moe_align_sum_kernels.cu 16.8 KB
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#include <torch/all.h>
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#include <ATen/cuda/CUDAContext.h>
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#include <c10/cuda/CUDAGuard.h>
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#include <ATen/ATen.h>
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#include <ATen/cuda/Atomic.cuh>
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#include "../cuda_compat.h"
#include "../dispatch_utils.h"
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#define CEILDIV(x, y) (((x) + (y) - 1) / (y))
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namespace vllm {
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namespace moe {
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template <typename scalar_t>
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__global__ void moe_align_block_size_kernel(
    const scalar_t* __restrict__ topk_ids,
    int32_t* __restrict__ sorted_token_ids, int32_t* __restrict__ expert_ids,
    int32_t* __restrict__ total_tokens_post_pad, int32_t num_experts,
    int32_t padded_num_experts, int32_t experts_per_warp, int32_t block_size,
    size_t numel, int32_t* __restrict__ cumsum) {
  extern __shared__ int32_t shared_counts[];

  const int warp_id = threadIdx.x / WARP_SIZE;
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  const int my_expert_start = warp_id * experts_per_warp;

  for (int i = 0; i < experts_per_warp; ++i) {
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    if (my_expert_start + i < padded_num_experts) {
      shared_counts[warp_id * experts_per_warp + i] = 0;
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    }
  }

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  __syncthreads();

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  const size_t tid = threadIdx.x;
  const size_t stride = blockDim.x;
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  for (size_t i = tid; i < numel; i += stride) {
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    int expert_id = topk_ids[i];
    int warp_idx = expert_id / experts_per_warp;
    int expert_offset = expert_id % experts_per_warp;
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    atomicAdd(&shared_counts[warp_idx * experts_per_warp + expert_offset], 1);
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  }

  __syncthreads();

  if (threadIdx.x == 0) {
    cumsum[0] = 0;
    for (int i = 1; i <= num_experts; ++i) {
      int expert_count = 0;
      int warp_idx = (i - 1) / experts_per_warp;
      int expert_offset = (i - 1) % experts_per_warp;
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      expert_count = shared_counts[warp_idx * experts_per_warp + expert_offset];
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      cumsum[i] =
          cumsum[i - 1] + CEILDIV(expert_count, block_size) * block_size;
    }
    *total_tokens_post_pad = cumsum[num_experts];
  }

  __syncthreads();

  if (threadIdx.x < num_experts) {
    for (int i = cumsum[threadIdx.x]; i < cumsum[threadIdx.x + 1];
         i += block_size) {
      expert_ids[i / block_size] = threadIdx.x;
    }
  }
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}
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template <typename scalar_t>
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__global__ void count_and_sort_expert_tokens_kernel(
    const scalar_t* __restrict__ topk_ids,
    int32_t* __restrict__ sorted_token_ids, int32_t* __restrict__ cumsum_buffer,
    size_t numel) {
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  const size_t tid = blockIdx.x * blockDim.x + threadIdx.x;
  const size_t stride = blockDim.x * gridDim.x;

  for (size_t i = tid; i < numel; i += stride) {
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    int32_t expert_id = topk_ids[i];
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    int32_t rank_post_pad = atomicAdd(&cumsum_buffer[expert_id], 1);
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    sorted_token_ids[rank_post_pad] = i;
  }
}

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// taken from
// https://github.com/sgl-project/sglang/commit/ded9fcd09a43d5e7d5bb31a2bc3e9fc21bf65d2a
template <typename scalar_t>
__global__ void sgl_ep_moe_align_block_size_kernel(
    scalar_t* __restrict__ topk_ids, int32_t* sorted_token_ids,
    int32_t* expert_ids, int32_t* total_tokens_post_pad, int32_t num_experts,
    int32_t block_size, size_t numel, int32_t* cumsum,
    int32_t start_expert, int32_t end_expert) {
  __shared__ int32_t shared_counts[32][8];
  __shared__ int32_t local_offsets[256];

  const int warp_id = threadIdx.x / 32;
  const int lane_id = threadIdx.x % 32;
  const int experts_per_warp = 8;
  const int my_expert_start = warp_id * experts_per_warp;

  for (int i = 0; i < experts_per_warp; ++i) {
    if (my_expert_start + i < num_experts) {
      shared_counts[warp_id][i] = 0;
    }
  }

  const size_t tokens_per_thread = CEILDIV(numel, blockDim.x);
  const size_t start_idx = threadIdx.x * tokens_per_thread;

  for (int i = start_idx; i < numel && i < start_idx + tokens_per_thread; ++i) {
    int expert_id = topk_ids[i];
    if (expert_id >= start_expert && expert_id < end_expert) {
      expert_id -= start_expert;
      int warp_idx = expert_id / experts_per_warp;
      int expert_offset = expert_id % experts_per_warp;
      atomicAdd(&shared_counts[warp_idx][expert_offset], 1);
    }
  }

