Movielogr

movie poster

Rating: 8.5 stars

Tags

religious

Seen 1 time

Seen on: 02/19/2012

View on: IMDb | TMDb

Take Shelter (2011)

Directed by Jeff Nichols

Drama | Thriller

Most recently watched by noahphex, sensoria, noahphex

Overview

Plagued by a series of apocalyptic visions, a young husband and father questions whether to shelter his family from a coming storm, or from himself.

Rated R | Length 120 minutes

Actors

Michael Shannon | Ray McKinnon | Kathy Baker | Stuart Greer | Katy Mixon | Lisa Gay Hamilton | Shea Whigham | Robert Longstreet | Bart Flynn | Jessica Chastain | Molly McGinnis | Tova Stewart | Natasha Randall | Ron Kennard | Scott Knisley | Heather Caldwell | Sheila Hullihen | Maryanne Nagel | Jeffrey Grover

Viewing Notes

I’m still trying to fully comprehend the meaning of the ending of this film, but it’s easily the best acted movie I’ve watched in recent memory. Michael Shannon and Jessica Chastain both do a superb job with their conflicted characters. Worth watching for that reason alone.

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