load it. With the optional parameter max_loaded_models you can specify the maximal number of models that are simoultanously loaded. If you then translate with an unseen language direction, the oldest model is unloaded and the new model is loaded.

mBERT_50

We provide a wrapper for the mBART50 model from Facebook, that is able to translate between any pair of 50+ languages. There are also models available to translate from English to these languages or vice versa.

Usage:

from easynmt import EasyNMT
model = EasyNMT('mbart50_m2m')

Supported languages: af, ar, az, bn, cs, de, en, es, et, fa, fi, fr, gl, gu, he, hi, hr, id, it, ja, ka, kk, km, ko, lt, lv, mk, ml, mn, mr, my, ne, nl, pl, ps, pt, ro, ru, si, sl, sv, sw, ta, te, th, tl, tr, uk, ur, vi, xh, zh

M2M_100

We provide a wrapper for the M2M 100 model from Facebook, that is able to translate between any pair of 100 languages.

Supported languages: af, am, ar, ast, az, ba, be, bg, bn, br, bs, ca, ceb, cs, cy, da, de, el, en, es, et, fa, ff, fi, fr, fy, ga, gd, gl, gu, ha, he, hi, hr, ht, hu, hy, id, ig, ilo, is, it, ja, jv, ka, kk, km, kn, ko, lb, lg, ln, lo, lt, lv, mg, mk, ml, mn, mr, ms, my, ne, nl, no, ns, oc, or, pa, pl, ps, pt, ro, ru, sd, si, sk, sl, so, sq, sr, ss, su, sv, sw, ta, th, tl, tn, tr, uk, ur, uz, vi, wo, xh, yi, yo, zh, zu

As the moment, we provide wrapper for two M2M 100 models:

  • m2m_100_418M: M2M model with 418 million parameters (1.8 GB)
  • m2m_100_1.2B: M2M model with 1.2 billion parameters (5.0 GB)

Usage:

from easynmt import EasyNMT
model = EasyNMT('m2m_100_418M')   #or: EasyNMT('m2m_100_1.2B') 

You can find more information here. Note: the 12 billion M2M parameters model is currently not supported.

As soon as you call EasyNMT('m2m_100_418M') / EasyNMT('m2m_100_1.2B'), the respective model is downloaded and cached locally.

Author

Contact person: Nils Reimers; [email protected]

https://www.ukp.tu-darmstadt.de/

Don't hesitate to send us an e-mail or report an issue, if something is broken (and it shouldn't be) or if you have further questions.

This repository contains experimental software to encourage future research.

More Repositories

1

sentence-transformers

Multilingual Sentence & Image Embeddings with BERT
Python
13,914
star
2

emnlp2017-bilstm-cnn-crf

BiLSTM-CNN-CRF architecture for sequence tagging
Python
820
star
3

deeplearning4nlp-tutorial

Hands-on tutorial on deep learning with a special focus on Natural Language Processing (NLP)
Python
628
star
4

elmo-bilstm-cnn-crf

BiLSTM-CNN-CRF architecture for sequence tagging using ELMo representations.
Python
390
star
5

gpl

Powerful unsupervised domain adaptation method for dense retrieval. Requires only unlabeled corpus and yields massive improvement: "GPL: Generative Pseudo Labeling for Unsupervised Domain Adaptation of Dense Retrieval" https://arxiv.org/abs/2112.07577
Python
310
star
6

emnlp2017-relation-extraction

Context-Aware Representations for Knowledge Base Relation Extraction
Python
287
star
7

arxiv2018-xling-sentence-embeddings

Concatenated Power Mean Embeddings as Universal Cross-Lingual Sentence Representations
JavaScript
185
star
8

coling2018-graph-neural-networks-question-answering

Accompanying code for our COLING 2018 paper "Modeling Semantics with Gated Graph Neural Networks for Knowledge Base Question Answering"
Python
171
star
9

plms-graph2text

Investigating Pretrained Language Models for Graph-to-Text Generation
Python
140
star
10

MMT-Retrieval

Python
126
star
11

kg2text

Modeling Global and Local Node Contexts for Text Generation from Knowledge Graphs (authors' implementation for the TACL20 paper)
Python
94
star
12

acl2019-BERT-argument-classification-and-clustering

Python
82
star
13

argument-reasoning-comprehension-task

The Argument Reasoning Comprehension Task: Source codes & Datasets
Java
71
star
14

pytorch-bertflow

Pytorch-version BERT-flow: One can apply BERT-flow to any PLM within Pytorch framework.
Python
68
star
15

acl2017-non-factoid-qa

Code for paper "End-to-End Non-Factoid Question Answering with an Interactive Visualization of Neural Attention Weights"
Python
67
star
16

acl2017-neural_end2end_am

Accompanying code for our ACL-2017 publication on Neural End-to-End Learning for Computational Argumentation Mining
Python
60
star
17

starsem2018-entity-linking

Accompanying code for our *SEM 2018 @ NAACL 2018 paper "Mixing Context Granularities for Improved Entity Linking on Question Answering Data across Entity Categories"
Python
58
star
18

