| /*! |
| ************************************************************************** |
| * Deformable DETR |
| * Copyright (c) 2020 SenseTime. All Rights Reserved. |
| * Licensed under the Apache License, Version 2.0 [see LICENSE for details] |
| ************************************************************************** |
| * Modified from DCN (https://github.com/msracver/Deformable-ConvNets) |
| * Copyright (c) 2018 Microsoft |
| ************************************************************************** |
| */ |
| |
| #include <cstdio> |
| #include <algorithm> |
| #include <cstring> |
| |
| #include <ATen/ATen.h> |
| #include <ATen/cuda/CUDAContext.h> |
| |
| #include <THC/THCAtomics.cuh> |
| |
| #define CUDA_KERNEL_LOOP(i, n) \ |
| for (int i = blockIdx.x * blockDim.x + threadIdx.x; \ |
| i < (n); \ |
| i += blockDim.x * gridDim.x) |
| |
| const int CUDA_NUM_THREADS = 1024; |
| inline int GET_BLOCKS(const int N, const int num_threads) |
| { |
| return (N + num_threads - 1) / num_threads; |
| } |
|
|
|
|
| template <typename scalar_t> |
| __device__ scalar_t ms_deform_attn_im2col_bilinear(const scalar_t* &bottom_data, |
| const int &height, const int &width, const int &nheads, const int &channels, |
| const scalar_t &h, const scalar_t &w, const int &m, const int &c) |
| { |
| const int h_low = floor(h); |
| const int w_low = floor(w); |
| const int h_high = h_low + 1; |
| const int w_high = w_low + 1; |
| |
| const scalar_t lh = h - h_low; |
| const scalar_t lw = w - w_low; |
| const scalar_t hh = 1 - lh, hw = 1 - lw; |
|
|
| const int w_stride = nheads * channels; |
| const int h_stride = width * w_stride; |
| const int h_low_ptr_offset = h_low * h_stride; |
| const int h_high_ptr_offset = h_low_ptr_offset + h_stride; |
| const int w_low_ptr_offset = w_low * w_stride; |
| const int w_high_ptr_offset = w_low_ptr_offset + w_stride; |
| const int base_ptr = m * channels + c; |
|
|
| scalar_t v1 = 0; |
| if (h_low >= 0 && w_low >= 0) |
| { |
| const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; |
| v1 = bottom_data[ptr1]; |
| } |
| scalar_t v2 = 0; |
| if (h_low >= 0 && w_high <= width - 1) |
| { |
| const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; |
| v2 = bottom_data[ptr2]; |
| } |
| scalar_t v3 = 0; |
| if (h_high <= height - 1 && w_low >= 0) |
| { |
| const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; |
| v3 = bottom_data[ptr3]; |
| } |
| scalar_t v4 = 0; |
| if (h_high <= height - 1 && w_high <= width - 1) |
| { |
| const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; |
| v4 = bottom_data[ptr4]; |
| } |
| |
| const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; |
| |
| const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); |
| return val; |
| } |
|
|
|
|
| template <typename scalar_t> |
| __device__ void ms_deform_attn_col2im_bilinear(const scalar_t* &bottom_data, |
| const int &height, const int &width, const int &nheads, const int &channels, |
| const scalar_t &h, const scalar_t &w, const int &m, const int &c, |
| const scalar_t &top_grad, |
| const scalar_t &attn_weight, |
| scalar_t* &grad_value, |
| scalar_t* grad_sampling_loc, |
| scalar_t* grad_attn_weight) |
| { |
| const int h_low = floor(h); |
| const int w_low = floor(w); |
| const int h_high = h_low + 1; |
| const int w_high = w_low + 1; |
| |
| const scalar_t lh = h - h_low; |
| const scalar_t lw = w - w_low; |
| const scalar_t hh = 1 - lh, hw = 1 - lw; |
| |
| const int w_stride = nheads * channels; |
| const int h_stride = width * w_stride; |
| const int h_low_ptr_offset = h_low * h_stride; |
| const int h_high_ptr_offset = h_low_ptr_offset + h_stride; |
| const int w_low_ptr_offset = w_low * w_stride; |
| const int w_high_ptr_offset = w_low_ptr_offset + w_stride; |
| const int base_ptr = m * channels + c; |
| |
| const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; |
| const scalar_t top_grad_value = top_grad * attn_weight; |
| scalar_t grad_h_weight = 0, grad_w_weight = 0; |
|
|
| scalar_t v1 = 0; |
| if (h_low >= 0 && w_low >= 0) |
| { |
| const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; |
| v1 = bottom_data[ptr1]; |
| grad_h_weight -= hw * v1; |
| grad_w_weight -= hh * v1; |
| atomicAdd(grad_value+ptr1, w1*top_grad_value); |
| } |
| scalar_t v2 = 0; |
| if (h_low >= 0 && w_high <= width - 1) |
| { |
| const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; |
| v2 = bottom_data[ptr2]; |
