**Decimal fractions like 0.1 can't be expressed cleanly in base 2**

Let's say we want to express the decimal 0.1 in base-2. We know that it is equal to 1/10. The result of 1 divided by 10 in base-2 is `0.000110011001100...`

with a repeating sequence of decimals.

Thus while in decimal form it's actually really easy to cleanly represent a number like 0.1, in base-2 you cannot express a rational number based on 10ths exactly. You can only approximate it by using as many bits are you are able to store.

Let's say for simplification that we only have enough storage space to reproduce the first, say, 8 significant binary digits of that number. The digits stored would be 11001100 (along with an exponent of 11). This translates back to 0.000110011 in base-2 which in decimal is 0.099609375, not 0.1. This is the amount of error that would happen if you converted 0.1 to a theoretical floating point variable which stores base values in 8 bits (not including the sign bit).

**How floating-point variables store values**

The standard of IEEE 754 specifies a way of encoding a real number in binary, with a sign and a binary exponent. The exponent is applied in the *binary* domain, meaning that you don't shift the decimal point before converting to binary, you do it after.

There are different sizes of IEEE floating-point number, each one specifying how many of the binary digits are used for the base number and how many for an exponent.

When you see `0.1 + 0.2 != 0.3`

, it's because you are not actually performing the calculation on 0.1 or 0.2, but on approximations of these numbers in floating-point binary to a certain precision only. Upon converting the result back to decimal, the result won't be exactly 0.3, due to this error. In addition, the result won't even be equal to the binary approximation of 0.3, either. The actual amount of error will depend on the size of the floating point value, and thus how many bits of precision were used.

**How rounding sometimes helps, but not in this case**

In some cases, errors in calculation due to precision loss in the conversion to binary will be small enough to be rounded out of the value during the conversion back from binary again, and so you will never even notice any difference - it will look like it worked.

IEEE floating point has specific rules for how this rounding is to be done.

With 0.1 + 0.2 vs 0.3, however, the rounding does not cancel out the error. *The result of adding the binary approximations of 0.1 and 0.2 will be different to the binary approximation of 0.3.*