  __syncthreads();

  if (threadIdx.x == 0) {
    cumsum[0] = 0;
    for (int i = 1; i <= num_experts; ++i) {
      int expert_count = 0;
      int warp_idx = (i - 1) / experts_per_warp;
      int expert_offset = (i - 1) % experts_per_warp;
      expert_count = shared_counts[warp_idx][expert_offset];

      cumsum[i] =
          cumsum[i - 1] + CEILDIV(expert_count, block_size) * block_size;
    }
    *total_tokens_post_pad = cumsum[num_experts];
  }

  __syncthreads();

  if (threadIdx.x < num_experts) {
    for (int i = cumsum[threadIdx.x]; i < cumsum[threadIdx.x + 1];
         i += block_size) {
      expert_ids[i / block_size] = threadIdx.x;
    }
    local_offsets[threadIdx.x] = cumsum[threadIdx.x];
  }

  __syncthreads();

  for (int i = start_idx; i < numel && i < start_idx + tokens_per_thread; ++i) {
    int32_t expert_id = topk_ids[i];
    if (expert_id >= start_expert && expert_id < end_expert) {
      expert_id -= start_expert;
      int32_t rank_post_pad = atomicAdd(&local_offsets[expert_id], 1);
      sorted_token_ids[rank_post_pad] = i;
    }
  }
}

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template <typename scalar_t, int TOPK>
__global__ void moe_sum_kernel(
    scalar_t* __restrict__ out,          // [..., d]
    const scalar_t* __restrict__ input,  // [..., topk, d]
    const int d) {
  const int64_t token_idx = blockIdx.x;
  for (int64_t idx = threadIdx.x; idx < d; idx += blockDim.x) {
    scalar_t x = 0.0;
#pragma unroll
    for (int k = 0; k < TOPK; ++k) {
      x += VLLM_LDG(&input[token_idx * TOPK * d + k * d + idx]);
    }
    out[token_idx * d + idx] = x;
  }
}

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template <typename scalar_t, int TOPK, int SPLIT_D, int BLOCK_DIM>
__global__ void moe_sum_sharedmem(
      scalar_t* __restrict__ out,
      const scalar_t* __restrict__ input,
      const int d) {

    const int token_idx = blockIdx.x / SPLIT_D;
    const int sub_block = blockIdx.x % SPLIT_D;
    const int d_per_block = (d + SPLIT_D - 1) / SPLIT_D;
    const int64_t d_start = sub_block * d_per_block;
    const int64_t d_end = min(d_start + d_per_block, d);
    const int64_t token_offset = token_idx * TOPK * d;

    __shared__ __align__(16) scalar_t sem_input[TOPK][BLOCK_DIM];

    for (int64_t idx = d_start + threadIdx.x; idx < d_end; idx += blockDim.x) {

#pragma unroll
        for (int k = 0; k < TOPK; ++k) {
            sem_input[k][threadIdx.x] =
                input[token_offset + k * d + idx];
        }
        __syncthreads();

        scalar_t x = 0;
#pragma unroll
        for (int k = 0; k < TOPK; ++k) {
            x += sem_input[k][threadIdx.x];
        }
        out[token_idx * d + idx] = x;
    }
}

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template <typename scalar_t, int TOPK, int SPLIT_D, int BLOCK_DIM>
__global__ void moe_sum_sharedmem_topk8(
    scalar_t* __restrict__ out,          
    const scalar_t* __restrict__ input,  
    const int d) {
    const int token_idx = blockIdx.x / SPLIT_D;  
    const int sub_block = blockIdx.x % SPLIT_D;  
    const int d_per_block = (d + SPLIT_D - 1) / SPLIT_D;
    const int64_t d_start = sub_block * d_per_block;
    const int64_t token_offset = token_idx * TOPK * d;
    const int64_t d_end = min(d_start + d_per_block, d);  
    __shared__ __align__(16) scalar_t sem_input[TOPK][BLOCK_DIM];
    for (int64_t idx = d_start + threadIdx.x; idx < d_end; idx += blockDim.x) {
        sem_input[0][threadIdx.x] = input[token_offset + 0 * d + idx];
        sem_input[1][threadIdx.x] = input[token_offset + 1 * d + idx];
        sem_input[2][threadIdx.x] = input[token_offset + 2 * d + idx];
        sem_input[3][threadIdx.x] = input[token_offset + 3 * d + idx];
        sem_input[4][threadIdx.x] = input[token_offset + 4 * d + idx];
        sem_input[5][threadIdx.x] = input[token_offset + 5 * d + idx];
        sem_input[6][threadIdx.x] = input[token_offset + 6 * d + idx];
        sem_input[7][threadIdx.x] = input[token_offset + 7 * d + idx];
        __syncthreads();
        scalar_t x = sem_input[0][threadIdx.x] + sem_input[1][threadIdx.x] + sem_input[2][threadIdx.x] + 
          sem_input[3][threadIdx.x] + sem_input[4][threadIdx.x] + sem_input[5][threadIdx.x] + 
          sem_input[6][threadIdx.x] + sem_input[7][threadIdx.x];
        out[token_idx * d + idx] = x;
    }
}

