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Movies, Cinema & TV

 Some of the best heartfelt, cosy and feel-good movies S3 has watched or plan to soon. The list also includes eternal classics:

INDIA

  1. Raincoat (2004) : A man visits his long-lost lover once again, on a rainy day. Inspired by O Henry's "Gift of Magi".
  2. Parineeta 
  3. Tum Bin (2001) youtube
  4. Bheed (2022)
  5. Mohabatein (2001)
  6. Bhool-Bhulaiyaa
  7. Sawdes
  8. Hera-Pheri
  9. Hum Saath Saath Hein
  10. Maqbool (2003)
USA / UK
  1. Arrival 


JAPAN

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