Normality Test for Big Data
Project description
Empirical Normality Test
A normality test based on empirical rule for big data
Installation
pip install big-data-normality
Get started
How to get normality test for dataset with this lib:
# Library import
from big_data_normality.empirical_normality_test import EmpiricalNormalityTest
# This line of code will allow shorter imports
from big_data_normality import EmpiricalNormalityTest
# Instantiate a EmpiricalNormalityTest object
"""Firstly, import the excel file, then run the library
P.S. Excel file must include name of each column. Like that;
name1 name2 name3 name4 ...
73,36 72,64 68,45 66,52 ...
78,97 67,04 60,85 70,96 ...
... ... ... ... ...
"""
import os
import pandas as pd
path = r'C:\data'
os.chdir(path)
df = pd.read_excel("my_dataset.xlsx")
print(EmpiricalNormalityTest(df))
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