utils.cu 20.6 KB
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/*************************************************************************
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 * Copyright (c) 2022-2024, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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 *
 * See LICENSE for license information.
 ************************************************************************/

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#include <algorithm>

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#include "../common.h"
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#include "transformer_engine/fused_attn.h"
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#include "utils.h"

namespace transformer_engine {
namespace fused_attn {

using namespace transformer_engine;

// get matrix strides based on matrix type
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void generateMatrixStrides(int64_t b, int64_t h, int64_t s_q, int64_t s_kv, int64_t d,
                           int64_t *strideA, NVTE_QKV_Layout layout, NVTE_QKV_Matrix matrix) {
  constexpr int batch_dim_idx = 0;
  constexpr int head_dim_idx = 1;
  constexpr int seqlen_dim_idx = 2;
  constexpr int hidden_dim_idx = 3;
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  constexpr int seqlen_transpose_dim_idx = 3;
  constexpr int hidden_transpose_dim_idx = 2;
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  constexpr int seqlen_q_dim_idx = 2;
  constexpr int seqlen_kv_dim_idx = 3;
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  switch (layout) {
    case NVTE_QKV_Layout::NVTE_SB3HD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = 3 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * 3 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = 3 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = b * 3 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_SBH3D:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = 3 * h * d;
        strideA[head_dim_idx] = 3 * d;
        strideA[seqlen_dim_idx] = b * 3 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = 3 * h * d;
        strideA[head_dim_idx] = 3 * d;
        strideA[seqlen_transpose_dim_idx] = b * 3 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_SBHD_SB2HD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = 2 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * 2 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = 2 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = b * 2 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_SBHD_SBH2D:
      if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = 2 * h * d;
        strideA[head_dim_idx] = 2 * d;
        strideA[seqlen_dim_idx] = b * 2 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = 2 * h * d;
        strideA[head_dim_idx] = 2 * d;
        strideA[seqlen_transpose_dim_idx] = b * 2 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_SBHD_SBHD_SBHD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = b * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = b * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_BS3HD:
    case NVTE_QKV_Layout::NVTE_T3HD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = s_q * 3 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = 3 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = s_q * 3 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = 3 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix) {
        strideA[batch_dim_idx] = s_q * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_BSH3D:
    case NVTE_QKV_Layout::NVTE_TH3D:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = s_q * 3 * h * d;
        strideA[head_dim_idx] = 3 * d;
        strideA[seqlen_dim_idx] = 3 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = s_q * 3 * h * d;
        strideA[head_dim_idx] = 3 * d;
        strideA[seqlen_transpose_dim_idx] = 3 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix) {
        strideA[batch_dim_idx] = s_q * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_BSHD_BS2HD:
    case NVTE_QKV_Layout::NVTE_THD_T2HD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = s_kv * 2 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = 2 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = s_kv * 2 * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = 2 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = s_q * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_BSHD_BSH2D:
    case NVTE_QKV_Layout::NVTE_THD_TH2D:
      if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = s_kv * 2 * h * d;
        strideA[head_dim_idx] = 2 * d;
        strideA[seqlen_dim_idx] = 2 * h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = s_kv * 2 * h * d;
        strideA[head_dim_idx] = 2 * d;
        strideA[seqlen_transpose_dim_idx] = 2 * h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = s_q * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      }
      break;
    case NVTE_QKV_Layout::NVTE_BSHD_BSHD_BSHD:
    case NVTE_QKV_Layout::NVTE_THD_THD_THD:
      if ((matrix == NVTE_QKV_Matrix::NVTE_Q_Matrix) ||
          (matrix == NVTE_QKV_Matrix::NVTE_O_Matrix)) {
        strideA[batch_dim_idx] = s_q * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix)) {
        strideA[batch_dim_idx] = s_kv * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_dim_idx] = h * d;
        strideA[hidden_dim_idx] = 1;
      } else if ((matrix == NVTE_QKV_Matrix::NVTE_K_Matrix_Transpose) ||
                 (matrix == NVTE_QKV_Matrix::NVTE_V_Matrix_Transpose)) {
        strideA[batch_dim_idx] = s_kv * h * d;
        strideA[head_dim_idx] = d;
        strideA[seqlen_transpose_dim_idx] = h * d;
        strideA[hidden_transpose_dim_idx] = 1;
      }
      break;
  }
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  if (matrix == NVTE_QKV_Matrix::NVTE_S_Matrix) {
    strideA[seqlen_kv_dim_idx] = 1;
    strideA[seqlen_q_dim_idx] = s_kv;
    strideA[head_dim_idx] = s_q * s_kv;
    strideA[batch_dim_idx] = h * s_q * s_kv;
  }
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}