| grad_h_weight -= lw * v2; |
| grad_w_weight += hh * v2; |
| atomicAdd(grad_value+ptr2, w2*top_grad_value); |
| } |
| scalar_t v3 = 0; |
| if (h_high <= height - 1 && w_low >= 0) |
| { |
| const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; |
| v3 = bottom_data[ptr3]; |
| grad_h_weight += hw * v3; |
| grad_w_weight -= lh * v3; |
| atomicAdd(grad_value+ptr3, w3*top_grad_value); |
| } |
| scalar_t v4 = 0; |
| if (h_high <= height - 1 && w_high <= width - 1) |
| { |
| const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; |
| v4 = bottom_data[ptr4]; |
| grad_h_weight += lw * v4; |
| grad_w_weight += lh * v4; |
| atomicAdd(grad_value+ptr4, w4*top_grad_value); |
| } |
| |
| const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); |
| *grad_attn_weight = top_grad * val; |
| *grad_sampling_loc = width * grad_w_weight * top_grad_value; |
| *(grad_sampling_loc + 1) = height * grad_h_weight * top_grad_value; |
| } |
|
|
|
|
| template <typename scalar_t> |
| __device__ void ms_deform_attn_col2im_bilinear_gm(const scalar_t* &bottom_data, |
| const int &height, const int &width, const int &nheads, const int &channels, |
| const scalar_t &h, const scalar_t &w, const int &m, const int &c, |
| const scalar_t &top_grad, |
| const scalar_t &attn_weight, |
| scalar_t* &grad_value, |
| scalar_t* grad_sampling_loc, |
| scalar_t* grad_attn_weight) |
| { |
| const int h_low = floor(h); |
| const int w_low = floor(w); |
| const int h_high = h_low + 1; |
| const int w_high = w_low + 1; |
| |
| const scalar_t lh = h - h_low; |
| const scalar_t lw = w - w_low; |
| const scalar_t hh = 1 - lh, hw = 1 - lw; |
| |
| const int w_stride = nheads * channels; |
| const int h_stride = width * w_stride; |
| const int h_low_ptr_offset = h_low * h_stride; |
| const int h_high_ptr_offset = h_low_ptr_offset + h_stride; |
| const int w_low_ptr_offset = w_low * w_stride; |
| const int w_high_ptr_offset = w_low_ptr_offset + w_stride; |
| const int base_ptr = m * channels + c; |
| |
| const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; |
| const scalar_t top_grad_value = top_grad * attn_weight; |
| scalar_t grad_h_weight = 0, grad_w_weight = 0; |
|
|
| scalar_t v1 = 0; |
| if (h_low >= 0 && w_low >= 0) |
| { |
| const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; |
| v1 = bottom_data[ptr1]; |
| grad_h_weight -= hw * v1; |
| grad_w_weight -= hh * v1; |
| atomicAdd(grad_value+ptr1, w1*top_grad_value); |
| } |
| scalar_t v2 = 0; |
| if (h_low >= 0 && w_high <= width - 1) |
| { |
| const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; |
| v2 = bottom_data[ptr2]; |
| grad_h_weight -= lw * v2; |
| grad_w_weight += hh * v2; |
| atomicAdd(grad_value+ptr2, w2*top_grad_value); |
| } |
| scalar_t v3 = 0; |
| if (h_high <= height - 1 && w_low >= 0) |
| { |
| const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; |
| v3 = bottom_data[ptr3]; |
| grad_h_weight += hw * v3; |
| grad_w_weight -= lh * v3; |
| atomicAdd(grad_value+ptr3, w3*top_grad_value); |
| } |
| scalar_t v4 = 0; |
| if (h_high <= height - 1 && w_high <= width - 1) |
| { |
| const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; |
| v4 = bottom_data[ptr4]; |
| grad_h_weight += lw * v4; |
| grad_w_weight += lh * v4; |
| atomicAdd(grad_value+ptr4, w4*top_grad_value); |
| } |
| |
| const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); |
| atomicAdd(grad_attn_weight, top_grad * val); |
| atomicAdd(grad_sampling_loc, width * grad_w_weight * top_grad_value); |
| atomicAdd(grad_sampling_loc + 1, height * grad_h_weight * top_grad_value); |
| } |
|
|
|
|
| template <typename scalar_t> |
| __global__ void ms_deformable_im2col_gpu_kernel(const int n, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *data_col) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| scalar_t *data_col_ptr = data_col + index; |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| scalar_t col = 0; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const scalar_t *data_value_ptr = data_value + (data_value_ptr_init_offset + level_start_id * qid_stride); |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| col += ms_deform_attn_im2col_bilinear(data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col) * weight; |
| } |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| } |
| } |
| *data_col_ptr = col; |
| } |
| } |
| |
| template <typename scalar_t, unsigned int blockSize> |
