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Kaggle Competition - Titanic Passenger Survivability.

Analyses & classification forecast for Titanic Passengers.

From exploratory data analysis, EDA, to hypothesis proposal, througth data preparation, ending up with evaluation of some classification algorithms' machine learning.

Author: Adam S. Barreto Malcher

As one of mustly famous machine learning competition on Kaggle, Titanic - Machine Learning from Disaster is a great start to test your data science and machine learning skills that you already gathered, like data handle, statistical analysis, data transformation and classification algorithms.