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bool allowAllConfig(cudnnBackendDescriptor_t engine_config) {
  (void)engine_config;
  return false;
}

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cudnn_frontend::Tensor tensor_create(cudnnDataType_t type, int64_t id, int64_t const *dim,
                                     int64_t const *stride, bool is_virtual, bool is_value) {
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  int nbDims = 4;
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  auto tensor_created =
      cudnn_frontend::TensorBuilder()
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          .setDim(nbDims, dim)
          .setStride(nbDims, stride)
          .setId(id)
          .setAlignment(16)  // 16B alignment is needed to run a tensor core engine
          .setDataType(type)
          .setVirtual(is_virtual)
          .setByValue(is_value)
          .build();
  return tensor_created;
}

cudnn_frontend::Tensor tensor_create_with_offset(
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    cudnnDataType_t type, int64_t id, int64_t const *dim, int64_t const *stride, bool is_virtual,
    bool is_value, std::shared_ptr<cudnn_frontend::Tensor> raggedOffset) {
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  int nbDims = 4;
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  auto tensor_created =
      cudnn_frontend::TensorBuilder()
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          .setDim(nbDims, dim)
          .setStride(nbDims, stride)
          .setId(id)
          .setAlignment(16)  // 16B alignment is needed to run a tensor core engine
          .setDataType(type)
          .setVirtual(is_virtual)
          .setByValue(is_value)
          .setRaggedOffset(raggedOffset)
          .build();
  return tensor_created;
}

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cudnn_frontend::PointWiseDesc pw_desc_create(cudnnDataType_t type, cudnnPointwiseMode_t mode) {
  auto pw_desc_created =
      cudnn_frontend::PointWiseDescBuilder().setMode(mode).setComputeType(type).build();
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  return pw_desc_created;
}

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cudnn_frontend::Operation unary_pw_op_create(cudnn_frontend::Tensor const &xDesc,
                                             cudnn_frontend::Tensor const &yDesc,
                                             cudnn_frontend::PointWiseDesc const &pwDesc) {
  auto pw_op_created =
      cudnn_frontend::OperationBuilder(CUDNN_BACKEND_OPERATION_POINTWISE_DESCRIPTOR)
          .setxDesc(xDesc)
          .setyDesc(yDesc)
          .setpwDesc(pwDesc)
          .build();
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  return pw_op_created;
}

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cudnn_frontend::Operation binary_pw_op_create(cudnn_frontend::Tensor const &xDesc,
                                              cudnn_frontend::Tensor const &bDesc,
                                              cudnn_frontend::Tensor const &yDesc,
                                              cudnn_frontend::PointWiseDesc const &pwDesc) {
  auto pw_op_created =
      cudnn_frontend::OperationBuilder(CUDNN_BACKEND_OPERATION_POINTWISE_DESCRIPTOR)
          .setxDesc(xDesc)
          .setbDesc(bDesc)
          .setyDesc(yDesc)
          .setpwDesc(pwDesc)
          .build();
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  return pw_op_created;
}

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cudnn_frontend::Operation ternary_pw_op_create(cudnn_frontend::Tensor const &xDesc,
                                               cudnn_frontend::Tensor const &bDesc,
                                               cudnn_frontend::Tensor const &tDesc,
                                               cudnn_frontend::Tensor const &yDesc,
                                               cudnn_frontend::PointWiseDesc const &pwDesc) {
  auto pw_op_created =
      cudnn_frontend::OperationBuilder(CUDNN_BACKEND_OPERATION_POINTWISE_DESCRIPTOR)
          .setxDesc(xDesc)
          .setbDesc(bDesc)
          .settDesc(tDesc)
          .setyDesc(yDesc)
          .setpwDesc(pwDesc)
          .build();
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  return pw_op_created;
}

