Massively Multilingual Speech (MMS) - Finetuned ASR - ALL
This checkpoint is a model fine-tuned for multi-lingual ASR and part of Facebook's
Massive Multilingual Speech project
.
This checkpoint is based on the
Wav2Vec2 architecture
and makes use of adapter models to transcribe 1000+ languages.
The checkpoint consists of
1 billion parameters
and has been fine-tuned from
facebook/mms-1b
on 1162 languages.
Table Of Content
-
Example
-
Supported Languages
-
Model details
-
Additional links
Example
This MMS checkpoint can be used with
Transformers
to transcribe audio of 1107 different
languages. Let's look at a simple example.
First, we install transformers and some other libraries
pip install torch accelerate torchaudio datasets
pip install --upgrade transformers
Note
: In order to use MMS you need to have at least
transformers >= 4.30
installed. If the
4.30
version
is not yet available
on PyPI
make sure to install
transformers
from
source:
pip install git+https://github.com/huggingface/transformers.git
Next, we load a couple of audio samples via
datasets
. Make sure that the audio data is sampled to 16000 kHz.
from datasets import load_dataset, Audio
# English
stream_data = load_dataset("mozilla-foundation/common_voice_13_0", "en", split="test", streaming=True)
stream_data = stream_data.cast_column("audio", Audio(sampling_rate=16000))
en_sample = next(iter(stream_data))["audio"]["array"]
# French
stream_data = load_dataset("mozilla-foundation/common_voice_13_0", "fr", split="test", streaming=True)
stream_data = stream_data.cast_column("audio", Audio(sampling_rate=16000))
fr_sample = next(iter(stream_data))["audio"]["array"]
Next, we load the model and processor
from transformers import Wav2Vec2ForCTC, AutoProcessor
import torch
model_id = "facebook/mms-1b-all"
processor = AutoProcessor.from_pretrained(model_id)
model = Wav2Vec2ForCTC.from_pretrained(model_id)
Now we process the audio data, pass the processed audio data to the model and transcribe the model output, just like we usually do for Wav2Vec2 models such as
facebook/wav2vec2-base-960h
inputs = processor(en_sample, sampling_rate=16_000, return_tensors="pt")
with torch.no_grad():
outputs = model(**inputs).logits
ids = torch.argmax(outputs, dim=-1)[0]
transcription = processor.decode(ids)
# 'joe keton disapproved of films and buster also had reservations about the media'
We can now keep the same model in memory and simply switch out the language adapters by calling the convenient
load_adapter()
function for the model and
set_target_lang()
for the tokenizer. We pass the target language as an input - "fra" for French.
processor.tokenizer.set_target_lang("fra")
model.load_adapter("fra")
inputs = processor(fr_sample, sampling_rate=16_000, return_tensors="pt")
with torch.no_grad():
outputs = model(**inputs).logits
ids = torch.argmax(outputs, dim=-1)[0]
transcription = processor.decode(ids)
# "ce dernier est volé tout au long de l'histoire romaine"
In the same way the language can be switched out for all other supported languages. Please have a look at:
processor.tokenizer.vocab.keys()
For more details, please have a look at
the official docs
.
Supported Languages
This model supports 1162 languages. Unclick the following to toogle all supported languages of this checkpoint in
ISO 639-3 code
.
You can find more details about the languages and their ISO 649-3 codes in the
MMS Language Coverage Overview
.
