Masond / apex /csrc /welford.cu
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#include <iostream>
#include <ATen/ATen.h>
#include <ATen/AccumulateType.h>
#include <ATen/cuda/CUDAContext.h>
#include <cuda.h>
#include <cuda_runtime.h>
#include <vector>
#include "type_shim.h"
__device__ __forceinline__ int lastpow2(int n)
{
int out = 1 << (31 - __clz(n));
if(n == out)
out >>= 1;
return out;
}
__host__ __forceinline__ int h_next_pow2(unsigned int n) {
n--;
n |= (n >> 1);
n |= (n >> 2);
n |= (n >> 4);
n |= (n >> 8);
n |= (n >> 16);
return ++n;
}
__host__ __forceinline__ int h_last_pow2(unsigned int n) {
n |= (n >> 1);
n |= (n >> 2);
n |= (n >> 4);
n |= (n >> 8);
n |= (n >> 16);
return n - (n >> 1);
}
#define WARP_SIZE 32
template<typename T>
__device__ __forceinline__ T warp_reduce_sum(T val)
{
#pragma unroll
for(int i = WARP_SIZE/2; i > 0; i >>= 1)
val = val + __shfl_down_sync(0xffffffff, val, i);
return val;
}
template<typename T>
__device__ __forceinline__ T reduce_block(T *x, T val)
{
int tid = threadIdx.y*blockDim.x + threadIdx.x;
int blockSize = blockDim.x * blockDim.y;
if (blockSize > 32) {
val = warp_reduce_sum(val);
if (tid % WARP_SIZE == 0)
x[tid/WARP_SIZE] = val;
__syncthreads();
val = (tid < blockSize / WARP_SIZE? x[tid%WARP_SIZE] : T(0));
}
if(tid/WARP_SIZE==0) val = warp_reduce_sum(val);
return val;
}
#define ELEMENTS_PER_ITER 4 // enables concurrency within each thread to hide latency
#define ELEMENTS_PER_THREAD 16
#define OPTIMAL_TILE_W 32
#define MAX_H_BLOCK 128
#define MAX_BLOCK_SIZE 512
__host__ int div_ru(int x, int y) {
return h_last_pow2(1 + (x-1)/y);
}
__host__ void flexible_launch_configs(
const int reduction,
const int stride,
dim3 &block,
dim3 &grid,
const bool coop_flag = false) {
int block_x = std::min(h_last_pow2(stride), OPTIMAL_TILE_W);
int block_y = std::min(h_last_pow2(div_ru(reduction , ELEMENTS_PER_THREAD)),
MAX_BLOCK_SIZE / block_x);
if (block_x * block_y != MAX_BLOCK_SIZE) {
block_x = std::min(h_last_pow2(stride), MAX_BLOCK_SIZE / block_y);
}
int grid_x = div_ru(stride, block_x);
int grid_y = std::min(div_ru(reduction, block_y * ELEMENTS_PER_THREAD), MAX_H_BLOCK);
if (coop_flag) {
// it's not worth having a grid reduction if the reduction dimension is not big enough
grid_y = grid_y < 8 ? 1 : grid_y;
}
block.x = block_x;
block.y = block_y;
block.z = 1;
grid.x = grid_x;
grid.y = grid_y;
grid.z = 1;
}
template<typename T, typename C>
__device__ __forceinline__ void welford_merge_element(C& count,
T& mean,
T& m2n,
const C& num_new,
const T& mean_new,
const T& m2n_new) {
T factor = T(1.0) / max(1, (count + num_new));
T delta0 = mean - mean_new;
mean = (mean_new * num_new + mean * count) * factor;
m2n += m2n_new + delta0 * delta0 * num_new * count * factor;
count += num_new;
}
template<typename T>
__device__ __forceinline__ void warp_reduce_mean_m2n(T &mean, T &m2n, int &num)
{
#pragma unroll
for(int i = WARP_SIZE/2; i > 0; i >>= 1) {
auto num_new = __shfl_down_sync(0xffffffff, num, i);
auto mean_new = __shfl_down_sync(0xffffffff, mean, i);
auto m2n_new = __shfl_down_sync(0xffffffff, m2n, i);
welford_merge_element(num, mean, m2n, num_new, mean_new, m2n_new);
}
}
template <typename T>
__device__ void welford_reduce_mean_m2n(
T* __restrict__ x,
int* __restrict__ count,
T &mean,
T &m2n,
int &num,
int block_size,
int thread_id)
{
int lane = thread_id % WARP_SIZE;
int wid = thread_id / WARP_SIZE;
if (block_size > 32) {
warp_reduce_mean_m2n(mean, m2n, num);
if (lane == 0) {
x[wid*2] = mean;
x[wid*2+1] = m2n;
count[wid] = num;
}
__syncthreads();
if (wid == 0) {
mean = (thread_id < block_size / WARP_SIZE)? x[lane*2] : T(0);
m2n = (thread_id < block_size / WARP_SIZE)? x[lane*2+1] : T(0);
num = (thread_id < block_size / WARP_SIZE)? count[lane] : int(0);
}
}
if (wid==0) warp_reduce_mean_m2n(mean, m2n, num);
return;
}
// return spatial size for NC+ Tensors
__host__ int get_tensor_spatial_size(const at::Tensor& input)
{
auto space_size = input.size(2);
for (int i = 3; i < input.ndimension(); i++) {
space_size *= input.size(i);
}
return space_size;
}
// promote accumulation scalar type. promote half to float.
__host__ at::ScalarType promote_scalartype(const at::Tensor& input)
{
return input.scalar_type() == at::ScalarType::Half ?
at::ScalarType::Float : input.scalar_type();
}
// return single element size, optional accumulation type promotion.
