I want to get this:

Input text: "ру́сский язы́к"
Output text: "Russian" 

Input text: "中文"
Output text: "Chinese" 

Input text: "にほんご"
Output text: "Japanese" 

Input text: "العَرَبِيَّة"
Output text: "Arabic"

How can I do it in python?


16 Answers 16


1. TextBlob. (Deprecated - Use official Google Translate API instead)

Requires NLTK package, uses Google.

from textblob import TextBlob
b = TextBlob("bonjour")

pip install textblob

Note: This solution requires internet access and Textblob is using Google Translate's language detector by calling the API.

2. Polyglot.

Requires numpy and some arcane libraries, unlikely to get it work for Windows. (For Windows, get an appropriate versions of PyICU, Morfessor and PyCLD2 from here, then just pip install downloaded_wheel.whl.) Able to detect texts with mixed languages.

from polyglot.detect import Detector

mixed_text = u"""
China (simplified Chinese: 中国; traditional Chinese: 中國),
officially the People's Republic of China (PRC), is a sovereign state
located in East Asia.
for language in Detector(mixed_text).languages:

# name: English     code: en       confidence:  87.0 read bytes:  1154
# name: Chinese     code: zh_Hant  confidence:   5.0 read bytes:  1755
# name: un          code: un       confidence:   0.0 read bytes:     0

pip install polyglot

To install the dependencies, run: sudo apt-get install python-numpy libicu-dev

Note: Polyglot is using pycld2, see https://github.com/aboSamoor/polyglot/blob/master/polyglot/detect/base.py#L72 for details.

3. chardet

Chardet has also a feature of detecting languages if there are character bytes in range (127-255]:

>>> chardet.detect("Я люблю вкусные пампушки".encode('cp1251'))
{'encoding': 'windows-1251', 'confidence': 0.9637267119204621, 'language': 'Russian'}

pip install chardet

4. langdetect

Requires large portions of text. It uses non-deterministic approach under the hood. That means you get different results for the same text sample. Docs say you have to use following code to make it determined:

from langdetect import detect, DetectorFactory
DetectorFactory.seed = 0

pip install langdetect

5. guess_language

Can detect very short samples by using this spell checker with dictionaries.

pip install guess_language-spirit

6. langid

langid.py provides both a module

import langid
langid.classify("This is a test")
# ('en', -54.41310358047485)

and a command-line tool:

$ langid < README.md

pip install langid

7. FastText

FastText is a text classifier, can be used to recognize 176 languages with a proper models for language classification. Download this model, then:

import fasttext
model = fasttext.load_model('lid.176.ftz')
print(model.predict('الشمس تشرق', k=2))  # top 2 matching languages

(('__label__ar', '__label__fa'), array([0.98124713, 0.01265871]))

pip install fasttext

8. pyCLD3

pycld3 is a neural network model for language identification. This package contains the inference code and a trained model.

import cld3

LanguagePrediction(language='zh', probability=0.999969482421875, is_reliable=True, proportion=1.0)

pip install pycld3


Have you had a look at langdetect?

from langdetect import detect

lang = detect("Ein, zwei, drei, vier")

print lang
#output: de
  • 44
    Not very accurate - detects language of text 'anatomical structure' as ro(Romanian). Multiple language output required for such cases. polyglot performs much better. Jun 20, 2018 at 10:41
  • 3
    Interesting, for the same example langdetect can determine different languages :-) Jun 27, 2018 at 10:12
  • 1
    for some reason, langdetect is given errors, I am using Python 3.6
    – innuendo
    Mar 7, 2019 at 18:54
  • @DenisKuzin I am getting romanian only for "anatomical structure". Wonder if you can share the langdetect version you are using?
    – famargar
    Feb 7, 2021 at 11:30
  • 2
    Is not accurate, detects "god is love" as hr that is Croatian Dec 20, 2021 at 14:02

@Rabash had a good list of tools on https://stackoverflow.com/a/47106810/610569

And @toto_tico did a nice job in presenting the speed comparison.

Here's a summary to complete the great answers above (as of 2021)

Language ID software Used by Open Source / Model Rule-based Stats-based Can train/tune
Google Translate Language Detection TextBlob (limited usage) - -
Chardet -
Guess Language (non-active development) spirit-guess (updated rewrite) Minimally
pyCLD2 Polyglot Somewhat Not sure
CLD3 - Possibly
langid-py - Not sure
langdetect SpaCy-langdetect
FastText What The Lang Not sure

If you are looking for a library that is fast with long texts, polyglot and fastext are doing the best job here.

