9th episode of the 6th season of Star Trek: Deep Space Nine
"Statistical Probabilities"
Star Trek: Deep Space Nine episode
Episode no.
Season 6 Episode 9
Directed by
Anson Williams
Story by
Pam Pietroforte
Teleplay by
René Echevarria
Featured music
David Bell
Cinematography by
Jonathan West
Production code
533
Original air date
November 24, 1997 (1997-11-24)
Guest appearances
Jeffrey Combs as Weyoun
Tim Ransom as Jack
Jeannetta Arnette as Dr. Loews
Hilary Shepard as Lauren
Michael Keenan as Patrick
Casey Biggs as Damar
Faith Salie as Sarina Douglas
Episode chronology
← Previous "Resurrection"
Next → "The Magnificent Ferengi"
Star Trek: Deep Space Nine season 6
List of episodes
"Statistical Probabilities" is the 133rd episode of the syndicated American science fiction television series Star Trek: Deep Space Nine, the ninth episode of the sixth season.
Set in the 24th century, the series follows the adventures on Deep Space Nine, a space station located near a stable wormhole between the Alpha and Gamma quadrants of the Milky Way Galaxy. This episode is part of the Dominion War storyline, in which the United Federation of Planets is at war with the Dominion, an aggressive empire from the Gamma Quadrant, which has already absorbed the nearby planet of Cardassia.
In this episode, the genetically engineered Dr. Julian Bashir works with a group of genetically engineered, socially maladjusted savants to try to help them become productive members of society. Meanwhile, Deep Space Nine hosts peace negotiations with the Dominion.
This episode guest stars Jeannetta Arnette as Dr. Loews, Tim Ransom as Jack, Hilary Shepard as Lauren, Michael Keenan as Patrick and Faith Salie as Sarina Douglas, with Casey Biggs and Jeffrey Combs reprising their recurring roles as Cardassian leader Damar and Dominion representative Weyoun.
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"StatisticalProbabilities" is the 133rd episode of the syndicated American science fiction television series Star Trek: Deep Space Nine, the ninth episode...
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