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We’re investigating gevent as a drop in performance enhancer for our Flask API. There is a lot of communication over psycopg2 and Redis in our codebase. We thought we’d try running the test suite with and without:

import gevent.monkey
gevent.monkey.patch_all()
import psycogreen.gevent
psycogreen.gevent.patch_psycopg()

My understanding is that patch_all() makes many blocking calls in the standard library more efficient on the whole by letting other threads perform work while waiting for the return call.

Our unit tests take about 160 seconds to run in total and the difference between gevent patched and non-patched was negligible. Should we be seeing the power of gevent in our test suite, or does it only reveal itself in a real life production environment?

More info: Using py.test running pretty regular python-2.7.2 unittest. Gevent 1.0rc2.

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1 Answer 1

Your understanding is correct, but are you running the tests in parallel? Perhaps using nose? My understanding is that gevent wont really improve the 'straight line speed' of any linear code path, its a mechanism to enable concurrency in a single process.

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I’ve looked into nose but it won’t work for our use case because we’re running our tests inside a single Postgres transaction (for speed) so the process locks the whole db. But it’s worth looking into I guess. –  Jökull Apr 29 '13 at 10:08

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