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@lexa.aliyeva: We went to a speakeasy in Bali, and I found out they were playing live music. Asked to sing one of my favorite songs with them, but you can tell how nervous I was by my grip on the mic hahah #fyp #bali #vacation #livesinging
LEXA
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Region: ES
Monday 16 February 2026 14:27:28 GMT
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No Watermark .mp4 (
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Comments
BPXj :
i want u to sing in my wedding, whats the price
2026-02-17 22:08:24
1
Raul Qurbanov :
🥰🥰🥰 You are great
2026-02-16 18:28:00
1
To see more videos from user @lexa.aliyeva, please go to the Tikwm homepage.
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