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Rating: 8 stars

Seen 2 times

Seen on: 10/23/2004, 10/16/2004 (rewatch)

View on: IMDb | TMDb

Team America: World Police (2004)

Directed by Trey Parker

Animation | Adventure | Comedy

Most recently watched by sleestakk, sleestakk

Overview

When North Korean ruler Kim Jong-il orchestrates a global terrorist plot, it’s up to the heavily armed, highly specialized Team America unit to stop his dastardly scheme. The group, which has recruited troubled Broadway actor Gary Johnston, not only has to face off against Jong-il, but they must also contend with the Film Actors Guild, a cadre of Hollywood liberals at odds with Team America’s “policing the world” tactics.

Rated R | Length 97 minutes

Actors

Daran Norris | Trey Parker | Matt Stone | Kristen Miller | Masasa Moyo | Maurice LaMarche | Fred Tatasciore | Phil Hendrie | Jeremy Shada | Chelsea Marguerite

Viewing Notes

Loved this flick so much I convinced both Ron and Pat to join me for another viewing. I’m sure they agreed as we were laughing hysterically the entire time.

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