Dataset Viewer
Auto-converted to Parquet Duplicate
1567385
int64
2.29M
13.9M
kab
stringclasses
1 value
ⵜⵛⴼⵉⴹ ⴼⵍⵍⵉ ?
stringlengths
2
147k
Tecfiḍ fell-i ?
stringlengths
3
159k
2,294,143
kab
ⵅⴰⵙ ⴷⴷⵓⵏⵉⵜ ⴰ ⵜⵞⵞⵓⵔ ⴷ ⵜⵉⴽⵔⴽⴰⵙ ⴷ ⵜⵄⴽⵎⵉⵏ ⴰⴽⴽⴷ ⵜⵉⵔⴳⴰ ⵓⵔ ⵏⴼⴼⵉⵖ, ⵖⵓⵔⵉ ⵜⵛⴱⵃ ⴷ ⴰⵢⵏ ⴽⴰⵏ.
Xas ddunit-a teččur d tikerkas d tεekmin akked tirga ur neffiɣ, ɣur-i tecbeḥ d ayen kan.
2,294,148
kab
ⵢⵅⴷⵎ ⴽⵔⴰ ⵢⴽⴽⴰ ⵡⴰⵙⵙ.
Yexdem kra yekka wass.
2,294,168
kab
ⵓⵔ ⴱⵖⵉⵖ ⴰⵔⴰ ⴰⴷ ⵜⴻⵜⵜⵡⴰⵙⵙⵏⴹ ⵓⴳⴰⵔ ⵏ ⵡⴰⵏⵏⵛⵜ ⵜⴻⵜⵜⵡⴰⵙⵙⵏⴹ ⵜⵓⵔⴰ.
Ur bɣiɣ ara ad tettwassneḍ ugar n wannect tettwassneḍ tura.
2,294,171
kab
ⵎⵉ ⵜⴼⵓⴽⴽⴹ ⴰⴷⵍⵉⵙ ⵏⵏⵉ ⵙ ⵜⵖⵓⵔⵉ, ⵔⵔ ⵉⵜ ⵖⵔ ⵡⴰⵏⴷⴰ ⵉ ⵜ ⵜⵓⴼⵉⴹ.
Mi tfukkeḍ adlis-nni s tɣuri, err-it ɣer wanda i t-tufiḍ.
2,294,172
kab
ⴷ ⴰⵖⵉⵍⵉⴼ!
D aɣilif!
2,294,174
kab
ⵢⴷⴷⴰ ⵖⵔ ⴷⵉⵏ ⴷⴳ ⵓⵎⵓⵔ ⵏ ⴱⴰⴱⴰⵙ.
Yedda ɣer din deg umur n baba-s.
2,294,175
kab
ⵓⴳⴳⴰⴷⵖ ⴰⴷ ⴷ ⵢⵡⵡⵜ ⵓⴳⴼⴼⵓⵔ ⴰⵣⴽⴽⴰ.
Uggadeɣ ad d-yewwet ugeffur azekka.
2,294,178
kab
ⴷ ⴰⵛⵓ ⵉ ⵜⴱⵖⴰ?
D acu i tebɣa?
2,294,187
kab
ⴷ ⴰⵟⴰⴽⵙⵉ ⵉ ⵟⵟⴼⵖ ⵎⵉ ⵔⵣⵉⵖ ⵙ ⴰⵏⴰⴼⴰⴳ.
D aṭaksi i ṭṭfeɣ mi rziɣ s anafag.
2,294,197
kab
ⴷⴷⵉⵖ ⴷⴳ ⵓⵟⴰⴽⵙⵉ ⵖⵔ ⵓⵏⴰⴼⴰⴳ.
Ddiɣ deg uṭaksi ɣer unafag.
2,294,199
kab
ⵙⵏⵏⴷⵜ ⵖⵔ ⵍⵃⵉⴹ!
