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Rating: 7.5 stars

Tags

Facets

Seen 1 time

Seen on: 03/07/2004

View on: IMDb | TMDb

Robot Stories (2003)

Directed by Greg Pak

Drama | Romance | Science Fiction

Most recently watched by sleestakk

Overview

Four stories including: “My Robot Baby,” in which a couple must care for a robot baby before adopting a human child; “The Robot Fixer,” in which a mother tries to connect with her dying son; “Machine Love,” in which an office worker android learns that he, too, needs love; and “Clay,” in which an old sculptor must choose between natural death and digital immortality.

Length 85 minutes

Actors

Tamlyn Tomita | Tim Kang | Cindy Cheung | James Saito | Sab Shimono | Angel Desai | Greg Pak | Louis Ozawa Changchien | Glenn Kubota | T. Lynn Eanes | Vin Knight | Gina Quintos | Karen Tsen Lee | Vivian Bang | John Cariani | Ching Hoh-Wai

Viewing Notes

Cruised down to Facets to check out Greg Pak’s film mainly b/c I heard it featured Micronauts. It does! Better yet, it’s a wonderful anthology of short films about how people deal with life and death. Love it. Not sure if it was Kim or Karin (both producers) that was on hand to discuss the movie and answer questions. Pretty cool.

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