__host__ size_t get_element_data_size(const at::Tensor& input, bool accumulation = false)
{
auto scalar_type = accumulation ? promote_scalartype(input) : input.scalar_type();
return at::elementSize(scalar_type);
}
template<typename T, typename C>
__device__ __forceinline__ void welford_merge_block_vertical(C& count,
T& mean,
T& m2n,
C* shmem_count,
T* shmem_mean,
T* shmem_m2n) {
// write to shared memory
auto address_base = threadIdx.x + threadIdx.y * blockDim.x;
shmem_mean[address_base] = mean;
shmem_m2n[address_base] = m2n;
shmem_count[address_base] = count;
#pragma unroll
for (int offset = blockDim.y/2; offset > 0; offset >>= 1) {
__syncthreads();
if (threadIdx.y < offset && threadIdx.y + offset < blockDim.y) {
auto address = address_base + offset * blockDim.x;
// read shared memory back to register for reduction
auto num_new = shmem_count[address];
auto mean_new = shmem_mean[address];
auto m2n_new = shmem_m2n[address];
welford_merge_element(count, mean, m2n, num_new, mean_new, m2n_new);
// last write is not necessary
shmem_mean[address_base] = mean;
shmem_m2n[address_base] = m2n;
shmem_count[address_base] = count;
}
}
}
template<typename T>
__device__ __forceinline__ void merge_block_vertical(T& sum_dy,
T& sum_dy_xmu,
T* shmem_sum_dy,
T* shmem_sum_dy_xmu) {
// write to shared memory
auto address_base = threadIdx.x + threadIdx.y * blockDim.x;
shmem_sum_dy[address_base] = sum_dy;
shmem_sum_dy_xmu[address_base] = sum_dy_xmu;
#pragma unroll
for (int offset = blockDim.y/2; offset > 0; offset >>= 1) {
__syncthreads();
if (threadIdx.y < offset && threadIdx.y + offset < blockDim.y) {
auto address = address_base + offset * blockDim.x;
sum_dy += shmem_sum_dy[address];
sum_dy_xmu += shmem_sum_dy_xmu[address];
// last write is not necessary
shmem_sum_dy[address_base] = sum_dy;
shmem_sum_dy_xmu[address_base] = sum_dy_xmu;
}
}
}
// welford kernel calculating mean/biased_variance/unbiased_variance
template <typename scalar_t, typename accscalar_t, typename outscalar_t>
__global__ void welford_kernel(
const scalar_t* __restrict__ input,
outscalar_t* __restrict__ out_mean,
outscalar_t* __restrict__ out_var_biased,
const int bs,
const int fs,
const int ss) {
int block_size = blockDim.x * blockDim.y;
int count = 0;
accscalar_t x_mean = accscalar_t(0);
accscalar_t m_2_n = accscalar_t(0);
int thread_id = threadIdx.y*blockDim.x + threadIdx.x;
for (int batch_id = threadIdx.y; batch_id < bs; batch_id += blockDim.y) {
int input_base = blockIdx.x*ss + batch_id*ss*fs;
// sequential welford
for (int offset = threadIdx.x; offset < ss ; offset += blockDim.x) {
count++;
auto x_n = static_cast<accscalar_t>(input[offset+input_base]);
auto d = x_n - x_mean;
x_mean += d / count;
m_2_n += d * (x_n - x_mean);
}
}
static __shared__ int s_mem[160];
accscalar_t* s_mem_ac = (accscalar_t*) &s_mem[32];
welford_reduce_mean_m2n<accscalar_t>(s_mem_ac, s_mem, x_mean, m_2_n, count, block_size, thread_id);
if (thread_id == 0) {
out_mean[blockIdx.x] = static_cast<outscalar_t>(x_mean);
out_var_biased[blockIdx.x] = static_cast<outscalar_t>(m_2_n/count);
}
}
// elementwise BN kernel
template <typename scalar_t, typename accscalar_t, typename layerscalar_t>
__global__ void batchnorm_forward_kernel(
const scalar_t* __restrict__ input,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
const layerscalar_t* __restrict__ weight,
const layerscalar_t* __restrict__ shift,
scalar_t* __restrict__ out,
const int ss,
const int bs) {
auto m_c = mean[blockIdx.x];
auto inv_std_c = inv_std[blockIdx.x];
auto w_c = weight == NULL ? accscalar_t(1.0) : static_cast<accscalar_t>(weight[blockIdx.x]);
auto s_c = shift == NULL ? accscalar_t(0.0) : static_cast<accscalar_t>(shift[blockIdx.x]);
for (int batch_offset = blockIdx.y*blockDim.y + threadIdx.y; batch_offset < bs; batch_offset += gridDim.y*blockDim.y) {
int address_base = blockIdx.x*ss + batch_offset*gridDim.x*ss;
for (int offset = threadIdx.x + blockIdx.z*blockDim.x; offset < ss ; offset+= gridDim.z*blockDim.x) {
out[address_base+offset] = static_cast<scalar_t>(w_c * (static_cast<accscalar_t>(input[address_base+offset]) - m_c ) * inv_std_c + s_c);
}
}
}
// Backward BN kernel, calculates grad_bias, grad_weight as well as intermediate
// results to calculating grad_input.
