• Stars
    star
    1,452
  • Rank 32,405 (Top 0.7 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created over 9 years ago
  • Updated about 2 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Export Django monitoring metrics for Prometheus.io

django-prometheus

Export Django monitoring metrics for Prometheus.io

Join the chat at https://gitter.im/django-prometheus/community

PyPI version Build Status Coverage Status PyPi page link -- Python versions Code style: black

Features

This library provides Prometheus metrics for Django related operations:

Usage

Requirements

  • Django >= 3.2
  • Python 3.7 and above.

Installation

Install with:

pip install django-prometheus

Or, if you're using a development version cloned from this repository:

python path-to-where-you-cloned-django-prometheus/setup.py install

This will install prometheus_client as a dependency.

Quickstart

In your settings.py:

INSTALLED_APPS = [
   ...
   'django_prometheus',
   ...
]

MIDDLEWARE = [
    'django_prometheus.middleware.PrometheusBeforeMiddleware',
    # All your other middlewares go here, including the default
    # middlewares like SessionMiddleware, CommonMiddleware,
    # CsrfViewmiddleware, SecurityMiddleware, etc.
    'django_prometheus.middleware.PrometheusAfterMiddleware',
]

In your urls.py:

urlpatterns = [
    ...
    path('', include('django_prometheus.urls')),
]

Configuration

Prometheus uses Histogram based grouping for monitoring latencies. The default buckets are:

PROMETHEUS_LATENCY_BUCKETS = (0.01, 0.025, 0.05, 0.075, 0.1, 0.25, 0.5, 0.75, 1.0, 2.5, 5.0, 7.5, 10.0, 25.0, 50.0, 75.0, float("inf"),)

You can define custom buckets for latency, adding more buckets decreases performance but increases accuracy: https://prometheus.io/docs/practices/histograms/

PROMETHEUS_LATENCY_BUCKETS = (.1, .2, .5, .6, .8, 1.0, 2.0, 3.0, 4.0, 5.0, 6.0, 7.5, 9.0, 12.0, 15.0, 20.0, 30.0, float("inf"))

Monitoring your databases

SQLite, MySQL, and PostgreSQL databases can be monitored. Just replace the ENGINE property of your database, replacing django.db.backends with django_prometheus.db.backends.

DATABASES = {
    'default': {
        'ENGINE': 'django_prometheus.db.backends.sqlite3',
        'NAME': os.path.join(BASE_DIR, 'db.sqlite3'),
    },
}

Monitoring your caches

Filebased, memcached, redis caches can be monitored. Just replace the cache backend to use the one provided by django_prometheus django.core.cache.backends with django_prometheus.cache.backends.

CACHES = {
    'default': {
        'BACKEND': 'django_prometheus.cache.backends.filebased.FileBasedCache',
        'LOCATION': '/var/tmp/django_cache',
    }
}

Monitoring your models

You may want to monitor the creation/deletion/update rate for your model. This can be done by adding a mixin to them. This is safe to do on existing models (it does not require a migration).

If your model is:

class Dog(models.Model):
    name = models.CharField(max_length=100, unique=True)
    breed = models.CharField(max_length=100, blank=True, null=True)
    age = models.PositiveIntegerField(blank=True, null=True)

Just add the ExportModelOperationsMixin as such:

from django_prometheus.models import ExportModelOperationsMixin

class Dog(ExportModelOperationsMixin('dog'), models.Model):
    name = models.CharField(max_length=100, unique=True)
    breed = models.CharField(max_length=100, blank=True, null=True)
    age = models.PositiveIntegerField(blank=True, null=True)

This will export 3 metrics, django_model_inserts_total{model="dog"}, django_model_updates_total{model="dog"} and django_model_deletes_total{model="dog"}.

Note that the exported metrics are counters of creations, modifications and deletions done in the current process. They are not gauges of the number of objects in the model.

Starting with Django 1.7, migrations are also monitored. Two gauges are exported, django_migrations_applied_by_connection and django_migrations_unapplied_by_connection. You may want to alert if there are unapplied migrations.

If you want to disable the Django migration metrics, set the PROMETHEUS_EXPORT_MIGRATIONS setting to False.

