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Netflix Recommendation Platform

I made a Netflix-inspired Recommendation Platform in C++ that loads a database of 100,000 users and 20,000 movies from a text file in under a second and recommends movies to users based on their prior watch history.

Methodology:

  • I assigned weighted scores to movies, factoring in director (20 points), actor (30 points), and genre (1 point), resulting in top-ranked recommendations for user preferences.
  • I used binary search trees (BST) in multimaps for O(n) lookups, utilized unordered maps and vectors to store and update movie rankings for O(n log n) time complexity.