What is the difference between
Double in .NET?
When would someone use one of these?
The binary number and the location of the binary point are both encoded within the value.
Again, the number and the location of the decimal point are both encoded within the value – that's what makes
The important thing to note is that humans are used to representing non-integers in a decimal form, and expect exact results in decimal representations; not all decimal numbers are exactly representable in binary floating point – 0.1, for example – so if you use a binary floating point value you'll actually get an approximation to 0.1. You'll still get approximations when using a floating decimal point as well – the result of dividing 1 by 3 can't be exactly represented, for example.
As for what to use when:
Precision is the main difference.
Float - 7 digits (32 bit)
Double-15-16 digits (64 bit)
Decimal -28-29 significant digits (128 bit)
Decimals have much higher precision and are usually used within financial applications that require a high degree of accuracy. Decimals are much slower (up to 20X times in some tests) than a double/float.
Decimals and Floats/Doubles cannot be compared without a cast whereas Floats and Doubles can. Decimals also allow the encoding or trailing zeros.
The Decimal structure is strictly geared to financial calculations requiring accuracy, which are relatively intolerant of rounding. Decimals are not adequate for scientific applications, however, for several reasons:
If you need better accuracy, use double instead of float. In modern CPUs both data types have almost the same performance. The only benifit of using float is they take up less space. Practically matters only if you have got many of them.
I found this is interesting. What Every Computer Scientist Should Know About Floating-Point Arithmetic
for more information you can go to source of this picture:
Integers, as was mentioned, are whole numbers. They can't store the point something, like .7, .42, and .007. If you need to store numbers that are not whole numbers, you need a different type of variable. You can use the double type, or the float type. You set these types of variables up in exactly the same way: instead of using the word int, you type double, or float. Like this:
(Float is short for "floating point", and just means a number with a point something on the end.)
The difference between the two is in the size of the numbers that they can hold. For float, you can have up to 7 digits in your number. For doubles, you can have up to 16 digits. To be more precise, here's the official size:
float: 1.5 × 10-45 to 3.4 × 1038 double: 5.0 × 10-324 to 1.7 × 10308
Float is a 32-bit number and double is a 64-bit number.
Double click your new button to get at the code. Add the following three lines to your button code:
Halt your program and return to the coding window. Change this line:
Run your programme and click your double button. The message box correctly displays the number. Add another number on the end, though, and C# will again round up or down. The moral is, if you want accuracy, careful of rounding!
This has been an interesting thread of me, as today, we've just had a nasty little bug, concerning "decimal" having less precision than a "float".
In our C# code, we are reading numeric values from an Excel spreadsheet, converting them into a decimal, then sending this decimal back to a Service, to save into a SQL Server database.
Now, for almost all of our Excel values, this worked beautifully. But for some, very small Excel values, using "decimal.TryParse" lost the value completely. One such example:
The solution, bizarrely, was to convert the Excel values into a double first, and then into a decimal.
Even though double has less precision than a decimal, this actually ensured small numbers would still be recognised. For some reason, "double.TryParse" was actually able to retrieve such small numbers, whereas "decimal.TryParse" would set them to zero.
Odd. Very odd.
float ~ ±1.5 x 10-45 to ±3.4 x 1038 --------7 figures
For applications such as games and embedded systems where memory and performance are both critical, float is usually the numeric type of choice as it is faster and half the size of a double. Integers used to be the weapon of choice, but floating point performance has overtaken integer in modern processors. Decimal is right out!
Most people think the difference between formats is simply about precision, and to a great degree that is important, but there's also something very important that is harder to grasp.
All floating point (and fixed point, which I won't go into) numbers (ex.
The opposite is not true. These fall into two categories,
Regardless, neither of these types of numbers can be be accurately represented in floating (or fixed) point number formats. Examples are
Humans work with numbers in base-10, which is the definition of decimal. Decca being
Computers work in base-2, or binary. And the important thing to remember is that computers do math most efficiently in base-2. Often, numbers are also stored in base-2 representation. Because computers can only work with finite data, there are practical limits to the size of the numbers you can work with in standard numeric formats. Any numbers which are larger (or smaller or requires more precision) than what is defined by the limits of the storage format are rounded. Also, by definition, a computer can only accurately work with rational and non-infinite numbers because it has to have the entire number in memory to work on it. (it's possible to write a program that can calculate numbers without them being fully in memory, but that's not how the standard numeric formats work).
Now, the problem is that there is an inherent
Consider that in base-10,
Ok, so that leads us to the inverse conclusion that finite numbers in decimal might be infinitely repeating numbers in binary. And this is in fact true as well.
This results in:
Which when rounded back to decimal is actually something like
This is why trying to store
Now, the difference between these binary floating point types and the
So what this boils down to.. the difference between float or double and decimal is:
This inherent impedance mismatch is exacerbated by the conversion back to decimal for use by humans. It's like when you translate something from English to Japanese, then back to English. Something gets lost in the translation quite often.
Beyond this "infinite/non-infinite" impedance mismatch, then you simply have the precision of each format, and calculations will be rounded beyond that precision.
Also, float and double are faster than decimal, by about an order of magnitude based on the benchmark here:
The Decimal, Double, and Float variable types are different in the way that they store the values. Precision is the main difference where float is a single precision (32 bit) floating point data type, double is a double precision (64 bit) floating point data type and decimal is a 128-bit floating point data type.
Float - 32 bit (7 digits)
Double - 64 bit (15-16 digits)
Decimal - 128 bit (28-29 significant digits)
More about...the difference between Decimal, Float and Double