Movielogr

movie poster

Rating: 3 stars

Seen 1 time

Seen on: 10/07/2005

View on: IMDb | TMDb

Waiting... (2005)

Directed by Rob McKittrick

Comedy

Most recently watched by suspectk

Overview

Employees at a Bennigan’s-like restaurant (called, creatively enough, Shenanigan’s), kill time before their real lives get started. But while they wait, they’ll have to deal with picky customers who want their steak cooked to order and enthusiastic managers who want to build the perfect wait staff. Luckily, these employees have effective revenge tactics.

Rated R | Length 94 minutes

Actors

Anna Faris | Chi McBride | Alanna Ubach | Ryan Reynolds | Justin Long | Jordan Ladd | David Koechner | Dane Cook | Luis Guzmán | John Francis Daley | Kaitlin Doubleday | Rob Benedict | Vanessa Lengies | Max Kasch | Andy Milonakis | Emmanuelle Chriqui | Wendie Malick | J.D. Evermore | Skyler Stone | Wayne Ferrara | Clay Chamberlin | Anne Ewen | Todd Voltz | Travis Resor | Jordan Werner | Skylar Duhe | Lauren Swinney | Pat Hazell

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members/suspectk/movie_detail/8051
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members/movie_detail
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