Nsanku: Evaluating Zero-Shot Translation Performance of LLMs for Ghanaian Languages
Stephen E. Moore, Mich-Seth Owusu, Akwasi Asare, Lawrence Adu Gyamfi, Paul Azunre, Joel Budu, Jonathan Asiamah, Elias Dzobo, Kelvin Newman, Edmund O. Benefo, Gerhardt Datsomor, Onesimus Addo Appiah, Ama Branoa Banful, Lucas Woedem Kpatah, Saani Mustapha Deishini, and John Ayernor

TL;DR
This paper introduces Nsanku, a comprehensive benchmark evaluating zero-shot translation of 19 LLMs across 43 Ghanaian languages, revealing current limitations in model reliability and consistency.
Contribution
Nsanku is the first extensive evaluation framework for Ghanaian languages, providing new insights into LLM translation performance and establishing a community-accessible NLP evaluation infrastructure.
Findings
Gemini-2.5-flash achieved the highest overall score of 26.88.
No model and language combination reached high performance and consistency simultaneously.
Open-weight models like kimi-k2-instruct-0905 performed well among open models.
Abstract
Large language models (LLMs) have demonstrated impressive multilingual capabilities for well-resourced languages, yet their performance on low-resource African languages remains poorly understood and largely unevaluated. This paper presents Nsanku, a systematic benchmark that evaluates the zero-shot machine translation performance of 19 open-weight and proprietary LLMs across 43 Ghanaian languages paired with English. Evaluation sentences were sourced from the YouVersion Bible platform, providing 300 sentence pairs per language. Two complementary automatic metrics are employed: Bilingual Evaluation Understudy (BLEU) and Character n-gram F-Score (chrF), alongside an average accuracy score and a cross-language consistency dimension. Nsanku represents the most comprehensive LLM translation evaluation for Ghanaian languages conducted to date. Results show that gemini-2.5-flash achieves the…
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