Click to toggle
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abi
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abk
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abp
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aca
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acd
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ace
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acf
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ach
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acn
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acr
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acu
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ade
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adh
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adj
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adx
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aeu
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afr
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agd
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agg
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agn
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agr
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agu
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agx
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aha
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ahk
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aia
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aka
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akb
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ake
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akp
-
alj
-
alp
-
alt
-
alz
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ame
-
amf
-
amh
-
ami
-
amk
-
ann
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any
-
aoz
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apb
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apr
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ara
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arl
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asa
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asg
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asm
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ast
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ata
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atb
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atg
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ati
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atq
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ava
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avn
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avu
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awa
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awb
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ayo
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ayr
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ayz
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azb
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azg
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azj-script_cyrillic
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azj-script_latin
-
azz
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bak
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bam
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ban
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bao
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bas
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bav
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bba
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bbb
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bbc
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bbo
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bcc-script_arabic
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bcc-script_latin
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bcl
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bcw
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bdg
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bdh
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bdq
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bdu
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bdv
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beh
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bel
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bem
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ben
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bep
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bex
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bfa
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bfo
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bfy
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bfz
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bgc
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bgq
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bgr
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bgt
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bgw
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bha
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bht
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bhz
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bib
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bim
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bis
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biv
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bjr
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bjv
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bjw
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bjz
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bkd
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bkv
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blh
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blt
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blx
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blz
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bmq
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bmr
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bmu
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bmv
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bng
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bno
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bnp
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boa
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bod
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boj
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bom
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bor
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bos
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bov
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box
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bpr
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bps
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bqc
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bqi
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bqj
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bqp
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bre
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bru
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bsc
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bsq
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bss
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btd
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bts
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btt
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btx
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bud
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bul
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bus
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bvc
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bvz
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bwq
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bwu
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byr
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bzh
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bzi
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bzj
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caa
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cab
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cac-dialect_sanmateoixtatan
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cac-dialect_sansebastiancoatan
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cak-dialect_central
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cak-dialect_santamariadejesus
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cak-dialect_santodomingoxenacoj
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cak-dialect_southcentral
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cak-dialect_western
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cak-dialect_yepocapa
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cap
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car
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cas
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cat
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cax
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cbc
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cbi
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cbr
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cbs
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cbt
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cbu
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cbv
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cce
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cco
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cdj
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ceb
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ceg
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cek
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ces
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cfm
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cgc
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che
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chf
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chv
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chz
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cjo
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cjp
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cjs
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ckb
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cko
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ckt
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cla
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cle
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cly
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cme
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cmn-script_simplified
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cmo-script_khmer
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cmo-script_latin
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cmr
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cnh
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cni
-
cnl
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cnt
-
coe
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cof
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cok
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con
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cot
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cou
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cpa
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cpb
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cpu
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crh
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crk-script_latin