// Breaking the grad_input to two step to support sync BN, which requires all
// reduce of the intermediate results across processes.
template <typename scalar_t, typename accscalar_t, typename layerscalar_t>
__global__ void reduce_bn_kernel(
const scalar_t* __restrict__ input,
const scalar_t* __restrict__ grad_output,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
accscalar_t* __restrict__ mean_dy,
accscalar_t* __restrict__ mean_dy_xmu,
layerscalar_t* __restrict__ grad_weight,
layerscalar_t* __restrict__ grad_bias,
const int bs,
const int fs,
const int ss) {
static __shared__ int s_mem[64];
int total_item_num = bs * ss;
int thread_id = threadIdx.y*blockDim.x + threadIdx.x;
auto r_mean = mean[blockIdx.x];
auto factor = inv_std[blockIdx.x];
// Kahan sum
accscalar_t sum_dy = 0.0;
accscalar_t sum_dy_xmu = 0.0;
accscalar_t sum_dy_c = 0.0;
accscalar_t sum_dy_xmu_c = 0.0;
for (int batch_id = threadIdx.y; batch_id < bs; batch_id += blockDim.y) {
int input_base = blockIdx.x*ss + batch_id*ss*fs;
for (int offset = threadIdx.x; offset < ss ; offset += blockDim.x) {
auto e_grad = static_cast<accscalar_t>(grad_output[offset+input_base]);
auto e_input = static_cast<accscalar_t>(input[offset+input_base]);
// calculating sum_dy
auto sum_dy_y = e_grad - sum_dy_c;
auto sum_dy_t = sum_dy + sum_dy_y;
sum_dy_c = (sum_dy_t - sum_dy) - sum_dy_y;
sum_dy = sum_dy_t;
// calculating sum_dy_xmu
auto sum_dy_xmu_y = e_grad * (e_input - r_mean) - sum_dy_xmu_c;
auto sum_dy_xmu_t = sum_dy_xmu + sum_dy_xmu_y;
sum_dy_xmu_c = (sum_dy_xmu_t - sum_dy_xmu) - sum_dy_xmu_y;
sum_dy_xmu = sum_dy_xmu_t;
}
}
sum_dy = reduce_block((accscalar_t*)s_mem, sum_dy);
__syncthreads();
sum_dy_xmu = reduce_block((accscalar_t*)s_mem, sum_dy_xmu);
if (thread_id == 0) {
if (grad_bias != NULL) {
grad_bias[blockIdx.x] = static_cast<layerscalar_t>(sum_dy);
}
if (grad_weight != NULL) {
grad_weight[blockIdx.x] = static_cast<layerscalar_t>(sum_dy_xmu * factor);
}
mean_dy[blockIdx.x] = sum_dy / total_item_num;
mean_dy_xmu[blockIdx.x] = sum_dy_xmu / total_item_num;
}
}
// elementwise backward BN kernel
template <typename scalar_t, typename accscalar_t, typename layerscalar_t>
__global__ void batchnorm_backward_kernel(
const scalar_t* __restrict__ grad_output,
const scalar_t* __restrict__ input,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
const layerscalar_t* __restrict__ weight,
const accscalar_t* __restrict__ mean_dy,
const accscalar_t* __restrict__ mean_dy_xmu,
scalar_t* __restrict__ grad_input,
const int ss,
const int bs) {
auto m_c = static_cast<accscalar_t>(mean[blockIdx.x]);
auto m_dy_c = static_cast<accscalar_t>(mean_dy[blockIdx.x]);
auto factor_1_c = inv_std[blockIdx.x];
auto factor_2_c = (weight == NULL ? accscalar_t(1.0) : static_cast<accscalar_t>(weight[blockIdx.x])) * factor_1_c;
factor_1_c = factor_1_c * factor_1_c * mean_dy_xmu[blockIdx.x];
for (int batch_offset = blockIdx.y*blockDim.y+threadIdx.y; batch_offset < bs; batch_offset += gridDim.y*blockDim.y) {
int address_base = blockIdx.x*ss + batch_offset*gridDim.x*ss;
for (int offset = threadIdx.x + blockIdx.z*blockDim.x; offset < ss ; offset+= gridDim.z*blockDim.x) {
grad_input[address_base+offset] = (static_cast<accscalar_t>(grad_output[address_base+offset]) - m_dy_c - (static_cast<accscalar_t>(input[address_base+offset]) - m_c) * factor_1_c) * factor_2_c;
}
}
}
// welford kernel for c last tensor calculating mean/biased_variance/unbiased_variance
template
<typename scalar_t,
typename accscalar_t,
typename outscalar_t,
int PARALLEL_LOADS>
__global__ void
welford_kernel_c_last(
const scalar_t* __restrict__ input,
outscalar_t* __restrict__ out_mean,
outscalar_t* __restrict__ out_var_biased,
volatile accscalar_t* staging_data,
int* semaphores,
const int reduction_size,
const int stride) {
// hide latency with concurrency
accscalar_t x_mean[PARALLEL_LOADS];
accscalar_t m_2_n[PARALLEL_LOADS];
int count[PARALLEL_LOADS];
#pragma unroll
for (int i = 0; i < PARALLEL_LOADS; i++) {
x_mean[i] = accscalar_t(0);
m_2_n[i] = accscalar_t(0);
count[i] = accscalar_t(0);
}
// tensor dimension (m,c)
// loop along m dimension
int inner_loop_stride = blockDim.y * gridDim.y;
// offset along m dimension
int m_offset = blockIdx.y * blockDim.y + threadIdx.y;
int c_offset = blockIdx.x * blockDim.x + threadIdx.x;
int loop_count = 1 + (reduction_size - 1) / (inner_loop_stride * PARALLEL_LOADS);
int address_base = m_offset * stride + c_offset;
int address_increment = inner_loop_stride * stride;
for (int i = 0; i < loop_count; i++) {
accscalar_t x_math[PARALLEL_LOADS];
accscalar_t x_count_inv[PARALLEL_LOADS];
accscalar_t is_valid[PARALLEL_LOADS];
// load multiple data in
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
if (c_offset < stride && m_offset < reduction_size) {
x_math[j] = input[address_base];
count[j]++;
x_count_inv[j] = accscalar_t(1) / count[j];
is_valid[j] = accscalar_t(1);
} else {
x_math[j] = accscalar_t(0);
x_count_inv[j] = accscalar_t(0);
is_valid[j] = accscalar_t(0);
}
m_offset += inner_loop_stride;
