Movielogr

movie poster

Rating: 6.5 stars

Tags

bollywood hindi

Seen 1 time

Seen on: 01/17/2009

View on: IMDb | TMDb

Chandni Chowk to China (2009)

Directed by Nikhil Advani

Comedy | Adventure | Fantasy

Most recently watched by sleestakk

Overview

Based in Delhi’s Chandni Chowk, orphaned Sidhu is adopted by the owner of Bajrang Bali Parathas, known simply as Dada. Years later Sidhu has grown up and is an expert at slicing vegetables.

Length 154 minutes

Actors

Roger Yuan | Akshay Kumar | Deepika Padukone | Mithun Chakraborty | Ranvir Shorey | Conan Stevens | Kiran Juneja | Gordon Liu Chia-Hui | Tiffany Lau Yuk-Ting

Viewing Notes

I was thoroughly entertained by the new Bollywood release Chandni Chowk to China, a Bollywood Kung Fu affair (supposedly the first of its kind). Not the best Bollywood flick by any stretch but loads of fun. And Deepika Padukone is yet another gorgeous new actress to watch.

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