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I need a cross-platform library/algorithm that will convert between 32-bit and 16-bit floating point numbers. I don't need to perform math with the 16-bit numbers; I just need to decrease the size of the 32-bit floats so they can be sent over the network. I am working in C++.

I understand how much precision I would be losing, but that's OK for my application.

The IEEE 16-bit format would be great.

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Are you sure that you'll be able to measure the performance benefit from this conversion? You will need to be sending a lot of those numbers across the wire to make up a significant saving. You only get about 3 decimal digits of accuracy, and the range is not all that large either. –  Jonathan Leffler Nov 2 '09 at 5:12
OTOH, CPU is essentially free nowadays if you can thread your program, and a transform of an I/O stream is easily threadable. The savings in I/O will be real if the number of floats sent is anywhere near the network capacity. I.e. this is a good bandwidth/latency tradeoff, and as such only relevant when you actually have a bandwitdh problem and no latency issues. –  MSalters Nov 2 '09 at 11:07
Does C++ have any native support for 16-bit floats? –  Lazer Jun 12 '10 at 4:30
@Lazer: No, the smallest size the standard supports is a 32-bit float. –  Matt Fichman Jul 24 '10 at 17:46
@Lazer, I don't think C++ even talks about the number of bits in a float. The specification is quite general. –  Richard Nov 8 '12 at 21:26

10 Answers 10

up vote 9 down vote accepted

std::frexp extracts the significand and exponent from normal floats or doubles -- then you need to decide what to do with exponents that are too large to fit in a half-precision float (saturate...?), adjust accordingly, and put the half-precision number together. This article has C source code to show you how to perform the conversion.

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Actually, the values I'm sending have very limited range: (-1000, 1000) so the exponent isn't that big of an issue. –  Matt Fichman Nov 2 '09 at 5:04
@Matt, if you know the exponent will never under/over flow, then your job's easier by that much!-) –  Alex Martelli Nov 2 '09 at 5:41
@Alex, indeed, it does make it easier! Thanks. –  Matt Fichman Nov 3 '09 at 1:37

Complete conversion from single precision to half precision. This is a direct copy from my SSE version, so it's branch-less. It makes use of the fact that in GCC (-true == ~0), may be true for VisualStudio too but, I don't have a copy.

    class Float16Compressor
        union Bits
            float f;
            int32_t si;
            uint32_t ui;

        static int const shift = 13;
        static int const shiftSign = 16;

        static int32_t const infN = 0x7F800000; // flt32 infinity
        static int32_t const maxN = 0x477FE000; // max flt16 normal as a flt32
        static int32_t const minN = 0x38800000; // min flt16 normal as a flt32
        static int32_t const signN = 0x80000000; // flt32 sign bit

        static int32_t const infC = infN >> shift;
        static int32_t const nanN = (infC + 1) << shift; // minimum flt16 nan as a flt32
        static int32_t const maxC = maxN >> shift;
        static int32_t const minC = minN >> shift;
        static int32_t const signC = signN >> shiftSign; // flt16 sign bit

        static int32_t const mulN = 0x52000000; // (1 << 23) / minN
        static int32_t const mulC = 0x33800000; // minN / (1 << (23 - shift))

        static int32_t const subC = 0x003FF; // max flt32 subnormal down shifted
        static int32_t const norC = 0x00400; // min flt32 normal down shifted

        static int32_t const maxD = infC - maxC - 1;
        static int32_t const minD = minC - subC - 1;


        static uint16_t compress(float value)
            Bits v, s;
            v.f = value;
            uint32_t sign = v.si & signN;
            v.si ^= sign;
            sign >>= shiftSign; // logical shift
            s.si = mulN;
            s.si = s.f * v.f; // correct subnormals
            v.si ^= (s.si ^ v.si) & -(minN > v.si);
            v.si ^= (infN ^ v.si) & -((infN > v.si) & (v.si > maxN));
            v.si ^= (nanN ^ v.si) & -((nanN > v.si) & (v.si > infN));
            v.ui >>= shift; // logical shift
            v.si ^= ((v.si - maxD) ^ v.si) & -(v.si > maxC);
            v.si ^= ((v.si - minD) ^ v.si) & -(v.si > subC);
            return v.ui | sign;

        static float decompress(uint16_t value)
            Bits v;
            v.ui = value;
            int32_t sign = v.si & signC;
            v.si ^= sign;
            sign <<= shiftSign;
            v.si ^= ((v.si + minD) ^ v.si) & -(v.si > subC);
            v.si ^= ((v.si + maxD) ^ v.si) & -(v.si > maxC);
            Bits s;
            s.si = mulC;
            s.f *= v.si;
            int32_t mask = -(norC > v.si);
            v.si <<= shift;
            v.si ^= (s.si ^ v.si) & mask;
            v.si |= sign;
            return v.f;