address_base += address_increment;
}
// calculate mean/m2n with welford
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
accscalar_t delta0 = x_math[j] - x_mean[j];
x_mean[j] += delta0 * x_count_inv[j];
accscalar_t delta1 = x_math[j] - x_mean[j];
m_2_n[j] += delta0 * delta1 * is_valid[j];
}
}
// thread reduction to accumulate mean/m_2_n/count between PARALLEL_LOADS
#pragma unroll
for (int j = 1; j < PARALLEL_LOADS; j++) {
welford_merge_element(count[0], x_mean[0], m_2_n[0], count[j], x_mean[j], m_2_n[j]);
}
// release x_mean / m_2_n
auto mean_th = x_mean[0];
auto m2_th = m_2_n[0];
auto count_th = count[0];
// block-wise reduction with shared memory (since reduction cannot be done within a warp)
static __shared__ accscalar_t shmem_mean[MAX_BLOCK_SIZE];
static __shared__ accscalar_t shmem_m2n[MAX_BLOCK_SIZE];
static __shared__ int shmem_count[MAX_BLOCK_SIZE];
welford_merge_block_vertical(count_th, mean_th, m2_th, shmem_count, shmem_mean, shmem_m2n);
// grid reduction if needed (coop launch used at the first place)
if (gridDim.y > 1) {
volatile accscalar_t* staging_mean = staging_data;
volatile accscalar_t* staging_m2n = &staging_data[stride*gridDim.y];
volatile int* staging_count = reinterpret_cast<volatile int*>(&staging_m2n[stride*gridDim.y]);
address_base = c_offset + blockIdx.y * stride;
// write data to staging_data;
if (threadIdx.y == 0 && c_offset < stride) {
staging_mean[address_base] = mean_th;
staging_m2n[address_base] = m2_th;
staging_count[address_base] = count_th;
}
__threadfence();
__syncthreads(); // ensuring writes to staging_ is visible to all blocks
__shared__ bool is_last_block_done;
// mark block done
if (threadIdx.x == 0 && threadIdx.y == 0) {
int old = atomicAdd(&semaphores[blockIdx.x], 1);
is_last_block_done = (old == (gridDim.y-1));
}
__syncthreads();
// check that all data is now available in global memory
if (is_last_block_done) {
count_th = 0;
mean_th = accscalar_t(0.0);
m2_th = accscalar_t(0.0);
for (int y = threadIdx.y; y < gridDim.y; y += blockDim.y) {
address_base = c_offset + y * stride;
int num_new = c_offset < stride ? staging_count[address_base] : 0;
accscalar_t mean_new = c_offset < stride ? staging_mean[address_base] : accscalar_t(0.0);
accscalar_t m2n_new = c_offset < stride ? staging_m2n[address_base] : accscalar_t(0.0);
welford_merge_element(count_th, mean_th, m2_th, num_new, mean_new, m2n_new);
}
welford_merge_block_vertical(count_th, mean_th, m2_th, shmem_count, shmem_mean, shmem_m2n);
if (threadIdx.y == 0 && c_offset < stride) {
out_mean[c_offset] = static_cast<outscalar_t>(mean_th);
out_var_biased[c_offset] = static_cast<outscalar_t>(m2_th / count_th);
}
}
} else {
if (blockIdx.y == 0 && threadIdx.y == 0 && c_offset < stride) {
out_mean[c_offset] = static_cast<outscalar_t>(mean_th);
out_var_biased[c_offset] = static_cast<outscalar_t>(m2_th / count_th);
}
}
}
// parallel welford kernel to further reduce mean / biased_var
// into mean / unbiased_var / inv_std across multiple processes.
template <typename scalar_t>
__global__ void welford_kernel_parallel(
const scalar_t* __restrict__ mean,
const scalar_t* __restrict__ var_biased,
scalar_t* __restrict__ out_mean,
scalar_t* __restrict__ out_var,
scalar_t* __restrict__ inv_std,
const int world_size,
const int feature_size,
const float eps,
const int numel) {
for (int i = blockIdx.x * blockDim.x + threadIdx.x; i < feature_size; i += gridDim.x * blockDim.x) {
// load data;
int address = i;
scalar_t x_mean = 0;
scalar_t m_2_n = 0;
int count = 0;
for (int j = 0; j < world_size; j++) {
welford_merge_element(count, x_mean, m_2_n, numel, mean[address], var_biased[address]*numel);
address += feature_size;
}
out_mean[i] = x_mean;
out_var[i] = m_2_n/ (count - 1);
inv_std[i] = scalar_t(1) / sqrt(m_2_n/count + eps);
}
}
// elementwise BN kernel
template <
typename scalar_t,
typename accscalar_t,
typename layerscalar_t,
int PARALLEL_LOADS>
__global__ void batchnorm_forward_c_last_kernel(
const scalar_t* __restrict__ input,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
const layerscalar_t* __restrict__ weight,
const layerscalar_t* __restrict__ shift,
scalar_t* __restrict__ out,
const int reduction_size,
const int stride) {
// tensor dimension (m,c)
// loop along m dimension
int inner_loop_stride = blockDim.y * gridDim.y;
// offset along m dimension
int m_offset = blockIdx.y * blockDim.y + threadIdx.y;
int c_offset = blockIdx.x * blockDim.x + threadIdx.x;
auto m_c = mean[c_offset];
auto inv_std_c = static_cast<accscalar_t>(inv_std[c_offset]);
auto w_c = weight == NULL ? accscalar_t(1.0) : static_cast<accscalar_t>(weight[c_offset]);
auto s_c = shift == NULL ? accscalar_t(0.0) : static_cast<accscalar_t>(shift[c_offset]);
int loop_count = 1 + (reduction_size - 1) / (inner_loop_stride * PARALLEL_LOADS);
int address_base = m_offset * stride + c_offset;
int address_increment = inner_loop_stride * stride;
for (int i = 0; i < loop_count; i++) {
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