I sampled 10000 documents from a collection of dirty and random HTMLs, and here are the results:

| Library    | Time     |
| polyglot   | 3.67 s   |
| fasttext   | 6.41     |
| cld3       | 14 s     |
| langid     | 1min 8s  |
| langdetect | 2min 53s |
| chardet    | 4min 36s |

I have noticed that a lot of the methods focus on short texts, probably because it is the hard problem to solve: if you have a lot of text, it is really easy to detect languages (e.g. one could just use a dictionary!). However, this makes it difficult to find for an easy and suitable method for long texts.

  • 1
    polyglot language detection is based on pycld2, that is not that fast all in all. Or is there a way to use it to identify the language in a kind of a batch mode? I have only tried handling sentence by sentence. Jun 5, 2020 at 13:30
  • I assume that the long text is in the same language. I read the 10000 documents and keep them in memory. For fastextcc I have to remove the \n characters, but not for polyglot (cdl2 results were pretty much the same, I tested it as well). I don't understand why you think polyglot is slow, It was the fastest. Do you think I should have removed the \n as well, and that my results just reflect the first sentence (i.e., before the first \n)
    – toto_tico
    Jun 6, 2020 at 15:57
  • 1
    I mean, I check languages of millions of separate documents that are all one line strings. That is slow with pycld2. Jun 6, 2020 at 15:59
  • I see, I don't think there is a way to do that. You have to do it one by one. Depending on where your documents are stored you migh be able to use the multiprocessing capabilities. Also, I ended using fasttextcc because I was having some troubles with asian language encodings.
    – toto_tico
    Jun 7, 2020 at 19:31
  • In my case, most of the documents were long, and a benchmark might look very different with short sentences.
    – toto_tico
    Jun 7, 2020 at 19:35

There is an issue with langdetect when it is being used for parallelization and it fails. But spacy_langdetect is a wrapper for that and you can use it for that purpose. You can use the following snippet as well:

import spacy
from spacy_langdetect import LanguageDetector

nlp = spacy.load("en")
nlp.add_pipe(LanguageDetector(), name="language_detector", last=True)
text = "This is English text Er lebt mit seinen Eltern und seiner Schwester in Berlin. Yo me divierto todos los días en el parque. Je m'appelle Angélica Summer, j'ai 12 ans et je suis canadienne."
doc = nlp(text)
# document level language detection. Think of it like average language of document!
# sentence level language detection
for i, sent in enumerate(doc.sents):
    print(sent, sent._.language)
  • I followed your answer, but I think I am still getting the same speed as with the langdetect. I have a DF column with texts, I am using column.apply() with a function doing scipy_langdetect. Any suggestions? Mar 31, 2020 at 15:04
  • You need to use a parallel library to be able to take advantage of the parallelization of the function like dask, otherwise it wouldn't make any difference. Mar 31, 2020 at 22:40
  • What is the issue with parallelization?
    – stan0
    Jun 30, 2021 at 9:30
  • I don't remember exactly what was the issue but when I wanted to use langdetect library for dask parallelization it threw an exception but spacy_langdetect worked fine. Jun 30, 2021 at 19:26

You can use Googletrans (unofficial) a free and unlimited Google translate API for Python.

You can make as many requests as you want, there are no limits


$ pip install googletrans

Language detection:

>>> from googletrans import Translator
>>> t = Translator().detect("hello world!")
>>> t.lang
>>> t.confidence
  • 3
    This Method is Great but I have gone ahead and implemented it commercially, it is unstable as after 1-5K Converts you have to change your IP Address. This Interface can be made useful by using a proxy list or an automated VPN change after 100 Converts, in the code, I hope that this helps any one of you trying to implement this. :) Feb 2, 2022 at 8:19

I would say lingua.py all the way. It is much faster and more accurate than fasttext. Definitely deserves to be listed here.


poetry add lingua-language-detector


from typing import List
from lingua.language import Language
from lingua.builder import LanguageDetectorBuilder
languages: List[Language] = [Language.ENGLISH, Language.TURKISH, Language.PERSIAN]
detector = LanguageDetectorBuilder.from_languages(*languages).build()

if __name__ == "__main__":
    print(detector.detect_language_of("Ben de iyiyim. Tesekkurler.")) # Language.TURKISH
    print(detector.detect_language_of("I'm fine and you?")) # Language.ENGLISH
    print(detector.detect_language_of("حال من خوبه؟ شما چطورید؟")) # Language.PERSIAN
  • I have tried detect_language_of method and it was the slowest out of all previous options for me. Oct 9, 2023 at 9:42

Pretrained Fast Text Model Worked Best For My Similar Needs

I arrived at your question with a very similar need. I found the most help from Rabash's answers for my specific needs.

