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Rating: 7.5 stars

Tags

moviepass muvico 3D

Seen 1 time

Seen on: 07/19/2012

View on: IMDb | TMDb

The Amazing Spider-Man (2012)

Directed by Marc Webb

Action | Fantasy | Romance

Most recently watched by sleestakk, krazykat, suspectk, suspectk, sensoria

Overview

Peter Parker is an outcast high schooler abandoned by his parents as a boy, leaving him to be raised by his Uncle Ben and Aunt May. Like most teenagers, Peter is trying to figure out who he is and how he got to be the person he is today. As Peter discovers a mysterious briefcase that belonged to his father, he begins a quest to understand his parents’ disappearance – leading him directly to Oscorp and the lab of Dr. Curt Connors, his father’s former partner. As Spider-Man is set on a collision course with Connors’ alter ego, The Lizard, Peter will make life-altering choices to use his powers and shape his destiny to become a hero.

Rated PG-13 | Length 136 minutes

Actors

Sally Field | Vincent Laresca | C. Thomas Howell | Denis Leary | Embeth Davidtz | Rhys Ifans | Stan Lee | Martin Sheen | Michael Massee | Jay Caputo | Keith Campbell | Michael Papajohn | Andrew Garfield | Emma Stone | Campbell Scott | John Burke | Hannah Marks | Skyler Gisondo | Ethan Cohn | Jennifer Lyons | Steve DeCastro | Tia Texada | Irrfan Khan | Kevin McCorkle | Danielle Burgio | Jill Flint | Kari Coleman | Barbara Eve Harris | Amanda MacDonald | Kelsey Asbille | Chris Zylka | Max Charles | Jacob Rodier | James Chen | Alexander Bedria | Miles Elliot | Leif Gantvoort | Mark Daugherty | Amber Stevens | Terry Bozeman | Andy Pessoa | Ty Upshaw | Jake Keiffer | Michael Barra | Andy Gladbach | Ring Hendricks-Tellefsen | Tom Waite | Max Bogner | Charlie DePew | Damien Lemon | Milton González | Miranda LaDawn Hill | Maury Morgan

Viewing Notes

Well. Enjoyed this much, MUCH more than I expected based on all the chatter I’ve endured over the last couple of weeks since its release. Maybe it was a good thing I held off this long so that my expectations were properly in check. Sure, there are flaws and the underlying notion that this is a movie that doesn’t need to be. Regardless I still like this film quite a bit and would easily watch it again.

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