fever-2018-team-athene

Python
45
star
19

nessie

Automatically detect errors in annotated corpora.
Python
45
star
20

mdl-stance-robustness

Multi-dataset stance detection and robustness experiments
Python
42
star
21

naacl18-multitask_argument_mining

Code for the paper "Multi-Task Learning for Argumentation Mining in Low-Resource Settings"
Python
40
star
22

semeval2017-scienceie

Code for keyphrase classification systems submitted to the SemEval 2017 shared task ScienceIE.
Python
36
star
23

starsem18-multimodalKB

Python
35
star
24

acl2020-interactive-entity-linking

Python
33
star
25

on-emergence

Codes and files for the paper Are Emergent Abilities in Large Language Models just In-Context Learning
Python
31
star
26

useb

Heterogenous, Task- and Domain-Specific Benchmark for Unsupervised Sentence Embeddings used in the TSDAE paper: https://arxiv.org/abs/2104.06979.
Python
31
star
27

emnlp2017-graphdocexplore

Accompanying code for our EMNLP 2017 publication "GraphDocExplore: A Framework for the Experimental Comparison of Graph-based Document Exploration Techniques"
JavaScript
29
star
28

StructAdapt

Structural Adapters in Pretrained Language Models for AMR-to-Text Generation (EMNLP 2021)
Python
29
star
29

coling2018_fake-news-challenge

Python
28
star
30

iwcs2017-answer-selection

Repository for the IWCS 2017 paper "Representation Learning for Answer Selection with LSTM-Based Importance Weighting"
Python
28
star
31

controlled-argument-generation

Controlling Argument Generation via topic, stance, and aspect
Python
28
star
32

acl2016-convincing-arguments

Code and data for ACL2016 article "Which argument is more convincing? Analyzing and predicting convincingness of Web arguments using bidirectional LSTM" by Ivan Habernal and Iryna Gurevych"
Java
28
star
33

refresh2018-predicting-trends-from-arxiv

Python
26
star
34

emnlp2018-activation-functions

Shell
26
star
35

lagonn

Source code and data for Like a Good Nearest Neighbor
Python
26
star
36

emnlp2020-debiasing-unknown

Python
25
star
37

arxiv2018-bayesian-ensembles

Python
25
star
38

naacl2019-does-my-rebuttal-matter

Ruby
25
star
39

naacl2019-like-humans-visual-attacks

Python
25
star
40

acl2017-interactive_summarizer

A general framework for Interactive Multi-Document Summarization
Python
24
star
41

adaptable-adapters

Python
23
star
42

acl2020-confidence-regularization

Python
23
star
43

e2e-nlg-challenge-2017

E2E NLG Challenge submission
Python
23
star
44

emnlp2019-dualgraph

Enhancing AMR-to-Text Generation with Dual Graph Representations (implementation for the EMNLP-IJCNLP-2019 paper)
Python
22
star
45

linspector

Python
22
star
46

MetaQA

MetaQA: Combining Expert Agents for Multi-Skill Question Answering
Python
21
star
47

aaai2019-coala-cqa-answer-selection

Python
20
star
48

arxiv2023-dapr

Python
20
star
49

tac2015-event-detection

Files for Event Nugget Detection systems submitted to TAC 2015 shared task on Event Nugget Detection
Java
19
star
50

tacl2017-event-time-extraction

Event Time Extraction with a Decision Tree of Neural Classifiers
Python
19
star
51

coling2018-xling_argument_mining

Erlang
16
star
52

eacl2017-oodFrameNetSRL

Implementation of a simple frame identification approach (SimpleFrameId) described in the paper "Out-of-domain FrameNet Semantic Role Labeling"
Python
15
star
53

acl2020-dialogue-coherence-assessment

Python
14
star
54

emnlp2020-multicqa

MultiCQA: Zero-Shot Transfer of Self-Supervised Text Matching Models on a Massive Scale
Python
14
star
55

CARE

Project CARE
Vue
14
star
56

lrec2018-live-blog-corpus

Python
13
star
57

EACL21-personalized-conversational-system

Python
13
star
58

emnlp2017-claim-identification

Source code repository for our EMNLP paper on cross-domain claim identification
Java
13
star
59

emnlp2018-question-answering-interface

Accompanying code for our EMNLP 2018 Demo paper "Interactive Instance-based Evaluation of Knowledge Base Question Answering"
JavaScript
13
star
60

emnlp2016-empirical-convincingness

Code and data for EMNLP2016 article "What makes a convincing argument? Empirical analysis and detecting attributes of convincingness in Web argumentation" by Ivan Habernal and Iryna Gurevych
Java
13
star
61

germeval2017-sentiment-detection

Sentence Embeddings used in the GermEval-2017 Submission
Python
13
star
62

emnlp2018-april

Python
13
star
63

naacl2018-before-name-calling-habernal-et-al

Code and data for NAACL 2018 article "Before Name-calling: Dynamics and Triggers of Ad Hominem Fallacies in Web Argumentation" by Habernal et al.
Jupyter Notebook
13
star
64

tacl2018-preference-convincing

Experimental code for the paper 'Finding Convincing Arguments Using Scalable Bayesian Preference Learning'
TeX
12
star
65

emnlp2017-cmapsum-corpus

Accompanying code for our EMNLP 2017 publication "Bringing Structure into Summaries: Crowdsourcing a Benchmark Corpus of Concept Maps"
Java
12
star
66

