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metadata
language_creators:
  - crowdsourced
  - expert-generated
  - machine-generated
language:
  - afr
  - sqi
  - amh
  - ara
  - aze
  - bel
  - ben
  - bul
  - cat
  - ceb
  - ces
  - kur
  - cym
  - dan
  - deu
  - ell
  - eng
  - epo
  - est
  - eus
  - fin
  - fra
  - gla
  - gle
  - glg
  - guj
  - hat
  - hau
  - heb
  - hin
  - hun
  - hye
  - ibo
  - ind
  - isl
  - ita
  - jav
  - jpn
  - kan
  - kat
  - kaz
  - mon
  - khm
  - kir
  - kor
  - lao
  - lit
  - ltz
  - lav
  - mal
  - mar
  - mkd
  - mlt
  - mri
  - mya
  - nld
  - nor
  - nep
  - sot
  - pus
  - pes
  - mlg
  - pol
  - por
  - ron
  - rus
  - sin
  - slk
  - slv
  - smo
  - sna
  - snd
  - som
  - spa
  - srp
  - sun
  - swe
  - swa
  - tam
  - tel
  - tgk
  - tha
  - tur
  - ukr
  - urd
  - uzb
  - vie
  - xho
  - yid
  - yor
  - zho
  - msa
  - zul
  - ace
  - bjn
  - kas
  - kau
  - min
  - mni
  - taq
  - nso
license: apache-2.0
multilinguality:
  - multilingual
size_categories:
  - 10K<n<100K
source_datasets:
  - original
  - extended
task_categories:
  - text-generation
pretty_name: Aya Evaluation Suite
dataset_info:
  - config_name: aya_human_annotated
    features:
      - name: id
        dtype: int64
      - name: inputs
        dtype: string
      - name: targets
        dtype: string
      - name: language
        dtype: string
      - name: script
        dtype: string
    splits:
      - name: test
        num_bytes: 1624958
        num_examples: 1750
    download_size: 974483
    dataset_size: 1624958
  - config_name: dolly_human_edited
    features:
      - name: id
        dtype: int64
      - name: inputs
        dtype: string
      - name: targets
        dtype: string
      - name: language
        dtype: string
      - name: script
        dtype: string
      - name: source_id
        dtype: int64
    splits:
      - name: test
        num_bytes: 1219111
        num_examples: 1200
    download_size: 602117
    dataset_size: 1219111
  - config_name: dolly_machine_translated
    features:
      - name: id
        dtype: int64
      - name: inputs
        dtype: string
      - name: targets
        dtype: string
      - name: language
        dtype: string
      - name: script
        dtype: string
      - name: source_id
        dtype: int64
    splits:
      - name: test
        num_bytes: 39679355
        num_examples: 23800
    download_size: 20100505
    dataset_size: 39679355
configs:
  - config_name: aya_human_annotated
    data_files:
      - split: test
        path: aya_human_annotated/test-*
  - config_name: dolly_human_edited
    data_files:
      - split: test
        path: dolly_human_edited/test-*
  - config_name: dolly_machine_translated
    data_files:
      - split: test
        path: dolly_machine_translated/test-*

Aya Header

Dataset Summary

Aya Evaluation Suite contains a total of 25,750 open-ended conversation-style prompts to evaluate multilingual open-ended generation quality.
To strike a balance between language coverage and the quality that comes with human curation, we create an evaluation suite that includes:

  1. human-curated examples in 7 languages (tur,eng,yor,arb,zho,por,tel) → aya-human-annotated.
  2. machine-translations of handpicked examples into 101 languages → dolly-machine-translated.
  3. human-post-edited translations into 6 languages (hin,srp,rus,fra,arb,spa) → dolly-human-edited.

  • Curated by: Contributors of Aya Open Science Intiative, professional annotators, and synthetic generation
  • Language(s): 101 languages
  • License: Apache 2.0
  • Aya Datasets Family:
    Name Explanation
    aya_dataset Human-annotated multilingual instruction finetuning dataset, comprising over 204K instances across 65 languages.
    aya_collection Created by applying instruction-style templates from fluent speakers to 44 datasets, including translations of 19 instruction-style datasets into 101 languages, providing 513M instances for various tasks.
    aya_evaluation_suite A diverse evaluation set for multilingual open-ended generation, featuring 250 culturally grounded prompts in 7 languages, 200 translated prompts in 24 languages, and human-edited versions selected for cross-cultural relevance from English Dolly in 6 languages.