After experimenting to find what worked best among his recommendations, which was making sure that text files were in English in 60,000+ text files, I found that fasttext was an excellent tool for such a task.

With a little work, I had a tool that worked very fast over many files. But it could be easily modified for something like your case, because fasttext works over a list of lines easily.

My code with comments is among the answers on THIS post. I believe that you and others can easily modify this code for other specific needs.


Depending on the case, you might be interested in using one of the following methods:

Method 0: Use an API or library

Usually, there are a few problems with these libraries because some of them are not accurate for small texts, some languages are missing, are slow, require internet connection, are non-free,... But generally speaking, they will suit most needs.

Method 1: Language models

A language model gives us the probability of a sequence of words. This is important because it allows us to robustly detect the language of a text, even when the text contains words in other languages (e.g.: "'Hola' means 'hello' in spanish").

You can use N language models (one per language), to score your text. The detected language will be the language of the model that gave you the highest score.

If you want to build a simple language model for this, I'd go for 1-grams. To do this, you only need to count the number of times each word from a big text (e.g. Wikipedia Corpus in "X" language) has appeared.

Then, the probability of a word will be its frequency divided by the total number of words analyzed (sum of all frequencies).

the 23135851162
of  13151942776
and 12997637966
to  12136980858
a   9081174698
in  8469404971
for 5933321709

=> P("'Hola' means 'hello' in spanish") = P("hola") * P("means") * P("hello") * P("in") * P("spanish")

If the text to detect is quite big, I recommend sampling N random words and then use the sum of logarithms instead of multiplications to avoid floating-point precision problems.

P(s) = 0.03 * 0.01 * 0.014 = 0.0000042
P(s) = log10(0.03) + log10(0.01) + log10(0.014) = -5.376

Method 2: Intersecting sets

An even simpler approach is to prepare N sets (one per language) with the top M most frequent words. Then intersect your text with each set. The set with the highest number of intersections will be your detected language.

spanish_set = {"de", "hola", "la", "casa",...}
english_set = {"of", "hello", "the", "house",...}
czech_set = {"z", "ahoj", "závěrky", "dům",...}

text_set = {"hola", "means", "hello", "in", "spanish"}

spanish_votes = text_set.intersection(spanish_set)  # 1
english_votes = text_set.intersection(english_set)  # 4
czech_votes = text_set.intersection(czech_set)  # 0

Method 3: Zip compression

This more a curiosity than anything else, but here it goes... You can compress your text (e.g LZ77) and then measure the zip-distance with regards to a reference compressed text (target language). Personally, I didn't like it because it's slower, less accurate and less descriptive than other methods. Nevertheless, there might be interesting applications for this method. To read more: Language Trees and Zipping


I have tried all the libraries out there, and i concluded that pycld2 is the best one, fast and accurate.

you can install it like this:

python -m pip install -U pycld2

you can use it like this:

isReliable, textBytesFound, details = cld2.detect(your_sentence)

print(isReliable, details[0][1]) # reliablity(bool),lang abbrev.(en/es/de...)   

Polygot or Cld2 are among the best suggestions because they can detect multiple language in text. But, they are not easy to be installed on Windows because of "building wheel fail".

A solution that worked for me ( I am using Windows 10 ) is installing CLD2-CFFI

so first install cld2-cffi

pip install cld2-cffi

and then use it like this:

text_content = """ A accès aux chiens et aux frontaux qui lui ont été il peut 
consulter et modifier ses collections et exporter Cet article concerne le pays 
européen aujourd’hui appelé République française. 
Pour d’autres usages du nom France, Pour une aide rapide et effective, veuiller 
trouver votre aide dans le menu ci-dessus. 
Welcome, to this world of Data Scientist. Today is a lovely day."""

import cld2

isReliable, textBytesFound, details = cld2.detect(text_content)
print('  reliable: %s' % (isReliable != 0))
print('  textBytes: %s' % textBytesFound)
print('  details: %s' % str(details))

Th output is like this:

reliable: True
textBytes: 377
details: (Detection(language_name='FRENCH', language_code='fr', percent=74, 
score=1360.0), Detection(language_name='ENGLISH', language_code='en', 
percent=25, score=1141.0), Detection(language_name='Unknown', 
language_code='un', percent=0, score=0.0))

I like the approach offered by TextBlob for language detection. Its quite simple and easy to implement and uses fewer lines of code. before you begin. you will need to install the textblob python library for the below code to work.

from textblob import TextBlob
text = "это компьютерный портал для гиков."
lang = TextBlob(text)

On the other hand, if you have a combination of various languages used, you might want to try pycld2 that allows language detection by defining parts of the sentence or paragraph with accuracy.


