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Movies Recommender System

A movie recommender system using nlp-based techniques called Word Embedding. It will calculate the distance between the most similar movies based on Cosine similarity. You can use other distance measurement techniques like Euclidean Distance or Manhattan Distance. You can also try out Document Embedding instead of Word Embedding.

You can follow my tutorial on youtube ->

Try Demo!

No need to install try it out. -> https://moviesrecommendersystemcontent.herokuapp.com/

Requirements

  • pandas
  • requests
  • streamlit

Installation

Must have to satisfy all the requirements

  streamlit run app.py

FAQ

Which Dataset used?

TMDB 5000 Movie Dataset link -> https://www.kaggle.com/datasets/tmdb/tmdb-movie-metadata

Does it use any API?

Yes, link -> https://developers.themoviedb.org/3/

🔗 Links

Connect with me:

analyticalnahid analyticalnahid analyticalnahid iamtechnicalnahid analyticalnahid https://analyticalnahid.medium.com https://www.youtube.com/channel/UCLeFKnFwC11FQWvtFk32vJQ