I am writing scripts to process (very large) files by repeatedly unpickling objects until EOF. I would like to partition the file and have separate processes (in the cloud) unpickle and process separate parts.
However my partitioner is not intelligent, it does not know about the boundaries between pickled objects in the file (since those boundaries depend on the object types being pickled, etc.).
Is there a way to scan a file for a "start pickled object" sentinel? The naive way would be to attempt unpickling at successive byte offsets until an object is successfully pickled, but that yields unexpected errors. It seems that for certain combinations of input, the unpickler falls out of sync and returns nothing for the rest of the file (see code below).
import cPickle import os def stream_unpickle(file_obj): while True: start_pos = file_obj.tell() try: yield cPickle.load(file_obj) except (EOFError, KeyboardInterrupt): break except (cPickle.UnpicklingError, ValueError, KeyError, TypeError, ImportError): file_obj.seek(start_pos+1, os.SEEK_SET) if __name__ == '__main__': import random from StringIO import StringIO # create some data sio = StringIO() [cPickle.dump(random.random(), sio, cPickle.HIGHEST_PROTOCOL) for _ in xrange(1000)] sio.flush() # read from subsequent offsets and find discontinuous jumps in object count size = sio.tell() last_count = None for step in xrange(size): sio.seek(step, os.SEEK_SET) count = sum(1 for _ in stream_unpickle(file_obj)) if last_count is None or count == last_count - 1: last_count = count elif count != last_count: # if successful, these should never print (but they do...) print '%d elements read from byte %d' % (count, step) print '(%d elements read from byte %d)' % (last_count, step-1) last_count = count