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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 MΓΌggelsee). 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
             'θΏ™ζ˜―δΈ€δΈͺδΈ­ζ–‡ε₯子',    #This is a chinese sentence
             'Esta es una oraciΓ³n en espaΓ±ol.'] #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.

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