Skip to main content

A utility for caching/throttling function calls.

Project description

Features

  • Graceful handling of errors (can fall back to cached value)

  • Calculate results in background (requires Celery)

  • Readable duration strings (‘1 day’ vs 86400)

  • Correct handling of None

  • Per-call invalidation

Installation

  1. pip install django-throttleandcache

  2. Set a cache backend in your settings.py file.

Usage

from throttleandcache import cache

# Cache the result of my_function for 3 seconds.
@cache('3s')
def my_function():
    return 'whatever'

If you call the function multiple times with the same arguments, the result will be fetched from the cache. In order to invalidate the cache for that call, call my_function.invalidate() with the same arguments:

my_function()
my_function() # Result pulled from cache
my_function.invalidate()
my_function() # Not from cache

If Celery is installed, you can remove the the calculation of new values from the request/response cycle:

@cache('3s', background=True)
def my_function():
    return 'whatever'

Note that, in the case of a cold cache, the value will still be calculated synchronously. Stale values may be used while new ones are being calculated.

Remember that calling the same method on multiple instances means that each invocation will have a different first positional (self) argument:

class A(object):
    @cache('100s')
    def my_function(self):
        print 'The method is being executed!'

instance_1 = A()
instance_2 = A()
instance_1.my_function() # The original method will be invoked
instance_2.my_function() # Different "self" argument, so the method is invoked again.

If you wish to cache the result across all instances, use @cacheforclass.

The first argument to the cache decorator is the timeout and can be given as a number (of seconds) or a string. Since strings contain units, they can make your code much more readable. Some examples are ‘2s’, ‘3m’, ‘3m 2s’, and ‘3 minutes, 2 seconds’.

The cache decorator also accepts the following (optional) keyword arguments:

  • using: specifies which cache to use.

  • key_prefix: A string to prefix your cache key with.

  • key_func: A function for deriving the cache key. This function will be

    passed the fn, *args, and **kwargs.

  • graceful: This argument specifies how errors should be handled. If

    graceful is True and your function raises an error, throttleandcache will log the error and return the cached value. If no cached value exists, the original error is raised.

  • background: Specifies that new values should be calculated in the

    background (using Celery).

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

django-throttleandcache-2.0.2.tar.gz (7.9 kB view details)

Uploaded Source

File details

Details for the file django-throttleandcache-2.0.2.tar.gz.

File metadata

File hashes

Hashes for django-throttleandcache-2.0.2.tar.gz
Algorithm Hash digest
SHA256 b13a3d387ca210427952f1d66e51d4a06b7cd0c8e7286dae58a812d284987e9a
MD5 f867a603bd0c57ac90b29d3f34248fca
BLAKE2b-256 461dcb4a661a1025bbe6b618a7809daea8e9da1f0c87e41a8ca120c236928bae

See more details on using hashes here.

Provenance

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page