How to input a list in python
In python, you can use square brackets "[ ]" to represent a list. The syntax for inputting a list is "bicycles = ['trek'.'cannondale','redline']". This statement means that a list has been created. A list called "bicycles".
#What is a list in python? A list consists of a series of elements arranged in a specific order. You can create a list that contains all the letters of the alphabet, the numbers 0 to 9, or the names of all your family members. You can also add anything to the list, and the elements don't have to have any relationship with each other.
How to input a list in Python?
In Python, square brackets ([ ]) are used to represent lists, and commas are used to separate elements. The following is a simple list example. This list contains several types of bicycles:
#As shown above, we created a list named bicycles, where, 'trek' , 'cannondale', 'redline' are the three elements of this list, separated by commas
Sometimes, we need to receive other data and need an empty list, so how to create an empty list? ? As shown below:
This creates an empty list named z. There are no elements in this list.
If you want to add all the elements in the list How to print it out? Look at the following example:
As you can see, we only need to print the name of the list, and all three elements in it will be printed. The output results are the same. is a list!
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