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template <typename scalar_t>
__global__ void moe_align_block_size_small_batch_expert_kernel(
    const scalar_t* __restrict__ topk_ids,
    int32_t* __restrict__ sorted_token_ids, int32_t* __restrict__ expert_ids,
    int32_t* __restrict__ total_tokens_post_pad, int32_t num_experts,
    int32_t block_size, size_t numel) {
  const size_t tid = threadIdx.x;
  const size_t stride = blockDim.x;

  extern __shared__ int32_t shared_mem[];
  int32_t* cumsum = shared_mem;
  int32_t* tokens_cnts = (int32_t*)(shared_mem + num_experts + 1);

  for (int i = 0; i < num_experts; ++i) {
    tokens_cnts[(threadIdx.x + 1) * num_experts + i] = 0;
  }

  for (size_t i = tid; i < numel; i += stride) {
    ++tokens_cnts[(threadIdx.x + 1) * num_experts + topk_ids[i]];
  }

  __syncthreads();

  if (threadIdx.x < num_experts) {
    tokens_cnts[threadIdx.x] = 0;
    for (int i = 1; i <= blockDim.x; ++i) {
      tokens_cnts[i * num_experts + threadIdx.x] +=
          tokens_cnts[(i - 1) * num_experts + threadIdx.x];
    }
  }

  __syncthreads();

  if (threadIdx.x == 0) {
    cumsum[0] = 0;
    for (int i = 1; i <= num_experts; ++i) {
      cumsum[i] =
          cumsum[i - 1] +
          CEILDIV(tokens_cnts[blockDim.x * num_experts + i - 1], block_size) *
              block_size;
    }
    *total_tokens_post_pad = static_cast<int32_t>(cumsum[num_experts]);
  }

  __syncthreads();

  if (threadIdx.x < num_experts) {
    for (int i = cumsum[threadIdx.x]; i < cumsum[threadIdx.x + 1];
         i += block_size) {
      expert_ids[i / block_size] = threadIdx.x;
    }
  }

  for (size_t i = tid; i < numel; i += stride) {
    int32_t expert_id = topk_ids[i];
    int32_t rank_post_pad =
        tokens_cnts[threadIdx.x * num_experts + expert_id] + cumsum[expert_id];
    sorted_token_ids[rank_post_pad] = i;
    ++tokens_cnts[threadIdx.x * num_experts + expert_id];
  }
}

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}  // namespace moe
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}  // namespace vllm

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// taken from
// https://github.com/sgl-project/sglang/blob/8b5f83ed3b7d2a49ad5c5cd5aa61c5d502f47dbc
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void moe_align_block_size(torch::Tensor topk_ids, int64_t num_experts,
                          int64_t block_size, torch::Tensor sorted_token_ids,
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                          torch::Tensor experts_ids,
                          torch::Tensor num_tokens_post_pad) {
  const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
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  int64_t padded_num_experts =
      ((num_experts + WARP_SIZE - 1) / WARP_SIZE) * WARP_SIZE;
  int experts_per_warp = WARP_SIZE;
  int threads = 1024;
  threads = ((threads + WARP_SIZE - 1) / WARP_SIZE) * WARP_SIZE;
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  VLLM_DISPATCH_INTEGRAL_AND_UNSIGNED_TYPES(
      topk_ids.scalar_type(), "moe_align_block_size_kernel", [&] {
        // calc needed amount of shared mem for `cumsum` tensors
        auto options_int =
            torch::TensorOptions().dtype(torch::kInt).device(topk_ids.device());
        torch::Tensor cumsum_buffer =
            torch::zeros({num_experts + 1}, options_int);
        bool small_batch_expert_mode =
            (topk_ids.numel() < 1024) && (num_experts <= 64);

