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  • !898

Add Rexy to the list of recommendation systems

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Closed Administrator requested to merge github/fork/kasraavand/master into master Jul 04, 2017
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Created by: kasraavand

What is this Python project?

Rexy is a hybrid recommendation system. It's written entirely in python-3.5 with highly optimized and Pythonic codes. It also has a comprehensive and powerful architecture based on the state-of-the-art design patterns in this realm. You can read the a detailed doc here

What's the difference between this Python project and similar ones?

  • The architecture is very comprehensive and specifically focused on 3 major User-Product-Tag entities.
  • The modules and provided functionality have unique and in some cases innovative ideas like using Wipazuka as a calendar-based WordNet for event-related recommendations.
  • It's written in python-3.5 in a Pythonic manner
  • Since it doesn't use complicated machine learning tools, it's easy for any python developer to cooperate in project
  • We will involve machine learning and deep learning algorithms and methods in a near feature by using most popular libraries and frameworks such as Numpy, Pandas, Scikit-learn and TensorFlow.
  • It's a movie star ;-) --

Anyone who agrees with this pull request could vote for it by adding a 👍 to it, and usually, the maintainer will merge it when votes reach 20.

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Source branch: github/fork/kasraavand/master