TWEAC-qa-agent-selection

Python
12
star
67

acl2019-GPPL-humour-metaphor

Python
12
star
68

incorporating-relevance

Code for "Incorporating Relevance Feedback for Information-Seeking Retrieval using Few-Shot Document Re-Ranking" (https://arxiv.org/abs/2210.10695).
Python
12
star
69

coling2016-pcrf-seq2seq

An adaptation of MarMot morphological tagger for generic sequence-to-sequence tasks
Python
11
star
70

SciGen

Python
11
star
71

lsdsem2017-story-cloze

Files for the system submitted to the LSDSem2017 Workshop Story Cloze Test Challenge
Python
11
star
72

acl2022-impli

10
star
73

argotario

Argotario: a multi-lingual serious game to tackle fallacious argumentation
JavaScript
10
star
74

framenet-tools

Annotate text with FrameNet frames and arguments.
Jupyter Notebook
10
star
75

coling2016-genetic-swarm-MDS

A general framework for Multi-Document Summarization based on Genetic Algorithm and Swarm Intelligence
Python
10
star
76

emnlp2021-prompt-ft-heuristics

Python
10
star
77

acl2021-metaphor-generation-conceptual

This repository is for the paper Metaphor Generation with Conceptual Mappings (ACL 2021).
Python
10
star
78

ijcnlp2017-cmaps

Repository for the IJCNLP 2017 paper "Concept-Map-Based Multi-Document Summarization using Concept Co-Reference Resolution and Global Importance Optimization"
Java
10
star
79

acl2016-supersense-embeddings

Source code, data, and supplementary materials for our ACL 2016 article
Python
10
star
80

AdaSent

This repository contains the code for the EMNLP'23 paper "AdaSent: Efficient Domain-Adapted Sentence Embeddings for Few-Shot Classification"
Python
10
star
81

mdswriter

A software for manually creating multi-document summarization corpora and a platform for developing complex annotation tasks spanning multiple steps.
Java
9
star
82

nlpeer

Code associated with NLPeer: A unified resource for the study of peer review
Python
9
star
83

acl2016-optimizing-rouge

Code for our optimizer which takes scored sentences and extract the best summary according to the ROUGE approximation.
Python
9
star
84

emnlp2021-hypercoref-cdcr

Python
9
star
85

cdcr-beyond-corpus-tailored

📄🕸️ Generalizing Cross-Document Event Coreference Resolution Across Multiple Corpora
Python
9
star
86

codeclarqa

Asking Clarification Questions for Code Generation in General-Purpose Programming Language
Python
9
star
87

thesis2018-tk_mtl_sequence_tagging

Python
9
star
88

emnlp2018-novel-metaphors

Annotations and code for the EMNLP 2018 paper 'Weeding out Conventionalized Metaphors: A Corpus of Novel Metaphor Annotations'
Python
9
star
89

emnlp2018-argmin-commonsense-knowledge

Accompanying code for our paper "Frame- and Entity-Based Knowledge for Common-Sense Argumentative Reasoning" at the 5th Workshop on Argument Mining @ EMNLP 2018.
Python
9
star
90

acl2020-empowering-active-learning

Python
8
star
91

argmin2016-unshared-task

Supplementary data for the Unshared Task at the 3rd Argument Mining workshop, ACL 2016
Java
8
star
92

f1000rd

Jupyter Notebook
8
star
93

argmin2015-DiGAT

Discourse Graph Annotation Tool (DiGAT)
JavaScript
8
star
94

intertext-graph

A general-purpose library for cross-document NLP modelling and analysis
Jupyter Notebook
8
star
95

emnlp2022-missing-counter-evidence

Source code and data of our paper "Missing Counter-Evidence Renders NLP Fact-Checking Unrealistic for Misinformation" (https://arxiv.org/abs/2210.13865, to appear at EMNLP 2022).
Python
8
star
96

arxiv2022-context-injection-stance

This repository includes the code for integrating contextual information for supervised text classification tasks using a dual-encoder approach and information exchange via cross-attention. You can find the paper here: https://arxiv.org/abs/2211.01874
Python
8
star
97

arxiv2024-conditional-reasoning-llms

Code Prompting Elicits Conditional Reasoning Abilities in Text+Code LLMs. arXiv 2024
Python
7
star
98

2022-RAFT

This repository contains code and model for EACL2023 Transformers with Learnable Activation Functions
Python
7
star
99

acl2023-argscichat

Python
7
star
100

coling2016-claim-classification

CNN- and LSTM-based Claim Classification in Online User Comments
Python
7
star