I need to parse the output produced by an external program (third party, I have no control over it) which produces large amounts of data. Since the size of the output greatly exceeds the available memory, I would like to parse the output while the process is running and remove from the memory the data that have already been processed.
So far I do something like this:
import subprocess p_pre = subprocess.Popen("preprocessor",stdout = subprocess.PIPE) # preprocessor is an external bash script that produces the input for the third-party software p_3party = subprocess.Popen("thirdparty",stdin = p_pre.stdout, stdout = subprocess.PIPE) (data_to_parse,can_be_thrown) = p_3party.communicate() parsed_data = myparser(data_to_parse)
When "thirdparty" output is small enough, this approach works. But as stated in the Python documentation:
The data read is buffered in memory, so do not use this method if the data size is large or unlimited.
I think a better approach (that could actually make me save some time),
would be to start processing
data_to_parse while it is being produces,
and when the parsing has been done correctly "clear"
the data that have already been parsed.
I have also tried to use a for cycle like:
parsed_data= for i in p_3party.stdout: parsed_data.append(myparser(i))
but it gets stuck and can't understand why.
So I would like to know what it is the best approach to accomplish this? What are the issues to be aware of?