You can try determining the Unicode group of chars in input string to point out type of language, (Cyrillic for Russian, for example), and then search for language-specific symbols in text.


If the language you want to detect is among these...

  • arabic (ar)
  • bulgarian (bg)
  • german (de)
  • modern greek (el)
  • english (en)
  • spanish (es)
  • french (fr)
  • hindi (hi)
  • italian (it)
  • japanese (ja)
  • dutch (nl)
  • polish (pl)
  • portuguese (pt)
  • russian (ru)
  • swahili (sw)
  • thai (th)
  • turkish (tr)
  • urdu (ur)
  • vietnamese (vi)
  • chinese (zh)

...then it is relatively easy with HuggingFace libraries and models (Deep Learning Natural Language Processing, if you are not familiar with it):

# Import libraries
from transformers import pipeline
# Load pipeline
classifier = pipeline("text-classification", model = "papluca/xlm-roberta-base-language-detection")
# Example sentence
sentence1 = 'Ciao, come stai?'
# Get language


[{'label': 'it', 'score': 0.9948362112045288}]

label is the predicted language, and score is the assigned score to it: you can think of it as a confidence measure. Some details:

The training set contains 70k samples, while the validation and test sets 10k each. The average accuracy on the test set is 99.6%

You can finde more info at the model's page, and I suppose that you could find other models that fit you needs.


You can install the pycld2 python library

pip install pycld2


python -m pip install -U pycld2

for the below code to work.

import pycld2 as cld2

isReliable, textBytesFound, details = cld2.detect(
    "а неправильный формат идентификатора дн назад"

# True
# ('RUSSIAN', 'ru', 98, 404.0)

fr_en_Latn = """\
France is the largest country in Western Europe and the third-largest in Europe as a whole.
A accès aux chiens et aux frontaux qui lui ont été il peut consulter et modifier ses collections
et exporter Cet article concerne le pays européen aujourd’hui appelé République française.
Pour d’autres usages du nom France, Pour une aide rapide et effective, veuiller trouver votre aide
dans le menu ci-dessus.
Motoring events began soon after the construction of the first successful gasoline-fueled automobiles.
The quick brown fox jumped over the lazy dog."""

isReliable, textBytesFound, details, vectors = cld2.detect(
    fr_en_Latn, returnVectors=True
# ((0, 94, 'ENGLISH', 'en'), (94, 329, 'FRENCH', 'fr'), (423, 139, 'ENGLISH', 'en'))

Pycld2 python library is a python binding for the Compact Language Detect 2 (CLD2). You can explore the different functionality of Pycld2. Know about the Pycld2 here.


The best way to determine the laguage of a text is to implement the following function:

from langdetect import detect

def get_language(text):

