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Rating: 5.5 stars

Seen 1 time

Seen on: 04/12/2009

View on: IMDb | TMDb

Slackers (2002)

Directed by Dewey Nicks

Comedy | Romance

Most recently watched by sleestakk

Overview

Dave, Sam and Jeff are about to graduate from Holden University with honors in lying, cheating and scheming. The three roommates have proudly scammed their way through the last four years of college and now, during final exams, these big-men-on-campus are about to be busted by the most unlikely dude in school. Self-dubbed Cool Ethan, an ambitious nerd with a bad crush, enters their lives one day and everything begins to unravel.

Rated R | Length 86 minutes

Actors

Jaime King | Cameron Diaz | Gina Gershon | Mike Maronna | Gedde Watanabe | Jason Schwartzman | Laura Prepon | Jon Kasdan | Sam Anderson | Jason Segel | Devon Sawa | Joe Flaherty | Leigh Taylor-Young | Retta | Travis Davis | Mamie Van Doren | Marilyn Staley | Nat Faxon | Charles Dougherty | Todd Giebenhain | Jim Rash | Michael McDonald | Melanie Paxson | Heidi Kramer | Alissa Kramer | Don Michaelson | Shelley Dowdy | Jason Garner

Viewing Notes

Good cast but not a good movie.

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