if (c_offset < stride && m_offset < reduction_size) {
out[address_base] = static_cast<scalar_t>(
w_c * (static_cast<accscalar_t>(input[address_base]) - m_c ) * inv_std_c + s_c
);
}
m_offset += inner_loop_stride;
address_base += address_increment;
}
}
}
// batchnorm backward kernel for c last tensor
template
<typename scalar_t,
typename accscalar_t,
typename layerscalar_t,
int PARALLEL_LOADS>
__global__ void reduce_bn_c_last_kernel(
const scalar_t* __restrict__ input,
const scalar_t* __restrict__ grad_output,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
accscalar_t* __restrict__ mean_dy,
accscalar_t* __restrict__ mean_dy_xmu,
layerscalar_t* __restrict__ grad_weight,
layerscalar_t* __restrict__ grad_bias,
volatile accscalar_t* staging_data,
int* semaphores,
const int reduction_size,
const int stride) {
// hide latency with concurrency
accscalar_t sum_dy[PARALLEL_LOADS];
accscalar_t sum_dy_xmu[PARALLEL_LOADS];
#pragma unroll
for (int i = 0; i < PARALLEL_LOADS; i++) {
sum_dy[i] = accscalar_t(0);
sum_dy_xmu[i] = accscalar_t(0);
}
// tensor dimension (m,c)
// loop along m dimension
int inner_loop_stride = blockDim.y * gridDim.y;
// offset along m dimension
int m_offset = blockIdx.y * blockDim.y + threadIdx.y;
int c_offset = blockIdx.x * blockDim.x + threadIdx.x;
int loop_count = 1 + (reduction_size - 1) / (inner_loop_stride * PARALLEL_LOADS);
int address_base = m_offset * stride + c_offset;
int address_increment = inner_loop_stride * stride;
auto r_mean = mean[c_offset];
auto factor = inv_std[c_offset];
for (int i = 0; i < loop_count; i++) {
accscalar_t x_input[PARALLEL_LOADS];
accscalar_t x_grad_output[PARALLEL_LOADS];
// load multiple data in
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
if (c_offset < stride && m_offset < reduction_size) {
x_input[j] = input[address_base];
x_grad_output[j] = grad_output[address_base];
} else {
x_input[j] = accscalar_t(0);
x_grad_output[j] = accscalar_t(0);
}
m_offset += inner_loop_stride;
address_base += address_increment;
}
// calculate sum_dy / sum_dy_xmu
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
sum_dy[j] += x_grad_output[j];
sum_dy_xmu[j] += x_grad_output[j] * (x_input[j] - r_mean);
}
}
// thread reduction to accumulate sum_dy / sum_dy_xmu between PARALLEL_LOADS
#pragma unroll
for (int j = 1; j < PARALLEL_LOADS; j++) {
sum_dy[0] += sum_dy[j];
sum_dy_xmu[0] += sum_dy_xmu[j];
}
// release array of registers
auto sum_dy_th = sum_dy[0];
auto sum_dy_xmu_th = sum_dy_xmu[0];
// block-wise reduction with shared memory (since reduction cannot be done within a warp)
static __shared__ accscalar_t shmem_sum_dy[MAX_BLOCK_SIZE];
static __shared__ accscalar_t shmem_sum_dy_xmu[MAX_BLOCK_SIZE];
merge_block_vertical(sum_dy_th, sum_dy_xmu_th, shmem_sum_dy, shmem_sum_dy_xmu);
// grid reduction if needed (coop launch used at the first place)
if (gridDim.y > 1) {
volatile accscalar_t* staging_sum_dy = staging_data;
volatile accscalar_t* staging_sum_dy_xmu = &staging_data[stride*gridDim.y];
address_base = c_offset + blockIdx.y * stride;
// write data to staging_data;
if (threadIdx.y == 0 && c_offset < stride) {
staging_sum_dy[address_base] = sum_dy_th;
staging_sum_dy_xmu[address_base] = sum_dy_xmu_th;
}
__threadfence();
__syncthreads(); // ensuring writes to staging_ is visible to all blocks
__shared__ bool is_last_block_done;
// mark block done
if (threadIdx.x == 0 && threadIdx.y == 0) {
int old = atomicAdd(&semaphores[blockIdx.x], 1);
is_last_block_done = (old == (gridDim.y-1));
}
__syncthreads();
// check that all data is now available in global memory
if (is_last_block_done) {
sum_dy_th = accscalar_t(0.0);
sum_dy_xmu_th = accscalar_t(0.0);
for (int y = threadIdx.y; y < gridDim.y; y += blockDim.y) {
address_base = c_offset + y * stride;
sum_dy_th += (c_offset < stride ? staging_sum_dy[address_base] : accscalar_t(0.0));
sum_dy_xmu_th += (c_offset < stride ? staging_sum_dy_xmu[address_base] : accscalar_t(0.0));
}
merge_block_vertical(sum_dy_th, sum_dy_xmu_th, shmem_sum_dy, shmem_sum_dy_xmu);
if (threadIdx.y == 0 && c_offset < stride) {
if (grad_bias != NULL) {
grad_bias[c_offset] = static_cast<layerscalar_t>(sum_dy_th);
}
if (grad_weight != NULL) {
grad_weight[c_offset] = static_cast<layerscalar_t>(sum_dy_xmu_th * factor);
}
mean_dy[c_offset] = sum_dy_th / reduction_size;
mean_dy_xmu[c_offset] = sum_dy_xmu_th / reduction_size;
}
}
} else {
if (blockIdx.y == 0 && threadIdx.y == 0 && c_offset < stride) {
if (grad_bias != NULL) {
grad_bias[c_offset] = static_cast<layerscalar_t>(sum_dy_th);
}
if (grad_weight != NULL) {
grad_weight[c_offset] = static_cast<layerscalar_t>(sum_dy_xmu_th * factor);
}
mean_dy[c_offset] = sum_dy_th / reduction_size;
mean_dy_xmu[c_offset] = sum_dy_xmu_th / reduction_size;
}
}
}
// elementwise BN kernel
template <
typename scalar_t,
typename accscalar_t,
typename layerscalar_t,
int PARALLEL_LOADS>
__global__ void batchnorm_backward_c_last_kernel(
const scalar_t* __restrict__ grad_output,
const scalar_t* __restrict__ input,
const accscalar_t* __restrict__ mean,
