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CUDA: add conv_2d_dw (llama/14265)
* CUDA: add conv_2d_dw * better naming * simplify using template * Review: fix operation ordering in ggml-cuda, use __forceinline__, use more const
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committed by
Georgi Gerganov
parent
71adde9203
commit
5efd43c956
161
ggml/src/ggml-cuda/conv2d-dw.cu
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161
ggml/src/ggml-cuda/conv2d-dw.cu
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#include "conv2d-dw.cuh"
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struct conv_params {
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int in_w, in_h;
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int out_w, out_h;
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int kernel_w, kernel_h;
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int stride_x, stride_y;
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int padding_x, padding_y;
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int dilation_x, dilation_y;
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int channels, batches;
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};
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struct kernel_bounds {
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int y_min, y_max;
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int x_min, x_max;
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};
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__device__ __forceinline__ kernel_bounds calculate_kernel_bounds(int out_x, int out_y, const conv_params & params) {
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kernel_bounds bounds;
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bounds.y_min = max(0, (params.padding_y - out_y * params.stride_y + params.dilation_y - 1) / params.dilation_y);
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bounds.y_max =
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min(params.kernel_h,
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(params.in_h + params.padding_y - out_y * params.stride_y + params.dilation_y - 1) / params.dilation_y);
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bounds.x_min = max(0, (params.padding_x - out_x * params.stride_x + params.dilation_x - 1) / params.dilation_x);
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bounds.x_max =
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min(params.kernel_w,
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(params.in_w + params.padding_x - out_x * params.stride_x + params.dilation_x - 1) / params.dilation_x);
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return bounds;
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}
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__device__ __forceinline__ int calculate_input_coord(int out_coord, int kern_coord, int stride, int dilation, int padding) {
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return out_coord * stride + kern_coord * dilation - padding;
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}
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struct whcn_layout {
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__device__ static int input_index(int n, int c, int y, int x, const conv_params & params) {
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return n * (params.channels * params.in_w * params.in_h) + c * params.in_w * params.in_h + y * params.in_w + x;
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}
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__device__ static int kernel_index(int c, int ky, int kx, const conv_params & params) {
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return c * params.kernel_h * params.kernel_w + ky * params.kernel_w + kx;
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}
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__device__ static int output_index(int n, int c, int y, int x, const conv_params & params) {
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return n * (params.channels * params.out_w * params.out_h) + c * params.out_w * params.out_h +
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y * params.out_w + x;
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}
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__device__ static void unpack_indices(int global_idx, const conv_params & params, int & n, int & c, int & out_y,
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int & out_x) {
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out_x = global_idx % params.out_w;
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out_y = (global_idx / params.out_w) % params.out_h;
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c = (global_idx / (params.out_w * params.out_h)) % params.channels;
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n = global_idx / (params.out_w * params.out_h * params.channels);
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}
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};
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struct cwhn_layout {
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__device__ static int input_index(int n, int c, int y, int x, const conv_params & params) {
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return n * (params.channels * params.in_w * params.in_h) + (y * params.in_w + x) * params.channels + c;
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}
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__device__ static int kernel_index(int c, int ky, int kx, const conv_params & params) {
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return (ky * params.kernel_w + kx) * params.channels + c;
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}
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__device__ static int output_index(int n, int c, int y, int x, const conv_params & params) {
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return n * (params.channels * params.out_w * params.out_h) + y * (params.out_w * params.channels) +
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x * params.channels + c;
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}
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__device__ static void unpack_indices(int global_idx, const conv_params & params, int & n, int & c, int & out_y,
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int & out_x) {
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c = global_idx % params.channels;
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out_x = (global_idx / params.channels) % params.out_w;
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out_y = (global_idx / (params.channels * params.out_w)) % params.out_h;
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n = global_idx / (params.channels * params.out_w * params.out_h);
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}
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};
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template <typename T, typename Layout>
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__global__ void conv2d_dw_kernel(const T * __restrict__ input, const T * __restrict__ kernel, T * __restrict__ output,
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const int in_w, const int in_h, const int out_w, const int out_h,
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const int kernel_w, const int kernel_h, const int stride_x, const int stride_y,
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const int padding_x, const int padding_y, const int dilation_x, const int dilation_y,
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const int channels, const int batches) {
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const int global_idx = blockIdx.x * blockDim.x + threadIdx.x;
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const int total_elements = batches * channels * out_h * out_w;
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if (global_idx >= total_elements) {
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return;
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}