| __global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; |
| __shared__ scalar_t cache_grad_attn_weight[blockSize]; |
| unsigned int tid = threadIdx.x; |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; |
| *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; |
| *(cache_grad_attn_weight+threadIdx.x)=0; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); |
| } |
| |
| __syncthreads(); |
| if (tid == 0) |
| { |
| scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; |
| int sid=2; |
| for (unsigned int tid = 1; tid < blockSize; ++tid) |
| { |
| _grad_w += cache_grad_sampling_loc[sid]; |
| _grad_h += cache_grad_sampling_loc[sid + 1]; |
| _grad_a += cache_grad_attn_weight[tid]; |
| sid += 2; |
| } |
| |
| |
| *grad_sampling_loc = _grad_w; |
| *(grad_sampling_loc + 1) = _grad_h; |
| *grad_attn_weight = _grad_a; |
| } |
| __syncthreads(); |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
|
|
| template <typename scalar_t, unsigned int blockSize> |
| __global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; |
| __shared__ scalar_t cache_grad_attn_weight[blockSize]; |
| unsigned int tid = threadIdx.x; |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; |
| *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; |
| *(cache_grad_attn_weight+threadIdx.x)=0; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); |
| } |
| |
| __syncthreads(); |
| |
| for (unsigned int s=blockSize/2; s>0; s>>=1) |
| { |
| if (tid < s) { |
| const unsigned int xid1 = tid << 1; |
| const unsigned int xid2 = (tid + s) << 1; |
| cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; |
| cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; |
| cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; |
| } |
| __syncthreads(); |
| } |
| |
| if (tid == 0) |
| { |
| *grad_sampling_loc = cache_grad_sampling_loc[0]; |
| *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; |
| *grad_attn_weight = cache_grad_attn_weight[0]; |
| } |
| __syncthreads(); |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
|
|
| template <typename scalar_t> |
| __global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v1(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| extern __shared__ int _s[]; |
| scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; |
| scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; |
| unsigned int tid = threadIdx.x; |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; |
| *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; |
| *(cache_grad_attn_weight+threadIdx.x)=0; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); |
| } |
| |
| __syncthreads(); |
| if (tid == 0) |
| { |
| scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; |
| int sid=2; |
| for (unsigned int tid = 1; tid < blockDim.x; ++tid) |
| { |
| _grad_w += cache_grad_sampling_loc[sid]; |
| _grad_h += cache_grad_sampling_loc[sid + 1]; |
| _grad_a += cache_grad_attn_weight[tid]; |
| sid += 2; |
| } |
| |
| |
| *grad_sampling_loc = _grad_w; |
| *(grad_sampling_loc + 1) = _grad_h; |
| *grad_attn_weight = _grad_a; |
| } |
| __syncthreads(); |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
| template <typename scalar_t> |
| __global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| extern __shared__ int _s[]; |
| scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; |
| scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; |
| unsigned int tid = threadIdx.x; |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; |
| *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; |
| *(cache_grad_attn_weight+threadIdx.x)=0; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); |
| } |
| |
| __syncthreads(); |
| |
| for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) |
| { |
| if (tid < s) { |
| const unsigned int xid1 = tid << 1; |
| const unsigned int xid2 = (tid + s) << 1; |
| cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; |
| cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; |
| cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; |
| if (tid + (s << 1) < spre) |
| { |
| cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; |
| cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; |
| cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; |
| } |
| } |
| __syncthreads(); |
| } |
| |
| if (tid == 0) |
| { |
| *grad_sampling_loc = cache_grad_sampling_loc[0]; |