Senndet ɣer lḥiḍ!
2,294,206
kab
ⴰⵙⴳⴳⴰⵙ ⴽⴰⵏ ⵙⴳⵎⵉ ⵉ ⴷ ⵓⵖⴻⵖ ⴰⵙⵍⴽⵉⵎ ⵡⵔⵄⴰⴷ ⴰⵔⴰ ⵢⴵⴵⴰ ⵜ ⵡⴰⴽⵓⴷ.
Aseggas kan segmi i d-uɣeɣ aselkim werɛad ara yeǧǧa-t wakud.
2,294,209
kab
ⴷ ⵢⵎⵎⴰ ⵄⵣⵣⵓ ⵉ ⴷ ⵉⵢⵉ ⵉⵅⵍⵍⵚⵏ ⵔⵔⴽⴱⴰ ⵖⵔ Boston.
D yemma ɛezzu i d iyi-ixellṣen rrekba ɣer Boston.
2,294,211
kab
ⴷ ⵏⴽⴽ ⵉ ⵢⵍⵍⴰⵏ ⴷⴳ ⵓⵖⵔⴱⴰⵣ, ⵉⴹⵍⵍⵉ.
D nekk i yellan deg uɣerbaz, iḍelli.
2,294,220
kab
ⵜⵍⵍⴰ ⵜⵡⴰⵖⵉⵜ ⵢⵓⴳⴰⵔⵏ ⵜⵉⴷⴷⵔⵖⵍⵜ?
Tella twaɣit yugaren tidderɣelt?
2,294,226
kab
ⵓⵍⴰ ⴷ ⵏⵜⵜⴰ ⵖⵓⵔⵙ ⵢⵉⵡⵏ.
Ula d netta ɣur-s yiwen.
2,294,233
kab
ⵏⵏⵉⵖ ⴰⴽ ⵓⵔ ⵜⵜⴳ ⴰⵔⴰ ⴰⵢⴰ.
Nniɣ-ak ur tteg ara aya.
2,294,242
kab
ⵢⵢⴰ ⵏ ⴰⴷ ⵏⴼⴼⵖ ⴰⴷ ⴷ ⵏⵞⵞ!
Yya-n ad neffeɣ ad d-nečč!
2,294,246
kab
ⴰⵟⴰⵙ ⵉ ⵢⵎⵎⵓⵜⵏ.
Aṭas i yemmuten.
2,294,254
kab
ⵉⵙⴰⵍⵉ ⴰ ⴷ ⵜⵉⴽⵔⴽⴰⵙ.
Isali-a d tikerkas.
2,294,269
kab
ⵏⵏⴰⵏⵜ ⴰⵙ ⴰⵣⵓⵍ ⵉ Sophie.
Nnant-as azul i Sophie.
2,294,275
kab
ⴳⴰⵔⴰⵏⵖ ⴽⴰⵏ; ⵜⵃⵎⵎⵍⴹ ⵓⵍⵜⵎⴰ?
Gar-aneɣ kan; tḥemmleḍ uletma?
2,294,281
kab
ⵜⴰⴽⵏⵉⵡⵉⵏ ⵜⵎⵢⴰⴽⴽⵏⵜ ⴰⵏⵣⵉ ⴰⵎ ⵙⵏⴰⵜ ⵏ ⵜⵎⵇⵡⴰ ⵏ ⵡⴰⵎⴰⵏ.
Takniwin temyakkent anzi am snat n tmeqwa n waman.
2,294,285
kab
ⴽⵏⵓ!
Knu!
2,294,288
kab
ⴰⵏⵣ!
Anez!
2,294,289
kab
ⴷ ⵜⴰⴳⴳⴰⵔⴰ.
D taggara.
2,294,296
kab
ⴰⴷ ⵜⵞⵞⴹ ⴰⵙⵍⵎ ⵉ ⵉⵎⵏⵙⵉ?
Ad teččeḍ aslem i imensi?
