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A simple problem, really: you have one billion (1e+9) unsigned 32-bit integers stored as decimal ASCII strings in a TSV (tab-separated values) file. Conversion using int() is horribly slow compared to other tools working on the same dataset. Why? And more importantly: how to make it faster?

Therefore the question: what is the fastest way possible to convert a string to an integer, in Python?

What I'm really thinking about is some semi-hidden Python functionality that could be (ab)used for this purpose, not unlike Guido's use of array.array in his "Optimization Anecdote".

Sample data (with tabs expanded to spaces)

38262904        "pfv"              2002-11-15T00:37:20+00:00
12311231        "tnealzref"        2008-01-21T20:46:51+00:00
26783384        "hayb"             2004-02-14T20:43:45+00:00
812874          "qevzasdfvnp"      2005-01-11T00:29:46+00:00
22312733        "bdumtddyasb"      2009-01-17T20:41:04+00:00

The time it takes reading the data is irrelevant here, processing the data is the bottleneck.


All of the following are interpreted languages. The host machine is running 64-bit Linux.

Python 2.6.2 with IPython 0.9.1, ~214k conversions per second (100%):

In [1]: strings = map(str, range(int(1e7)))

In [2]: %timeit map(int, strings);
10 loops, best of 3: 4.68 s per loop

REBOL 3.0 Version, ~231kcps (108%):

>> strings: array n: to-integer 1e7 repeat i n [poke strings i mold (i - 1)]
== "9999999"

>> delta-time [map str strings [to integer! str]]
== 0:00:04.328675

REBOL (15-Mar-2008), ~523kcps (261%):

As John noted in the comments, this version does not build a list of converted integers, so the speed-ratio given is relative to Python's 4.99s runtime of for str in strings: int(str).

>> delta-time: func [c /local t] [t: now/time/precise do c now/time/precise - t]

>> strings: array n: to-integer 1e7 repeat i n [poke strings i mold (i - 1)]
== "9999999"

>> delta-time [foreach str strings [to integer! str]]
== 0:00:01.913193

KDB+ 2.6t 2009.04.15, ~2016kcps (944%):

q)strings:string til "i"$1e7

q)\t "I"$strings
share|improve this question
Try numpy.fromfile to load 'one billion positive integers' (btw, what do you mean by 'billion' (it is 10**9 in US, it might be 10**12 in Britain)? – J.F. Sebastian Aug 20 '09 at 22:40
Good catch about the billion; even though the latter use got out of vogue in Britain in the 1970's. – earl Aug 20 '09 at 22:42
Have you tried to compile the code ? – João Silva Aug 20 '09 at 22:47
(1) Please be more explicit than "stored as ASCII strings in a text file". Fixed columns or delimited? Is this the only type of data in the file? Show a few sample lines. (2) Show us the code that YOU are currently using, if you want us to believe that int() is the problem and that this isn't a homework question (3) Please express the speed in SI units rather than "horribly slow". (4) What other tools? (5) What platform and what version of Python? – John Machin Aug 20 '09 at 23:15
(6) What is the average number of digits in an integer? (7) Are the digits decimal/hex/octal/something else? – John Machin Aug 21 '09 at 0:20

I might suggest that for raw speed, Python isn't the right tool for this task. A hand-coded C implementation will beat Python easily.

share|improve this answer
I totally agree, but that's not really the point of my question. I added a paragraph of what I'm looking for. A custom Python extension would be an option, though. – earl Aug 20 '09 at 22:29

You will get some percentage of speed by ensuring only "local" variables are used in your tightest of loops. The int function is a global, so looking it up will be more expensive than a local.

Do you really need all billion numbers in memory at all times. Consider using some iterators to give you only a few values at a time A billion numbers will take a bit of storage. Appending these to a list, one at a time, is going to require several large reallocations.

Get your looping out of Python entirely if possible. The map function here can be your friend. I'm not sure how your data is stored. If it is a single number per line, you could reduce the code to

values = map(int, open("numberfile.txt"))

If there are multiple values per line that are white space separated, dig into the itertools to keep the looping code out of Python. This version has the added benefit of creating a number iterator, so you can spool only one or several numbers out of the file at a time, instead of one billion in one shot.

numfile = open("numberfile.txt")
valIter = itertools.imap(int, itertools.chain(itertools.imap(str.split, numfile)))
share|improve this answer
up vote 3 down vote accepted

The following most simplistic C extension already improves heavily on the builtin, managing to convert over three times as many strings per second (650kcps vs 214kcps):

static PyObject *fastint_int(PyObject *self, PyObject *args) {
    char *s; unsigned r = 0;
    if (!PyArg_ParseTuple(args, "s", &s)) return NULL;
    for (r = 0; *s; r = r * 10 + *s++ - '0');
    return Py_BuildValue("i", r);

This obviously does not cater for integers of arbitrary length and various other special cases, but that's no problem in our scenario.

share|improve this answer
Is there any reason not to use C standard lib's functions e.g., strtoul()? – J.F. Sebastian Aug 30 '09 at 13:38

As others have said you could code up your own C module to do the parsing/conversion for you. Then you could simply import that and call on it. You might be able to use Pyrex or its Cython derivative to generate your C from your Python (by adding a few type constraining hints to the Python).

You can read more about Cython and see if that will help.

Another question that comes to mind though ... what are you going to be doing with these billion integers? Is it possible that you might load them as strings, search for them as strings and perform a lazy conversion as necessary? Or could you parallelize the conversion and the other computations using threading or multiprocessing modules and Queues? (Have one or more threads/processes performing the conversion and feeding a Queue from which your processing engine fetches them). In other words would a producer/consumer design alleviate the problem?

share|improve this answer

Agree with Greg; Python, as an interpreted language, is generally slow. You could try compiling the source code on-the-fly with the Psyco library or coding the app in a lower level language such C/C++.

share|improve this answer
-1 on the interpreted ==> slow corollary. A C implementation will be faster in this case, but your generalization is simply wrong. – Yuval Adam Aug 20 '09 at 22:49
An interpreted language must be translated into machine code at the time of execution and that is simply slower than executing a compiled object code. Still don't understand your downvote. Please explain why do you think "my generalization" is wrong. – ramosg Aug 20 '09 at 23:28
Interpreted languages can make optimizations on the bytecode during runtime, sometimes leading to better performance than native machine code. Look it up, it has been discussed to death. – Yuval Adam Aug 20 '09 at 23:31
Well, I suppose 90% of the cases isn't enough to generalize, so it's edited. – ramosg Aug 20 '09 at 23:40
Moving as much as can out of the inner loop and running this on 1e7 iterations takes 27 seconds using psyco.full(). So it would take something resembling 45 minutes on my machine to do 1e9. I'm empted to believe that C/C++/C# would be faster, though I have not benchmarked them. – hughdbrown Aug 21 '09 at 0:36

It may not be an option for you, but I would look real hard at using a binary file rather than text. Does it change often? If not, you could pre-process it.

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