This depends on your Python version and your system, but I will give you a hand figuring out about how much memory it will take. First thing is first, sys.getsizeof
only returns the memory use of the object representing the container, not all the elements in the container.
Only the memory consumption directly attributed to the object is
accounted for, not the memory consumption of objects it refers to.
If given, default will be returned if the object does not provide
means to retrieve the size. Otherwise a TypeError will be raised.
getsizeof()
calls the object’s __sizeof__
method and adds an
additional garbage collector overhead if the object is managed by the
garbage collector.
See recursive sizeof recipe for an example of using getsizeof()
recursively to find the size of containers and all their contents.
So, I've loaded up that recipe in an interactive interpreter session:
So, a CPython list is actually a heterogenous, resizable arraylist. The underlying array only contains pointers to Py_Objects. So, a pointer takes up a machine word worth of memory. On a 64-bit system, this is 64 bits, so 8 bytes. So, just for the container a list of size 1,000,000 will take up roughly 8 million bytes, or 8 megabytes. Building a list with 1000000 entries bears that out:
In [6]: for i in range(1000000):
...: x.append([])
...:
In [7]: import sys
In [8]: sys.getsizeof(x)
Out[8]: 8697464
The extra memory is accounted for by the overhead of a python object, and the extra space that a the underlying array leaves at the end to allow for efficient .append
operations.
Now, a dictionary is rather heavy-weight in Python. Just the container:
In [10]: sys.getsizeof({})
Out[10]: 288
So a lower bound on the size of 1 million dicts is: 288000000 bytes. So, a rough lower bound:
In [12]: 1000000*288 + 1000000*8
Out[12]: 296000000
In [13]: 296000000 * 1e-9 # gigabytes
Out[13]: 0.29600000000000004
So you can expect about about 0.3 gigabytes worth of memory. Using the recipie and a more realistic dict
:
In [16]: x = []
...: for i in range(1000000):
...: x.append(dict(name="my name is what", subscribers=23456644))
...:
In [17]: total_size(x)
Out[17]: 296697669
In [18]:
So, about 0.3 gigs. Now, that's not a lot on a modern system. But if you wanted to save space, you should use a tuple
or even better, a namedtuple
:
In [24]: from collections import namedtuple
In [25]: Record = namedtuple('Record', "name subscribers")
In [26]: x = []
...: for i in range(1000000):
...: x.append(Record(name="my name is what", subscribers=23456644))
...:
In [27]: total_size(x)
Out[27]: 72697556
Or, in gigabytes:
In [29]: total_size(x)*1e-9
Out[29]: 0.07269755600000001
namedtuple
works just like a tuple
, but you can access the fields with names:
In [30]: r = x[0]
In [31]: r.name
Out[31]: 'my name is what'
In [32]: r.subscribers
Out[32]: 23456644