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Rating: .5 star

Tags

Cable

Seen 1 time

Seen on: 08/09/2010

View on: IMDb | TMDb

Disaster Movie (2008)

Directed by Jason Friedberg, Aaron Seltzer

Comedy

Most recently watched by noahphex

Overview

The filmmaking team behind the hits “Scary Movie,” “Date Movie,” “Epic Movie” and “Meet The Spartans” this time puts its unique, inimitable stamp on one of the biggest and most bloated movie genres of all time—the disaster film.

Rated PG-13 | Length 87 minutes

Actors

Tony Cox | Vanessa Lachey | Carmen Electra | Matt Lanter | Valerie Wildman | Tad Hilgenbrink | Crista Flanagan | Dana Seltzer | Austin Michael Scott | Robin Atkin Downes | Nick Steele | Ike Barinholtz | Noah Harpster | Nicole Parker | Kim Kardashian | Jason Boegh | Jacob Tolano | Walter Harris | Michelle Lang | Gary 'G. Thang' Johnson | John Di Domenico | Devin Crittenden | Abe Spigner | Jonas Neal

Viewing Notes

My god was this horrible.

Comments

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