So that's a lot to take in but, it handles all subnormal values, both infinities, quiet NaNs, signaling NaNs, and negative zero. Of course full IEEE support isn't always needed. So compressing generic floats:

    class FloatCompressor
        union Bits
            float f;
            int32_t si;
            uint32_t ui;

        bool hasNegatives;
        bool noLoss;
        int32_t _maxF;
        int32_t _minF;
        int32_t _epsF;
        int32_t _maxC;
        int32_t _zeroC;
        int32_t _pDelta;
        int32_t _nDelta;
        int _shift;

        static int32_t const signF = 0x80000000;
        static int32_t const absF = ~signF;


        FloatCompressor(float min, float epsilon, float max, int precision)
            // legal values
            // min <= 0 < epsilon < max
            // 0 <= precision <= 23
            _shift = 23 - precision;
            Bits v;
            v.f = min;
            _minF = v.si;
            v.f = epsilon;
            _epsF = v.si;
            v.f = max;
            _maxF = v.si;
            hasNegatives = _minF < 0;
            noLoss = _shift == 0;
            int32_t pepsU, nepsU;
            if(noLoss) {
                nepsU = _epsF;
                pepsU = _epsF ^ signF;
                _maxC = _maxF ^ signF;
                _zeroC = signF;
            } else {
                nepsU = uint32_t(_epsF ^ signF) >> _shift;
                pepsU = uint32_t(_epsF) >> _shift;
                _maxC = uint32_t(_maxF) >> _shift;
                _zeroC = 0;
            _pDelta = pepsU - _zeroC - 1;
            _nDelta = nepsU - _maxC - 1;

        float clamp(float value)
            Bits v;
            v.f = value;
            int32_t max = _maxF;
                max ^= (_minF ^ _maxF) & -(0 > v.si);
            v.si ^= (max ^ v.si) & -(v.si > max);
            v.si &= -(_epsF <= (v.si & absF));
            return v.f;

        uint32_t compress(float value)
            Bits v;
            v.f = clamp(value);
                v.si ^= signF;
                v.ui >>= _shift;
                v.si ^= ((v.si - _nDelta) ^ v.si) & -(v.si > _maxC);
            v.si ^= ((v.si - _pDelta) ^ v.si) & -(v.si > _zeroC);
                v.si ^= signF;
            return v.ui;

        float decompress(uint32_t value)
            Bits v;
            v.ui = value;
                v.si ^= signF;
            v.si ^= ((v.si + _pDelta) ^ v.si) & -(v.si > _zeroC);
                v.si ^= ((v.si + _nDelta) ^ v.si) & -(v.si > _maxC);
                v.si ^= signF;
                v.si <<= _shift;
            return v.f;


This forces all values into the accepted range, no support for NaNs, infinities or negative zero. Epsilon is the smallest allowable value in the range. Precision is how many bits of precision to retain from the float. While there are a lot of branches above, they are all static and will be cached by the branch predictor in the CPU.

Of course if your values don't require logarithmic resolution approaching zero. Then linearizing them to a fixed point format is much faster, as was already mentioned.

I use the FloatCompressor (SSE version) in graphics library for reducing the size of linear float color values in memory. Compressed floats have the advantage of creating small look-up tables for time consuming functions, like gamma correction or transcendentals. Compressing linear sRGB values reduces to a max of 12 bits or a max value of 3011, which is great for a look-up table size for to/from sRGB.

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At the beginning you write that it relies on GCC's (-true == ~0). I want to use your code snippet in Visual Studio 2012, do you have an input+expected output pair that could tell me whether my compiler does the right thing? It does seem to convert forth and back without issues and aforementioned expression holds true. –  Cygon Jun 19 '13 at 9:49

Given your needs (-1000, 1000), perhaps it would be better to use a fixed-point representation.

//change to 20000 to SHORT_MAX if you don't mind whole numbers
//being turned into fractional ones
const int compact_range = 20000;

short compactFloat(double input) {
    return round(input * compact_range / 1000);
double expandToFloat(short input) {
    return ((double)input) * 1000 / compact_range;

This will give you accuracy to the nearest 0.05. If you change 20000 to SHORT_MAX you'll get a bit more accuracy but some whole numbers will end up as decimals on the other end.

