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What is more efficient in Python in terms of memory usage and CPU consumption - Dictionary or Object?

Background: I have to load huge amount of data into Python. I created an object that is just a field container. Creating 4M instances and putting them into a dictionary took about 10 minutes and ~6GB of memory. After dictionary is ready, accessing it is a blink of an eye.

Example: To check the performance I wrote two simple programs that do the same - one is using objects, other dictionary:

Object (execution time ~18sec):

class Obj(object):
  def __init__(self, i):
    self.i = i
    self.l = []
all = {}
for i in range(1000000):
  all[i] = Obj(i)

Dictionary (execution time ~12sec):

all = {}
for i in range(1000000):
  o = {}
  o['i'] = i
  o['l'] = []
  all[i] = o

Question: Am I doing something wrong or dictionary is just faster than object? If indeed dictionary performs better, can somebody explain why?

share|improve this question
7  
You should really use xrange instead of range when generating large sequences like that. Of course, since you're dealing with seconds of execution time, it won't make much difference, but still, it's a good habit. – Xiong Chiamiov Aug 26 '09 at 19:41
up vote 104 down vote accepted

Have you tried using __slots__?

From the documentation http://docs.python.org/reference/datamodel.html#slots:

"By default, instances of both old and new-style classes have a dictionary for attribute storage. This wastes space for objects having very few instance variables. The space consumption can become acute when creating large numbers of instances.

The default can be overridden by defining __slots__ in a new-style class definition. The __slots__ declaration takes a sequence of instance variables and reserves just enough space in each instance to hold a value for each variable. Space is saved because __dict__ is not created for each instance."

So does this save time as well as memory?

Comparing the three approaches on my computer:

test_slots.py:

class Obj(object):
  __slots__ = ('i', 'l')
  def __init__(self, i):
    self.i = i
    self.l = []
all = {}
for i in range(1000000):
  all[i] = Obj(i)

test_obj.py:

class Obj(object):
  def __init__(self, i):
    self.i = i
    self.l = []
all = {}
for i in range(1000000):
  all[i] = Obj(i)

test_dict.py:

all = {}
for i in range(1000000):
  o = {}
  o['i'] = i
  o['l'] = []
  all[i] = o

test_namedtuple.py (supported in 2.6):

import collections

Obj = collections.namedtuple('Obj', 'i l')

all = {}
for i in range(1000000):
  all[i] = Obj(i, [])

Run benchmark (using CPython 2.5):

$ lshw | grep product | head -n 1
          product: Intel(R) Pentium(R) M processor 1.60GHz
$ python --version
Python 2.5
$ time python test_obj.py && time python test_dict.py && time python test_slots.py 

real    0m27.398s (using 'normal' object)
real    0m16.747s (using __dict__)
real    0m11.777s (using __slots__)

Using CPython 2.6.2, including the named tuple test:

$ python --version
Python 2.6.2
$ time python test_obj.py && time python test_dict.py && time python test_slots.py && time python test_namedtuple.py 

real    0m27.197s (using 'normal' object)
real    0m17.657s (using __dict__)
real    0m12.249s (using __slots__)
real    0m12.262s (using namedtuple)

So yes (not really a surprise), using __slots__ is a performance optimization. Using a named tuple has similar performance to __slots__.

share|improve this answer
1  
That is great - thanks! I've tried the same on my machine - object with slots is the most efficient approach (I got ~7sec). – tkokoszka Aug 26 '09 at 19:43
5  
There are also named tuples, docs.python.org/library/collections.html#collections.namedtuple , a class factory for objects with slots. It definitely neater and maybe even more optimized. – Jochen Ritzel Aug 26 '09 at 20:19
    
I tested named tuples as well, and updated the answer with the results. – codeape Aug 27 '09 at 8:05
    
Indeed the best answer – legesh Aug 27 '09 at 13:07
    
I ran your code a few times and was surprised my results differ - slots=3sec obj=11sec dict=12sec namedtuple=16sec. I'm using CPython 2.6.6 on Win7 64bit – Jonathan Jul 5 '11 at 13:24

Attribute access in an object uses dictionary access behind the scenes - so by using attribute access you are adding extra overhead. Plus in the object case, you are incurring additional overhead because of e.g. additional memory allocations and code execution (e.g. of the __init__ method).

