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I am using the following script to create some rss snapshots (just saying).

The script runs on a backend and I am having some very heave ever increasing memory consumption.

class StartHandler(webapp2.RequestHandler):

    def get(self):
        user_keys = User.query().fetch(1000, keys_only=True)
        if not user_keys:
        logging.info("Starting Process of Users")
        successful_count = 0
        start_time = time.time()
        for user_key in user_keys:
                this_start_time = time.time()
                statssnapshot = StatsSnapShot(parent=user_key,
                #makes a urlfetch
                successful_count += 1               
        logging.info("".join(("Processed: [",
                            "] users after [",
                            "] secs")))


Here is also the rss functions lets say:

def get_rss(self, url):
            result = urlfetch.fetch(url)
            if not result.status_code == 200:
                logging.warning("Invalid URLfetch")
        except urlfetch.Error, e:
            logging.warning("".join("Fetch Failed to get ",url," with",e))
        content = result.content #Around 500 - 200KB
        reobj = re.compile(r'(?<=")[0-9]{21}(?=")')
        user_ids = reobj.findall(content)
        user_ids = set(user_ids)#set to fail if something is not unique
        return user_ids

The script runs ok, but as the Users become more the script consumes more and more memory. Coming from C I don't know how to manipulate memory and variables in Python that efficient.

For example I know that if a varible in python is not referenced again the garbage collector frees the memeory used for that variable, but then what seems to be my case and where am I doing it wrong?

How can I optimize this script not to have an ever increasing memory usage, but only consume the memory required for each user process?

share|improve this question
I didn't spot any obvious memory leak in your code snippet, but 1/ I have no experience with GAE and 2/ there are parts of the code you did not submit (specially "StatsSnapShot"). Just a couple hints wrt/ being more pythonic: - logging.warning("".join("Fetch Failed to get ",url," with",e)) => logging.exception("Fetch Failed to get %s with %s", url, e) - set(someseq) will NOT 'fail if something is not unique' - never ever use a bare except clause (at least use logging.exception to have some feedback) – bruno desthuilliers Jan 21 '13 at 14:21
@brunodesthuilliers Meaning that will fail was typo, meant not douplicate. – Jimmy Kane Jan 21 '13 at 15:03
Did use_cache=False work as expected? – tesdal Jan 24 '13 at 13:53
@tesdal yes man everything ok. Give me some time and I ll validate the answer after some tests. Also disabled the memcache. – Jimmy Kane Jan 24 '13 at 14:02
Great, glad to hear it! The get_rss is also a good candidate for ndb async, either as a callback to query.map, or batched as barriers. You can have 100 simultaneous API calls which enables you to make it noticeably faster if backend is mainly waiting for urlfetches now. – tesdal Jan 24 '13 at 14:11
up vote 2 down vote accepted

NDB adds automatic caching, which is usually very convenient. You have in memory cache and memcached, and you can set policies for them.

When making a put, you can provide context options, and I suspect that the following would work for you:

share|improve this answer
Thank you very much. This solved my problem and saved a lot of resources. I also disabled memcache which also improved things a lot. A small thing to say is that on the dev server still it get's loads of memory but on the production works fine. – Jimmy Kane Jan 25 '13 at 16:36
Also I did't get the query.map async fetch ... – Jimmy Kane Jan 25 '13 at 16:39
Dev server has memcached emulation and uses sqllite, not external services so you get more memory usage. Regarding async, developers.google.com/appengine/docs/python/ndb/async is worth a read. – tesdal Jan 25 '13 at 21:08

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