const accscalar_t* __restrict__ inv_std,
const layerscalar_t* __restrict__ weight,
const accscalar_t* __restrict__ mean_dy,
const accscalar_t* __restrict__ mean_dy_xmu,
scalar_t* __restrict__ grad_input,
const int reduction_size,
const int stride) {
// tensor dimension (m,c)
// loop along m dimension
int inner_loop_stride = blockDim.y * gridDim.y;
// offset along m dimension
int m_offset = blockIdx.y * blockDim.y + threadIdx.y;
int c_offset = blockIdx.x * blockDim.x + threadIdx.x;
auto m_c = mean[c_offset];
auto m_dy_c = mean_dy[c_offset];
auto factor_1_c = inv_std[c_offset];
auto factor_2_c = (weight == NULL? accscalar_t(1.0) : static_cast<accscalar_t>(weight[c_offset])) * factor_1_c;
factor_1_c = factor_1_c * factor_1_c * mean_dy_xmu[c_offset];
int loop_count = 1 + (reduction_size - 1) / (inner_loop_stride * PARALLEL_LOADS);
int address_base = m_offset * stride + c_offset;
int address_increment = inner_loop_stride * stride;
for (int i = 0; i < loop_count; i++) {
#pragma unroll
for (int j = 0; j < PARALLEL_LOADS; j++) {
if (c_offset < stride && m_offset < reduction_size) {
grad_input[address_base] = static_cast<scalar_t>(
(static_cast<accscalar_t>(grad_output[address_base]) - m_dy_c -
(static_cast<accscalar_t>(input[address_base]) - m_c) * factor_1_c)
* factor_2_c);
}
m_offset += inner_loop_stride;
address_base += address_increment;
}
}
}
std::vector<at::Tensor> welford_mean_var_CUDA(const at::Tensor input) {
const auto batch_size = input.size(0);
const auto feature_size = input.size(1);
auto space_size = get_tensor_spatial_size(input);
auto scalar_type = promote_scalartype(input);
at::Tensor out_var_biased = at::empty({feature_size}, input.options().dtype(scalar_type));
at::Tensor out_mean = at::empty({feature_size}, input.options().dtype(scalar_type));
int block_y = min(h_last_pow2(batch_size), int(MAX_BLOCK_SIZE / 32));
int block_x = max(1, min(MAX_BLOCK_SIZE / block_y, h_last_pow2(space_size)));
const dim3 block(block_x, block_y);
const dim3 grid(feature_size);
auto stream = at::cuda::getCurrentCUDAStream();
{
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "welford_mean_var_kernel",
using accscalar_t = at::acc_type<scalar_t_0, true>;
welford_kernel<scalar_t_0, accscalar_t, accscalar_t><<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
out_mean.data<accscalar_t>(),
out_var_biased.data<accscalar_t>(),
batch_size,
feature_size,
space_size);
);
}
return {out_mean, out_var_biased};
}
at::Tensor batchnorm_forward_CUDA(
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight,
const at::optional<at::Tensor> shift) {
const auto batch_size = input.size(0);
const auto feature_size = input.size(1);
at::Tensor out = at::empty_like(input);
auto space_size = get_tensor_spatial_size(input);
int block_x = max(32, min(MAX_BLOCK_SIZE, h_last_pow2(space_size)/4));
int block_y = max(1, min(MAX_BLOCK_SIZE/block_x, h_last_pow2(batch_size)/4));
const dim3 block(block_x, block_y);
int grid_z = max(1, min(65535, h_last_pow2(space_size)/4/block_x));
int batch_group_size = max(1, min(65535, h_last_pow2(batch_size)/block_y));
const dim3 grid(feature_size, batch_group_size, grid_z);
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value() &&
weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_forward_kernel<scalar_t_0, accscalar_t, accscalar_t><<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<accscalar_t>() : NULL,
shift.has_value() ? shift.value().data<accscalar_t>() : NULL,
out.data<scalar_t_0>(),
space_size,
batch_size);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_forward_kernel<scalar_t_0, accscalar_t, scalar_t_0><<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<scalar_t_0>() : NULL,
shift.has_value() ? shift.value().data<scalar_t_0>() : NULL,
out.data<scalar_t_0>(),
space_size,
batch_size);
);
}
return out;
}
std::vector<at::Tensor> reduce_bn_CUDA(
const at::Tensor grad_output,
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight)
{
const auto batch_size = input.size(0);
const auto feature_size = input.size(1);
auto scalar_type = promote_scalartype(input);
at::Tensor mean_dy = at::empty({feature_size}, mean.options());
at::Tensor mean_dy_xmu = at::empty({feature_size}, mean.options());
at::Tensor grad_weight;
at::Tensor grad_bias;
if (weight.has_value()) {
grad_weight = at::empty({feature_size}, weight.value().options());
grad_bias = at::empty({feature_size}, weight.value().options());
} else {
grad_weight = at::empty({0}, mean.options());
grad_bias = at::empty({0}, mean.options());
}
auto space_size = get_tensor_spatial_size(input);
int block_y = min(h_last_pow2(batch_size), int(MAX_BLOCK_SIZE/ 32));
int block_x = max(1, min(MAX_BLOCK_SIZE/ block_y, h_last_pow2(space_size)));
const dim3 block(block_x, block_y);
const dim3 grid(feature_size);
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value() &&
weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward_reduce",
using accscalar_t = at::acc_type<scalar_t_0, true>;
