# Float Approximation when using numpy.int32

Answering one question Why does scipy.stats.nanmean give different result from numpy.nansum?, I realized, multiplying `numpy.int32` by a `float` results in different float result compared to a Python POD `int` with a `float`.

Is there a reason to cause a float approximation when using `numpy.int32`

``````>>> numpy.int32(1) * 0.2
0.20000000000000001
>>> 1 * 0.2
0.2
``````
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While it doesn't answer the question, it appears you are concerned about the precision of your output, you may want to mix similar types and then perform operations, like numpy.float32(1)*numpy.float32(0.2). –  michaelt Jan 23 '13 at 9:17

The two expressions give results that are identical in value but have different types:

``````In [17]: numpy.int32(1) * 0.2 == 1 * 0.2
Out[17]: True

In [18]: type(numpy.int32(1) * 0.2)
Out[18]: numpy.float64

In [19]: type(1 * 0.2)
Out[19]: float
``````

The different output is purely due to the difference in default formatting between `numpy.float64` and `float`.

If we reverse the types, the output also reverses:

``````In [12]: float(numpy.int32(1) * 0.2)
Out[12]: 0.2

In [13]: numpy.float64(1 * 0.2)
Out[13]: 0.20000000000000001
``````

It's purely a display issue. There is no numerical difference here.

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Isn't it because `0.20000000000000001 == 0.2` is `True`. The difference as you see is noticeable in the linked question. –  Abhijit Jan 23 '13 at 9:13
If `0.20000000000000001` and `0.2` compare equal (which they do), this means they have identical 64-bit IEEE 754 representation after rounding, which means they are represented by exactly the same floating-point number. There is no numerical difference here, it's a red herring. –  NPE Jan 23 '13 at 9:23
`There is no numerical difference here`. Good to learn –  Abhijit Jan 23 '13 at 9:47