Printing List Elements on Separate Lines in Python
When dealing with lists in Python, there may be instances where you prefer to have each element printed on a separate line for improved readability and organization. One way to achieve this is by utilizing the join() method, as demonstrated below:
import sys # Join the elements of 'sys.path' with a newline ('\n') separator path_as_str = "\n".join(sys.path) # Print the modified string, which now has each element on a separate line print(path_as_str)
In this code, the join() method is used to combine the elements of the sys.path list into a single string, with each element separated by a newline character ("n"). As a result, the output is now displayed with each path on its own line.
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