        if (small_batch_expert_mode) {
          const int32_t threads = max((int32_t)num_experts, WARP_SIZE);
          const int32_t shared_mem_size =
              ((threads + 1) * num_experts + (num_experts + 1)) *
              sizeof(int32_t);

          auto small_batch_expert_kernel =
              vllm::moe::moe_align_block_size_small_batch_expert_kernel<
                  scalar_t>;
          small_batch_expert_kernel<<<1, threads, shared_mem_size, stream>>>(
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              topk_ids.data_ptr<scalar_t>(),
              sorted_token_ids.data_ptr<int32_t>(),
              experts_ids.data_ptr<int32_t>(),
              num_tokens_post_pad.data_ptr<int32_t>(), num_experts, block_size,
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              topk_ids.numel());
        } else {
          auto align_kernel = vllm::moe::moe_align_block_size_kernel<scalar_t>;

          size_t num_warps = CEILDIV(padded_num_experts, experts_per_warp);
          size_t shared_mem_size =
              num_warps * experts_per_warp * sizeof(int32_t);

          align_kernel<<<1, threads, shared_mem_size, stream>>>(
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              topk_ids.data_ptr<scalar_t>(),
              sorted_token_ids.data_ptr<int32_t>(),
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              experts_ids.data_ptr<int32_t>(),
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              num_tokens_post_pad.data_ptr<int32_t>(), num_experts,
              padded_num_experts, experts_per_warp, block_size,
              topk_ids.numel(), cumsum_buffer.data_ptr<int32_t>());

          const int block_threads = std::min(256, (int)threads);
          const int num_blocks =
              (topk_ids.numel() + block_threads - 1) / block_threads;
          const int max_blocks = 65535;
          const int actual_blocks = std::min(num_blocks, max_blocks);

          auto sort_kernel =
              vllm::moe::count_and_sort_expert_tokens_kernel<scalar_t>;
          sort_kernel<<<actual_blocks, block_threads, 0, stream>>>(
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              topk_ids.data_ptr<scalar_t>(),
              sorted_token_ids.data_ptr<int32_t>(),
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              cumsum_buffer.data_ptr<int32_t>(), topk_ids.numel());
        }
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      });
}

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void moe_sum(torch::Tensor& input,   // [num_tokens, topk, hidden_size]
             torch::Tensor& output)  // [num_tokens, hidden_size]
{
  const int hidden_size = input.size(-1);
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  const auto num_tokens = output.numel() / hidden_size;
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  const int topk = input.size(1);

  dim3 grid(num_tokens);
  dim3 block(std::min(hidden_size, 1024));
  const at::cuda::OptionalCUDAGuard device_guard(device_of(output));
  const cudaStream_t stream = at::cuda::getCurrentCUDAStream();

  switch (topk) {
    case 2:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 2><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;

    case 3:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 3><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
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      });
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      break;

    case 4:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 4><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;

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    case 8:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 8><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;
      
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    default:
      at::sum_out(output, input, 1);
      break;
  }
}




void moe_sum_opt1(torch::Tensor& input,   // [num_tokens, topk, hidden_size]
             torch::Tensor& output)  // [num_tokens, hidden_size]
{
  const int hidden_size = input.size(-1);
  const auto num_tokens = output.numel() / hidden_size;
  const int topk = input.size(1);

  dim3 grid(num_tokens);
  dim3 block(std::min(hidden_size, 1024));
  const at::cuda::OptionalCUDAGuard device_guard(device_of(output));
  const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
    
  constexpr int splitD_ = 8;
  const int TOPK8_GRID_DIM = num_tokens * splitD_;
  constexpr int TOPK8_BLOCK_DIM = 256;
  dim3 grid_8(TOPK8_GRID_DIM);
  dim3 block_8(TOPK8_BLOCK_DIM);

  switch (topk) {
    case 2:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 2><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;

    case 3:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 3><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;

    case 4:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_kernel", [&] {
        vllm::moe::moe_sum_kernel<scalar_t, 4><<<grid, block, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
      break;

    case 8:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_sharedmem_topk8", [&]{
        vllm::moe::moe_sum_sharedmem_topk8<scalar_t, 8, splitD_, TOPK8_BLOCK_DIM><<<grid_8, block_8, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
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      break;
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    case 9:
      VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "moe_sum_sharedmem", [&]{
        vllm::moe::moe_sum_sharedmem<scalar_t, 9, 9, 256><<<num_tokens * 9, 256, 0, stream>>>(
            output.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(),
            hidden_size);
      });
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      break;
      
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    default:
      at::sum_out(output, input, 1);
      break;
  }
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}