


How Can I Execute One Python Script from Another, Especially When One is a Service?
Calling a Script from Another Script
Question:
How can one execute a script named "test1.py" from another script named "service.py" that is running as a service?
Answer:
To call a script from another script, the following approach is commonly employed:
test1.py:
def some_func(): print('in test 1, unproductive') if __name__ == '__main__': # test1.py executed as script # do something some_func()
service.py:
import test1 def service_func(): print('service func') if __name__ == '__main__': # service.py executed as script # do something service_func() test1.some_func()
This approach consists of the following steps:
- Define a function in test1.py: Create a function, such as "some_func()", in "test1.py" that encapsulates the code to be executed.
- Call the function in service.py: In "service.py", import "test1.py" and call the "some_func()" function from within the "service_func()" function.
- Entry point for each script: Ensure that the "if name == '__main__'" condition is used in both "test1.py" and "service.py" to distinguish between when the scripts are run as scripts themselves or imported by other scripts.
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