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I have an app which has a search feature. This feature looks up the search term in a giant object (dictionary) that I cache for 24 hours. The object is about 50,000 keys and weighs roughly 10MB.

When I profile the memory usage on my hosting, I notice that after a few queries, the memory usage goes from around 50MB to over 450MB, prompting my hosting provider to kill the app.

So I'm wondering what is going on here. Specifically, how does the cache utilize the memory on each request and what can I do to fix this?

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What caching technology are you using? Memcached? – Lycha May 19 '12 at 18:39
At the moment, I'm using FileBasedCache – Abid A May 19 '12 at 18:43
File cache won't cause memory leak. Does your project have other places where you store querysets or objects in local memory? I.e as contenttype manager does – San4ez May 19 '12 at 19:26
Not that I know of. Once I grab the IDs that I need from the cached object, I perform a query and pass along the results to the template. That's it. – Abid A May 19 '12 at 19:45
Then it might be the query itself. Log the searching items that dramatically increase the memory footprint and profile its query. – okm May 20 '12 at 9:21

Django FileBasedCache is known for having performance issues. You can get a big picture on the following links:

A smarter filebasedcache for Django

Bug: File based cache not very efficient with large amounts of cached files

Bug was set as wont fix arguing:

I'm going to wontfix, on the grounds that the filesystem cache is intended as an easy way to test caching, not as a serious caching strategy. The default cache size and the cull strategy implemented by the file cache should make that obvious.

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I don't cache a bunch of objects as mentioned in your examples. I have one with a bunch of keys. I don't think your example applies. Also, the memory usage goes up after each query - it plateaus at some point, but then my hosting provider kills the app. – Abid A May 25 '12 at 20:57

Consider using a KVS like Memcache or Redis as a caching strategy because they both support expiry. Also, consider a dedicated search like ElasticSearch if more anticipated features will be search-related.

Tools are howtos are available:

Installing memcached for a django project





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