Monitoring and aggregating the metrics

Prometheus is quite easy to set up. An example prometheus.conf to scrape 127.0.0.1:8001 can be found in examples/prometheus.

Here's an example of a PromDash displaying some of the metrics collected by django-prometheus:

Example dashboard

Adding your own metrics

You can add application-level metrics in your code by using prometheus_client directly. The exporter is global and will pick up your metrics.

To add metrics to the Django internals, the easiest way is to extend django-prometheus' classes. Please consider contributing your metrics, pull requests are welcome. Make sure to read the Prometheus best practices on instrumentation and naming.

Importing Django Prometheus using only local settings

If you wish to use Django Prometheus but are not able to change the code base, it's possible to have all the default metrics by modifying only the settings.

First step is to inject prometheus' middlewares and to add django_prometheus in INSTALLED_APPS

MIDDLEWARE = \
    ['django_prometheus.middleware.PrometheusBeforeMiddleware'] + \
    MIDDLEWARE + \
    ['django_prometheus.middleware.PrometheusAfterMiddleware']

INSTALLED_APPS += ['django_prometheus']

Second step is to create the /metrics end point, for that we need another file (called urls_prometheus_wrapper.py in this example) that will wraps the apps URLs and add one on top:

from django.urls import include, path


urlpatterns = []

urlpatterns.append(path('prometheus/', include('django_prometheus.urls')))
urlpatterns.append(path('', include('myapp.urls')))

This file will add a "/prometheus/metrics" end point to the URLs of django that will export the metrics (replace myapp by your project name).

Then we inject the wrapper in settings:

ROOT_URLCONF = "graphite.urls_prometheus_wrapper"

Adding custom labels to middleware (request/response) metrics

You can add application specific labels to metrics reported by the django-prometheus middleware. This involves extending the classes defined in middleware.py.

  • Extend the Metrics class and override the register_metric method to add the application specific labels.
  • Extend middleware classes, set the metrics_cls class attribute to the the extended metric class and override the label_metric method to attach custom metrics.

See implementation example in the test app

More Repositories

1

awesome-monorepo

A curated list of awesome Monorepo tools, software and architectures.
5,212
star
2

WhatTheRack

WhatTheRack randomizes your VCV Rack so you make new discoveries
C++
37
star
3

bazel-travis

Use Bazel with Travis-CI
Python
37
star
4

grpc-bazel

A demo of how to use gRPC with Bazel
C++
36
star
5

fake_clock

A C++11-compliant fake clock useful for C++ unit tests that depend on time.
C++
21
star
6

prometheus-rules

Collection of Prometheus rules I use.
21
star
7

Milkrack

Old Skool Winamp Milkrack visuals in your VCV Rack
C++
20
star
8

agenix-systemd

Integrate agenix and systemd-creds together
Nix
19
star
9

golang-latex-listings

Golang definition for LaTeX's listings mode. Code coloration for Go in your LaTeX files!
TeX
19
star
10

PIDController

Simple PID controller
Python
18
star
11

client_cpp

A (tentative) C++ client for Prometheus.io
C++
10
star
12

showtmux

Interactive terminal-based live demos that don't go wrong
Python
8
star
13

odon

On-Demand ONions: utility to create Tor hidden services on-demand
Python
7
star
14

Bargkass

Bargkass modules for VCV Rack
C++
3
star
15

OPL33t

OPL modules for VCV Rack
C++
3
star
16

python-gc-prometheus

Export metrics about your Python application's GC stats to Prometheus.io
Python
2
star
17

pip-prometheus

Export the version of Pip packages to Prometheus
Python
2
star
18

python-logging-prometheus

Export metrics about your logging to Prometheus.io
Python
2
star
19

goref

[Go] Where is this function used? Who imports this package? Now you can find out, at scale!
Go
2
star
20

my_kernel

C
1
star
21

dotfiles

My dotfiles
Emacs Lisp
1
star
22

tasty-pies

Sonic pies.
1
star
23

CodingTricks

C++
1
star
24

intro_to_asymmetric_crypto

Talks I gave about asymmetric cryptography
Python
1
star