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+1 This will get you much more accuracy than a 16 bit float in almost every case, and with less math and no special cases. A 16-bit IEEE float will only have 10 bits of accuracy and crams half of its possible values in the range (-1, 1) –  Drew Dormann Nov 2 '09 at 8:31
It depends on the distribution in the range [-1000, 1000]. If most numbers are in fact in the range [-1,1], then the accuracy of 16 bits floats is on average better. –  MSalters Nov 2 '09 at 10:13
This would be better with SHORT_MAX and 1024 as the scale factor, giving a 10.6bit fixed point representation and allintegers would be exactly representable. The precision would be 1/2^6 = 0.015625, which is far better than 0.05, and the power-of-two scale factor is easy to optimise to a bit-shift (the compiler is likely to do it for you). –  Clifford Nov 2 '09 at 20:59
Sorry that should have been 11.5 (forgot the sign bit!). Then the precision is 1/2^5 = 0.0325; still not bad for something that will also perform better. –  Clifford Nov 2 '09 at 21:01
@Matt, is it possible to send your normalised values using a different format to the position vectors? Consider using an appropriate fixed-point scheme for each of them. –  Artelius Nov 3 '09 at 6:06

If you're sending a stream of information across, you could probably do better than this, especially if everything is in a consistent range, as your application seems to have.

Send a small header, that just consists of a float32 minimum and maximum, then you can send across your information as a 16 bit interpolation value between the two. As you also say that precision isn't much of an issue, you could even send 8bits at a time.

Your value would be something like, at reconstruction time:

float t = _t / numeric_limits<unsigned short>::max();  // With casting, naturally ;)
float val = h.min + t * (h.max - h.min);

Hope that helps.


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This is a great solution, especially for normalized vector/quaternion values which you know will always be in the range (-1, 1). –  Matt Fichman Nov 3 '09 at 2:00
+1 for using numeric_limits. –  xtofl Aug 23 '10 at 12:33
the problem with using interpolation instead of just scaling, is that zero is not represented exactly and some systems are sensitive to that such as 4x4 matrix math. for example, say (min,max-min) is (-11.356439590454102, 23.32344913482666), then the closest you can get to zero is 0.00010671140473306195. –  milkplus Jan 5 '11 at 20:22
Thanks, just used this approach to optimize the size of my save games. Used value "0" to store exact 0.0000. –  Andreas Aug 26 '11 at 23:23

This question is already a bit old, but for the sake of completeness, you might also take a look at this paper for half-to-float and float-to-half conversion.

They use a branchless table-driven approach with relatively small look-up tables. It is completely IEEE-conformant and even beats Phernost's IEEE-conformant branchless conversion routines in performance (at least on my machine). But of course his code is much better suited to SSE and is not that prone to memory latency effects.

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+1 This paper is very good. Note that it is not completely IEEE-conformant in the way it handles NaN. IEEE says that a number is NaN only if at least one of the mantissa bits is set. As the provided code ignores lower order bits, some 32-bit NaNs are wrongly converted to Inf. Unlikely to happen, though. –  Sam Hocevar Jun 22 '12 at 11:33

This conversion for 16-to-32-bit floating point is quite fast for cases where you do not have to account for infinities or NaNs, and can accept denormals-as-zero (DAZ). I.e. it is suitable for performance-sensitive calculations, but you should beware of division by zero if you expect to encounter denormals.

Note that this is most suitable for x86 or other platforms that have conditional moves or "set if" equivalents.

  1. Strip the sign bit off the input
  2. Align the most significant bit of the mantissa to the 22nd bit
  3. Adjust the exponent bias
  4. Set bits to all-zero if the input exponent is zero
  5. Re-insert sign bit

The reverse applies for single-to-half-precision, with some additions.