reduce_bn_kernel<scalar_t_0, accscalar_t, accscalar_t><<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
grad_output.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
weight.has_value() ? grad_weight.data<accscalar_t>() : NULL,
weight.has_value() ? grad_bias.data<accscalar_t>() : NULL,
batch_size,
feature_size,
space_size);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward_reduce",
using accscalar_t = at::acc_type<scalar_t_0, true>;
reduce_bn_kernel<scalar_t_0, accscalar_t, scalar_t_0><<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
grad_output.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
weight.has_value() ? grad_weight.data<scalar_t_0>() : NULL,
weight.has_value() ? grad_bias.data<scalar_t_0>() : NULL,
batch_size,
feature_size,
space_size);
);
}
return {mean_dy, mean_dy_xmu, grad_weight, grad_bias};
}
at::Tensor batchnorm_backward_CUDA(
const at::Tensor grad_output,
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight,
const at::Tensor mean_dy,
const at::Tensor mean_dy_xmu) {
const auto batch_size = input.size(0);
const auto feature_size = input.size(1);
at::Tensor grad_input = at::empty_like(input);
auto space_size = get_tensor_spatial_size(input);
int block_x = max(32, min(MAX_BLOCK_SIZE, h_last_pow2(space_size)/4));
int block_y = max(1, min(MAX_BLOCK_SIZE/block_x, h_last_pow2(batch_size)/4));
const dim3 block(block_x, block_y);
int grid_z = max(1, min(65535, h_last_pow2(space_size)/4/block_x));
int batch_group_size = max(1, min(65535, h_last_pow2(batch_size)/block_y));
const dim3 grid(feature_size, batch_group_size, grid_z);
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value() &&
weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_backward_kernel<scalar_t_0, accscalar_t, accscalar_t><<<grid, block, 0, stream>>>(
grad_output.data<scalar_t_0>(),
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<accscalar_t>() : NULL,
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
grad_input.data<scalar_t_0>(),
space_size,
batch_size);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_backward_kernel<scalar_t_0, accscalar_t, scalar_t_0><<<grid, block, 0, stream>>>(
grad_output.data<scalar_t_0>(),
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<scalar_t_0>() : NULL,
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
grad_input.data<scalar_t_0>(),
space_size,
batch_size);
);
}
return grad_input;
}
std::vector<at::Tensor> welford_parallel_CUDA(const at::Tensor mean_feature_nodes,
const at::Tensor var_biased,
int numel,
const float eps) {
const auto world_size = mean_feature_nodes.size(0);
const auto feature_size = mean_feature_nodes.size(1);
at::Tensor out_var = at::empty({feature_size}, var_biased.options());
at::Tensor inv_std = at::empty_like(out_var);
at::Tensor out_mean = at::empty_like(out_var);
// TODO(jie): tile this for memory coalescing!
const int block = std::min(h_last_pow2(feature_size), MAX_BLOCK_SIZE);
const int grid = std::max<int>(1, feature_size / block);
auto stream = at::cuda::getCurrentCUDAStream();
{
using namespace at;
DISPATCH_FLOAT_AND_HALF(mean_feature_nodes.scalar_type(), 0, "welford_parallel_kernel",
welford_kernel_parallel<scalar_t_0><<<grid, block, 0, stream>>>(
mean_feature_nodes.data<scalar_t_0>(),
var_biased.data<scalar_t_0>(),
out_mean.data<scalar_t_0>(),
out_var.data<scalar_t_0>(),
inv_std.data<scalar_t_0>(),
world_size,
feature_size,
eps,
numel);
);
}
return {out_mean, out_var, inv_std};
}
std::vector<at::Tensor> welford_mean_var_c_last_CUDA(const at::Tensor input) {
const auto stride = input.size(input.ndimension()-1);
const auto reduction_size = input.numel() / stride;
auto scalar_type = promote_scalartype(input);
auto option = input.options().dtype(scalar_type);
at::Tensor out_var_biased = at::empty({stride}, option);
at::Tensor out_mean = at::empty({stride}, option);
dim3 block;
dim3 grid;
flexible_launch_configs(reduction_size, stride, block, grid, true);
at::Tensor staging_data;
at::Tensor semaphores;
if (grid.y > 1) {
staging_data = at::empty({4*stride*grid.y}, option);
semaphores = at::zeros({grid.x}, input.options().dtype(at::kInt));
}
auto stream = at::cuda::getCurrentCUDAStream();
{
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "welford_mean_var_c_last",
using accscalar_t = at::acc_type<scalar_t_0, true>;
accscalar_t* staging_data_ptr = grid.y > 1 ? staging_data.data<accscalar_t>() : nullptr;
int* semaphores_ptr = grid.y > 1 ? semaphores.data<int>() : nullptr;
welford_kernel_c_last<scalar_t_0, accscalar_t, accscalar_t, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
out_mean.data<accscalar_t>(),
out_var_biased.data<accscalar_t>(),
staging_data_ptr,
semaphores_ptr,
reduction_size,
stride);
);
}
return {out_mean, out_var_biased};
}
at::Tensor batchnorm_forward_c_last_CUDA(
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight,
const at::optional<at::Tensor> shift) {
const auto stride = input.size(input.ndimension()-1);
const auto reduction_size = input.numel() / stride;
at::Tensor out = at::empty_like(input);
