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Rating: 6 stars

Seen 1 time

Seen on: 07/29/2011

View on: IMDb | TMDb

The Adjustment Bureau (2011)

Directed by George Nolfi

Romance

Most recently watched by sensoria

Overview

A man glimpses the future Fate has planned for him – and chooses to fight for his own destiny. Battling the powerful Adjustment Bureau across, under and through the streets of New York, he risks his destined greatness to be with the only woman he’s ever loved.

Rated PG-13 | Length 106 minutes

Actors

Matt Damon | Emily Blunt | Brian Haley | Jon Stewart | Jason Kravits | John Slattery | Terence Stamp | Jennifer Ehle | Michael Kelly | Anthony Mackie | David Alan Basche | James Carville | Shane McRae | Donnie Keshawarz | Michael Bloomberg | Joel de la Fuente | Lauren Hodges | Peter Epstein | Anthony Ruivivar | Kieran Campion | Kate Nowlin | Rob Yang | Dina Cataldi | Chuck Scarborough | Wayne Scott Miller | Sandi Carroll | Johnny Cicco | Laurie Dawn | Lisa Thoreson | Florence Kastriner | Gregory Lay | Amanda Warren | Kirsty Meares | Venida Evans | Lawrence Leritz | Mary Matalin | Meghan Andrews | Natalie Carter | Pedro Pascal | Peter Benson | Phyllis MacBryde | Kar | RJ Konner | Susan D. Michaels | Gregory P. Hitchen | Peter J. Fernandez | Fabrizio Brienza | David Bishins | Sandra Berrios | Jessica Keller | Christine McLain | Julie Hays | Lorenzo Pisoni | Brit Whittle | Leroy McClain | Michael Boyne | Bart Wilder | Don Hewitt Sr. | Darrell Lenormand | Betty Liu | Jim Edward Gately | Daniel Bazile | Mike DiSalvo | Johnathan Hallgrey | Kyoko Bruguera

Viewing Notes

Ok, nothing special.

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