| *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; |
| *grad_attn_weight = cache_grad_attn_weight[0]; |
| } |
| __syncthreads(); |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
| template <typename scalar_t> |
| __global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| extern __shared__ int _s[]; |
| scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; |
| scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; |
| unsigned int tid = threadIdx.x; |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; |
| *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; |
| *(cache_grad_attn_weight+threadIdx.x)=0; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); |
| } |
| |
| __syncthreads(); |
| |
| for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) |
| { |
| if (tid < s) { |
| const unsigned int xid1 = tid << 1; |
| const unsigned int xid2 = (tid + s) << 1; |
| cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; |
| cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; |
| cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; |
| if (tid + (s << 1) < spre) |
| { |
| cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; |
| cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; |
| cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; |
| } |
| } |
| __syncthreads(); |
| } |
| |
| if (tid == 0) |
| { |
| atomicAdd(grad_sampling_loc, cache_grad_sampling_loc[0]); |
| atomicAdd(grad_sampling_loc + 1, cache_grad_sampling_loc[1]); |
| atomicAdd(grad_attn_weight, cache_grad_attn_weight[0]); |
| } |
| __syncthreads(); |
| |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
|
|
| template <typename scalar_t> |
| __global__ void ms_deformable_col2im_gpu_kernel_gm(const int n, |
| const scalar_t *grad_col, |
| const scalar_t *data_value, |
| const int64_t *data_spatial_shapes, |
| const int64_t *data_level_start_index, |
| const scalar_t *data_sampling_loc, |
| const scalar_t *data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t *grad_value, |
| scalar_t *grad_sampling_loc, |
| scalar_t *grad_attn_weight) |
| { |
| CUDA_KERNEL_LOOP(index, n) |
| { |
| int _temp = index; |
| const int c_col = _temp % channels; |
| _temp /= channels; |
| const int sampling_index = _temp; |
| const int m_col = _temp % num_heads; |
| _temp /= num_heads; |
| [[maybe_unused]] const int q_col = _temp % num_query; |
| _temp /= num_query; |
| const int b_col = _temp; |
| |
| const scalar_t top_grad = grad_col[index]; |
| |
| int data_weight_ptr = sampling_index * num_levels * num_point; |
| int data_loc_w_ptr = data_weight_ptr << 1; |
| const int grad_sampling_ptr = data_weight_ptr; |
| grad_sampling_loc += grad_sampling_ptr << 1; |
| grad_attn_weight += grad_sampling_ptr; |
| const int grad_weight_stride = 1; |
| const int grad_loc_stride = 2; |
| const int qid_stride = num_heads * channels; |
| const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; |
| |
| for (int l_col=0; l_col < num_levels; ++l_col) |
| { |
| const int level_start_id = data_level_start_index[l_col]; |
| const int spatial_h_ptr = l_col << 1; |
| const int spatial_h = data_spatial_shapes[spatial_h_ptr]; |
| const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; |
| const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; |
| const scalar_t *data_value_ptr = data_value + value_ptr_offset; |
| scalar_t *grad_value_ptr = grad_value + value_ptr_offset; |
| |
| for (int p_col=0; p_col < num_point; ++p_col) |
| { |
| const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; |
| const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; |
| const scalar_t weight = data_attn_weight[data_weight_ptr]; |
| |
| const scalar_t h_im = loc_h * spatial_h - 0.5; |
| const scalar_t w_im = loc_w * spatial_w - 0.5; |
| if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) |
| { |
| ms_deform_attn_col2im_bilinear_gm( |
| data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, |
| top_grad, weight, grad_value_ptr, |
| grad_sampling_loc, grad_attn_weight); |
| } |
| data_weight_ptr += 1; |
| data_loc_w_ptr += 2; |
| grad_attn_weight += grad_weight_stride; |
| grad_sampling_loc += grad_loc_stride; |
| } |
| } |
| } |
| } |
| |
|
|
| template <typename scalar_t> |
| void ms_deformable_im2col_cuda(cudaStream_t stream, |
| const scalar_t* data_value, |
| const int64_t* data_spatial_shapes, |
| const int64_t* data_level_start_index, |
| const scalar_t* data_sampling_loc, |
