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I started using the protocol buffer library, but noticed that it was using huge amounts of memory. pympler.asizeof shows that a single one of my objects is about 76k! Basically, it contains a few strings, some numbers, and some enums, and some optional lists of same. If I were writing the same thing as a C-struct, I would expect it to be under a few hundred bytes, and indeed the ByteSize method returns 121 (the size of the serialized string).

Is that you expect from the library? I had heard it was slow, but this is unusable and makes me more inclined to believe I'm misusing it.

Edit

Here is an example I constructed. This is a pb file similar, but simpler than what I've been using

    package pb;

message A {
    required double a       = 1;
}

message B {
    required double b       = 1;
}

message C {
    required double c       = 1;
    optional string s       = 2;
}

message D {
    required string d       = 1;
    optional string e       = 2;
    required A a            = 3;
    optional B b            = 4;
    repeated C c            = 5;
}

And here I am using it

>>> import pb_pb2
>>> a = pb_pb2.D()
>>> a.d = "a"
>>> a.e = "e"
>>> a.a.a = 1
>>> a.b.b = 2
>>> c = a.c.add()
>>> c.c = 5
>>> c.s = "s"
>>> import pympler.asizeof
>>> pympler.asizeof.asizeof(a)
21440
>>> a.ByteSize()
42

I have version 2.2.0 of protobuf (a bit old at this point), and python 2.6.4.

share|improve this question
1  
Some demo code reproducing the behavior would be nice. – phihag Aug 8 '11 at 19:25
1  
@phihag Here's something similar reproducing the behavior. – pythonic metaphor Aug 8 '11 at 19:48

Object instances have a bigger memory footprint in python than in compiled languages. For example, the following code, which creates very simple classes mimicking your proto displays 1440:

class A:
  def __init__(self):
    self.a = 0.0

class B:
  def __init__(self):
    self.b = 0.0

class C:
  def __init__(self):
    self.c = 0.0
    self.s = ""

class D:
  def __init__(self):
    self.d = ""
    self.e = ""
    self.e_isset = 1
    self.a = A()
    self.b = B()
    self.b_isset = 1
    self.c = [C()]

d = D()
print asizeof(d)

I am not surprised that protobuf's generated classes take 20 times more memory, as they add a lot of boiler plate.

The C++ version surely doesn't suffer from this.

share|improve this answer
    
I wasn't expecting it to be small, but as you can see in this example, a really basic object is 20k! That's a 500 fold increase over the size needed to hold the necessary information. A factor of 10 is maybe ok, but 500 means you can't hold these more than a (relatively) small number of these objects in memory. By contract, pympler suggests the size of an int is 24, which is maybe a 6-fold increase in size going from C++ to python. – pythonic metaphor Aug 8 '11 at 21:47
1  
if this is important you can try reduce size by using the __slots__ class attribute. – andrew cooke Aug 9 '11 at 0:38
    
I don't know any fundamental reason why pb_pb2.D needs to store actual Python objects. If it doesn't, this logic doesn't necessarily hold up. If it needn't and does, it sounds like it might be written poorly. – Mike Graham Aug 11 '11 at 14:21

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