This is IEEE 754 standard question. I don't completely understand the mechanics behind it.
public class Gray {
public static void main(String[] args){
System.out.println( (float) (2000000000) == (float) (2000000000 + 50));
}
}
This is IEEE 754 standard question. I don't completely understand the mechanics behind it.



Because a Specifically speaking, a
You can think of floating point as the computer's way doing scientific notation, but in binary. The precision is equal to The number 2,000,000,050 has 9 significant digits. The calculation above tells us that a 24bit significand can't hold that many significant digits. The reason why 2,000,000,000 works because there's only 1 significant digit, so it fits in the significand. To solve the problem, you would use a 


You might find this trick to find the next representable value interesting.
prints



It might help you understand the situation if you consider a program (C++) as below. It displays the groups of successive integers that get rounded to the same float value:
Output:
This indicates that floating point is only precise enough to represent all integers from 1999999850 to 1999999935, wrongly recording their value as 1999999872. So on for other values. This is the tangible consequence of the limited storage space mentioned above. 


Plainly said  50 is a rounding error when a float has a value of twobillion. 

