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I have a large data file with columns of numbers delimited by blank spaces. I would like to read them in as a numpy array.

I used numpy.loadtxt(filename) to read in the file. The problem came when the code is trying to convert this 19-digit string to a number; it seems that it can only represent the first 17 digits accurately.

Here is a simplified example:

from StringIO import StringIO
import numpy as np 

#use this s string to mimick the input txt file
s = StringIO('1237657220412736271 39843.3948')
arr = np.loadtxt(s)
print int(arr[0])

If you run it, you get


I know that it is possible to specify the type of data you have from np.loadtxt(), but even though I specified it to read it the first number as long integer, it still cannot represent the 19-digit string of number accurately.

Is there a better way of doing this?

share|improve this question
Where did you specify the data type for loadtxt()? I don't see it in your posted code. –  Greg Hewgill Dec 12 '12 at 2:28
Why are you using numpy for this? –  FogleBird Dec 12 '12 at 2:29
Do you just need to use float64 or float128 instead of the default, or do you actually need to handle arbitrary-precision decimals? –  abarnert Dec 12 '12 at 2:43
@Hewgill: I probably didn't in this posted code. Sorry but I did that when I test np.loadtxt. –  user1896452 Jul 8 '13 at 19:52
@FogleBird: It was someone else's code so I tried to follow the the code's format. –  user1896452 Jul 8 '13 at 19:52

3 Answers 3

even though I specified it to read it the first number as long integer

Well, given that your second value is a float, I'm not sure how you did that with a single type. But take that away, and you can read the first number as a longer integer type, and everything works fine:

>>> s = cStringIO.StringIO('1237657220412736271 39843')
>>> arr = np.loadtxt(s, dtype='i8')
>>> int(arr[0])

And likewise, if you specify a heterogeneous format like ('i8', 'f8') and feed in your original string, that works fine with the original string.

So, my suspicion is that you didn't do what you think you did, and that's why it didn't work.

Another possibility is that by "long integer" you literally meant "a C long", and you're on a 32-bit platform or 64-bit Windows, where that means a 32-bit number. But I'm pretty sure numpy took that type away long again—and, if they didn't, it would give you a different problem than the one you're seeing.

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If you just specify i8 then you still need to convert the second column into float. –  tiago Dec 12 '12 at 2:56
@tiago: Did you not read the text, or the code, beyond that one line? I explained that you have to take the float away to use 'i8', and showed that it works in that case, and then I explained how to specify a heterogeneous format immediately after that. –  abarnert Dec 12 '12 at 2:58
from your answer one would be tempted to do dtype=('i8', 'f8'), which doesn't work. –  tiago Dec 12 '12 at 3:03
@tiago: Then one would get a ValueError immediately, and either go read the docs, or ask here how to do it. I'm not trying to write his code for him. –  abarnert Dec 12 '12 at 3:10

When you call np.loadtxt, it is assuming all elements on the file are floats. This causes a precision problem when you convert it back to integer. You can specify a structured array read in np.loadtxt, which will enable it to read different columns with different data types:

arr = np.loadtxt(s, dtype={'names': ('ints', 'floats'),
                                     'formats': ('i8', 'f8')})

The difference here is that you get a structured array instead of a 2D array of a given datatype. You have to index it differently (either by name or index number), but you can check that the ints are read correctly:

>>> int(arr[0][0])
>>> int(arr['ints'][0])

(Note that this syntax will fail with your specific string s because it only has one line and will give a 0-d array, but it works with files of more than one line.)

Another alternative is to do two loads of np.loadtxt, one for each column:

arr1 = np.loadtxt(s, dtype='i8', usecols=(0,))
arr2 = np.loadtxt(s, dtype='f8', usecols=(1,))
share|improve this answer

I tried this:

>>> s = '1237657220412736271 39843.3948'
>>> a = s.split()
>>> int(a[0])

Unfortunately when numpy reads the 19-digit number as a floating point number, there is not enough precision to get all the significant digits, so there is a rounding error. If you know the number is always going to fit in an int but is too large to be represented exactly in a double, you'll probably want need to do something like what I did above to work around that limitation.

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And do what? Store it as an int plus a float? That would be hard to work with. –  abarnert Dec 12 '12 at 2:43
@abarnert Just depends on the application. The OP was casting to int, so I assumed that they wanted an int representation. –  Brian L Dec 12 '12 at 2:45
The point is, numpy is loading this as a float64, and losing precision; the fact that he has an infinite-precision int copy of the same data outside of numpy doesn't seem all that useful. –  abarnert Dec 12 '12 at 2:54

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