68

In C++, I can create a array like...

int* a = new int[10];

in python,I just know that I can declare a list,than append some items,or like..

l = [1,2,3,4]
l = range(10)

Can I initialize a list by a given size,like c++,and do not do any assignment?

  • 2
    You do not need to declare a list in Python. Just initialize it when you want to use it. – ronakg May 16 '12 at 10:56
  • 4
    Right, why on earth would you need that? – 0605002 May 16 '12 at 10:57
  • 3
    @WeaselFox: sometimes there is; for example say you wanted to do the Sieve or Eratoshenes. – ninjagecko May 16 '12 at 11:02
  • 3
    Note that range(10) is actually a generator object in python3; you will not be able to mutate it. You will need to do list(range(10)) – ninjagecko May 16 '12 at 11:03
  • 1
    Actually if you know the length of the list it will be faster to create the "empty list" first of length n and then assign the values by index than it would to append each additional item. – mtnpaul Feb 24 '15 at 19:26
86

(tl;dr: The exact answer to your question is numpy.empty or numpy.empty_like, but you likely don't care and can get away with using myList = [None]*10000.)

Simple methods

You can initialize your list to all the same element. Whether it semantically makes sense to use a non-numeric value (that will give an error later if you use it, which is a good thing) or something like 0 (unusual? maybe useful if you're writing a sparse matrix or the 'default' value should be 0 and you're not worried about bugs) is up to you:

>>> [None for _ in range(10)]
[None, None, None, None, None, None, None, None, None, None]

(Here _ is just a variable name, you could have used i.)

You can also do so like this:

>>> [None]*10
[None, None, None, None, None, None, None, None, None, None]

You probably don't need to optimize this. You can also append to the array every time you need to:

>>> x = []
>>> for i in range(10):
>>>    x.append(i)

Performance comparison of simple methods

Which is best?

>>> def initAndWrite_test():
...  x = [None]*10000
...  for i in range(10000):
...   x[i] = i
... 
>>> def initAndWrite2_test():
...  x = [None for _ in range(10000)]
...  for i in range(10000):
...   x[i] = i
... 
>>> def appendWrite_test():
...  x = []
...  for i in range(10000):
...   x.append(i)

Results in python2.7:

>>> import timeit
>>> for f in [initAndWrite_test, initAndWrite2_test, appendWrite_test]:
...  print('{} takes {} usec/loop'.format(f.__name__, timeit.timeit(f, number=1000)*1000))
... 
initAndWrite_test takes 714.596033096 usec/loop
initAndWrite2_test takes 981.526136398 usec/loop
appendWrite_test takes 908.597946167 usec/loop

Results in python 3.2:

initAndWrite_test takes 641.3581371307373 usec/loop
initAndWrite2_test takes 1033.6499214172363 usec/loop
appendWrite_test takes 895.9040641784668 usec/loop

As we can see, it is likely better to do the idiom [None]*10000 in both python2 and python3. However, if one is doing anything more complicated than assignment (such as anything complicated to generate or process every element in the list), then the overhead becomes a meaninglessly small fraction of the cost. That is, such optimization is premature to worry about if you're doing anything reasonable with the elements of your list.


Uninitialized memory

These are all however inefficient because they go through memory, writing something in the process. In C this is different: an uninitialized array is filled with random garbage memory (sidenote: that has been reallocated from the system, and can be a security risk when you allocate or fail to mlock and/or fail to delete memory when closing the program). This is a design choice, designed for speedup: the makers of the C language thought that it was better not to automatically initialize memory, and that was the correct choice.

This is not an asymptotic speedup (because it's O(N)), but for example you wouldn't need to first initialize your entire memory block before you overwrite with stuff you actually care about. This, if it were possible, is equivalent to something like (pseudo-code) x = list(size=10000).

