tf.app.run() work in Tensorflow translate demo?
tensorflow/models/rnn/translate/translate.py, there is a call to
tf.app.run(). How is it being handled?
if __name__ == "__main__": tf.app.run()
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if __name__ == "__main__":
means current file is executed under a shell instead of imported as a module.
As you can see through the file
def run(main=None, argv=None): """Runs the program with an optional 'main' function and 'argv' list.""" f = flags.FLAGS # Extract the args from the optional `argv` list. args = argv[1:] if argv else None # Parse the known flags from that list, or from the command # line otherwise. # pylint: disable=protected-access flags_passthrough = f._parse_flags(args=args) # pylint: enable=protected-access main = main or sys.modules['__main__'].main # Call the main function, passing through any arguments # to the final program. sys.exit(main(sys.argv[:1] + flags_passthrough))
Let's break line by line:
flags_passthrough = f._parse_flags(args=args)
This ensures that the argument you pass through command line is valid,e.g.
python my_model.py --data_dir='...' --max_iteration=10000 Actually, this feature is implemented based on python standard
main = main or sys.modules['__main__'].main
main in right side of
= is the first argument of current function
sys.modules['__main__'] means current running file(e.g.
So there are two cases:
You don't have a
main function in
my_model.py Then you have to
you have a
main function in
my_model.py. (This is mostly the case.)
sys.exit(main(sys.argv[:1] + flags_passthrough))
my_main_running_function(argv) function is called with parsed arguments properly.
It's just a very quick wrapper that handles flag parsing and then dispatches to your own main. See the code.
In simple terms, the job of
tf.app.run() is to first set the global flags for later usage like:
from tensorflow.python.platform import flags f = flags.FLAGS
and then run your custom main function with a set of arguments.
For e.g. in TensorFlow NMT codebase, the very first entry point for the program execution for training/inference starts at this point (see below code)
if __name__ == "__main__": nmt_parser = argparse.ArgumentParser() add_arguments(nmt_parser) FLAGS, unparsed = nmt_parser.parse_known_args() tf.app.run(main=main, argv=[sys.argv] + unparsed)
After parsing the arguments using
tf.app.run() you run the function "main" which is defined like:
def main(unused_argv): default_hparams = create_hparams(FLAGS) train_fn = train.train inference_fn = inference.inference run_main(FLAGS, default_hparams, train_fn, inference_fn)
So, after setting the flags for global use,
tf.app.run() simply runs that
main function that you pass to it with
argv as its parameters.
P.S.: As Salvador Dali's answer says, it's just a good software engineering practice, I guess, although I'm not sure whether TensorFlow performs any optimized run of the
main function than that was run using normal CPython.
Google code depends on a lot on global flags being accessing in libraries/binaries/python scripts and so tf.app.run() parses out those flags to create a global state in FLAGs(or something similar) variable and then calls python main() as it should.
If they didn't have this call to tf.app.run(), then users might forget to do FLAGs parsing, leading to these libraries/binaries/scripts not having access to FLAGs they need.