    keys =['ab', 'aa', 'af', 'ak', 'sq', 'am', 'ar', 'an', 'hy', 'as', 'av', 'ae', 'ay', 'az', 'bm', 'ba', 'eu', 'be', 'bn', 'bi', 'bs', 'br', 'bg', 'my', 'ca', 'ch', 'ce', 'ny', 'zh', 'cu', 'cv', 'kw', 'co', 'cr', 'hr', 'cs', 'da', 'dv', 'nl', 'dz', 'en', 'eo', 'et', 'ee', 'fo', 'fj', 'fi', 'fr', 'fy', 'ff', 'gd', 'gl', 'lg', 'ka', 'de', 'el', 'kl', 'gn', 'gu', 'ht', 'ha', 'he', 'hz', 'hi', 'ho', 'hu', 'is', 'io', 'ig', 'id', 'ia', 'ie', 'iu', 'ik', 'ga', 'it', 'ja', 'jv', 'kn', 'kr', 'ks', 'kk', 'km', 'ki', 'rw', 'ky', 'kv', 'kg', 'ko', 'kj', 'ku', 'lo', 'la', 'lv', 'li', 'ln', 'lt', 'lu', 'lb', 'mk', 'mg', 'ms', 'ml', 'mt', 'gv', 'mi', 'mr', 'mh', 'mn', 'na', 'nv', 'nd', 'nr', 'ng', 'ne', 'no', 'nb', 'nn', 'ii', 'oc', 'oj', 'or', 'om', 'os', 'pi', 'ps', 'fa', 'pl', 'pt', 'pa', 'qu', 'ro', 'rm', 'rn', 'ru', 'se', 'sm', 'sg', 'sa', 'sc', 'sr', 'sn', 'sd', 'si', 'sk', 'sl', 'so', 'st', 'es', 'su', 'sw', 'ss', 'sv', 'tl', 'ty', 'tg', 'ta', 'tt', 'te', 'th', 'bo', 'ti', 'to', 'ts', 'tn', 'tr', 'tk', 'tw', 'ug', 'uk', 'ur', 'uz', 've', 'vi', 'vo', 'wa', 'cy', 'wo', 'xh', 'yi', 'yo', 'za', 'zu']
    langs = ['Abkhazian', 'Afar', 'Afrikaans', 'Akan', 'Albanian', 'Amharic', 'Arabic', 'Aragonese', 'Armenian', 'Assamese', 'Avaric', 'Avestan', 'Aymara', 'Azerbaijani', 'Bambara', 'Bashkir', 'Basque', 'Belarusian', 'Bengali', 'Bislama', 'Bosnian', 'Breton', 'Bulgarian', 'Burmese', 'Catalan, Valencian', 'Chamorro', 'Chechen', 'Chichewa, Chewa, Nyanja', 'Chinese', 'Church Slavonic, Old Slavonic, Old Church Slavonic', 'Chuvash', 'Cornish', 'Corsican', 'Cree', 'Croatian', 'Czech', 'Danish', 'Divehi, Dhivehi, Maldivian', 'Dutch, Flemish', 'Dzongkha', 'English', 'Esperanto', 'Estonian', 'Ewe', 'Faroese', 'Fijian', 'Finnish', 'French', 'Western Frisian', 'Fulah', 'Gaelic, Scottish Gaelic', 'Galician', 'Ganda', 'Georgian', 'German', 'Greek, Modern (1453–)', 'Kalaallisut, Greenlandic', 'Guarani', 'Gujarati', 'Haitian, Haitian Creole', 'Hausa', 'Hebrew', 'Herero', 'Hindi', 'Hiri Motu', 'Hungarian', 'Icelandic', 'Ido', 'Igbo', 'Indonesian', 'Interlingua (International Auxiliary Language Association)', 'Interlingue, Occidental', 'Inuktitut', 'Inupiaq', 'Irish', 'Italian', 'Japanese', 'Javanese', 'Kannada', 'Kanuri', 'Kashmiri', 'Kazakh', 'Central Khmer', 'Kikuyu, Gikuyu', 'Kinyarwanda', 'Kirghiz, Kyrgyz', 'Komi', 'Kongo', 'Korean', 'Kuanyama, Kwanyama', 'Kurdish', 'Lao', 'Latin', 'Latvian', 'Limburgan, Limburger, Limburgish', 'Lingala', 'Lithuanian', 'Luba-Katanga', 'Luxembourgish, Letzeburgesch', 'Macedonian', 'Malagasy', 'Malay', 'Malayalam', 'Maltese', 'Manx', 'Maori', 'Marathi', 'Marshallese', 'Mongolian', 'Nauru', 'Navajo, Navaho', 'North Ndebele', 'South Ndebele', 'Ndonga', 'Nepali', 'Norwegian', 'Norwegian Bokmål', 'Norwegian Nynorsk', 'Sichuan Yi, Nuosu', 'Occitan', 'Ojibwa', 'Oriya', 'Oromo', 'Ossetian, Ossetic', 'Pali', 'Pashto, Pushto', 'Persian', 'Polish', 'Portuguese', 'Punjabi, Panjabi', 'Quechua', 'Romanian, Moldavian, Moldovan', 'Romansh', 'Rundi', 'Russian', 'Northern Sami', 'Samoan', 'Sango', 'Sanskrit', 'Sardinian', 'Serbian', 'Shona', 'Sindhi', 'Sinhala, Sinhalese', 'Slovak', 'Slovenian', 'Somali', 'Southern Sotho', 'Spanish, Castilian', 'Sundanese', 'Swahili', 'Swati', 'Swedish', 'Tagalog', 'Tahitian', 'Tajik', 'Tamil', 'Tatar', 'Telugu', 'Thai', 'Tibetan', 'Tigrinya', 'Tonga (Tonga Islands)', 'Tsonga', 'Tswana', 'Turkish', 'Turkmen', 'Twi', 'Uighur, Uyghur', 'Ukrainian', 'Urdu', 'Uzbek', 'Venda', 'Vietnamese', 'Volapük', 'Walloon', 'Welsh', 'Wolof', 'Xhosa', 'Yiddish', 'Yoruba', 'Zhuang, Chuang', 'Zulu']
    lang_dict = {key : lan for (key, lan) in zip(keys, langs)}
    return lang_dict[detect(text)]

Let's try it:

>>> get_language("Ich liebe meine Frau")

... 'German'

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