I am in a process of switching from PHP to Python + Django and looking for equivalent of PHP's "Array cache".
For small data sets from DB like "categories" that was changing very rarely but accessed very often i was using array cache.
Concept of it was to generate PHP source with the tree of categories and when the opcode was turned on it was working like embedding data into application sources. It was the fastest imaginable cache, very helpful for large load.
Django manual(https://docs.djangoproject.com/en/1.4/topics/cache/) states:
By far the fastest, most efficient type of cache available to Django, Memcached..
So the questions are:
- Would generating a .py file with python dictionaries/lists made any sense?
- Will this be faster than Memcached? If not why?
- Are there any known implementations of this?
- Does Python have anything like var_export() function from PHP?
As pointed in an answer i can use repr() and this can be benchmarked easily so i have created a simple benchmark:
output of this on my local machine was:
FIRST RUN get_categories_from_db 6.57282209396 get_categories_from_memcached (SET CACHE IN 0.000940) 4.88948512077 get_categories_from_pickledfile (SET CACHE IN 0.000917) 2.87856888771 get_categories_from_pythonsrc (SET CACHE IN 0.000489) 0.0930788516998 SECOND RUN get_categories_from_db 6.63035202026 get_categories_from_memcached 4.60877108574 get_categories_from_pickledfile 2.87137699127 get_categories_from_pythonsrc 0.0903170108795
get_categories_from_pythonsrc is simple implementation of PHP's arraycache i was talking about:
def get_categories_from_pythonsrc(): if not os.path.exists('catcache.py'): start = time.time() f = open( 'catcache.py', 'wb' ) categories = get_categories_from_db() f.write('x = ' + repr(categories)) f.close() print '(SET CACHE IN %f)' % (time.time() - start) import catcache return catcache.x
this is my simple pickledfile cache implementation:
def get_categories_from_pickledfile(): path = 'catcache.p' if not os.path.exists(path): start = time.time() pickle.dump( get_categories_from_db(), open( path, 'wb' ) ) print '(SET CACHE IN %f)' % (time.time() - start) return pickle.load(open( path, 'rb' ));
I will later add "Django's low-level cache APIs" to this benchmark to see what they are about.
So as my intuition suggested caching dictionary in a python .py file is the fastest way i could get (over 30 times faster than cPickle + file)
As said i am new to Python so probably i am missing something here?
If not: why isn't this solution widely used?