| const scalar_t* data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t* data_col) |
| { |
| const int num_kernels = batch_size * num_query * num_heads * channels; |
| const int num_actual_kernels = batch_size * num_query * num_heads * channels; |
| const int num_threads = CUDA_NUM_THREADS; |
| ms_deformable_im2col_gpu_kernel<scalar_t> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, data_value, data_spatial_shapes, data_level_start_index, data_sampling_loc, data_attn_weight, |
| batch_size, spatial_size, num_heads, channels, num_levels, num_query, num_point, data_col); |
| |
| cudaError_t err = cudaGetLastError(); |
| if (err != cudaSuccess) |
| { |
| printf("error in ms_deformable_im2col_cuda: %s\n", cudaGetErrorString(err)); |
| } |
| |
| } |
|
|
| template <typename scalar_t> |
| void ms_deformable_col2im_cuda(cudaStream_t stream, |
| const scalar_t* grad_col, |
| const scalar_t* data_value, |
| const int64_t * data_spatial_shapes, |
| const int64_t * data_level_start_index, |
| const scalar_t * data_sampling_loc, |
| const scalar_t * data_attn_weight, |
| const int batch_size, |
| const int spatial_size, |
| const int num_heads, |
| const int channels, |
| const int num_levels, |
| const int num_query, |
| const int num_point, |
| scalar_t* grad_value, |
| scalar_t* grad_sampling_loc, |
| scalar_t* grad_attn_weight) |
| { |
| const int num_threads = (channels > CUDA_NUM_THREADS)?CUDA_NUM_THREADS:channels; |
| const int num_kernels = batch_size * num_query * num_heads * channels; |
| const int num_actual_kernels = batch_size * num_query * num_heads * channels; |
| if (channels > 1024) |
| { |
| if ((channels & 1023) == 0) |
| { |
| ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks<scalar_t> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| num_threads*3*sizeof(scalar_t), stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| } |
| else |
| { |
| ms_deformable_col2im_gpu_kernel_gm<scalar_t> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| } |
| } |
| else{ |
| switch(channels) |
| { |
| case 1: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 1> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 2: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 2> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 4: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 4> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 8: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 8> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 16: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 16> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 32: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1<scalar_t, 32> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 64: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2<scalar_t, 64> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 128: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2<scalar_t, 128> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 256: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2<scalar_t, 256> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 512: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2<scalar_t, 512> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| case 1024: |
| ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2<scalar_t, 1024> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| 0, stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| break; |
| default: |
| if (channels < 64) |
| { |
| ms_deformable_col2im_gpu_kernel_shm_reduce_v1<scalar_t> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| num_threads*3*sizeof(scalar_t), stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| } |
| else |
| { |
| ms_deformable_col2im_gpu_kernel_shm_reduce_v2<scalar_t> |
| <<<GET_BLOCKS(num_actual_kernels, num_threads), num_threads, |
| num_threads*3*sizeof(scalar_t), stream>>>( |
| num_kernels, |
| grad_col, |
| data_value, |
| data_spatial_shapes, |
| data_level_start_index, |
| data_sampling_loc, |
| data_attn_weight, |
| batch_size, |
| spatial_size, |
| num_heads, |
| channels, |
| num_levels, |
| num_query, |
| num_point, |
| grad_value, |
| grad_sampling_loc, |
| grad_attn_weight); |
| } |
| } |
| } |
| cudaError_t err = cudaGetLastError(); |
| if (err != cudaSuccess) |
| { |
| printf("error in ms_deformable_col2im_cuda: %s\n", cudaGetErrorString(err)); |
| } |
| |
| } |
|
|