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conv_params params = { in_w, in_h, out_w, out_h, kernel_w, kernel_h, stride_x,
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stride_y, padding_x, padding_y, dilation_x, dilation_y, channels, batches };
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int batch_idx, channel_idx, out_y_idx, out_x_idx;
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Layout::unpack_indices(global_idx, params, batch_idx, channel_idx, out_y_idx, out_x_idx);
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T accumulator = 0;
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kernel_bounds bounds = calculate_kernel_bounds(out_x_idx, out_y_idx, params);
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for (int kern_y = bounds.y_min; kern_y < bounds.y_max; ++kern_y) {
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int in_y_idx = calculate_input_coord(out_y_idx, kern_y, params.stride_y, params.dilation_y, params.padding_y);
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for (int kern_x = bounds.x_min; kern_x < bounds.x_max; ++kern_x) {
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int in_x_idx = calculate_input_coord(out_x_idx, kern_x, params.stride_x, params.dilation_x, params.padding_x);
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const T input_val = input[Layout::input_index(batch_idx, channel_idx, in_y_idx, in_x_idx, params)];
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const T kernel_val = kernel[Layout::kernel_index(channel_idx, kern_y, kern_x, params)];
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accumulator += input_val * kernel_val;
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}
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}
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output[Layout::output_index(batch_idx, channel_idx, out_y_idx, out_x_idx, params)] = accumulator;
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}
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void ggml_cuda_op_conv2d_dw(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
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const ggml_tensor * kernel = dst->src[0];
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const ggml_tensor * input = dst->src[1];
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GGML_ASSERT(kernel->type == GGML_TYPE_F32 && input->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32);
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const float * w_d = (const float *) kernel->data;
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const float * x_d = (const float *) input->data;
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float * y_d = (float *) dst->data;
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const int32_t * p = (const int32_t *) dst->op_params;
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const int stride_x = p[0];
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const int stride_y = p[1];
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const int padding_x = p[2];
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const int padding_y = p[3];
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const int dilation_x = p[4];
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const int dilation_y = p[5];
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const int in_w = input->ne[0];
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const int in_h = input->ne[1];
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const int kernel_w = kernel->ne[0];
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const int kernel_h = kernel->ne[1];
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const int out_w = dst->ne[0];
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const int out_h = dst->ne[1];
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const int channels = dst->ne[2];
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const int batches = dst->ne[3];
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cudaStream_t st = ctx.stream();
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const int total = batches * channels * out_h * out_w;
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const int blocks = (total + CUDA_CONV2D_DW_BLOCK_SIZE - 1) / CUDA_CONV2D_DW_BLOCK_SIZE;
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if (ggml_is_contiguous(input)) {
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conv2d_dw_kernel<float, whcn_layout><<<blocks, CUDA_CONV2D_DW_BLOCK_SIZE, 0, st>>>(
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x_d, w_d, y_d, in_w, in_h, out_w, out_h, kernel_w, kernel_h, stride_x, stride_y, padding_x, padding_y,
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dilation_x, dilation_y, channels, batches);
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} else if (ggml_is_contiguous_channels(input)) {
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conv2d_dw_kernel<float, cwhn_layout><<<blocks, CUDA_CONV2D_DW_BLOCK_SIZE, 0, st>>>(
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x_d, w_d, y_d, in_w, in_h, out_w, out_h, kernel_w, kernel_h, stride_x, stride_y, padding_x, padding_y,
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dilation_x, dilation_y, channels, batches);
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} else {
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GGML_ABORT("Unsupported memory layout for conv_2d_dw");
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}
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}
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5
ggml/src/ggml-cuda/conv2d-dw.cuh
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5
ggml/src/ggml-cuda/conv2d-dw.cuh
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#pragma once
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#include "common.cuh"
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#define CUDA_CONV2D_DW_BLOCK_SIZE 256
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void ggml_cuda_op_conv2d_dw(ggml_backend_cuda_context & ctx, ggml_tensor * dst);
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#include "ggml-cuda/clamp.cuh"
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#include "ggml-cuda/concat.cuh"
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#include "ggml-cuda/conv-transpose-1d.cuh"
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#include "ggml-cuda/conv2d-dw.cuh"
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#include "ggml-cuda/convert.cuh"
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#include "ggml-cuda/count-equal.cuh"
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#include "ggml-cuda/cpy.cuh"
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@ -2310,6 +2311,9 @@ static bool ggml_cuda_compute_forward(ggml_backend_cuda_context & ctx, struct gg
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case GGML_OP_IM2COL:
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ggml_cuda_op_im2col(ctx, dst);
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break;
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case GGML_OP_CONV_2D_DW:
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ggml_cuda_op_conv2d_dw(ctx, dst);
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break;
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case GGML_OP_CONV_TRANSPOSE_1D:
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ggml_cuda_op_conv_transpose_1d(ctx,dst);
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break;
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@ -3209,6 +3213,7 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
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return op->src[0]->nb[0] == ggml_type_size(op->src[0]->type) && ggml_is_contiguous_2(op->src[0]);
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}
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case GGML_OP_IM2COL:
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case GGML_OP_CONV_2D_DW:
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case GGML_OP_POOL_2D:
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case GGML_OP_SUM:
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case GGML_OP_SUM_ROWS:
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