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I have a Python-based maximum entropy classifier. It's large, stored as a Pickle, and takes about a minute to unserialize. It's also not thread safe. However, it runs fast and can classify a sample (a simple Python dictionary) in a few milliseconds.

I'd like to create a basic Django web app, so users can submit samples to classify in realtime. How would I load the classifier into persistent memory once, and then regulate it so that each request can access the object without conflicting with other requests?

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up vote 4 down vote accepted

you could use djangos cache-framework and set the timeout to a extreme value

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Clever and dead-simple to implement. Great suggestion. – Cerin Feb 28 '10 at 15:07

Consider running it in another process. You could have your Django application submit samples via a socket that the classifier process listens on, or you could run a queue and have Django submit requests to the queue.

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Yes, running the classifier in it's own server would work, but that seems overkill. I was looking for something that utilizes Django's framework. – Cerin Feb 27 '10 at 3:18

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