Dataset

The Aya Evaluation Suite includes the following subsets:

  1. aya-human-annotated: 250 original human-written prompts in 7 languages each.
  2. dolly-machine-translated: 200 human-selected prompts from databricks-dolly-15k , automatically translated with the NLLB model from English into 101 languages (114 dialects in total).
  3. dolly-human-edited: 200 dolly-machine-translated prompts post-edited by fluent speakers for 6 languages.

Load with Datasets

To load this dataset consisting of both prompt-completions and demographics data with datasets, you'll just need to install Datasets as pip install datasets --upgrade and then use the following code:

from datasets import load_dataset

aya_eval = load_dataset("CohereForAI/aya_evaluation_suite", "dataset")

Data Fields

  • id: Unique id of the data point.
  • inputs: Prompt or input to the language model.
  • targets: Completion or output of the language model. (Not applicable for dolly-human-edited)
  • language: The language of the prompt and completion.
  • script: The writing system of the language.
  • source_id: Corresponding original row index from the databricks-dolly-15k dataset (Field applicable only for subsets dolly-machine-translated & dolly-human-edited)

Data Instances

Example data instances from the Aya Evaluation Suite subsets are listed in the toggled sections below.

aya-human-annotated
{
"id": 42,
"inputs": "What day is known as Star Wars Day?",
"targets": "May 4th (May the 4th be with you!)",
"language": "eng",
"script": "Latn",
}

Dolly-machine-translated and dolly-human-edited

  • These two subsets are parallel datasets (data instances can be mapped using the id).
  • Note that in the dolly-machine-translated subset, we also include the original English subset (id 1-200) that is translated into 101 languages. Furthermore, the field id can be used to filter out the translation of the same data instance across the languages.
  • The source_id field contains the corresponding original row index from the databricks-dolly-15k dataset.
    dolly-machine-translated
    {
    "id": 2,
    "inputs": "How to escape from a helicopter trapped in water ?",
    "targets": "If you are ever trapped inside a helicopter while submerged in water, it’s best to try and remain calm until the cabin is completely underwater. It’s better to wait for pressure to be equalized, before you try to open the door or break the glass to escape.",
    "language": "eng",
    "script": "Latn",
    "source_id": 6060,
    }
    
    dolly-human-edited
    {
    "id": 2,
    "inputs": "Comment peut-on s'échapper d'un hélicoptère piégé dans l'eau ?",
    "targets": "-",
    "language": "fra",
    "script": "Latn",
    "source_id": 6060,
    }
    

Statistics

The toggled table below lists the breakdown of languages in each subset.

