Kartik Aaryan's upcoming action entertainer film 'Shehzada' has been pushed by a week. (IANS)

 

Kartik Aaryan

Entertainment

'Pathaan' Effect: Release of Kartik Aaryan's 'Shehzada' pushed by a week

The release date of Bollywood star Kartik Aaryan's upcoming action entertainer film 'Shehzada' has been pushed by a week. The film, which also stars Kriti Sanon and Paresh Rawal was earlier supposed to release in cinemas on February 10 but now, it'll release on February 17.

NewsGram Desk

 The release date of Bollywood star Kartik Aaryan's upcoming action entertainer film 'Shehzada' has been pushed by a week. The film, which also stars Kriti Sanon and Paresh Rawal was earlier supposed to release in cinemas on February 10 but now, it'll release on February 17.

Senior film trade analyst Taran Adarsh notified about the new release date of the film through his Twitter. He wrote, "#BreakingNews... #Shehzada shifts to a new date... Will now arrive one week late, on 17 Feb 2023... This #KartikAaryan - #KritiSanon starrer is directed by #RohitDhawan".

The reason behind the release date of the film being pushed is being seen as the earth-shattering performance of Bollywood superstar Shah Rukh Khan's recent release 'Pathaan' at the box-office which while continuing its dream run at the box-office is setting up new records in film trade.

The performance of 'Pathaan' is reminiscent of the Allu Arjun-starrer 'Pushpa: The Rise', which set the box-office on fire and affected the business of films that were released with it or a few weeks after it.

'Pathaan', which also stars Deepika Padukone and John Abraham, is currently playing in theatres successfully despite boycott calls by certain outfits.

(SJ/IANS)

How to Store Vape Juice in Good Condition

Book Your Airport Taxi Limo Service Today for a Smooth and Stylish Arrival

American Children Who Appear to Recall Past-Life Memories Grow Up to Be Well-Adjusted Adults

In the ‘Wild West’ of AI Chatbots, Subtle Biases Related to Race and Caste Often Go Unchecked

Future of Education with Neuro-Symbolic AI Agents in Self-Improving Adaptive Instructional Systems