@yasubusiness: I interviewed Jeffrey, an American Muay Thai fighter, in Thailand. He was incredibly friendly and kindly agreed to be part of the video. Thank you so much for your cooperation! #muaythai #muaythaifighter #american #thailand #travelthailand

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Wednesday 27 November 2024 13:01:39 GMT
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salmanali4717
Salman Ali :
very beautiful girl and the Graman I like that
2025-02-27 17:50:21
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faizurahman71
faiz Urahman Khan :
🥰
2024-11-28 00:25:05
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mohammedelyasin2
🥀hmodaa 2 :
😂
2025-03-11 19:39:37
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nabilou40
nabilou40 :
🎄
2024-12-25 20:06:09
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asllan.hetemi
Asllan Hetemi :
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2024-12-05 14:18:49
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