Tools for statistical profiling.
Project description
Introduction
The ox_profile package provides a python framework for statistical profiling. If you are using Flask, then ox_profile provides a flask blueprint so that you can start/stop/analyze profiling from within your application. You can also run the profiler stand-alone without Flask as well.
Why statistical profiling?
Python contains many profilers which instrument your code and give you exact results. A main benefit here is you know exactly what your program is doing. The disadvantage is that there can be significant overhead. With a statistical profiler such as ox_profile, we sample a running program periodically to get a sense of what the program is doing with an overhead that can be tuned as desired.
One main use case for ox_profile specifically (and statistical profiling in general) is that you can apply it to a production server to see how things work “in the wild”.
Usage
With Flask
If you are using the python flask framework and have installed ox_profile (e.g., with pip install ox_profile) then you can simply do the following in the appropriate place after initializing your app:
from ox_profile.ui.flask.views import OX_PROF_BP app.register_blueprint(OX_PROF_BP) app.config['OX_PROF_USERS'] = {<admin_user_1>, <admin_user_2>, ...}
where <admin_user_>, etc. are strings referring to users who are allowed to access ox_profile.
Pointing your browser to the route /ox_profile/status will then show you the profiling status. By default, ox_profile starts out paused so that it will not incur any overhead for your app. Go to the /ox_profile/unpause route to unpause and begin profiling so that /ox_profile/status shows something interesting.
Stand alone
You can run the profiler without flask simply by starting the launcher and then running queries when convenient via something like:
>>> from ox_profile.core import launchers >>> launcher = launchers.SimpleLauncher() >>> launcher.start() >>> launcher.unpause() >>> <call some functions> >>> query, total_records = launcher.sampler.my_db.query() >>> info = ['%s: %s' % (i.name, i.hits) for i in query] >>> print('Items in query:\n - %s' % (('\n - '.join(info)))) >>> launcher.cancel() # This turns off the profiler for good
Output
Currently ox_profile is in alpha mode and so the output is fairly bare bones. When you look at the results of launcher.sampler.my_db.query() in stand alone mode or at the /ox_profile/status route when running with flask, what you get is a raw list of each function your program has called along with how many times that function was called in our sampling.
Known Issues
Granularity
With statistical profiling, we need to ask the thread to sleep for some small amount so that it does not overuse CPU resources. Sadly, the minimum sleep time (using either time.sleep or wait on a thread event) is on the order of 1–10 milliseconds on most operating systems. This means that you can not efficiently do statistical profiling at a granularity finer than about 1 millisecond.
Thus you should consider statistical profiling as a tool to find the relatively slow issues in production and not a tool for optimizing issues faster than about a millisecond.
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