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// convert cu_seqlens_q to qkv/o_ragged_offset and actual_seqlens_q
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__global__ void cu_seqlens_to_offsets(int64_t b, int64_t h, int64_t d, int32_t *cu_seqlens_q,
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                                      int32_t *actual_seqlens_q, int32_t *qkv_ragged_offset,
                                      int32_t *o_ragged_offset) {
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  size_t tid = blockIdx.x * blockDim.x + threadIdx.x;
  if (tid < b) {
    actual_seqlens_q[tid] = cu_seqlens_q[tid + 1] - cu_seqlens_q[tid];
  }
  if (tid < b + 1) {
    qkv_ragged_offset[tid] = cu_seqlens_q[tid] * 3 * h * d;
    o_ragged_offset[tid] = cu_seqlens_q[tid] * h * d;
  }
}
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// convert cu_seqlens to actual_seqlens
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__global__ void cu_seqlens_to_actual_seqlens(size_t b, int32_t const *const q_cu_seqlens,
                                             int32_t const *const kv_cu_seqlens, int32_t *q_seqlens,
                                             int32_t *kv_seqlens) {
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  size_t tid = blockIdx.x * blockDim.x + threadIdx.x;
  if (tid < b) {
    q_seqlens[tid] = q_cu_seqlens[tid + 1] - q_cu_seqlens[tid];
    kv_seqlens[tid] = kv_cu_seqlens[tid + 1] - kv_cu_seqlens[tid];
  }
}
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// convert cu_seqlens_padded to offsets
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template <class OFFSETS_T>
__device__ void cu_seqlens_padded_to_offsets_impl(NVTE_QKV_Layout_Group layout_group, int64_t b,
                                                  int64_t h, int64_t hg, int64_t d_qk, int64_t d_v,
                                                  const int32_t *cu_seqlens_q_padded,
                                                  const int32_t *cu_seqlens_kv_padded,
                                                  OFFSETS_T *offsets_q, OFFSETS_T *offsets_k,
                                                  OFFSETS_T *offsets_v, OFFSETS_T *offsets_o) {
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  size_t tid = blockIdx.x * blockDim.x + threadIdx.x;
  if (tid < b + 1) {
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    offsets_o[tid] = h * d_v * cu_seqlens_q_padded[tid];
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    switch (layout_group) {
      case NVTE_QKV_Layout_Group::NVTE_HD_HD_HD:
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        offsets_q[tid] = h * d_qk * cu_seqlens_q_padded[tid];
        offsets_k[tid] = hg * d_qk * cu_seqlens_kv_padded[tid];
        offsets_v[tid] = hg * d_v * cu_seqlens_kv_padded[tid];
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        break;
      case NVTE_QKV_Layout_Group::NVTE_3HD:
      case NVTE_QKV_Layout_Group::NVTE_H3D:
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        offsets_q[tid] = 3 * h * d_qk * cu_seqlens_q_padded[tid];
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        offsets_k[tid] = offsets_q[tid];
        offsets_v[tid] = offsets_q[tid];
        break;
      case NVTE_QKV_Layout_Group::NVTE_HD_2HD:
      case NVTE_QKV_Layout_Group::NVTE_HD_H2D:
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        offsets_q[tid] = h * d_qk * cu_seqlens_q_padded[tid];
        offsets_k[tid] = 2 * hg * d_qk * cu_seqlens_kv_padded[tid];
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        offsets_v[tid] = offsets_k[tid];
        break;
    }
  }
}

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__global__ void cu_seqlens_padded_to_offsets(NVTE_QKV_Layout_Group layout_group, int64_t b,
                                             int64_t h, int64_t hg, int64_t d_qk, int64_t d_v,
                                             const int32_t *cu_seqlens_q_padded,
                                             const int32_t *cu_seqlens_kv_padded,
                                             DType offset_dtype, void *offsets_q, void *offsets_k,
                                             void *offsets_v, void *offsets_o) {
  if (offset_dtype == DType::kInt32) {
    cu_seqlens_padded_to_offsets_impl<int32_t>(
        layout_group, b, h, hg, d_qk, d_v, cu_seqlens_q_padded, cu_seqlens_kv_padded,
        reinterpret_cast<int32_t *>(offsets_q), reinterpret_cast<int32_t *>(offsets_k),
        reinterpret_cast<int32_t *>(offsets_v), reinterpret_cast<int32_t *>(offsets_o));
  } else {
    assert(offset_dtype == DType::kInt64 && "expect int64");
    cu_seqlens_padded_to_offsets_impl<int64_t>(
        layout_group, b, h, hg, d_qk, d_v, cu_seqlens_q_padded, cu_seqlens_kv_padded,
        reinterpret_cast<int64_t *>(offsets_q), reinterpret_cast<int64_t *>(offsets_k),
        reinterpret_cast<int64_t *>(offsets_v), reinterpret_cast<int64_t *>(offsets_o));
  }
}