In your code, if o is an Obj instance, o.attr is equivalent to o.__dict__['attr'] with a small amount of extra overhead.

share|improve this answer
    
Eh? Why the downvote? – Vinay Sajip Aug 26 '09 at 19:28
    
Did you test this? o.__dict__["attr"] is the one with extra overhead, taking an extra bytecode op; obj.attr is faster. (Of course attribute access isn't going to be slower than subscription access--it's a critical, heavily optimized code path.) – Glenn Maynard Aug 26 '09 at 19:29
    
Obviously if you actually do o.__dict__["attr"] it will be slower - I only meant to say that it was equivalent to that, not that it was implemented exactly in that way. I guess it's not clear from my wording. I also mentioned other factors such as memory allocations, constructor call time etc. – Vinay Sajip Aug 26 '09 at 19:34

Have you considered using a namedtuple? (link for python 2.4/2.5)

It's the new standard way of representing structured data that gives you the performance of a tuple and the convenience of a class.

It's only downside compared with dictionaries is that (like tuples) it doesn't give you the ability to change attributes after creation.

share|improve this answer
    
@Eloims Sorry, unclear wording. I have fixed it. – John Fouhy Feb 8 at 23:08

There is no question.
You have data, with no other attributes (no methods, nothing). Hence you have a data container (in this case, a dictionary).

I usually prefer to think in terms of data modeling. If there is some huge performance issue, then I can give up something in the abstraction, but only with very good reasons.
Programming is all about managing complexity, and the maintaining the correct abstraction is very often one of the most useful way to achieve such result.

About the reasons an object is slower, I think your measurement is not correct.
You are performing too little assignments inside the for loop, and therefore what you see there is the different time necessary to instantiate a dict (intrinsic object) and a "custom" object. Although from the language perspective they are the same, they have quite a different implementation.
After that, the assignment time should be almost the same for both, as in the end members are maintained inside a dictionary.

share|improve this answer
from datetime import datetime

ITER_COUNT = 1000 * 1000

def timeit(method):
    def timed(*args, **kw):
        s = datetime.now()
        result = method(*args, **kw)
        e = datetime.now()

        print method.__name__, '(%r, %r)' % (args, kw), e - s
        return result
    return timed

class Obj(object):
    def __init__(self, i):
       self.i = i
       self.l = []

class SlotObj(object):
    __slots__ = ('i', 'l')
    def __init__(self, i):
       self.i = i
       self.l = []

@timeit
def profile_dict_of_dict():
    return dict((i, {'i': i, 'l': []}) for i in xrange(ITER_COUNT))

@timeit
def profile_list_of_dict():
    return [{'i': i, 'l': []} for i in xrange(ITER_COUNT)]

@timeit
def profile_dict_of_obj():
    return dict((i, Obj(i)) for i in xrange(ITER_COUNT))

@timeit
def profile_list_of_obj():
    return [Obj(i) for i in xrange(ITER_COUNT)]

@timeit
def profile_dict_of_slotobj():
    return dict((i, SlotObj(i)) for i in xrange(ITER_COUNT))

@timeit
def profile_list_of_slotobj():
    return [SlotObj(i) for i in xrange(ITER_COUNT)]

if __name__ == '__main__':
    profile_dict_of_dict()
    profile_list_of_dict()
    profile_dict_of_obj()
    profile_list_of_obj()
    profile_dict_of_slotobj()
    profile_list_of_slotobj()

Results:

hbrown@hbrown-lpt:~$ python ~/Dropbox/src/StackOverflow/1336791.py 
profile_dict_of_dict ((), {}) 0:00:08.228094
profile_list_of_dict ((), {}) 0:00:06.040870
profile_dict_of_obj ((), {}) 0:00:11.481681
profile_list_of_obj ((), {}) 0:00:10.893125
profile_dict_of_slotobj ((), {}) 0:00:06.381897
profile_list_of_slotobj ((), {}) 0:00:05.860749
share|improve this answer

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