If you want something similar in python, you can use the numpy numerical matrix/N-dimensional-array manipulation package. Specifically, numpy.empty or numpy.empty_like

That is the real answer to your question.

| improve this answer | |
  • _ is just a "dumb" name for a variable not really needed when iterating a range? I wish just for range(10) could be written sometimes. – Ray May 21 '16 at 12:49
  • 2
    x = [[None]]*10 is "wrong". Try x[0].append(1) and see the magic. – Amit Tripathi Jun 3 '16 at 8:04
  • @Death-Stalker: yes, I think that's what I was actually trying to point out and illustrate ("working with mutable objects"). But thank you, I think you've made me realize my answer is horribly worded. Fixed. – ninjagecko Jun 3 '16 at 10:51
  • how about xrange? – Trinh Hoang Nhu Aug 16 '17 at 17:05
9

You can use this: [None] * 10. But this won't be "fixed size" you can still append, remove ... This is how lists are made.

You could make it a tuple (tuple([None] * 10)) to fix its width, but again, you won't be able to change it (not in all cases, only if the items stored are mutable).

Another option, closer to your requirement, is not a list, but a collections.deque with a maximum length. It's the maximum size, but it could be smaller.

import collections
max_4_items = collections.deque([None] * 4, maxlen=4)

But, just use a list, and get used to the "pythonic" way of doing things.

| improve this answer | |
  • 1
    Beware deque does NOT allow you to pop an element from the middle of the list. – Jonathan May 25 '19 at 19:41
4

It's not really the python way to initialize lists like this. Anyway, you can initialize a list like this:

>>> l = [None] * 4
>>> l
[None, None, None, None]
| improve this answer | |
3

You can do it using array module. array module is part of python standard library:

from array import array
from itertools import repeat

a = array("i", repeat(0, 10))
# or
a = array("i", [0]*10)

repeat function repeats 0 value 10 times. It's more memory efficient than [0]*10, since it doesn't allocate memory, but repeats returning the same number x number of times.

| improve this answer | |
3

This is more of a warning than an answer.
Having seen in the other answers my_list = [None] * 10, I was tempted and set up an array like this speakers = [['','']] * 10 and came to regret it immensely as the resulting list did not behave as I thought it should.
I resorted to:

speakers = []
for i in range(10):
    speakers.append(['',''])

As [['','']] * 10 appears to create an list where subsequent elements are a copy of the first element.
for example:

>>> n=[['','']]*10
>>> n
[['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', '']]
>>> n[0][0] = "abc"
>>> n
[['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', ''], ['abc', '']]
>>> n[0][1] = "True"
>>> n
[['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True'], ['abc', 'True']]

Whereas with the .append option:

>>> n=[]
>>> for i in range(10):
...  n.append(['',''])
... 
>>> n
[['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', '']]
>>> n[0][0] = "abc"
>>> n
[['abc', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', '']]
>>> n[0][1] = "True"
>>> n
[['abc', 'True'], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', ''], ['', '']]

I'm sure that the accepted answer by ninjagecko does attempt to mention this, sadly I was too thick to understand.
Wrapping up, take care!

| improve this answer | |
2

Python has nothing built-in to support this. Do you really need to optimize it so much as I don't think that appending will add that much overhead.

However, you can do something like l = [None] * 1000.

Alternatively, you could use a generator.

| improve this answer | |
  • Right,I not very familiar with python's memory management,I will change my mind.Thank you~ – wtm May 16 '12 at 11:09
2

Note also that when you used arrays in C++ you might have had somewhat different needs, which are solved in different ways in Python:

  1. You might have needed just a collection of items; Python lists deal with this usecase just perfectly.
  2. You might have needed a proper array of homogenous items. Python lists are not a good way to store arrays.

Python solves the need in arrays by NumPy, which, among other neat things, has a way to create an array of known size:

from numpy import *

l = zeros(10)
| improve this answer | |
  • 9
    Using from numpy import * will hide the python builtins all, abs, min, max, sum, any and round with the numpy equivalents, which might not always be what you want. – Lauritz V. Thaulow May 16 '12 at 11:29
  • 2
    Yes, be careful that numpy module contains quite a lot of names (which are nevertheless convenient to have in your module namespace when you are writing array code). If possible name clashes cause trouble for you, use qualified imports. – ulidtko May 16 '12 at 12:14
1
your_list = [None]*size_required
| improve this answer | |
1
fix_array = numpy.empty(n, dtype = object)

where n is the size of your array

though it works, it may not be the best idea as you have to import a library for this purpose. Hope this helps!

| improve this answer | |

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