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Natural Language Identification Machine Learning Pipeline

Graduate Project for Harvard's Python for Data Science (CSCI E - 29)

In this project, I pulled text data from European Parliament Proceedings in 21 languages. Using Scikit-Learn, I transformed the raw text into a numerical feature matrix, and trained a Multinomial naive bayes probability model to classify input language with greater than 99% accuracy.

Data Source: http://www.statmt.org/europarl/