2,294,299
kab
ⴷⴳ ⵙⵉⵏ ⵉⵙⴳⴳⴰⵙⵏ ⴰ, ⵜⴰⵎⴷⵉⵏⵜ ⴰ ⴰⵟⴰⵙ ⵉ ⵜⴱⴷⴷⵍ.
Deg sin iseggasen-a, tamdint-a aṭas i tbeddel.
2,294,309
kab
ⵜⵓⵔⴰ ⵍⴰ ⴼⵀⵀⵎⵖ ⴰⵢⵏ ⵟⵓⵎ ⵉⵃⵎⵎⵍ Boston.
Tura la fehhmeɣ ayen Tom iḥemmel Boston.
2,294,320
kab
ⵓⵔⵔⵉⴼ ⵢⵙⵙⴰⵙⴰⵢ ⴷ ⴰⵟⵟⴰⵏ, ⵜⴰⴹⵙⴰ ⵜⵙⵙⵖⵣⴰⴼ ⴷⵉ ⵜⵓⴷⵔⵜ.
Urrif yessasay-d aṭṭan, taḍsa tesseɣzaf di tudert.
2,294,332
kab
ⵜⵙⵙⴰⵡⵍⴹ ⴰⵙ ⵉ ⵡⵎⴷⴷⴰⴽⵍ ⵉⴽ ⵢⵍⵍⴰⵏ ⴷⴳ ⴽⴰⵏⴰⴷⴰ?
Tessawleḍ-as i wemddakel-ik yellan deg Kanada?
2,294,341
kab
ⴽⵓⴽⵔⴰⵖ ⵜⵓⵖⴰⵍⵉⵏ ⵙ ⴰⵅⴷⴷⵉⵎ ⴰⵛⴽⵓ ⵙⴹⵉⵙ ⵉⵙⴳⴳⴰⵙⵏ ⴰⵢⴰ ⵓⵔ ⵅⴷⵉⵎⵖ.
Kukraɣ tuɣalin s axeddim acku sḍis iseggasen aya ur xdimeɣ.
2,294,344
kab
ⵙ ⵓⵣⵏⵣⵉ ⵏ ⵉⵊⴵⴵⵉⴳⵏ ⵉ ⴷ ⵜⵙⵙⴰⵙⴰⵢ ⴰⵖⵔⵓⵎ ⵉⵙ ⵜⵇⵛⵉⵛⵜ ⵜⴰⵎⵖⴱⵓⵏⵜ.
S uzenzi n ijeǧǧigen i d-tessasay aɣrum-is teqcict tameɣbunt.
2,294,346
kab
ⴳⴳⵓⵎⵎⴰⵖ ⴰⴷ ⴰⵎⵏⵖ.
Ggummaɣ ad amneɣ.
2,294,348
kab
ⴰⵏⵡⴰ ⵛⵛⵔⴰⴱ ⵉ ⵜⵃⵎⵎⵍⴹ?
Anwa ccrab i tḥemmleḍ?
2,294,350
kab
ⵏⴽⴽ ⴷⴰⵖⵏ ⵜⵜⵡⴰⵙⵏⵓⴱⴳⵖ ⴷ ⵖⵔ ⴷⴰ.
Nekk daɣen ttwasnubgeɣ-d ɣer da.
2,294,352
kab
ⵢⵟⵟⴼ ⴰⵇⵔⵓⵊ ⵏⵏⵉ ⵙⴳ ⵓⴼⵓⵙ.
Yeṭṭef aqruj-nni seg ufus.
2,294,366
kab
ⵏⵉⵖ ⵓⵔ ⴷ ⵜⴰ ⵉ ⴷ ⵜⴰⵎⴰⵛⵉⵏⵜ ⵜⴰⵏⴳⴳⴰⵔⵓⵜ?
Niɣ ur d ta i d tamacint taneggarut?
2,294,370
kab
ⵎⴰ ⵜⵎⵎⵓⴳⴳⵔⴹ ⴷ ⵓⵔⵙⵓ, ⵔⵔ ⵉⵎⴰⵏ ⵉⴽ ⵜⵎⵎⵓⵜⴹ.
Ma temmuggreḍ-d ursu, err iman-ik temmuteḍ.
2,294,372
kab
ⴰⵟⴰⵙ ⵏ ⵍⵇⴷⵉⵛ ⵉ ⴷ ⵉⵢⵉ ⵢⴳⴳⵓⵏⵉⵏ.
Aṭas n leqdic i d iyi-yeggunin.
2,294,374
kab
ⵟⵓⵎ ⵉⵙⵙⵡⵡ ⴷ ⴰⴼⵏⴵⴰⵍ ⵏ ⵍⴰⵜⴰⵢ.
Tom isseww-d afenǧal n latay.
2,294,377
kab
ⵢⴰⵍ ⵉⵎⴰⵍⴰⵙ ⵢⵜⵜⴰⵔⵓ ⵢⵉ ⴷ ⵙⴳ ⵍⴰⵍⵎⴰⵏ.
Yal imalas yettaru-yi-d seg Lalman.
2,294,382
kab
ⵃⵓⵍⴼⴰⵖ ⴰⵎ ⴰⴽⴽⵏ ⵢⵍⵍⴰ ⴽⵔⴰ ⵏⵏⵉⴹⵏ ⵉⵖⴼ ⵜⴻⵜⵜⵅⵎⵎⵉⵎⴹ.
Ḥulfaɣ am akken yella kra-nniḍen iɣef tettxemmimeḍ.
2,294,383
kab
ⴰⴳⴷⵉⵍ ⵢⵇⵇⵍ ⴷ ⴰⴱⵔⴽⴰⵏ.
Agdil yeqqel d aberkan.
2,294,389
kab
ⵓⵔ ⴷ ⵉⵢⵉ ⵜⵜⴰⵔⵔⴰ ⴰⵔⴰ ⴷ ⴰⵇⵔⵓⵊ.
Ur d iyi-ttarra ara d aqruj.
2,294,394
kab
ⴰⵏⵡⴰ ⴰⵔⴰ ⵢⵉ ⴷ ⵢⴰⵍⵍⵏ?
Anwa ara yi-d-yallen?
2,294,400
kab
ⵓⵔ ⵢⵍⵍⵉ ⴷ ⵓⵏⴳⵉⴼ ⵉⵡⴰⴽⴽⵏ ⴰⴷ ⵢⴰⵎⵏ ⵜⴰⵎⴰⵛⴰⵀⵓⵜ ⴰ.
Ur yelli d ungif iwakken ad yamen tamacahut-a.
2,294,410
kab
ⴰⴷ ⴽ ⵉⵏⵉⵖ ⵜⵉⴷⵜ, ⵜⵉⴽⵜⵉ ⴽ ⵓⵔ ⵜⴼⴼⵉⵖ ⴰⵔⴰ ⴼⵍⵍⵉ.
Ad k-iniɣ tidet, tikti-k ur teffiɣ ara fell-i.
2,294,411
kab
ⵡⵔⴵⵉⵏ ⵙⵍⵉⵖ ⵉ ⵜⵣⵍⵉⵜ ⵉⵙ.
Werǧin sliɣ i tezlit-is.
2,294,423
kab
ⵢⵓⵙⴰ ⴷ ⵖⵔ ⵊⴰⵒⵓ ⵉⵡⴰⴽⴽⵏ ⴰⴷ ⵉⵖⵔ ⵜⴰⵊⴰⵒⵓⵏⵉⵜ.
Yusa-d ɣer Japu iwakken ad iɣer tajapunit.
2,294,428
kab
ⵉⵍⵎⵥⵢⵏ ⵏ ⵜⵎⵓⵔⵜ ⵏⵏⵖ ⵓⵔ ⴷ ⵛⵍⵉⴳⵏ ⴰⵔⴰ ⴷⵉ ⵜⵙⵔⵜⵉⵜ.
Ilmeẓyen n tmurt-nneɣ ur d-cligen ara di tsertit.
2,294,432
kab
ⴽⵔⴰ ⵏ ⵡⴰⵎⴰⵏ, ⵜⵜⵅⵉⵍ ⴽ.
Kra n waman, ttxil-k.
2,294,433
kab
