# Simple Basic Python compare

I found this interesting question when I was doing homework we know, `47.36/1.6**2 == 18.5`

but when I try to run the following code, it gives me a False(should be true)

print `47.36/1.6**2 == 18.5`

Do anyone know what's going on?

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You're probably getting an answer like 18.49999999999, which is not exactly equal to 18.5.

As always, the relevant reference for this is What Every Computer Scientist Should Know About Floating-Point Arithmetic.

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Brilliant Link! –  DarkCthulhu Oct 16 '12 at 0:05

Short answer: IEEE 754 floating point can't exactly represent fractions where the denominator isn't a power of two, like 1/4, 1/16, 1/256, etc. You can get awfully close, given enough digits, but never quite exactly there.

You compare floating point numbers by defining "equals" as "within a certain delta". You could write something like:

``````def almost_equals(a, b, delta=0.0005):
return abs(a - b) <= delta
``````

and then test for "probably equal" with:

``````>>> almost_equals(47.36/1.6**2, 18.5)
True
``````
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I would avoid checking for exact equality when comparing two floats. Instead take the difference and see if it is smaller than a value you consider close to zero.

(47.36/1.6**2 - 18.5) < 0.00000000001

will be

True

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``````>>> 47.36/1.6**2
18.499999999999996
``````

Here is how you can calculate this to exactly `18.5` without using any rounding or "close enough" behavior by using the decimal module:

``````>>> from decimal import Decimal
>>> Decimal('47.36') / Decimal('1.6')**2 == Decimal('18.5')
True
>>> float(Decimal('47.36') / Decimal('1.6')**2) == 18.5
True
``````
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As others have said:

``````>>> 47.36/1.6**2
18.499999999999996
``````

But, this is NOT due to a floating-point arithmetic problem as far as I can tell. Even if you use decimal math by wrapping the operands in `Decimal()` (after `from decimal import Decimal`) you will still get `Decimal('18.49999999999999772404279952')` as the answer.

It's possible I'm using `Decimal()` wrong here and my result also has some sort of floating point error; however, if I'm correct, that expression flat out does not equal `18.5`, no matter what kind of math you use.

Edit: As Greg points out in the comments, the problem with my approach here is that Decimal(1.6) will just convert the float representation of 1.6, inaccuracies intact, into a Decimal. This gives the correct answer:

``````>>> Decimal('47.36') / Decimal('1.6')**2
Decimal('18.5')
``````

Better still would be to use the fractions module as suggested by Kirk.

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Wolfram Alpha confirms using rational arithmetic that the answer is exactly 18.5: wolframalpha.com/input/?i=47.36%2F1.6%2A%2A2 –  Greg Hewgill Oct 16 '12 at 0:15
Look at fractions instead. Decimal doesn't handle rational numbers. –  Kirk Strauser Oct 16 '12 at 0:18
You're right, for some reason `>>> Decimal(1.6)**2` `Decimal('2.560000000000000284217094304')` even though 1.6 * 1.6 clearly equals 2.56 on the nose. –  Andrew Gorcester Oct 16 '12 at 0:18
@AndrewGorcester: That's probably due to the imprecision of 1.6 as a double. Try `Decimal(16) / Decimal(10)` and see what you get. –  Greg Hewgill Oct 16 '12 at 0:20
Passing the numbers into `Decimal` as strings also avoids the float representation issues - `Decimal('47.36')/Decimal('1.6') ** 2` gives `Decimal('18.5')`. –  lvc Oct 16 '12 at 0:26

47.36/1.6*2 return integer. So 47.36/1.6*2 would be 18, which is not equal to 18.5.

Edit

Sorry about that, actually it is being stored as 18.499999.
You should do this

```import numpy as np print np.around((47.36/1.6**2), decimals=1) == 18.5```

This would return True.

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Nothing against numpy and it's a brilliant piece of work, but that's a pretty huge dependency to pull in just to compare a couple of floats. –  Kirk Strauser Oct 16 '12 at 0:13
yeah, you are right. Unless your are doing mathematical intensive program, it would be a burden to import it. –  Harman Oct 16 '12 at 0:15