@sameed.shaikh: Jail Police Hyderabad First Day 2nd batch 🏃#viral #trending #viralvideo #pts #preson

(:-   .SHAIKH.  -:)
(:- .SHAIKH. -:)
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Region: PK
Tuesday 07 July 2026 06:54:09 GMT
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syedumairshah049
sainumairshah2 :
Bhai waha Kitna bjy jayen slip men to 5 bjy suba ka hy or 1 hour pehly pohnch na hy ya bhi likha hua hy
2026-07-07 14:54:04
3
kashifsoomro110
🖤🫀 سومرو :
Kitne pass hwe
2026-07-07 10:56:48
2
keenza8
NOT :
muskil thi ya
2026-07-07 12:23:30
2
mujjahid.abbasi
M🥀 :
first batch ka vedio jani?
2026-07-07 16:07:39
0
rehmansahib31
ENGR. REHMAN❤️ :
totally unfair. running must have space and on time.
2026-07-07 14:06:21
0
shabbirpathan92
LaLaaa♥️ :
mne hmesha 5 mint m Pura kia.🥰
2026-07-07 20:05:39
0
razakatyar1
💔بد قسمت ڇوڪرو💔😥 :
5
2026-07-07 18:09:37
0
sheerazgullsheera
RAEES PAN AA :
Ada 5am wali shift kiss time start hojate he Taqrebn
2026-07-07 10:32:09
0
tahseerqureshi453
tahseer qureshi :
agr 5 baje wali shift me 7 baje puhchn to sahi he yn 5 baje lazmi he ana
2026-07-07 12:06:26
0
ghulammustafamemon6
🌹Ghulam 🌹 Mustafa 🌷 Memon :
bhai raning start kis taime pe huwi
2026-07-07 10:49:34
0
noor_lashari0
𝗡𝗼𝗼𝗿 𝗛𝗮𝘀𝘀𝗮𝗻 LASHARI :
5 Bje thi shayad
2026-07-07 10:39:55
0
princess.m157
بنت حوا 🧕🏼 :
kis jaga hai test hydrabad m
2026-07-07 14:18:37
0
hassan_mughal2500
ح س ن 😘 :
bhai kesw mahool tha btao
2026-07-07 10:37:40
0
sajidnawaz860
♕💜 Ş𝐀𝐉𝐈𝔻 ♕💜 :
Konsa road he bhai
2026-07-07 10:53:55
0
awaisqureshi224
A🫀P :
district police best hai
2026-07-07 17:17:37
0
zainulabdinbaig
CALL#ME 〽️IRZA A.Z BAIG :
poor management
2026-07-07 13:11:18
2
itx__mehtab0
Mehtab Ali 🙂 :
today was my friend in this group
2026-07-07 15:59:44
0
faizanramzan467
faizanramzan467 :
first batch k kis time start horhe hy running
2026-07-07 12:11:43
0
broken07041
乃ROKEN :
ye kia kar rahe he bro
2026-07-07 14:13:03
0
akramabbasi500
akramAbbasi :
itne see jaga py kaise agye nekle ga bnda yrrr
2026-07-07 16:47:07
0
sufiyanrajpot7
sufiyan Rajpoot :
time. kitna mila
2026-07-07 10:23:35
0
mr_quresh1
o. قₐ𝚍ᵢᵣ قᵤᵣₑS𝓱ᵢ .o :
bhai bando k hisab se track chota hai bht
2026-07-07 16:02:34
0
mdmangrio
꧁𓊈𒆜🅼 🅳 🅼𒆜𓊉꧂ :
9 ko inshallah ♥️
2026-07-07 17:31:58
0
faizbaloch577
Faiz Baloch :
itna chota road he ya Kiya Mazak he yaar ya bachoon ke Sath
2026-07-07 16:06:38
0
bugtisahab7867
بگٽي صاحب :
as road sa zealpack wala road acha tha jais mai FIA ka running hua tha mera
2026-07-07 17:43:57
0
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