ⴰⵀⴰⵜ ⵉⵡⴰⵍⴰ ⵜ.
Ahat iwala-t.
2,294,446
kab
ⵓⴳⴳⴰⴷⵖ ⴰⵎⵎⵔ ⵓⵔ ⴷ ⵉⵜⵜⵇⴰⴷⴷ ⴰⵔⴰ ⵡⴰⴽⵓⴷ ⴰⴽⴽⵏ ⴰⴷ ⵜⵏ ⴼⴰⴽⴽⵖ.
Uggadeɣ ammer ur d-ittqadd ara wakud akken ad ten-fakkeɣ.
2,294,451
kab
ⵢⴳⴳⵓⴵ ⴷ ⵙⴳ ⵡⵅⵅⴰⵎ ⵏ ⵉⵎⴰⵡⵍⴰⵏ ⵉⵙ.
Yegguǧ-d seg wexxam n imawlan-is.
2,294,457
kab
ⵎⵓⵇⵍⵖ ⴰⵖⵔⵙⵉⵡ ⴷⵖⴰ ⵉⵎⵓⵇⵍ ⵉⵢⵉ ⴷ ⵓⵍⴰ ⴷ ⵏⵜⵜⴰ.
Muqleɣ aɣersiw dɣa imuqel-iyi-d ula d netta.
2,294,464
kab
ⴰⵏⵙⵉ ⴽⵎ ⴰ ⴽⴰⵔⵏ?
Ansi-kem a Karen?
2,294,468
kab
ⴰⵇⵛⵉⵛ ⵢⵍⵍⴰ ⵢⵥⵥⵍ ⵉⵙⵍⵍ ⵉ ⵔⴰⴷⵢⵓ.
Aqcic yella yeẓẓel isell i radyu.
2,294,474
kab
ⴰⵏⵡⴰ ⵉ ⴷ ⴰⴼⵏⴵⴰⵍ ⵉⴽ?
Anwa i d afenǧal-ik?
2,294,477
kab
ⵜⴰⵡⵡⵓⵔⵜ ⵉⵙⵙⴼⴽ ⴰⴷ ⵜⵉⵍⵉ ⵜⵍⵍⵉ ⵏⵖ ⵜⵎⴷⵍ.
Tawwurt issefk ad tili telli neɣ temdel.
2,294,484
kab
ⴰ ⵙⴰⵎ, ⴷ ⴰⵛⵓ ⵍⴰ ⵜⴻⵜⵜⴳⴹ?
A Sam, d acu la tettgeḍ?
2,294,488
kab
ⴰⵢⵖⵔ ⵉ ⵜⵄⵢⵉⴹ ⴰⴽⴽ ⴰⵏⵏⵛⵜ ⴰ?
Ayɣer i teεyiḍ akk annect-a?
2,294,491
kab
ⵇⵇⵉⵎⵖ, ⵇⵇⴰⵔⵖ ⴰⴷⵍⵉⵙ.
Qqimeɣ, qqareɣ adlis.
2,294,493
kab
ⵊⵉⵒⴰⵜ ⵜⵉⵡⵣⵣⵍⴰⵏⵉⵏ ⵢⴵⴵⴰ ⵜⵏⵜ ⵡⴰⴽⵓⴷ.
Jipat tiwezzlanin yeǧǧa-tent wakud.
2,294,498
kab
ⵣⴳⵔⵏ ⴰⴳⴰⵔⴰⵡ ⴰⵟⵍⴰⵏⵜⵉⴽ.
Zegren Agaraw Aṭlantik.
2,294,501
kab
ⴰⵟⴰⵙ ⵉ ⵄⵜⵜⴱⵖ.
Aṭas i εettbeɣ.
2,294,507
kab
ⵜⵜⴰⵔⴳⵓⵖ ⴽ ⵢⴰⵍ ⵉⴹ.
Ttarguɣ-k yal iḍ.
2,294,528
kab
ⴰⵍⵍⵏ ⵉⵡ ⴷ ⵜⵉⴱⵔⴽⴰⵏⵉⵏ.
Allen-iw d tiberkanin.
