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movie poster

Rating: 6.5 stars

Tags

flashback muvico

Seen 1 time

Seen on: 08/11/2012

View on: IMDb | TMDb

Among Friends (2012)

Directed by Danielle Harris

Horror | Thriller

Most recently watched by sleestakk

Overview

A twisted horror about a dinner party gone wrong. Set against an 80s backdrop, the good time takes a dark turn when one in the group hijacks the evening in an attempt to help the others come clean about their secret betrayals against one another–and is willing to cut through the bone in order to expose the truth.

Rated R | Length 80 minutes

Actors

Michael Biehn | Xavier Gens | Danielle Harris | Kane Hodder | AJ Bowen | Christopher Backus | Brianne Davis | Jennifer Blanc | Dana Daurey | Chris Meyer | Kamala Jones | Alyssa Lobit

Viewing Notes

Great premise and fine acting by all the principles. What knocks it down a peg is the way it is shot. So many close-ups that after a while it becomes distracting. This screening was part of Flashback Weekend in which Danielle Harris was there to introduce the film. I definitely like it and think it’s a great debut. Look forward seeing more from her behind the camera.

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