I just managed to install my cuda SDK under Linux Ubuntu 10.04. My graphic card is an NVIDIA geForce GT 425M, and I'd like to use it for some heavy computational problem. What I wonder is: is there any way to use some unsigned 128 bit int var? When using gcc to run my program on the CPU, I was using the __uint128_t type, but using it with cuda doesn't seem to work. Is there anything I can do to have 128 bit integers on cuda?
4 Answers
For best performance, one would want to map the 128bit type on top of a suitable CUDA vector type, such as uint4, and implement the functionality using PTX inline assembly. The addition would look something like this:
typedef uint4 my_uint128_t;
__device__ my_uint128_t add_uint128 (my_uint128_t addend, my_uint128_t augend)
{
my_uint128_t res;
asm ("add.cc.u32 %0, %4, %8;\n\t"
"addc.cc.u32 %1, %5, %9;\n\t"
"addc.cc.u32 %2, %6, %10;\n\t"
"addc.u32 %3, %7, %11;\n\t"
: "=r"(res.x), "=r"(res.y), "=r"(res.z), "=r"(res.w)
: "r"(addend.x), "r"(addend.y), "r"(addend.z), "r"(addend.w),
"r"(augend.x), "r"(augend.y), "r"(augend.z), "r"(augend.w));
return res;
}
The multiplication can similarly be constructed using PTX inline assembly by breaking the 128bit numbers into 32bit chunks, computing the 64bit partial products and adding them appropriately. Obviously this takes a bit of work. One might get reasonable performance at the C level by breaking the number into 64bit chunks and using __umul64hi() in conjuction with regular 64bit multiplication and some additions. This would result in the following:
__device__ my_uint128_t mul_uint128 (my_uint128_t multiplicand,
my_uint128_t multiplier)
{
my_uint128_t res;
unsigned long long ahi, alo, bhi, blo, phi, plo;
alo = ((unsigned long long)multiplicand.y << 32)  multiplicand.x;
ahi = ((unsigned long long)multiplicand.w << 32)  multiplicand.z;
blo = ((unsigned long long)multiplier.y << 32)  multiplier.x;
bhi = ((unsigned long long)multiplier.w << 32)  multiplier.z;
plo = alo * blo;
phi = __umul64hi (alo, blo) + alo * bhi + ahi * blo;
res.x = (unsigned int)(plo & 0xffffffff);
res.y = (unsigned int)(plo >> 32);
res.z = (unsigned int)(phi & 0xffffffff);
res.w = (unsigned int)(phi >> 32);
return res;
}
Below is a version of the 128bit multiplication that uses PTX inline assembly. It requires PTX 3.0, which shipped with CUDA 4.2, and the code requires a GPU with at least compute capability 2.0, i.e. a Fermi or Kepler class device. The code uses the minimal number of instructions, as sixteen 32bit multiplies are needed to implement a 128bit multiplication. By comparison, the variant above using CUDA intrinsics compiles to 23 instructions for an sm_20 target.
__device__ my_uint128_t mul_uint128 (my_uint128_t a, my_uint128_t b)
{
my_uint128_t res;
asm ("{\n\t"
"mul.lo.u32 %0, %4, %8; \n\t"
"mul.hi.u32 %1, %4, %8; \n\t"
"mad.lo.cc.u32 %1, %4, %9, %1;\n\t"
"madc.hi.u32 %2, %4, %9, 0;\n\t"
"mad.lo.cc.u32 %1, %5, %8, %1;\n\t"
"madc.hi.cc.u32 %2, %5, %8, %2;\n\t"
"madc.hi.u32 %3, %4,%10, 0;\n\t"
"mad.lo.cc.u32 %2, %4,%10, %2;\n\t"
"madc.hi.u32 %3, %5, %9, %3;\n\t"
"mad.lo.cc.u32 %2, %5, %9, %2;\n\t"
"madc.hi.u32 %3, %6, %8, %3;\n\t"
"mad.lo.cc.u32 %2, %6, %8, %2;\n\t"
"madc.lo.u32 %3, %4,%11, %3;\n\t"
"mad.lo.u32 %3, %5,%10, %3;\n\t"
"mad.lo.u32 %3, %6, %9, %3;\n\t"
"mad.lo.u32 %3, %7, %8, %3;\n\t"
"}"
: "=r"(res.x), "=r"(res.y), "=r"(res.z), "=r"(res.w)
: "r"(a.x), "r"(a.y), "r"(a.z), "r"(a.w),
"r"(b.x), "r"(b.y), "r"(b.z), "r"(b.w));
return res;
}

1@njuffa  I assume today you would suggest a solution based on 2 64bit values? May 30, 2018 at 12:56

3@einpoklum Unlikely, since 64bit integer operations are emulated and it is usually best to build emulations on top of native instructions rather than other emulations. Because 32bit integer multiply and multiplyadd are themselves emulated on Maxwell and Pascal architectures, it would possibly be best to use native 16bit multiplies there which map to the machine instruction
XMAD
(a 16x16+32 bit multiplyadd operation). I read that native 32bit integer multiplies were restored with the Volta architecture , but I have no handson experience with Volta yet.– njuffaMay 30, 2018 at 15:41 
How is performance compared to 32 bit integers? 1/16 or similar? Jun 7, 2018 at 10:31

@huseyintugrulbuyukisik Based on instruction count it would be around 1/16 of a native 32bit multiplication. The actual performance impact could vary a bit depending on code context based on the loading of functional units and register usage.– njuffaJun 7, 2018 at 14:17

CUDA doesn't support 128 bit integers natively. You can fake the operations yourself using two 64 bit integers.
Look at this post:
typedef struct {
unsigned long long int lo;
unsigned long long int hi;
} my_uint128;
my_uint128 add_uint128 (my_uint128 a, my_uint128 b)
{
my_uint128 res;
res.lo = a.lo + b.lo;
res.hi = a.hi + b.hi + (res.lo < a.lo);
return res;
}

Thank you very much! Just one more question: from an efficiency point of view, is this going to be fast enough? May 28, 2011 at 18:59

I tested that code on my CPU. It actually works, but it's 6 times slower than using the __uint128_t type... isn't there any way to make it faster? May 28, 2011 at 22:04

4You tested builtin 128 bit integers on CPU with this
my_uint128
on the CPU? Of course the native support will be faster. The hope is that performance on the GPU with this 128 bit type will be faster than performance on the CPU with builtin 128 bit integers.– tkerwinMay 28, 2011 at 22:52 
A muchbelated answer, but you could consider using this library:
https://github.com/curtisseizert/CUDAuint128
which defines a 128bitsized structure, with methods and freestanding utility functions to get it to function as expected, which allow it to be used like a regular integer. Mostly.

This is really cool, and much better answer than the others :) After looking at the source code, I saw that there's a __mul64hi PTX instruction that makes 64 * 64 bit multiplication efficient. Mar 27, 2019 at 0:46
For posterity, note that as of 11.5, CUDA and nvcc support __int128_t
in device code when the host compiler supports it (e.g., clang/gcc, but not MSVC). 11.6 added support for debug tools with __int128_t
.
See: