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Rating: 7.5 stars

Seen 1 time

Seen on: 03/15/2009

View on: IMDb | TMDb

In Bruges (2008)

Directed by Martin McDonagh

Comedy | Crime | Thriller

Most recently watched by Javitron, sleestakk

Overview

Ray and Ken, two hit men, are in Bruges, Belgium, waiting for their next mission. While they are there they have time to think and discuss their previous assignment. When the mission is revealed to Ken, it is not what he expected.

Rated R | Length 108 minutes

Actors

Brendan Gleeson | Ralph Fiennes | Zeljko Ivanek | Ciarán Hinds | Clémence Poésy | Elizabeth Berrington | Thekla Reuten | Jérémie Renier | Jordan Prentice | Jamie Edgell | Colin Farrell | Anna Madeley | Eric Godon | Mark Donovan | Theo Stevenson | Ann Elsley | Susan Ateh | Rudy Blomme | Olivier Bonjour | Stephanie Carey | Jean Mark Favorin | Sachi Kimura | Emily Thorling | Angel Witney | Inez Stinton | Ran Yaniv | Bonnie Witney | Louis Nummy

Viewing Notes

As great as everyone has said it is. Been wanting to watch for a long time and finally got the DVD from the library. This is really the ideal character for Colin Farrell. And I love Brendan Gleeson in every role he takes on. He’s pitch perfect here.

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