DType get_ragged_offset_dtype(NVTE_QKV_Layout_Group layout_group, int64_t num_attn_heads,
                              int64_t num_gqa_groups, int64_t max_seqlen_q, int64_t max_seqlen_kv,
                              int64_t head_dim_qk, int64_t head_dim_v) {
  std::array<int64_t, 4> offsets_qkvo{};
  switch (layout_group) {
    case NVTE_QKV_Layout_Group::NVTE_HD_HD_HD:
      offsets_qkvo[0] = num_attn_heads * head_dim_qk * max_seqlen_q;
      offsets_qkvo[1] = num_gqa_groups * head_dim_qk * max_seqlen_kv;
      offsets_qkvo[2] = num_gqa_groups * head_dim_v * max_seqlen_kv;
      break;
    case NVTE_QKV_Layout_Group::NVTE_3HD:
    case NVTE_QKV_Layout_Group::NVTE_H3D:
      offsets_qkvo[0] = 3 * num_attn_heads * head_dim_qk * max_seqlen_q;
      offsets_qkvo[1] = offsets_qkvo[0];
      offsets_qkvo[2] = offsets_qkvo[0];
      break;
    case NVTE_QKV_Layout_Group::NVTE_HD_2HD:
    case NVTE_QKV_Layout_Group::NVTE_HD_H2D:
      offsets_qkvo[0] = num_attn_heads * head_dim_qk * max_seqlen_q;
      offsets_qkvo[1] = 2 * num_gqa_groups * head_dim_qk * max_seqlen_kv;
      offsets_qkvo[2] = offsets_qkvo[1];
      break;
  }

  offsets_qkvo[3] = num_attn_heads * head_dim_qk * max_seqlen_q;

  size_t max_offset = *std::max_element(offsets_qkvo.begin(), offsets_qkvo.end());
  if (max_offset > std::numeric_limits<int32_t>::max()) {
    return DType::kInt64;
  }

  return DType::kInt32;
}

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}  // namespace fused_attn

// get cuDNN data type
cudnnDataType_t get_cudnn_dtype(const transformer_engine::DType t) {
  using namespace transformer_engine;
  switch (t) {
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    case DType::kInt32:
      return CUDNN_DATA_INT32;
    case DType::kInt64:
      return CUDNN_DATA_INT64;
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    case DType::kFloat16:
      return CUDNN_DATA_HALF;
    case DType::kFloat32:
      return CUDNN_DATA_FLOAT;
    case DType::kBFloat16:
      return CUDNN_DATA_BFLOAT16;
    case DType::kFloat8E4M3:
      return CUDNN_DATA_FP8_E4M3;
    case DType::kFloat8E5M2:
      return CUDNN_DATA_FP8_E5M2;
    default:
      NVTE_ERROR("Invalid cuDNN data type. \n");
  }
}
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// get cuDNN data type
cudnn_frontend::DataType_t get_cudnn_fe_dtype(const transformer_engine::DType t) {
  using namespace transformer_engine;
  switch (t) {
    case DType::kInt32:
      return cudnn_frontend::DataType_t::INT32;
    case DType::kInt64:
      return cudnn_frontend::DataType_t::INT64;
    case DType::kFloat16:
      return cudnn_frontend::DataType_t::HALF;
    case DType::kFloat32:
      return cudnn_frontend::DataType_t::FLOAT;
    case DType::kBFloat16:
      return cudnn_frontend::DataType_t::BFLOAT16;
    case DType::kFloat8E4M3:
      return cudnn_frontend::DataType_t::FP8_E4M3;
    case DType::kFloat8E5M2:
      return cudnn_frontend::DataType_t::FP8_E5M2;
    default:
      NVTE_ERROR("Invalid cuDNN data type. \n");
  }
}
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}  // namespace transformer_engine