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Seen on: 01/24/2010

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Food, Inc. (2008)

Directed by Robert Kenner

Documentary

Most recently watched by BTSjunkie

Overview

Documentary filmmaker Robert Kenner examines how mammoth corporations have taken over all aspects of the food chain in the United States, from the farms where our food is grown to the chain restaurants and supermarkets where it’s sold. Narrated by author and activist Eric Schlosser, the film features interviews with average Americans about their dietary habits, commentary from food experts like Michael Pollan and unsettling footage shot inside large-scale animal processing plants.

Rated PG | Length 94 minutes

Actors

Eric Schlosser | Michael Pollan | Richard Lobb | Vince Edwards | Carole Morison

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