Awhile ago I wrote a Markov chain text generator for IRC in Python. It would consume all of my VPS's free memory after running for a month or two and I would need to purge its data and start over. Now I'm rewriting it and I want to tackle the memory issue as elegantly as possible.
The data I have to keep trimmed down is a generally a dictionary that maps strings to lists of strings. More specifically, each word in a message is mapped to all the possible subsequent words. This is still an oversimplification, but it's sufficient for contextualizing my problem.
Currently, the solution I'm wrestling with involves managing "buckets" of data. It would keep track of each bucket's apparent size, "archive" a bucket once it's reached a certain size and move on to a new one, and after 5 or so buckets it would delete the oldest "archived" bucket every time a new one is created. This has the advantage of simplicity: removing an entire bucket doesn't create any dead-ends or unreachable words because the words from each message all go into the same bucket.
The problem is that "keeping track of each bucket's apparent size" is easier said than done.
I first tried using
sys.getsizeof, but quickly found that it's impractical for determining the object's actual size in memory. I've also looked into guppy / heapy / various other memory usage modules, but none of them seem to do what I'm looking for (i.e. benchmark a single object). Currently I'm experimenting with the lower-level psutil module. Here's an excerpt from the current state of the application:
class Markov(object): # (constants declared here) def __init__(self): self.proc = psutil.Process(os.getpid()) self.buckets =  self._newbucket() def _newbucket(self): self.buckets.append(copy.deepcopy(self.EMPTY_BUCKET)) def _checkmemory(f): def checkmemory(self): # Check memory usage of the process and the entire system if (self.proc.get_memory_percent() > self.MAX_MEMORY or psutil.virtual_memory().percent > self.MAX_TOTAL_MEMORY): self.buckets.pop(0) # If we just removed the last bucket, add a new one if not self.buckets: self._newbucket() return f() return checkmemory @_checkmemory def process(self, msg): # generally, this adds the words in msg to self.buckets[-1] @_checkmemory def generate(self, keywords): # generally, this uses the words in all the buckets to create a sentence
The problem here is that this will only expire buckets; I have no idea when to "archive" the current bucket because Python's overhead memory prevents me from accurately determining how far I am from hitting
self.MAX_MEMORY. Not to mention that the
Markov class is actually one of many "plugins" being managed by a headless IRC client (another detail I omitted for brevity's sake), so the overhead is not only present, but unpredictable.
In short: is there a way to accurately benchmark single Python objects? Alternatively, if you can think of a better way to 'expire' old data than my bucket-based solution, I'm all ears.