@thewolfhashira: & Yes.....It's a bad thing if your blur out. (Sensitive Pricks) #fifaworldcup #southkorea #456JJ #hongmyungbo #fifa @FIFA @FIFA World Cup

𝐌𝐀𝐔𝐑𝐈🐺🇲🇽
𝐌𝐀𝐔𝐑𝐈🐺🇲🇽
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Region: US
Sunday 28 June 2026 08:00:11 GMT
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t_cost45
S tro :
bro.. SK treated him like he is a criminal. coach is also human too always make mistake . and he is not perfect at all
2026-06-29 08:59:49
2626
mickeyswizzle
Mickey :
Does anyone else have SK fatigue? Specifically with their media?
2026-06-29 09:04:53
2037
coop.p3r
Coop.!.🐶 :
Everyone saying it's too much is so ignorant, do some research!! He bought his way in to be coach with SK futbol organization and the taxpayers of SK forcibly pay his salary through taxes
2026-06-30 00:52:22
1
cutebumblebee55
Jeanie Moore :
Omg a game is never this serious
2026-06-29 02:22:27
2456
alduinc
Alduin :
They seem to be hating on him too much, is he safe coming back home?
2026-06-29 12:20:08
103
.r3sme
.r3sme :
Coach is being scapegoated for the team being terrible
2026-06-28 18:27:43
4458
rinsawakilover
RinSawakiLover :
they didn't play bad they were just unlucky
2026-06-28 22:38:22
842
frostela
Angela :
I don’t get it why the extreme measures?
2026-06-29 16:07:12
22
meakeawe
m2 :
it's not that serious
2026-06-29 12:29:29
161
unrushed.living
👑Sylvie👑 :
It’s just football
2026-06-29 18:33:42
20
eti0373
User1983639902 :
The players looked unfit and out of breath. It’s not the coach’s fault if the players don’t perform well. A coach can guide the team, provide strategies, and prepare them, but it’s ultimately up to the players to execute those plans on the field.
2026-06-29 06:37:43
109
wanders_97
XO :
South korea media is bullshit
2026-06-29 02:51:43
115
megashi.megashi
Megashi :
wasn't he a nepo coach who also benched son and did terribly in managing their tactics and was getting angry at the team after the loss when he himself was equally incompetent?
2026-06-29 12:46:14
24
usernameunavalible_
Idk :
Is it ever that serious?? Like in Uruguay the team was supposed to come back in a private yet but they cancelled it since they got eliminated
2026-06-28 18:51:04
1143
sceaxq
︎ ︎ ︎ ︎ ︎ ︎ ︎ ︎ ︎ ︎ :
This is so petty omg 😭
2026-06-29 17:15:51
12
atlchina
china 💝 :
what in the kdrama - this is so terrible
2026-06-29 05:57:52
56
bobbymcbob21
Yanbrm :
South Korea just buns losing to sithole 💔
2026-06-28 22:42:01
152
4c519
+4C0 :
SK social rules feels like when you go to your friend house as a kid and their strict parents are scolding them badly for something insignificant
2026-06-29 07:31:22
23
hooyodawaase
wonyoung 🎀 :
I hope they come back better next World Cup with a new coach who knows what he doing not some coach who is jealous of his own player…
2026-06-28 21:34:33
169
britrene19
britrene19 :
Why is he blurred
2026-06-28 18:47:52
892
charliebrownguy
hazi :
Coach makes or breaks a team look at the controversy
2026-06-29 00:02:29
32
fen._.nex2
Fennex :
What they even saying
2026-06-29 13:13:59
5
lovelyz.127
STD QUEEN :
i don’t get this post
2026-06-29 06:39:06
7
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