Titanic data analysis for python

Overview

Titanic-data-analysis

This Repo is an analysis on Titanic_mod.csv This csv file contains some assumed data of the Titanic ship after sinking This full is done in Python using Numpy

Functionalities we have done:-

  1. Reading a file without numpy
  2. Reading a file using numpy and storing it in numpy array
  3. Finding the occurences and top occurences in the file according to the condition
  4. fare comparisons with the survivors and non survivors
  5. Relation in:- i) Highest value of number of siblings and/or spouses onboard ii) Mean value of parents and/or children onboard iii) 50th-percentile value of fare paid iv) Cheapest non-zero fare paid
  6. Menu driven for Research analysis i. Compute Correlation ii. Ranked List of 20 Oldest Survivors by Passenger Cabin Class Number iii. Ranked List of 20 Female Survivors by Highest Non-Self Family Member Onboard Count and then by Highest fare
Owner
Hardik Bhanot
Hardik Bhanot
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