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Rating: 6.5 stars

Seen 1 time

Seen on: 01/22/2010

View on: IMDb | TMDb

Burnt Offerings (1976)

Directed by Dan Curtis

Horror | Mystery

Most recently watched by noahphex, sleestakk

Overview

A couple and their 12-year-old son move into a giant house for the summer. Things start acting strange almost immediately. It seems that every time someone gets hurt on the grounds, the beat-up house seems to repair itself.

Rated PG | Length 116 minutes

Actors

Oliver Reed | Bette Davis | Anthony James | Dub Taylor | Karen Black | Burgess Meredith | Eileen Heckart | Lee Montgomery | Joseph Riley | Todd Turquand | Orin Cannon | Jim Myers

Viewing Notes

Burnt Offerings (1976) via Netflix. Not bad but not great. Good actors and premise but doesn’t fully deliver.

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