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Rating: 7 stars

Tags

bollywood KevinP EricaP

Seen 1 time

Seen on: 02/26/2005

View on: IMDb | TMDb

Bride & Prejudice (2004)

Directed by Gurinder Chadha

Musical | Comedy | Romance

Most recently watched by sleestakk

Overview

A Bollywood update of Jane Austen’s classic tale, in which Mrs. Bakshi is eager to find suitable husbands for her four unmarried daughters. When the rich single gentlemen Balraj and Darcy come to visit, the Bakshis have high hopes, though circumstance and boorish opinions threaten to get in the way of romance.

Rated PG-13 | Length 111 minutes

Actors

Naveen Andrews | Anupam Kher | Alexis Bledel | Marsha Mason | Daniel Gillies | Martin Henderson | Indira Varma | Ashanti | Nitin Ganatra | Harvey Weinstein | Nadira Babbar | Sonali Kulkarni | Aishwarya Rai Bachchan | Namrata Shirodkar | Meghna Kothari | Peeya Rai Chowdhary

Viewing Notes

This was our second film in our Indian double feature at Landmark Renaissance Theater in Highland Park. Nearly the opposite type of film from Born into Brothels. The irony of the juxtaposing these two movies back to back was not lost on us. That said we really enjoyed this movie. Not a traditional Bollywood film but enough to make it work.

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