File size: 6,147 Bytes
2d7efb8 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 |
// Copyright (c) 2021, NVIDIA CORPORATION. All rights reserved.
//
// NVIDIA CORPORATION and its licensors retain all intellectual property
// and proprietary rights in and to this software, related documentation
// and any modifications thereto. Any use, reproduction, disclosure or
// distribution of this software and related documentation without an express
// license agreement from NVIDIA CORPORATION is strictly prohibited.
#include <c10/util/Half.h>
#include "bias_act.h"
//------------------------------------------------------------------------
// Helpers.
template <class T> struct InternalType;
template <> struct InternalType<double> { typedef double scalar_t; };
template <> struct InternalType<float> { typedef float scalar_t; };
template <> struct InternalType<c10::Half> { typedef float scalar_t; };
//------------------------------------------------------------------------
// CUDA kernel.
template <class T, int A>
__global__ void bias_act_kernel(bias_act_kernel_params p)
{
typedef typename InternalType<T>::scalar_t scalar_t;
int G = p.grad;
scalar_t alpha = (scalar_t)p.alpha;
scalar_t gain = (scalar_t)p.gain;
scalar_t clamp = (scalar_t)p.clamp;
scalar_t one = (scalar_t)1;
scalar_t two = (scalar_t)2;
scalar_t expRange = (scalar_t)80;
scalar_t halfExpRange = (scalar_t)40;
scalar_t seluScale = (scalar_t)1.0507009873554804934193349852946;
scalar_t seluAlpha = (scalar_t)1.6732632423543772848170429916717;
// Loop over elements.
int xi = blockIdx.x * p.loopX * blockDim.x + threadIdx.x;
for (int loopIdx = 0; loopIdx < p.loopX && xi < p.sizeX; loopIdx++, xi += blockDim.x)
{
// Load.
scalar_t x = (scalar_t)((const T*)p.x)[xi];
scalar_t b = (p.b) ? (scalar_t)((const T*)p.b)[(xi / p.stepB) % p.sizeB] : 0;
scalar_t xref = (p.xref) ? (scalar_t)((const T*)p.xref)[xi] : 0;
scalar_t yref = (p.yref) ? (scalar_t)((const T*)p.yref)[xi] : 0;
scalar_t dy = (p.dy) ? (scalar_t)((const T*)p.dy)[xi] : one;
scalar_t yy = (gain != 0) ? yref / gain : 0;
scalar_t y = 0;
// Apply bias.
((G == 0) ? x : xref) += b;
// linear
if (A == 1)
{
if (G == 0) y = x;
if (G == 1) y = x;
}
// relu
if (A == 2)
{
if (G == 0) y = (x > 0) ? x : 0;
if (G == 1) y = (yy > 0) ? x : 0;
}
// lrelu
if (A == 3)
{
if (G == 0) y = (x > 0) ? x : x * alpha;
if (G == 1) y = (yy > 0) ? x : x * alpha;
}
// tanh
if (A == 4)
{
if (G == 0) { scalar_t c = exp(x); scalar_t d = one / c; y = (x < -expRange) ? -one : (x > expRange) ? one : (c - d) / (c + d); }
if (G == 1) y = x * (one - yy * yy);
if (G == 2) y = x * (one - yy * yy) * (-two * yy);
}
// sigmoid
if (A == 5)
{
if (G == 0) y = (x < -expRange) ? 0 : one / (exp(-x) + one);
if (G == 1) y = x * yy * (one - yy);
if (G == 2) y = x * yy * (one - yy) * (one - two * yy);
}
// elu
if (A == 6)
{
if (G == 0) y = (x >= 0) ? x : exp(x) - one;
if (G == 1) y = (yy >= 0) ? x : x * (yy + one);
if (G == 2) y = (yy >= 0) ? 0 : x * (yy + one);
}
// selu
if (A == 7)
{
if (G == 0) y = (x >= 0) ? seluScale * x : (seluScale * seluAlpha) * (exp(x) - one);
if (G == 1) y = (yy >= 0) ? x * seluScale : x * (yy + seluScale * seluAlpha);
if (G == 2) y = (yy >= 0) ? 0 : x * (yy + seluScale * seluAlpha);
}
// softplus
if (A == 8)
{
if (G == 0) y = (x > expRange) ? x : log(exp(x) + one);
if (G == 1) y = x * (one - exp(-yy));
if (G == 2) { scalar_t c = exp(-yy); y = x * c * (one - c); }
}
// swish
if (A == 9)
{
if (G == 0)
y = (x < -expRange) ? 0 : x / (exp(-x) + one);
else
{
scalar_t c = exp(xref);
scalar_t d = c + one;
if (G == 1)
y = (xref > halfExpRange) ? x : x * c * (xref + d) / (d * d);
else
y = (xref > halfExpRange) ? 0 : x * c * (xref * (two - d) + two * d) / (d * d * d);
yref = (xref < -expRange) ? 0 : xref / (exp(-xref) + one) * gain;
}
}
// Apply gain.
y *= gain * dy;
// Clamp.
if (clamp >= 0)
{
if (G == 0)
y = (y > -clamp & y < clamp) ? y : (y >= 0) ? clamp : -clamp;
else
y = (yref > -clamp & yref < clamp) ? y : 0;
}
// Store.
((T*)p.y)[xi] = (T)y;
}
}
//------------------------------------------------------------------------
// CUDA kernel selection.
template <class T> void* choose_bias_act_kernel(const bias_act_kernel_params& p)
{
if (p.act == 1) return (void*)bias_act_kernel<T, 1>;
if (p.act == 2) return (void*)bias_act_kernel<T, 2>;
if (p.act == 3) return (void*)bias_act_kernel<T, 3>;
if (p.act == 4) return (void*)bias_act_kernel<T, 4>;
if (p.act == 5) return (void*)bias_act_kernel<T, 5>;
if (p.act == 6) return (void*)bias_act_kernel<T, 6>;
if (p.act == 7) return (void*)bias_act_kernel<T, 7>;
if (p.act == 8) return (void*)bias_act_kernel<T, 8>;
if (p.act == 9) return (void*)bias_act_kernel<T, 9>;
return NULL;
}
//------------------------------------------------------------------------
// Template specializations.
template void* choose_bias_act_kernel<double> (const bias_act_kernel_params& p);
template void* choose_bias_act_kernel<float> (const bias_act_kernel_params& p);
template void* choose_bias_act_kernel<c10::Half> (const bias_act_kernel_params& p);
//------------------------------------------------------------------------
|