Movielogr

movie poster

Rating: 5.5 stars

Tags

NWI

Seen 1 time

Seen on: 01/03/2012

View on: IMDb | TMDb

From Prada to Nada (2011)

Directed by Angel Gracia

Romance | Comedy | Drama

Most recently watched by sleestakk

Overview

Two spoiled Beverly Hills sisters who have been left penniless after their father’s sudden death are forced to move in with their estranged aunt in East Los Angeles.

Rated PG-13 | Length 107 minutes

Actors

Adriana Barraza | Wilmer Valderrama | Nicholas D'agosto | Camilla Belle | Alexa PenaVega | Kuno Becker | April Bowlby | Pablo Cruz Guerrero | Karla Souza | Leticia Fabian | Alexis Ayala | Mario Zaragoza | Begoña Narváez | José María Negri | Oliverio Gareli

Viewing Notes

Not a good movie but I like Camilla Belle and the theme was perfect for watching w/my girlfriend. But we both thought it was ridiculous.

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