# Unwanted rounding when subtracting numpy arrays in Python

I'm running into an issue with python automatically rounding very small numbers (smaller than 1e-8) when subtracting an array from an single float. Take this example:

`````` import numpy as np
float(1) - np.array([1e-10, 1e-5])
``````

Any thoughts on how to force python not to round? This is forcing me to divide by zero in some cases, and becoming a problem. The same problem arises when subtracting from an numpy array.

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I'm having the same issue raising small numbers to the power of 1, and having them rounded to 0. –  mike Jul 29 '11 at 0:37
Odd that you got a downvote... It's a good question, i.m.o. –  Joe Kington Jul 29 '11 at 1:15

Mostly, it's just the `repr` of numpy arrays that's fooling you.

``````import numpy as np
x = float(1) - np.array([1e-10, 1e-5])
print x
print x[0]
print x[0] == 1.0
``````

This yields:

``````[ 1.      0.99999 ]
0.99999999999
False
``````

So the first element isn't actually zero, it's just the pretty-printing of numpy arrays that's showing it that way.

This can be controlled by `numpy.set_printoptions`.

Of course, numpy is fundementally using limited precision floats. The whole point of numpy is to be a memory-efficient container for arrays of similar data, so there's no equivalent of the `decimal` class in numpy.

However, 64-bit floats have a decent range of precision. You won't hit too many problems with 1e-10 and 1e-5. If you need, there's also a `numpy.float128` dtype, but operations will be much slower than using native floats.

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I didn't think of that, but you are absolutely right.. never trust just a mere representation of something! +1 –  redShadow Jul 29 '11 at 1:37
I don't know whether there already is something to handle that, but if you could manage to represent that numbers in a different way (such as `1/10000000000` and `1/100000`) and then calculate the floating point result only at the end of all calculations, you should avoid all these problems.