POTRAZ 2026 AI for Impact · Track 1: Data

Zimbabwe Language
Data Commons.

A governed, consent-based, AI-ready Shona and Ndebele speech-and-text corpus — the missing data foundation for Zimbabwean-language AI.

Phase 1 · Shona (sn) Phase 1 · Ndebele (nd) Phase 2 · Venda · Tshangani · Chewa/Nyanja

Zimbabwe has no governed, AI-ready corpus for its own languages. The AI systems deployed for Zimbabweans — e-government assistants, telemedicine triage, screen readers, chatbots — are trained overwhelmingly on English and foreign data, and speakers of local languages get measurably worse outcomes from digital services.

No AI team can build, evaluate or audit local-language systems while the underlying data does not exist. That absence is the problem this project solves.

DeliverablePilot target
Consented, transcribed Shona/Ndebele speech (≥400 distinct speakers)100+ hrs
Cleaned, provenance-tracked Shona/Ndebele text corpus1,000,000+ words
Health-triage vertical — scenario dialogue speech + phrase inventory≥15 hrs
Accessibility vertical — PWD & assistive-technology speech≥10 hrs
Held-out, double-transcribed evaluation benchmark, per language~5 hrs

Everything ships AI-ready: a published schema and data dictionary, a per-file checksummed manifest, versioned releases, quality reports, a bias/representativeness register — and an evaluation layer that lets any deployed AI service's Shona/Ndebele accuracy be benchmarked and audited.

Primary, consented, original data through four institutional channels — no web scraping, no single-institution dependence:

Sampling uses documented quotas across province, district, urban/rural, gender, age and dialect region — collection sites in ≥6 of 10 provinces in the pilot, with ≥40% of speech hours from rural or peri-urban sites, and gaps measured and disclosed.

The lawful basis for all primary collection is informed consent under Zimbabwe's Data Protection Act [Chapter 12:07] — plain-language consent in the participant's own language, with withdrawal honoured in every release.

Speakers are pseudonymised, identifiers redacted, and location generalised to district level; raw audio and consent registers sit under encryption and role-restricted access.

Hard boundary: the corpus is barred from surveillance, enforcement, profiling, credit denial and speaker-identification uses. Voice data is collected for language technology only. A named data steward and a governance group drawn from the collection partners approve every release, licence and takedown.

Proposal submitted 3 July 2026 to the POTRAZ 2026 AI for Impact Challenge (Track 1: Data); institutional partners are being confirmed during the application window. IndabaX Zimbabwe has provided its signed letter of support.

We're looking for university language departments, community radio stations, disability organisations and the CIC network to join as partners — a short letter of support on your organisation's letterhead is all we ask to start.