void float32(float* __restrict out, const uint16_t in) {
    uint32_t t1;
    uint32_t t2;
    uint32_t t3;

    t1 = in & 0x7fff;                       // Non-sign bits
    t2 = in & 0x8000;                       // Sign bit
    t3 = in & 0x7c00;                       // Exponent

    t1 <<= 13;                              // Align mantissa on MSB
    t2 <<= 16;                              // Shift sign bit into position

    t1 += 0x38000000;                       // Adjust bias

    t1 = (t3 == 0 ? 0 : t1);                // Denormals-as-zero

    t1 |= t2;                               // Re-insert sign bit

    *((uint32_t*)out) = t1;

void float16(uint16_t* __restrict out, const float in) {
    uint32_t inu = *((uint32_t*)&in);
    uint32_t t1;
    uint32_t t2;
    uint32_t t3;

    t1 = inu & 0x7fffffff;                 // Non-sign bits
    t2 = inu & 0x80000000;                 // Sign bit
    t3 = inu & 0x7f800000;                 // Exponent

    t1 >>= 13;                             // Align mantissa on MSB
    t2 >>= 16;                             // Shift sign bit into position

    t1 -= 0x1c000;                         // Adjust bias

    t1 = (t3 > 0x38800000) ? 0 : t1;       // Flush-to-zero
    t1 = (t3 < 0x8e000000) ? 0x7bff : t1;  // Clamp-to-max
    t1 = (t3 == 0 ? 0 : t1);               // Denormals-as-zero

    t1 |= t2;                              // Re-insert sign bit

    *((uint16_t*)out) = t1;

Note that you can change the constant 0x7bff to 0x7c00 for it to overflow to infinity.

See GitHub for source code.

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You probably meant 0x80000000 instead of 0x7FFFFFFF as otherwise you would be doing an abs istead of zeroing. The last operation could also be written as: t1 &= 0x80000000 | (static_cast<uint32_t>(t3==0)-1). Though it probably depends on the platform (its sensitivity to branch-prediction failures, presence of conditional assignment instruction, ...) and the compiler (its ability to generate appropriate code for the platform itself) which one is better. Your version might look nicer and clearer to someone not that deeply acquainted with binary operations and C++'s type rules. –  Christian Rau Feb 27 '13 at 17:33
Thanks for spotting that, I've incorporated your comments into the answer. –  Martin Källman Feb 27 '13 at 18:06

The question is old and has already been answered, but I figured it would be worth mentioning an open source C++ library that can create 16bit IEEE compliant half precision floats and has a class that acts pretty much identically to the built in float type, but with 16 bits instead of 32. It is the "half" class of the OpenEXR library. The code is under a permissive BSD style license. I don't believe it has any dependencies outside of the standard library.

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While we're talking about open source C++ libraries providing IEEE-conformant half-precision types that act like the builtin floating point types as much as possible, take a look at the half library (disclaimer: it's from me). –  Christian Rau Dec 12 '12 at 12:39

I had this same exact problem, and found this link very helpful. Just import the file "ieeehalfprecision.c" into your project and use it like this :

float myFloat = 1.24;
uint16_t resultInHalf;
singles2halfp(&resultInHalf, &myFloat, 1); // it accepts a series of floats, so use 1 to input 1 float

// an example to revert the half float back
float resultInSingle;
halfp2singles(&resultInSingle, &resultInHalf, 1);

I also change some code (See the comment by the author (James Tursa) in the link) :

#define INT16_TYPE int16_t 
#define UINT16_TYPE uint16_t 
#define INT32_TYPE int32_t 
#define UINT32_TYPE uint32_t
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Half to float:
float f = ((h&0x8000)<<16) | (((h&0x7c00)+0x1C000)<<13) | ((h&0x03FF)<<13);

Float to half:
uint32_t x = *((uint32_t*)&f);
uint16_t h = ((x>>16)&0x8000)|((((x&0x7f800000)-0x38000000)>>13)&0x7c00)|((x>>13)&0x03ff);

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But of course keep in mind that this currently ignores any kind of overflow, underflow, denormalized values, or infinite values. –  Christian Rau Nov 6 '14 at 13:55

Most of the approaches described in the other answers here either do not round correctly on conversion from float to half, throw away subnormals which is a problem since 2**-14 becomes your smallest non-zero number, or do unfortunate things with Inf / NaN. Inf is also a problem because the largest finite number in half is a bit less than 2^16. OpenEXR was unnecessarily slow and complicated, last I looked at it. A fast correct approach will use the FPU to do the conversion, either as a direct instruction, or using the FPU rounding hardware to make the right thing happen. Any half to float conversion should be no slower than a 2^16 element lookup table.

The following are hard to beat:

On OS X / iOS, you can use vImageConvert_PlanarFtoPlanar16F and vImageConvert_Planar16FtoPlanarF. See Accelerate.framework.

Intel ivybridge added SSE instructions for this. See f16cintrin.h. Similar instructions were added to the ARM ISA for Neon. See vcvt_f32_f16 and vcvt_f16_f32 in arm_neon.h. On iOS you will need to use the arm64 or armv7s arch to get access to them.

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