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crk-script_syllabics
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crn
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crq
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crs
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crt
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csk
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cso
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ctd
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ctg
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cto
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ctu
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cuc
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cui
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cuk
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cul
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cwa
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cwe
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cwt
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cya
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cym
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daa
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dah
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dan
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dar
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dbj
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dbq
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ddn
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ded
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des
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deu
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dga
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dgi
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dgk
-
dgo
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dgr
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dhi
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did
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dig
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dik
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dip
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div
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djk
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dnj-dialect_blowowest
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dnj-dialect_gweetaawueast
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dnt
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dnw
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dop
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dos
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dsh
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dso
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dtp
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dts
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dug
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dwr
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dyi
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dyo
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dyu
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dzo
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eip
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eka
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ell
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emp
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enb
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eng
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enx
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epo
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ese
-
ess
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est
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eus
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evn
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ewe
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eza
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fal
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fao
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far
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fas
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fij
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fin
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flr
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fmu
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fon
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fra
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frd
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fry
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ful
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gag-script_cyrillic
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gag-script_latin
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gai
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gam
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gau
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gbi
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gbk
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gbm
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gbo
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gde
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geb
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gej
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gil
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gjn
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gkn
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gld
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gle
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glg
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glk
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gmv
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gna
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gnd
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gng
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gof-script_latin
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gog
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gor
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gqr
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grc
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gri
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grn
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grt
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gso
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gub
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guc
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gud
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guh
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guj
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guk
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gum
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guo
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guq
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guu
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gux
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gvc
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gvl
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gwi
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gwr
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gym
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gyr
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had
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hag
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hak
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hap
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hat
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hau
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hay
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heb
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heh
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hif
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hig
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hil
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hin
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hlb
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hlt
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hne
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hnn
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hns
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hoc
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hoy
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hrv
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hsb
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hto
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hub
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hui
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hun
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hus-dialect_centralveracruz
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hus-dialect_westernpotosino
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huu
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huv
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hvn
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hwc
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hye
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hyw
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iba
-
ibo
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icr
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idd
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ifa
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ifb
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ife
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ifk
-
ifu
-
ify
-
ign
-
ikk
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ilb
-
ilo
-
imo
-
ina
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inb
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ind
-
iou
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ipi
-
iqw
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iri
-
irk
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isl
-
ita
-
itl
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itv
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ixl-dialect_sangasparchajul
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ixl-dialect_sanjuancotzal
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ixl-dialect_santamarianebaj
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izr
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izz
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jac
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jam
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jav
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jbu
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jen
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jic
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jiv
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jmc
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jmd
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jpn
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jun
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juy
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jvn
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kaa
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kab
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kac
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kak
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kam
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kan
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kao
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kaq
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kat
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kay
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kaz
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kbo
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kbp
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kbq
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kbr
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kby
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kca
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kcg
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kdc
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kde
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kdh
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kdi
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kdj
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kdl
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kdn
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kdt
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kea
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kek
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ken
-
keo
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ker
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key
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kez
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kfb
-
kff-script_telugu
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kfw
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kfx
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khg
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khm
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khq
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kia
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kij
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kik
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kin
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kir
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kjb
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kje
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kjg
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kjh
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kki
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kkj
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kle
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klu
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klv
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klw
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kma
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kmd
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kml
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kmr-script_arabic
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kmr-script_cyrillic
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kmr-script_latin
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kmu
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knb
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kne
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knf
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knj
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knk
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kno
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kog
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kor
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kpq
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kps
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kpv
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kpy
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kpz
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kqe
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kqp
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kqr
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kqy
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krc
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kri
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krj
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krl
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krr
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krs
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kru
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ksb
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ksr
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kss
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ktb
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ktj
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kub
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kue
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kum
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kus
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kvn
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kvw
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kwd
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kwf
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kwi
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kxc
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kxf
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kxm
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kxv
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kyb
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kyc
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kyf
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kyg
-
kyo
-
kyq
-
kyu
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kyz
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kzf
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lac
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laj
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lam
-
lao
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las
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lat
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lav
-
law
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lbj
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lbw
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lcp
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lee
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lef
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lem
-
lew
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lex
-
lgg
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lgl
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lhu
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lia
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lid
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lif
-
lin
-
lip
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lis
-
lit
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lje
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ljp
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llg
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lln
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lme
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lnd
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lns
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lob
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lok
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lom
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lon
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loq
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lsi
-
lsm
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ltz
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luc
-
lug
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luo
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lwo
-
lww
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lzz
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maa-dialect_sanantonio
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maa-dialect_sanjeronimo
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mad
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mag
-
mah
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mai
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maj
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mak
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mal
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mam-dialect_central
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mam-dialect_northern
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mam-dialect_southern
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mam-dialect_western
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maq
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mar
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maw
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maz
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mbb
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mbc
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mbh
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mbj
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mbt
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mbu
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mbz
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mca
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mcb
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mcd
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mco
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mcp
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mcq
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mcu
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mda
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mdf
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mdv
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mdy
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med
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mee
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mej
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men
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meq
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met
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mev
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mfe
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mfh
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mfi
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mfk
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mfq
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mfy
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mfz
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mgd
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mge
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mgh
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mgo
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mhi
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mhr
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mhu
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mhx
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mhy
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mib
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mie
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mif
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mih
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mil
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mim
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min
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mio
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mip
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miq
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mit
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miy
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miz
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mjl
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mjv
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mkd
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mkl
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mkn
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mlg
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mlt
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mmg
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mnb
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mnf
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mnk
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mnw
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mnx