Languages

aya-human-annotated
ISO Code Language Resources
tel Telugu Low
yor Yorùbá Low
arb Arabic High
tur Turkish High
por Portuguese High
zho Chinese (Simplified) High
eng English High
dolly-machine-translated
ISO Code Language Resources
ace Achinese Low
afr Afrikaans Mid
amh Amharic Low
ara (arb, acm, acq, aeb, ajp, apc, ars, ary & arz) Arabic (Standard, Gelet Iraqi, Ta'izzi-Adeni, Tunisian, South Levantine, North Levantine, Najdi, Moroccan & Egyptian) High
aze (azb & azj) Azerbaijani (South & North) Low
bel Belarusian Mid
ben Bengali Mid
bjn Banjar Low
bul Bulgarian Mid
cat Catalan High
ceb Cebuano Mid
ces Czech High
cym Welsh Low
dan Danish Mid
deu German High
ell Greek Mid
eng English High
epo Esperanto Low
est Estonian Mid
eus Basque High
fin Finnish High
fra French High
gla Scottish Gaelic Low
gle Irish Low
glg Galician Mid
guj Gujarati Low
hat Haitian Creole Low
hau Hausa Low
heb Hebrew Mid
hin Hindi High
hun Hungarian High
hye Armenian Low
ibo Igbo Low
ind Indonesian Mid
isl Icelandic Low
ita Italian High
jav Javanese Low
jpn Japanese High
kan Kannada Low
kas Kashmiri Low
kat Georgian Mid
kau (knc) Kanuri (Central) Low
kaz Kazakh Mid
khm Khmer Low
kir Kyrgyz Low
kor Korean High
kur (ckb & kmr) Kurdish (Central & Northern) Low
lao Lao Low
lav (lvs) Latvian (Standard) Mid
lit Lithuanian Mid
ltz Luxembourgish Low
mal Malayalam Low
mar Marathi Low
min Minangkabau Low
mkd Macedonian Low
mlg (plt) Malagasy (Plateau) Low
mlt Maltese Low
mni Manipuri Low
mon (khk) Mongolian (Khalkha) Low
mri Maori Low
msa (zsm) Malay (Standard) Mid
mya Burmese Low
nep (npi) Nepali Low
nld Dutch High
nor (nno & nob) Norwegian (Nynorsk & Bokmål) Low
nso Northern Sotho Low
pes Persian High
pol Polish High
por Portuguese High
pus (pbt) Pashto (Southern) Low
ron Romanian Mid
rus Russian High
sin Sinhala Low
slk Slovak Mid
slv Slovenian Mid
smo Samoan Low
sna Shona Low
snd Sindhi Low
som Somali Low
sot Southern Sotho Low
spa Spanish High
sqi (als) Albanian (Tosk) Low
srp Serbian High
sun Sundanese Low
swa (swh) Swahili (Coastal) Low
swe Swedish High
tam Tamil Mid
taq Tamasheq Low
tel Telugu Low
tgk Tajik Low
tha Thai Mid
tur Turkish High
ukr Ukrainian Mid
urd Urdu Mid
uzb (uzn) Uzbek (Nothern) Mid
vie Vietnamese High
xho Xhosa Low
yid (ydd) Yiddish (Eastern) Low
yor Yoruba Low
zho & yue Chinese (Simplified & Yue) High
zul Zulu Low
dolly-human-edited
ISO Code Language Resources
arb Arabic High
fra French High
hin Hindi High
rus Russian High
spa Spanish High
srp Serbian High

Motivations & Intentions

  • Curation Rationale: This evaluation suite is tailored to test the generation quality of multilingual models, with the aim of balancing language coverage and human-sourced quality. It covers prompts originally written in each language, as well as English-centric translated and manually curated or edited prompts for a linguistically broad but rich testbed. The list of languages was established from mT5 and aligned with the annotators’ language list and the NLLB translation model.

Known Limitations

  • Translation Quality: Note that the expressiveness of the dolly-machine-translated subset is limited by the quality of the translation model and may adversely impact an estimate of ability in languages where translations are not adequate. If this subset is used for testing, we recommend it be paired and reported with the professionally post-edited dolly-human-edited subset or the aya-human-annotated set, which also only covers 7 languages but is entirely created by proficient target language speakers.

Additional Information

Provenance

  • Methods Used: combination of original annotations by volunteers, automatic translation, and post-editing of translations by professional annotators.
  • Methodology Details:
    • Source: Original annotations and translations and post-edits of Dolly
    • Platform: Aya Annotation Platform
    • Dates of Collection: Jun 2023 - Dec 2023

Dataset Version and Maintenance

  • Maintenance Status: Actively Maintained
  • Version Details:
    • Current version: 1.0
    • Last Update: 02/2024
    • First Release: 02/2024
  • Maintenance Plan: No updates planned.

Authorship

Licensing Information

This dataset can be used for any purpose, whether academic or commercial, under the terms of the Apache 2.0 License.

Citation Information

@misc{singh2024aya,
      title={Aya Dataset: An Open-Access Collection for Multilingual Instruction Tuning}, 
      author={Shivalika Singh and Freddie Vargus and Daniel Dsouza and Börje F. Karlsson and Abinaya Mahendiran and Wei-Yin Ko and Herumb Shandilya and Jay Patel and Deividas Mataciunas and Laura OMahony and Mike Zhang and Ramith Hettiarachchi and Joseph Wilson and Marina Machado and Luisa Souza Moura and Dominik Krzemiński and Hakimeh Fadaei and Irem Ergün and Ifeoma Okoh and Aisha Alaagib and Oshan Mudannayake and Zaid Alyafeai and Vu Minh Chien and Sebastian Ruder and Surya Guthikonda and Emad A. Alghamdi and Sebastian Gehrmann and Niklas Muennighoff and Max Bartolo and Julia Kreutzer and Ahmet Üstün and Marzieh Fadaee and Sara Hooker},
      year={2024},
      eprint={2402.06619},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}