2,294,531
kab
ⵍⵎⵎⵔ ⴰⴷ ⵜⵔⵓⵃⴹ, ⴰⴷ ⴷⴷⵓⵏ ⴰⴽⴽ ⵢⵉⴷⴽ.
Lemmer ad truḥeḍ, ad ddun akk yid-k.
2,294,532
kab
ⴰⵀ, ⵙⵙⵓⵔⴼ ⵉⵢⵉ.
Ah, ssuref-iyi.
2,294,534
kab
ⴰⵙⵙ ⴰ ⴷ ⴰⵙⵙ ⵏⵏⵖ ⴰⵏⴳⴳⴰⵔⵓ ⵏ ⵉⵎⵓⵔⴰⵙ.
Ass-a d ass-nneɣ aneggaru n imuras.
2,294,535
kab
ⵎⵍⵎⵉ ⴽⴰⵏ ⵉ ⴷ ⵢⴹⵔⴰ ⵡⴰⵢⴰ.
Melmi kan i d-yeḍra waya.
2,294,536
kab
ⵓⵞⵞⵉ ⵢⴰ ⵢⵍⵍⴰ ⴷⴳⵙ ⵡⴽⵙⵓⵎ?
Učči-ya yella deg-s weksum?
2,294,542
kab
ⵙⵔⴽⴰⴷ ⵉⵎⴰⵏ ⵉⴽ ⵎⵉ ⴰⵔⴰ ⵜⵜⵎⵙⵍⴰⵢⵖ.
Serkad iman-ik mi ara ttmeslayeɣ.
2,294,544
kab
ⵓⵔ ⵣⵎⵉⵔⵖ ⴰⴷ ⵎⵎⵙⵍⴰⵢⵖ ⴷ ⵢⵎⴷⴰⵏⴻⵏ.
Ur zmireɣ ad mmeslayeɣ d yemdanen.
2,294,548
kab
ⵙⵉⴽⴽⴷ ⵖⵔ ⴷⴼⴼⵉⵔ!
Sikked ɣer deffir!
2,294,551
kab
ⵡⴰⵍⴰⵖ ⵟⵓⵎ ⵢⵜⵜⵓⵔⴰⵔ ⵜⵏⵏⵉⵙ.
Walaɣ Tom yetturar tennis.
2,294,555
kab
ⴰⴷ ⵉⵢⵉ ⵜⵏⵖ ⵜⵎⵟⵟⵓⵜ ⵉⵡ.
Ad iyi-tneɣ tmeṭṭut-iw.
2,294,562
kab
ⵖⵓⵔⵙ ⴰⵟⴰⵙ ⵏ ⵢⴷⵔⵉⵎⵏ.
Ɣur-s aṭas n yedrimen.
2,294,563
kab
ⵢⵉⵡⵏ ⵓⵔ ⵢⵥⵔⵉ ⴷ ⴰⵛⵓ ⵢⴹⵔⴰⵏ ⵢⵉⴷⵙ.
Yiwen ur yeẓri d acu yeḍran yid-s.
2,294,567
kab
ⴷ ⴰⵛⵓ ⵉ ⴷ ⴰⵙ ⵜⴻⵜⵜⴰⴽⴽⴹ ⵉ ⵡⵢⴷⵉ ⴽ ⴰⴷ ⵜ ⵢⵞⵞ?
D acu i d as-tettakkeḍ i weydi-k ad t-yečč?
2,294,568
kab
ⵄⵔⴹⵖ ⴰⴷ ⵜⵜⵓⵖ ⵉⵎⵟⵟⴰⵡⵏ ⵉⵏⵙ.
Ɛerḍeɣ ad ttuɣ imeṭṭawen-ines.
2,294,572
kab
ⴰⵢ ⵜⴻⵜⵜⵖⴰⵡⴰⵍⴹ ⴷⵉ ⵜⵉⴽⵍⵉ!
Ay tettɣawaleḍ di tikli!
2,294,574
kab
ⴰⵏⵡⴰ ⵉ ⴷ ⴰⴽ ⵜ ⵉⴷ ⵢⵏⵏⴰⵏ?
