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Rating: 3.5 stars

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Seen on: 07/23/2010

View on: IMDb | TMDb

Wedding Daze (2006)

Directed by Michael Ian Black

Comedy

Most recently watched by noahphex

Overview

After losing the woman of his dreams, Anderson is convinced he’ll never fall in love again. But at the urging of his best friend, he spontaneously proposes to a dissatisfied waitress named Katie and an innocent dare evolves into the kind of love that both have been looking for all along.

Rated R | Length 90 minutes

Actors

Margo Martindale | Joe Pantoliano | Jay O. Sanders | Matt Malloy | Joanna Gleason | Ebon Moss-Bachrach | Jason Biggs | Michael Weston | Isla Fisher | Edward Herrmann | Heather Goldenhersh | Rob Corddry | Teodorina Bello | Mark Consuelos | Roger Robinson | Regan Mizrahi | Chuck Ardezzone | Chris Diamantopoulos | Audra Blaser | Kevin Allison | Andrea Rosen

Viewing Notes

Much cuter and grosser than you’d expect, until you know it’s written and directed by Michael Ian Black. Fisher is goddamn adorable. I’ll watch her in anything. Biggs is doing his American Pie schtick here. Glad people turned me on to this. Much better than I was thinking it would be.

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