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Rating: 7 stars

Tags

CFF zombie muvico theater Korean

Seen 1 time

Seen on: 04/14/2012

View on: IMDb | TMDb

Fear Eats the Seoul (2011)

Directed by Nick Neon

Horror | Drama | Thriller

Most recently watched by sleestakk

Overview

When South Korea is ravaged by a massive demon epidemic that nearly wipes out its entire population, four foreigners are forced to stick together to survive the fallout. After they encounter a Korean survivor who informs them that a nuclear purge of the country is imminent, they realize that escape is the only option. But nothing comes free, and to make it out alive they must overcome their differences and work together to confront not only the flesh-hungry demons waiting for them around every corner, but also the personal demons hiding within themselves.

Length 107 minutes

Actors

Amber Green | Nick Calder | Elinza Pretorius | Miles Meili | Hyun Do Kim

Viewing Notes

Impressive film and directorial debut by Nick Calder shot on location in South Korea. Another favorite from Chicago Fear Fest.

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