I have an iterator/generator which yields 'events'. An event consists of a name, a timestamp and a value. I want to store them in NumPy arrays.
This is done in
def _LoadTriples(abortEvt, count=): it = _YieldTriples() while True: if abortEvt.is_set(): it.close() break t0 = time.time() self.allEvents.append(np.fromiter(it, dtype=[('sigNameIdx', 'i'), ('time', 'f'), ('value', 'f8')], count=count[-1])) dur = time.time() - t0 if dur < 0.2: count.append(count[-1]*2) elif dur > 0.4 and count[-1] != 1: count.append(count[-1]/2) else: count.append(count[-1])
_YieldTriples is the generator,
abortEvt is the Event that tells me when the user abortes the iteration.
self.allEvents is an empty list. Here I want to append NumPy arrays with the Triples
(name, timestamp, value). It is a list of arrays because I want to have the possibility to break the iteration and I can't break
numpy.fromiter. So every about 0.3 seconds I can stop the iteration.
That all works fine. But, in one example it happens that Python quickly uses up 300MB memory for the list! When I stop the iteration my list only needs max 10 MB, depending on when I stopped it, but after some few calls to
self.allEvents.append(np.fromiter(...)) 300MB are used and I have absolutely no idea why.
Furthermore this memory isn't freed until I stop the whole program, even if I delete
self.allEvents directly after the call of that function. There must be some references which prevent me from releasing it. Is there any way to see which objects have references to the list?
One thing more to be mentioned: The function is called as a new
threading.Thread, but the mainthread waits for it...
Edit: I didn't mention, no more memory is allocated as the list grows, once the 300MB are in use. It seems like the list reserves this memory after some appends.