Multi-turn prompts in Afrikaans, Kiswahili, isiXhosa and isiZulu achieve 52-83% harmful response rates across GPT, Claude, Gemini and others, rising further with native-speaker red-teaming, showing translation quality limits jailbreak success.
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Multilingual jailbreaking of LLMs using low-resource languages
Multi-turn prompts in Afrikaans, Kiswahili, isiXhosa and isiZulu achieve 52-83% harmful response rates across GPT, Claude, Gemini and others, rising further with native-speaker red-teaming, showing translation quality limits jailbreak success.