When Can a Return Statement Terminate a Loop in Python?
Return Statements in For Loops
In Python, a return statement within a loop can prematurely terminate the loop. This can lead to unexpected behavior, as seen in the example provided.
In the given code, the function make_list() aims to collect data for three pets. However, due to the placement of the return statement within the loop, only data for the first pet is recorded. This is because the return statement immediately exits the function after the first iteration of the loop.
To rectify this issue, the return statement should be moved outside the loop, allowing the loop to complete all three iterations before the function returns. Here is the corrected code:
<code class="python">import pet_class #The make_list function gets data from the user for three pets. The function # returns a list of pet objects containing the data. def make_list(): #create empty list. pet_list = [] #Add three pet objects to the list. print 'Enter data for three pets.' for count in range (1, 4): #get the pet data. print 'Pet number ' + str(count) + ':' name = raw_input('Enter the pet name:') animal = raw_input('Enter the pet animal type:') age = raw_input('Enter the pet age:') #create a new pet object in memory and assign it #to the pet variable pet = pet_class.PetName(name,animal,age) #Add the object to the list. pet_list.append(pet) return pet_list pets = make_list()</code>
With this modification, the function will properly collect data for all three pets, as intended.
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