Movielogr

movie poster

Rating: 6 stars

Tags

Netflix Japan

Seen 1 time

Seen on: 05/31/2009

View on: IMDb | TMDb

Big Dreams Little Tokyo (2006)

Directed by Dave Boyle

Comedy | Romance

Most recently watched by sleestakk

Overview

Big Dreams Little Tokyo is the story of Boyd, an American with an uncanny ability to speak Japanese. Boyd aspires to succeed in the world of Japanese business but finds himself mostly on the outside looking in. Meanwhile, his roommate Jerome, is a Japanese American who has always felt too American to be Japanese but too Japanese to be American. He aspires to be a sumo wrestler but finds his weight and blood pressure are thwarting his dreams. Together they struggle to find their place in a world where cultural identity is seldom what it seems.

Length 86 minutes

Actors

Pepe Serna | Michael Yama | James Kyson | Dave Boyle | Jayson Watabe | Rachel Morihiro

Viewing Notes

Great title, not so great flick. Big Dreams, Little Tokyo is an okay watch w/more Japanese spoken than I thought (it’s a gaijin trying to make it in Japan). not terrible.

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