


Executing External Scripts from Service Scripts
One often encounters the need to invoke external scripts from a script running as a service. This situation arises when the service script requires specific functionality provided by the external script. Let's examine how to accomplish this task.
Separate Script for External functionality
First, create a separate script, such as test1.py, that contains the desired functionality. The following code example demonstrates a basic test1.py script:
print("I am a test") print("see! I do nothing productive.")
Calling the External Script
To call the external script from within your service script, follow these steps:
- Define a function within the external script: Define the functionality you need to access in the external script as a function. This allows you to invoke it from the service script.
- Execute the service script: In the service script, first execute any necessary initialization code.
- Import the external script: Import the external script module using the import statement.
- Call the function: Utilize the . operator to access the function defined in the external script and invoke it.
Example Scripts
Here are example scripts that illustrate the process:
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 enables you to maintain modularity and separate functionality between scripts, ensuring that the service script specifically handles its tasks while leveraging the functionality of external scripts as needed.
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