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moa
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mog
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mon
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mop
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mor
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mos
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mox
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moz
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mpg
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mpm
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mpp
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mpx
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mqb
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mqf
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mqj
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mqn
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mri
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mrw
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msy
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mtd
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mtj
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mto
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muh
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mup
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mur
-
muv
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muy
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mvp
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mwq
-
mwv
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mxb
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mxq
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mxt
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mxv
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mya
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myb
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myk
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myl
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myv
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myx
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myy
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mza
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mzi
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mzj
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mzk
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mzm
-
mzw
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nab
-
nag
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nan
-
nas
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naw
-
nca
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nch
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ncj
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ncl
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ncu
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ndj
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ndp
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ndv
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ndy
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ndz
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neb
-
new
-
nfa
-
nfr
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nga
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ngl
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ngp
-
ngu
-
nhe
-
nhi
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nhu
-
nhw
-
nhx
-
nhy
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nia
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nij
-
nim
-
nin
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nko
-
nlc
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nld
-
nlg
-
nlk
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nmz
-
nnb
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nno
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nnq
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nnw
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noa
-
nob
-
nod
-
nog
-
not
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npi
-
npl
-
npy
-
nso
-
nst
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nsu
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ntm
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ntr
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nuj
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nus
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nuz
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nwb
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nxq
-
nya
-
nyf
-
nyn
-
nyo
-
nyy
-
nzi
-
obo
-
oci
-
ojb-script_latin
-
ojb-script_syllabics
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oku
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old
-
omw
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onb
-
ood
-
orm
-
ory
-
oss
-
ote
-
otq
-
ozm
-
pab
-
pad
-
pag
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pam
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pan
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pao
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pap
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pau
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pbb
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pbc
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pbi
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pce
-
pcm
-
peg
-
pez
-
pib
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pil
-
pir
-
pis
-
pjt
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pkb
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pls
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plw
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pmf
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pny
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poh-dialect_eastern
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poh-dialect_western
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poi
-
pol
-
por
-
poy
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ppk
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pps
-
prf
-
prk
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prt
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pse
-
pss
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ptu
-
pui
-
pus
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pwg
-
pww
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pxm
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qub
-
quc-dialect_central
-
quc-dialect_east
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quc-dialect_north
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quf
-
quh
-
qul
-
quw
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quy
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quz
-
qvc
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qve
-
qvh
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qvm
-
qvn
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qvo
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qvs
-
qvw
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qvz
-
qwh
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qxh
-
qxl
-
qxn
-
qxo
-
qxr
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rah
-
rai
-
rap
-
rav
-
raw
-
rej
-
rel
-
rgu
-
rhg
-
rif-script_arabic
-
rif-script_latin
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ril
-
rim
-
rjs
-
rkt
-
rmc-script_cyrillic
-
rmc-script_latin
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rmo
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rmy-script_cyrillic
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rmy-script_latin
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rng
-
rnl
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roh-dialect_sursilv
-
roh-dialect_vallader
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rol
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ron
-
rop
-
rro
-
rub
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ruf
-
rug
-
run
-
rus
-
sab
-
sag
-
sah
-
saj
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saq
-
sas
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sat
-
sba
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sbd
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sbl
-
sbp
-
sch
-
sck
-
sda
-
sea
-
seh
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ses
-
sey
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sgb
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sgj
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sgw
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shi
-
shk
-
shn
-
sho
-
shp
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sid
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sig
-
sil
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sja
-
sjm
-
sld
-
slk
-
slu
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slv
-
sml
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smo
-
sna
-
snd
-
sne
-
snn
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snp
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snw
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som
-
soy
-
spa
-
spp
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spy
-
sqi
-
sri
-
srm
-
srn
-
srp-script_cyrillic
-
srp-script_latin
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srx
-
stn
-
stp
-
suc
-
suk
-
sun
-
sur
-
sus
-
suv
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suz
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swe
-
swh
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sxb
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sxn
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sya
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syl
-
sza
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tac
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taj
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tam
-
tao
-
tap
-
taq
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tat
-
tav
-
tbc
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tbg
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tbk
-
tbl
-
tby
-
tbz
-
tca
-
tcc
-
tcs
-
tcz
-
tdj
-
ted
-
tee
-
tel
-
tem
-
teo
-
ter
-
tes
-
tew
-
tex
-
tfr
-
tgj
-
tgk
-
tgl
-
tgo
-
tgp
-
tha
-
thk
-
thl
-
tih
-
tik
-
tir
-
tkr
-
tlb
-
tlj
-
tly
-
tmc
-
tmf
-
tna
-
tng
-
tnk
-
tnn
-
tnp
-
tnr
-
tnt
-
tob
-
toc
-
toh
-
tom
-
tos
-
tpi
-
tpm
-
tpp
-
tpt
-
trc
-
tri
-
trn
-
trs
-
tso
-
tsz
-
ttc
-
tte
-
ttq-script_tifinagh
-
tue
-
tuf
-
tuk-script_arabic
-
tuk-script_latin
-
tuo
-
tur
-
tvw
-
twb
-
twe
-
twu
-
txa
-
txq
-
txu
-
tye
-
tzh-dialect_bachajon
-
tzh-dialect_tenejapa
-
tzj-dialect_eastern
-
tzj-dialect_western
-
tzo-dialect_chamula
-
tzo-dialect_chenalho
-
ubl
-
ubu
-
udm
-
udu
-
uig-script_arabic
-
uig-script_cyrillic
-
ukr
-
umb
-
unr
-
upv
-
ura
-
urb
-
urd-script_arabic
-
urd-script_devanagari
-
urd-script_latin
-
urk
-
urt
-
ury
-
usp
-
uzb-script_cyrillic
-
uzb-script_latin
-
vag
-
vid
-
vie
-
vif
-
vmw
-
vmy
-
vot
-
vun
-
vut
-
wal-script_ethiopic
-
wal-script_latin
-
wap
-
war
-
waw
-
way
-
wba
-
wlo
-
wlx
-
wmw
-
wob
-
wol
-
wsg
-
wwa
-
xal
-
xdy
-
xed
-
xer
-
xho
-
xmm
-
xnj
-
xnr
-
xog
-
xon
-
xrb
-
xsb
-
xsm
-
xsr
-
xsu
-
xta
-
xtd
-
xte
-
xtm
-
xtn
-
xua
-
xuo
-
yaa
-
yad
-
yal
-
yam
-
yao
-
yas
-
yat
-
yaz
-
yba
-
ybb
-
ycl
-
ycn
-
yea
-
yka
-
yli
-
yor
-
yre
-
yua
-
yue-script_traditional
-
yuz
-
yva
-
zaa
-
zab
-
zac
-
zad
-
zae
-
zai
-
zam
-
zao
-
zaq
-
zar
-
zas
-
zav
-
zaw
-
zca
-
zga
-
zim
-
ziw
-
zlm
-
zmz
-
zne
-
zos
-
zpc
-
zpg
-
zpi
-
zpl
-
zpm
-
zpo
-
zpt
-
zpu
-
zpz
-
ztq
-
zty
-
zul
-
zyb
-
zyp
-
zza
Model details
-
Developed by:
Vineel Pratap et al.
-
Model type:
Multi-Lingual Automatic Speech Recognition model
-
Language(s):
1000+ languages, see
supported languages
-
License:
CC-BY-NC 4.0 license
-
Num parameters
: 1 billion
-
Audio sampling rate
: 16,000 kHz
-
Cite as:
@article{pratap2023mms,
title={Scaling Speech Technology to 1,000+ Languages},
author={Vineel Pratap and Andros Tjandra and Bowen Shi and Paden Tomasello and Arun Babu and Sayani Kundu and Ali Elkahky and Zhaoheng Ni and Apoorv Vyas and Maryam Fazel-Zarandi and Alexei Baevski and Yossi Adi and Xiaohui Zhang and Wei-Ning Hsu and Alexis Conneau and Michael Auli},
journal={arXiv},
year={2023}
}
Additional Links