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Rating: 4 stars

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Seen on: 12/30/2011

View on: IMDb | TMDb

Double Dare (2004)

Directed by Amanda Micheli

Documentary

Most recently watched by jenerator

Overview

With being thrown off buildings an occupational hazard, professional stuntwomen Jeannie Epper and Zoë Bell (the alter egos of Wonder Woman and Xena, respectively) would seem well-equipped for any challenges Hollywood might dish out. But finding roles—and respect—in a male-dominated field can prove more harrowing than dodging punches.

Rated NR | Length 81 minutes

Actors

Quentin Tarantino | Steven Spielberg | Joanna Cassidy | Gary Busey | Conrad E. Palmisano | Ken Howard | Yuen Woo-Ping | Terry Leonard | Zoë Bell | Lucy Lawless | Victoria Pratt | Ken Lesco | Lynda Carter | Jeannie Epper | Gary Epper | Paul Grinder | Monica Staggs | Eurlyne Epper | May Boss

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