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43 lines (34 loc) · 1.31 KB
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#Below we create the above dataset using random function. Let us generate a dataframe for 1000 randomly generate t-shirt information.
import random
import pandas as pd
import matplotlib
import matplotlib.pyplot as plt
import numpy as np
import string
import seaborn as sns
print('matplotlib: {}'. format( matplotlib. __version__))
sizes = ["S", "M", "L", "XL","XXL"]
colors = ["black", "red", "white", "blue"]
#Below we create functions to generate a probable value for each column attribute randomly.
def generate_random_id():
return str(random.randrange(100,999))+random.choice(string.ascii_uppercase)
def generate_random_size():
return random.choices(sizes,weights=[0.15, 0.32, 0.28,0.20,0.05])[0]
def generate_random_color():
return random.choice(colors)
def generate_random_price():
return round(random.uniform(0, 10000),2)
def generate_random_stock():
return random.randrange(12,2345)
total_no_of_tshirts=1000
data = []
for i in range(total_no_of_tshirts):
row = []
row.append(generate_random_id())
row.append(generate_random_size())
row.append(generate_random_color())
row.append(generate_random_price())
row.append(generate_random_stock())
data.append(row)
df=pd.DataFrame(data,columns = ['id', 'size','color','price','stock'])
print(df)