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Movie Review : Zeitgeist The Movie

Title :  Zeitgeist The Movie
Language : English
Year : 2007
Director : Peter Joseph
Genre : Documentary
IMDB Link
Watch trailer on Youtube

Zeitgeist film series is a set of three documentary films which discusses various conspiracy theories. Zeitgeist : The Movie is the first installment of the trilogy, which was directed by Peter Joseph and released in 2007.

The movie is divided into 3 sections - the first one proposes theories of how Christianity and other major modern religions designed fraudulent concepts of God by copying concepts from other pagan religions. They propose that religions are nothing but a collection of hollow lies and superstitions, and how people confuse them with scientific phenomenon (like astronomy, for instance).

The second section focuses on the dirty politics of government of the United States of America, and go on to claim that the infamous 9/11 was actually an inside job.

The final section deals with the origin and growth of corporate bankers, how they manipulate emotions to their advantage. The makers accuse them of creating catastrophic situations including economic depression and even the world wars.

Debates are still on regarding the authenticity of the series, and there is no conclusion as of now. If found to be true, this could have huge repercussions on the entire world and humanity.


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