dim3 block;
dim3 grid;
flexible_launch_configs(reduction_size, stride, block, grid);
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value() && weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_forward_c_last_kernel<scalar_t_0, accscalar_t, accscalar_t, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<accscalar_t>() : NULL,
shift.has_value() ? shift.value().data<accscalar_t>(): NULL,
out.data<scalar_t_0>(),
reduction_size,
stride);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_forward_c_last_kernel<scalar_t_0, accscalar_t, scalar_t_0, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<scalar_t_0>() : NULL,
shift.has_value() ? shift.value().data<scalar_t_0>(): NULL,
out.data<scalar_t_0>(),
reduction_size,
stride);
);
}
return out;
}
std::vector<at::Tensor> reduce_bn_c_last_CUDA(
const at::Tensor grad_output,
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight) {
const auto stride = input.size(input.ndimension()-1);
const auto reduction_size = input.numel() / stride;
at::Tensor mean_dy = at::empty({stride}, mean.options());
at::Tensor mean_dy_xmu = at::empty({stride}, mean.options());
at::Tensor grad_weight;
at::Tensor grad_bias;
if (weight.has_value()) {
grad_weight = at::empty({stride}, weight.value().options());
grad_bias = at::empty({stride}, weight.value().options());
} else {
// because I cannot return an uninitialized at::Tensor
grad_weight = at::empty({0}, mean.options());
grad_bias = at::empty({0}, mean.options());
}
dim3 block;
dim3 grid;
flexible_launch_configs(reduction_size, stride, block, grid, true);
at::Tensor staging_data;
at::Tensor semaphores;
if (grid.y > 1) {
staging_data = at::empty({2*stride*grid.y}, mean.options());
semaphores = at::zeros({grid.x}, input.options().dtype(at::kInt));
}
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value()
&& weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward_reduce",
using accscalar_t = at::acc_type<scalar_t_0, true>;
accscalar_t* staging_data_ptr = grid.y > 1 ? staging_data.data<accscalar_t>() : nullptr;
int* semaphores_ptr = grid.y > 1 ? semaphores.data<int>() : nullptr;
reduce_bn_c_last_kernel<scalar_t_0, accscalar_t, accscalar_t, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
grad_output.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
weight.has_value() ? grad_weight.data<accscalar_t>() : NULL,
weight.has_value() ?grad_bias.data<accscalar_t>() : NULL,
staging_data_ptr,
semaphores_ptr,
reduction_size,
stride);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_backward_reduce",
using accscalar_t = at::acc_type<scalar_t_0, true>;
accscalar_t* staging_data_ptr = grid.y > 1 ? staging_data.data<accscalar_t>() : nullptr;
int* semaphores_ptr = grid.y > 1 ? semaphores.data<int>() : nullptr;
reduce_bn_c_last_kernel<scalar_t_0, accscalar_t, scalar_t_0, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
input.data<scalar_t_0>(),
grad_output.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
weight.has_value() ? grad_weight.data<scalar_t_0>() : NULL,
weight.has_value() ?grad_bias.data<scalar_t_0>() : NULL,
staging_data_ptr,
semaphores_ptr,
reduction_size,
stride);
);
}
return {mean_dy, mean_dy_xmu, grad_weight, grad_bias};
}
at::Tensor batchnorm_backward_c_last_CUDA(
const at::Tensor grad_output,
const at::Tensor input,
const at::Tensor mean,
const at::Tensor inv_std,
const at::optional<at::Tensor> weight,
const at::Tensor mean_dy,
const at::Tensor mean_dy_xmu) {
const auto stride = input.size(input.ndimension()-1);
const auto reduction_size = input.numel() / stride;
at::Tensor grad_input = at::empty_like(input);
dim3 block;
dim3 grid;
flexible_launch_configs(reduction_size, stride, block, grid);
auto stream = at::cuda::getCurrentCUDAStream();
if (input.scalar_type() == at::ScalarType::Half
&& weight.has_value() && weight.value().scalar_type() == at::ScalarType::Float) {
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_backward_c_last_kernel<scalar_t_0, accscalar_t, accscalar_t, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
grad_output.data<scalar_t_0>(),
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<accscalar_t>() : NULL,
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
grad_input.data<scalar_t_0>(),
reduction_size,
stride);
);
} else {
if (weight.has_value()) {
AT_CHECK(input.scalar_type() == weight.value().scalar_type(),
"input.scalar_type() is not supported with weight.scalar_type()");
}
using namespace at;
DISPATCH_FLOAT_AND_HALF(input.scalar_type(), 0, "batchnorm_forward",
using accscalar_t = at::acc_type<scalar_t_0, true>;
batchnorm_backward_c_last_kernel<scalar_t_0, accscalar_t, scalar_t_0, ELEMENTS_PER_ITER>
<<<grid, block, 0, stream>>>(
grad_output.data<scalar_t_0>(),
input.data<scalar_t_0>(),
mean.data<accscalar_t>(),
inv_std.data<accscalar_t>(),
weight.has_value() ? weight.value().data<scalar_t_0>() : NULL,
mean_dy.data<accscalar_t>(),
mean_dy_xmu.data<accscalar_t>(),
grad_input.data<scalar_t_0>(),
reduction_size,
stride);
);
}
return grad_input;
}