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missing movie poster

Rating: 7 stars

Tags

CFF muvico short film theater

Seen 1 time

Seen on: 04/13/2012

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View on: IMDb | TMDb

Teddy: It's Gonna Be a Bear (2011)

Directed by Steve Goltz

Horror | Short

Most recently watched by sleestakk

Overview

From creators Steve Goltz and Kevin Sommerfield comes a new experiment in terror. A throwback to the slasher films of the 1980’s, “Teddy: It’s Gonna be a Bear” tells the story of four college students that get more than the bargained for when a hit-and-run accident turns into murder. Revenge is a dish best served hot with a hatchet in one hand and a teddy bear in the other. Will they “bearly” be able to survive the night?

Length 12 minutes

Actors

Kevin Sommerfield | Mike Goltz | Keegan Bergen | Kirk Gilbert | Dana Terpinas | Nikita Vora

Viewing Notes

Very first film of Chicago Fear Fest and it’s pretty damn funny. Total throwback to 80s slasher horror. The entire short is available on YouTube.

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