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Rating: 1.5 stars

Tags

NWI

Seen 1 time

Seen on: 03/02/2011

View on: IMDb | TMDb

R.O.T.O.R. (1987)

Directed by Cullen Blaine

Science Fiction

Most recently watched by sensoria

Overview

Robotic Officer Tactical Operation Research. A prototype robot intended for crime combat escapes from the development lab and goes on a killing rampage.

Rated NR | Length 90 minutes

Actors

Michael Hunter | James Cole | Margaret Trigg | Stan Moore | George Jones | Bill Blair | Richard Gesswein | Jayne Smith | Nanette Kuczek | Brad Overturf | Shawn Brown | Victor Kwasnick | Ron Baker | Diana Hurd | Bob Lennard | Janiece Stamper | Gigi Green | Carroll Brandon Baker

Viewing Notes

Not a good movie in any sense of the word. Not even a good bad movie.

The director apparently has quite a long resume in storyboarding and story directing animated TV series though. He even did Spiral Zone! So there’s that.

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