Datasets:
audio audioduration (s) 294 300 | nisqa float64 2.85 2.9 |
|---|---|
2.896 | |
2.846 | |
2.867 |
Yapdo Sample Data
This dataset card shows details about the Yapdo conversational speech corpus by Liva AI (YC S25). This dataset card details information for 30,000+ hours of recordings from 8,000+ speakers across 17 languages, with the rest of the hours still undergoing QA. The source audio is natively recorded with separate speaker channels; the samples here are presented as combined conversations.
The strength of this dataset is its naturalness. Recorded among friends "in-the-wild," it preserves the spontaneity of real dialogue and supports the development of better conversational AI. It also reflects friendly interactions across cultures and captures realistic turn-taking dynamics, which are essential for training models that sound natural.
Dataset Configs
Each config maps to a single directory of audio files with an accompanying metadata.jsonl.
| Group | Configs | Description |
|---|---|---|
| Languages | languages_ar, languages_arz, languages_bn, languages_es, languages_fr, languages_gu, languages_ha, languages_hi, languages_ig, languages_it, languages_kn, languages_pa, languages_pcm, languages_si, languages_sw, languages_ta, languages_te, languages_tl, languages_ur, languages_yo |
A subset of our multilingual speech organized by language code. Metadata: nisqa |
| Accents | accents_Arabic_influenced_English, accents_East_African_English, accents_Filipino_English, accents_General_American, accents_Indian_English, accents_Nigerian_English, accents_South_African_English, accents_West_African_English |
Accent-stratified English speech across 8 accent groups. Metadata: nisqa |
| Full-duplex | full_duplex_backchanneling, full_duplex_interruption_detection, full_duplex_pause_handling, full_duplex_turn_taking |
Recordings with full-duplex benchmark characteristics (backchanneling, interruption, pause handling, turn-taking) |
| Paralinguistics | paralinguistics |
Paralinguistic elements (laughing, singing, elongated words, etc.). For the sake of displaying these elements, we identified emotion-rich segments using Empathic-Insight-Voice-Small since we observed that emotion-rich segments were likely to contain such elements. Metadata: emotion, peak_score, avg_mos |
| Random 50 | random_50 |
50 completely random samples from our QA'd pool. Metadata: nisqa, language, accent, speech_ratio |
| Gaming | gaming_assistant, gaming_companion |
Gaming conversations: helper-type conversations vs. companion. Metadata: game, summary |
Dataset Overview
| Total audio | 30,381 hours |
| Unique conversations | 30,444 |
| Unique speakers | 8,026 |
| Languages | ~17 |
| Speakers per conversation | 2–13 (avg 2.7) |
| Conversation duration | 19s – 24.4 hrs (avg ~58 min) |
| Code-switching | 28.1% of conversations |
| Speech type | Spontaneous, unscripted, multi-party conversations |
| Quality score (NISQA) | 1.8 - 4.8 (avg 2.5) |
| Common topics | Video games, daily life (jobs, school, relationships, earning money) |
Languages
Language labels for each conversation were reviewed by a native human speaker.
Monolingual Conversations
17 languages with over 10 hours of monolingual conversation data. The below includes an estimation on the number of hours.
| Language | Code | Conversations | Hours |
|---|---|---|---|
| English | en | 13,339 | 10,860.1 |
| Egyptian Arabic | arz | 1,647 | 1,537.5 |
| Spanish | es | 1,016 | 1,388.1 |
| Swahili | sw | 1,358 | 850.3 |
| Nigerian Pidgin | pcm | 744 | 698.8 |
| Arabic | ar | 559 | 447.4 |
| Hindi | hi | 795 | 434.1 |
| Tagalog | tl | 150 | 229.9 |
| Tamil | ta | 138 | 163.8 |
| Yoruba | yo | 181 | 147.4 |
| Italian | it | 255 | 145.4 |
| Hausa | ha | 188 | 131.7 |
| French | fr | 32 | 49.0 |
| English (alt) | eng | 29 | 32.1 |
| Igbo | ig | 33 | 18.9 |
| Telugu | te | 15 | 12.0 |
| Kannada | kn | 14 | 10.0 |
Code-Switching Conversations
25 language combinations with over 10 hours of code-switching data, spanning 28.1% of all conversations. The below iincludes an estimation of the groups and hours.
| Language Group | Conversations | Hours |
|---|---|---|
| English + Nigerian Pidgin | 4,206 | 5,018.7 |
| English + Tagalog | 1,537 | 2,298.9 |
| Cebuano + English + Tagalog | 727 | 1,070.2 |
| English + Swahili | 447 | 504.7 |
| English + Yoruba | 238 | 235.0 |
| English + Hausa | 174 | 232.7 |
| English + Nigerian Pidgin + Yoruba | 88 | 103.9 |
| English + Hindi | 148 | 91.4 |
| Hausa + Swahili | 70 | 92.3 |
| English + Hiligaynon + Tagalog | 52 | 79.1 |
| English + Hausa + Swahili | 36 | 63.7 |
| Nigerian Pidgin + Yoruba | 66 | 60.2 |
| Arabic + English | 58 | 53.3 |
| Hindi + Urdu | 41 | 50.5 |
| English + Tamil | 42 | 44.1 |
| English + Igbo + Nigerian Pidgin | 17 | 33.0 |
| English + Hausa + Nigerian Pidgin | 21 | 32.6 |
| English + Spanish | 22 | 28.3 |
| English + Igbo | 29 | 28.1 |
| English + Telugu | 25 | 25.2 |
| Cebuano + English + Hiligaynon + Tagalog | 12 | 23.0 |
| Igbo + Nigerian Pidgin | 19 | 21.7 |
| Nigerian Pidgin + Swahili | 16 | 19.9 |
| English + Nigerian Pidgin + Swahili | 10 | 15.4 |
| Hausa + Nigerian Pidgin | 11 | 11.1 |
Labels
Language labels were assigned at the speaker-track level by native speakers who reviewed each individual track within a conversation. A single conversation may carry multiple language labels when speakers use different languages. Accent labels are derived from each speaker's self-reported city of origin, providing a natural geographic proxy for dialect and accent variation.
Technical Analysis
| Sample rate | 48 kHz |
| Bit depth | 16-bit PCM |
| File format | WAV |
| Mean SNR | ~33 dB |
| Median RMS | -26 dBFS |
| Average speech ratio | 0.35 |
| Spectral centroid | ~0.66 kHz |
| Frequency content | 3.3 kHz (averaged over 10–30 second clips) |
Combined vs. Separated Audio
Each sample in this dataset is a combined mix of all speakers. The parent Yapdo corpus stores each speaker on a separate, time-aligned track. Here's what that difference sounds like — a Telugu conversation with 2 speakers:
Combined (all speakers mixed)
Speaker 1 (isolated track)
Speaker 2 (isolated track)
Audio Artifacts
Source audio passes through a Discord/Opus VoIP pipeline.
| Artifact | Prevalence |
|---|---|
| Dropouts / packet loss | 98.6% |
| Bandwidth ceiling (< 4 kHz) | 97.2% |
| Clicks / pops | 93.6% |
| Mains hum (50/60 Hz) | 82.4% |
| Silence / dead air | 34.6% |
| Frame repetition | 18.2% |
| Echo | 15.2% |
| Low signal level | 5.8% |
| Onset transients | 5.2% |
| Clipping | 0.6% |
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