


How Can I Duplicate Python Application Output (Including System Calls) to Both the Console and a Log File?
Nov 29, 2024 am 08:24 AMRedirecting and Duplicating Output to a Log File
You aspire to achieve the functionality of the command line 'tee' utility, where all output generated by your Python application, including system call output, is duplicated to a log file.
Redirection
Your initial approach involved duplicating the file descriptors of sys.stdout and sys.stderr to the log file, which successfully redirects output to the log in daemon mode. However, this method falls short in interactive mode as it hinders the concurrent display of output on the screen.
Duplication
To achieve duplication, simply reversing the dup2 calls is not sufficient. Instead, you can employ a technique that intercepts sys.stdout and duplicates the written data to both the screen and the log file.
Solution
The snippet below provides an elegant solution:
class Tee(object): def __init__(self, name, mode): self.file = open(name, mode) self.stdout = sys.stdout sys.stdout = self def __del__(self): sys.stdout = self.stdout self.file.close() def write(self, data): self.file.write(data) self.stdout.write(data) def flush(self): self.file.flush()
This class encapsulates the file descriptor duplication and offers a seamless way to write to both sys.stdout and the log file. You can initialize an instance of Tee and pass in the log file details as arguments. The instance then becomes the new sys.stdout.
Conclusion
By using this method, you can achieve both redirection (in daemon mode) and duplication (in interactive mode) of all application output, including system call output, to a log file.
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