Anwa i d ak-t-id-yennan?
2,294,579
kab
ⴰⵢⴰ ⵉⵄⴷⴷⴰ ⵜⵉⵍⴰⵙ.
Aya iεedda tilas.
2,294,581
kab
ⵙⴰⵏⵉ ⵉ ⵜⵔⵓⵃⵎ?
Sani i truḥem?
2,294,585
kab
ⴰⵣⴰⵍ ⵏ ⵙⵉⵏ ⵏ ⵉⵎⴰⵍⴰⵙⵏ ⵓⵔ ⴷ ⵜⵖⵍⵉ ⵜⵉⵇⵇⵉⵜ.
Azal n sin n imalasen ur d-teɣli tiqqit.
2,294,587
kab
ⵉⵖⵉⵍ ⵏⵜⵜⵓ ⵜ ⵎⴰⴹⵉ.
Iɣil nettu-t maḍi.
2,294,589
kab
ⵣⴳⵉⵖ ⵜⴻⵜⵜⵓⵖ ⵉⵙⵎ ⵉⵙ.
Zgiɣ tettuɣ isem-is.
2,294,592
kab
ⵜⴳⵣⵎ ⵜⵓⵇⵇⵏⴰ ⵡ ⵏ ⵉⵏⵜⵔⵏⵜ.
Tegzem tuqqna-w n Internet.
2,294,593
kab
ⴰⵏⵉⴷⴰ ⵉ ⵣⵎⵔⵖ ⴰⴷ ⵡⴰⵍⵉⵖ ⵜⵉⵎⵍⵉⵍⵉⵜ ⵏ ⴷⴷⴰⴱⵅ ⵓⴹⴰⵔ.
Anida i zemreɣ ad waliɣ timlilit n ddabex uḍar.
2,294,599
kab
ⵣⵉⴽ ⵜⴰⴼⵔⵉⴽⵜ ⵙⵙⴰⵡⴰⵍⵏ ⴰⵙ ⴰⵎⵏⵥⴰⵡ ⴰⴱⵔⴽⴰⵏ.
Zik Tafrikt ssawalen-as amenẓaw aberkan.
2,294,603
kab
ⵓⵔ ⵙⴰⵡⴹⵖ ⴰⴷ ⵡⴰⵍⵉⵖ!
Ur sawḍeɣ ad waliɣ!
2,294,613
kab
ⵜⵄⵇⵍ ⵉⵜ ⴷⵓⵎⴰⵜⵓ.
Teεqel-it dumatu.
2,294,617
kab
ⴷ ⴰⵛⵓ ⵉ ⵜⵜⵎⵙⵍⴰⵢⵏ ⴷⵉ ⵜⵎⵔⵉⴽ?
D acu i ttmeslayen di Temrik?
2,294,620
kab
ⵓⵖⴻⵖ ⴷ ⵜⴰⵢⵓⴳⴰ ⵏ ⵡⴰⵔⴽⴰⵙⵏ.
Uɣeɣ-d tayuga n warkasen.
2,294,625
kab
ⵓⵔ ⵜⵜⵔⵓⵃⵓ ⵖⵔ ⴷⵉⵏ ⴰⵇⵔⵔⵓ ⵄⵔⵢⴰⵏ.
Ur ttruḥu ɣer din aqerru εeryan.
2,294,626
kab
ⵜⴷⴷⵓⵖ ⵙ ⵉⴷⵉⵙ ⵉⵙ.
Tedduɣ s idis-is.
2,294,628
kab
ⵍⵃⵃⵓⵖ ⵖⵔ ⵜⴰⵎⴰⵙ
Leḥḥuɣ ɣer tama-s
2,294,633
kab
ⴷⴷⵓⵔⵓ ⵓⵔ ⴷ ⵜⴳⵔⵉ ⴷⵉ ⵍⴵⵉⴱ ⵉⵡ.
Dduru ur d-tegri di lǧib-iw.
End of preview. Expand in Data Studio

