import numpy as np import pandas as pd import matplotlib.pyplot as plt import seaborn as sns from sklearn.cluster import KMeans from IPython.display import Image from sklearn.datasets.samples_generator import make_blobs def check_q1(stuff): a = 0 b = 60 c = 22.9 d = 4.53 e = 511.7 q1_dict = { 'number of missing values': a, 'the mean 5k time in minutes': c, 'the mean test score as a raw value': e, 'number of individuals in the dataset': b } if stuff == q1_dict: print("That looks right!") else: print("Oops! That doesn't look quite right! Try again.") def check_q5(stuff): a = 'We should always use normalizing' b = 'We should always scale our variables between 0 and 1.' c = 'Variable scale will frequently influence your results, so it is important to standardize for all of these algorithms.' d = 'Scaling will not change the results of your output.' if stuff == c: return Image(filename="./giphy.gif") else: print("Oops! That doesn't look quite right. Try again!")