A/B Testing Quiz

Complete the code by dragging and dropping the correct functions

Topics:
Mobile-Friendly Drag and Drop

Category: code completion

Question:
Complete the code below

Instructions:

Drag and drop or rearrange the boxes to complete the task

old_conversions
new_conversions
new_visits
seed(42)
(500, 1000, size=7)
np.random.randint
old_visits


import numpy as np

# Set random seed for reproducibility
np.random.
      
# Generate data for the old layout old_visits =
      
(500, 1000, size=7) old_conversions = np.random.randint(50, 100, size=7) # Generate data for the new layout new_visits = np.random.randint
      
new_conversions = np.random.randint(60, 110, size=7) # Calculate conversion rates old_conversion_rates =
      
/
      
new_conversion_rates =
      
/
      
print("Old Conversion Rates",old_conversion_rates) print("NEW Conversion Rates",new_conversion_rates)

Output:

Old Conversion Rates [0.11627907  0.09411765  0.08018868  0.09350649  0.0990099   0.10507881  0.10610465]
Old Conversion Rates [0.06995413  0.13856427  0.11990687  0.13671275  0.15396825  0.09399076  0.0990099 ]

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