Bambara-ASR-v2
Bambara-ASR-v2 is an automatic speech recognition model for Bambara (Bamanankan) fine-tuned from OpenAI's Whisper-large-v2 using parameter-efficient tuning, reaching about 25 percent word error rate. It handles natural Bambara-French code-switching common in Mali's multilingual context. It is released under Apache 2.0 as part of the MALIBA-AI community initiative.
- Category
- AI Resources
- Pricing
- Open weights (Apache 2.0)
- Country
- 🏳️ ML
- Last verified
- 5 Jul 2026
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