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Average Rating: 6/10

View on: IMDb | TMDb

Deep Blue Sea (1999)

Directed by Renny Harlin

Most recently watched by sensoria

Overview

Researchers on the undersea lab Aquatica have genetically altered the brains of captive sharks to develop a cure for Alzheimer’s disease. But there’s an unexpected side effect: the sharks got smarter, faster, and more dangerous. After a big storm damages their remote research facility, they must fight for their lives.

Rated R | Length 105 minutes

Actors

Ronny Cox | Stellan Skarsgård | Samuel L. Jackson | Michael Rapaport | Valente Rodriguez | Saffron Burrows | Thomas Jane | Frank Welker | Renny Harlin | Jacqueline McKenzie | Mary Kay Bergman | LL Cool J | Erinn Bartlett | Eyal Podell | Brent Roam | Aida Turturro | Cristos | Daniel Rey | Sabrina Geerinckx | Tajsha Thomas | Dan Thiel

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