
Also known as HTTYD
How to Train Your Dragon is a 2025 American fantasy adventure film and a live-action remake of the 2010 animated film by DreamWorks Animation, itself loosely based on the 2003 novel by Cressida Cowell. The film was written and directed by Dean DeBlois, who co-wrote and directed the animated film, and stars Mason Thames, Nico Parker, Gabriel Howell, Julian Dennison, Bronwyn James, Harry Trevaldwyn, Peter Serafinowicz, and Nick Frost, with Gerard Butler reprising his role as Stoick the Vast.
On the rugged isle of Berk, where Vikings and dragons have been bitter enemies for generations, Hiccup stands apart, defying centuries of tradition when he befriends Toothless, a feared Night Fury dragon. Their unlikely bond reveals the true nature of dragons, challenging the very foundations of Viking society.
Cast
~19 min read
How to Train Your Dragon is a 2025 American fantasy adventure film and a live-action remake of the 2010 animated film by DreamWorks Animation, itself loosely based on the 2003 novel by Cressida Cowell. The film was written and directed by Dean DeBlois, who co-wrote and directed the animated film, and stars Mason Thames, Nico Parker, Gabriel Howell, Julian Dennison, Bronwyn James, Harry Trevaldwyn, Peter Serafinowicz, and Nick Frost, with Gerard Butler reprising his role as Stoick the Vast.
Plans for a live-action remake of How to Train Your Dragon were announced in February 2023, with DeBlois returning to write and direct. Veteran composer John Powell also returned to score the remake. Thames and Parker joined the cast in May 2023, with additional casting announced in January 2024. Filming began later that month in Belfast, Northern Ireland and wrapped in May. It is DreamWorks Animation's first live-action film since it was spun off from the original live action studio in 2004.
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