Dataset Card for Kabyle Latin-to-Tifinagh Parallel Corpus

This dataset provides a parallel corpus of the Kabyle language ($\text{Taqbaylit}$), pairing native Latin-based orthography with automated, context-aware Neo-Tifinagh transliterations. It is built by processing clean source sentences through an algorithmic engine designed to preserve grammar structures and protect foreign loanwords.

Dataset Details

Dataset Sources

  • Repository: [More Information Needed]
  • Source Project: Tatoeba Translation Corpus

Uses

Direct Use

  • Training and fine-tuning machine translation models (e.g., Latin-to-Tifinagh tokenizers).
  • Building automated transliteration tools and orthographic normalizers for Amazigh.

Out-of-Scope Use

This dataset is optimized specifically for standard latin orthography with slight modifications to get clearn Tifinagh orthography version.

Dataset Structure

The dataset consists of a tab-separated values (.tsv) file containing the following fields:

  • Sentence ID: Unique identifier inherited from the Tatoeba database.
  • Language Code: The ISO 639-3 code for Kabyle (kab).
  • Tifinagh Text: The processed Neo-Tifinagh transliteration column.
  • Latin Text: The original source Kabyle sentence written in the standard Latin script.

Dataset Creation

Curation Rationale

While the Kabyle language is widely written using a modified Latin alphabet, Neo-Tifinagh holds official and cultural prominence in the region of North Africa. This dataset bridges the script divide algorithmically, creating a high-fidelity parallel text repository that filters out foreign names and isolates native phonetic behaviors.

Source Data

Data Collection and Processing

The underlying source sentences are pulled from the Kabyle subset of the Tatoeba project. The text was passed through a specialized Python processing pipeline applying several linguistic constraints:

  • Grammatical Suffix Merging: Structural dashes (-) used for indirect objects, prepositions, or kinship suffixes (e.g., fell-ak, baba-s, tama-m) are cleanly removed and merged into a single word token (yielding ⴱⴰⴱⴰⵙ instead of ⴱⴰⴱⴰ ⵙ). All other structural punctuation dashes are globally normalized to spaces.
  • Contextual Schwa ($\mathbf{e}$ / ⴻ) Optimization: The engine automatically strips the schwa () if it appears at the absolute beginning of a word. Internally, it strips when sandwiched between two different consonants, but strictly preserves it between identical consonants.
  • Foreign Word Isolation: To prevent phonetic corruption of loanwords as much as possible, the system flags and skips transliteration entirely (keeping words in Latin script) if a token meets any of these criteria:
    • Contains French/Foreign accented vowels (é, è, à, etc.).
    • Contains the vowel o or O.
    • Terminates with the letter e or E.
    • Is an all-caps acronym (e.g., MRI, M.R.I.).
    • Contains a standalone uppercase letter inside or at the end of a sentence (e.g., vitamins like C).
  • Targeted Bypasses: Standalone instances of high-frequency words like Ait/ait are explicitly targeted to resolve to ⴰⵢⵜ. Ubiquitous name patterns common in Tatoeba text like Tom, tom, Ṭom, and ṭum bypass the foreign letter filters and map directly to ⵟⵓⵎ.
  • Direct Digraph Conversions: Common digraph inputs map explicitly to unified sounds without triggering foreign blocks (sh/ch $\rightarrow$ ⵙⵀ/ⵛⵀ, and ph $\rightarrow$ ).

Who are the source data producers?

The original source sentences are crowdsourced from independent contributors and native speakers on the open-source Tatoeba platform.

Personal and Sensitive Information

The source sentences consist of general conversational text, educational translations, and daily idioms. There is no intentionally collected private, personal, or sensitive information.

Bias, Risks, and Limitations

Because the script relies on a rule-based algorithmic filter to catch foreign structures, exceptional edge cases might slip through:

  • A native word spelling that happens to match an accidental foreign filter rule could remain in Latin text.
  • Unusual foreign names missing the standard vowel markers (o, trailing e, accents) might be forcefully transliterated into Tifinagh incorrectly.

Citation

BibTeX:

@misc{kabyle_latin_tifinagh_2026,
  title={Kabyle Latin-to-Tifinagh Parallel Corpus},
  author={Abdelhaque Id Ali},
  year={2026},
  publisher={Hugging Face Hub}
}
Downloads last month
27