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Dogslow-Sentry -- Django Slow Request Watchdog

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Overview

Dogslow is a Django watchdog middleware that logs tracebacks of slow requests. Dogslow-sentry requires Python 3.7+, Django 2.2+.

It started as an internal project inside Bitbucket to help trace operational problems.

In 2021, the dogslow-sentry fork was created to add Sentry-specific information to reports, like full stack trace, request information, fingerprint for issue grouping, breadcrumbs, etc.

Installation

Install dogslow-sentry:

$ pip install dogslow-sentry

Then add dogslow_sentry.WatchdogMiddleware to your Django settings file:

MIDDLEWARE = [
    'dogslow_sentry.WatchdogMiddleware',
    ...
]

For best results, make it one of the first middlewares that is run.

Configuration

Naturally, dogslow-sentry expects a working Sentry configuration for Django.

You can use the following configuration in your settings.py file to tune the watchdog:

# Watchdog is enabled by default, to temporarily disable, set to False:
DOGSLOW = True

# Log requests taking longer than 25 seconds:
DOGSLOW_TIMER = 25

# Enable logging to Sentry
DOGSLOW_SENTRY = True

# Also log slow request tracebacks to Python logger
DOGSLOW_LOGGER = 'dogslow_sentry'
DOGSLOW_LOG_LEVEL = 'WARNING'

# Tuple of url pattern names that should not be monitored:
# (defaults to none -- everything monitored)
DOGSLOW_IGNORE_URLS = ('some_view', 'other_view')

Usage

Every incoming HTTP request gets a 25 second timeout in the watchdog. If a request does not return within that time, the watchdog activates and takes a peek at the request thread's stack and writes the backtrace (including all local stack variables -- Django style) to a log file.

Note that dogslow only takes a peek at the thread's stack. It does not interrupt the request, or influence it in any other way. Using dogslow is therefore safe to use in production.

Changelog

2.0.1 (2023-12-08)

  • Use ISO 8601-like YYYY-MM-DD date format for email/file logging.
  • Fixed deprecation warnings on Python 3.12 (utcnow function).
  • Enabled CI testing with Python 3.11, 3.12 and Django 5.0, 4.2, 4.1.

2.0.0 (2021-12-13)

  • Configured GitHub Actions for CI.
  • Enabled testing with Python 3.10 and Django 4.0.
  • Fixed deprecation warning when using Python 3.10.

2.0.0b1 (2021-07-19)

  • Initial pre-release of dogslow-sentry fork.
  • Improved Sentry integration.
  • Dropped Python 2.7 support, now requires Python 3.7+, Django 2.2+.
  • Many minor tweaks. Reformatted code with Black.

1.2 (2018-01-04)

  • Last release of upstream dogslow package.

Caveats

Dogslow uses multithreading. It has a single background thread that handles the watchdog timeouts and takes the tracebacks, so that the original request threads are not interrupted. This has some consequences.

Multithreading and the GIL

In CPython, the GIL (Global Interpreter Lock) prevents multiple threads from executing Python code simultaneously. Only when a thread explicitly releases its lock on the GIL, can a second thread run.

Releasing the GIL is done automatically whenever a Python program makes blocking calls outside of the interpreter, for example when doing IO.

For dogslow this means that it can only reliably intercept requests that are slow because they are doing IO, calling sleep or busy waiting to acquire locks themselves.

In most cases this is fine. An important cause of slow Django requests is an expensive database query. Since this is IO, dogslow can intercept those fine. A scenario where CPython's GIL is problematic is when the request's thread hits an infinite loop in Python code (or legitimate Python that is extremely expensive and takes a long time to execute), never releasing the GIL. Even though dogslow's watchdog timer thread does become runnable, it cannot log the stack.

Co-routines and Greenlets

Dogslow is intended for use in a synchronous worker configuration. A webserver that uses dedicated threads (or single-threaded, dedicated worker processes) to serve requests. Django's built-in wsgi server does this, as does Gunicorn in its default sync-worker mode.

When running with a "co-routines framework" where multiple requests are served concurrently by one thread, backtraces might become nonsensical.