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/*************************************************************************
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 * Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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 *
 * See LICENSE for license information.
 ************************************************************************/

#include "common.h"
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#include "c10/util/ArrayRef.h"
#include "pybind.h"
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#include "transformer_engine/transformer_engine.h"
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namespace transformer_engine::pytorch {

std::vector<size_t> getTensorShape(at::Tensor t) {
  std::vector<size_t> shape;
  for (auto s : t.sizes()) {
    shape.push_back(s);
  }
  return shape;
}

std::unique_ptr<Quantizer> convert_quantizer(py::handle quantizer) {
  init_extension();
  if (quantizer.is_none()) {
    return std::make_unique<NoneQuantizer>(quantizer);
  }
  for (auto [_check_type, check_quantizer_type, _create_tensor, create_quantizer] :
       detail::custom_types_converters) {
    if (check_quantizer_type(quantizer.ptr())) {
      return create_quantizer(quantizer);
    }
  }

  NVTE_ERROR("Unexpected type for quantizer");
}
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transformer_engine::DType getTransformerEngineFP8Type(bool e4m3_if_hybrid,
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                                                      const std::string& fp8_recipe) {
  // if e4m3 or hybrid + forward
  if ((fp8_recipe == "E4M3") || ((fp8_recipe == "HYBRID") && e4m3_if_hybrid)) {
    return transformer_engine::DType::kFloat8E4M3;
  }
  return transformer_engine::DType::kFloat8E5M2;
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}

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TensorWrapper makeTransformerEngineTensor(py::handle tensor, py::handle quantizer) {
  NVTE_CHECK(!tensor.is_none(), "Tensor is not allocated!");
  std::unique_ptr<Quantizer> my_quantizer = convert_quantizer(quantizer);
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  // check for both quantizer & tensor type:
  // mxfp8 tensor -> mxfp8 quantizer
  // float8 tensor -> delayed scaling quantizer OR current scaling quantizer
  // also during dequantize, the quantizer param is unknown -> so quantizer is NoneQuantizer
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  for (auto [check_type, check_quantizer_type, create_tensor, _] :
       detail::custom_types_converters) {
    if (check_type(tensor.ptr())) {
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      if (!(quantizer.is_none() || check_quantizer_type(quantizer.ptr()))) {
        continue;
      }
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      auto x = create_tensor(tensor, my_quantizer.get());
      return x;
    }
  }
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  NVTE_CHECK(dynamic_cast<NoneQuantizer*>(my_quantizer.get()) != nullptr,
             "Unexpected quantization params type.");
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  // Regular pyTorch tensor
  at::Tensor torch_tensor = tensor.cast<at::Tensor>();

  // #TODO (pgadzinski) - needed in attention for non-contiguous tensors.
  //if (!torch_tensor.is_contiguous()) {
  //  torch_tensor = torch_tensor.contiguous();
  //}
  auto ret = TensorWrapper(my_quantizer->get_scaling_mode());
  ret.set_rowwise_data(torch_tensor.data_ptr(),
                       GetTransformerEngineDType(torch_tensor.scalar_type()),
                       getTensorShape(torch_tensor));
  my_quantizer->set_quantization_params(&ret);
  return ret;
}

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transformer_engine::TensorWrapper makeTransformerEngineTensor(
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    void* data_ptr, const NVTEShape& shape, const transformer_engine::DType type) {
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  return transformer_engine::TensorWrapper(data_ptr, shape, type);
}

transformer_engine::TensorWrapper makeTransformerEngineTensor(
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    void* data_ptr, const std::vector<size_t>& shape, const transformer_engine::DType type) {
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  return transformer_engine::TensorWrapper(data_ptr, shape, type);
}

transformer_engine::TensorWrapper makeTransformerEngineTensor(at::Tensor tensor) {
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  transformer_engine::DType dtype = GetTransformerEngineDType(tensor.scalar_type());
  std::vector<size_t> shape;
  for (auto s : tensor.sizes()) {
    shape.push_back(s);
  }
  return makeTransformerEngineTensor(tensor.data_ptr(), shape, dtype);
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}

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std::tuple<std::vector<transformer_engine::TensorWrapper>, std::vector<std::vector<NVTETensor>>,
           std::vector<NVTETensor*>, size_t, size_t>
makeTransformerEngineTensorList(std::vector<std::vector<at::Tensor>> at_tensor_lists) {
  size_t num_lists = at_tensor_lists.size();

  NVTE_CHECK(num_lists > 0, "List of tensors is empty.");

  size_t num_tensors = at_tensor_lists[0].size();

  std::vector<std::vector<NVTETensor>> nvte_tensor_lists;
  std::vector<NVTETensor*> nvte_tensor_list_ptrs;
  std::vector<transformer_engine::TensorWrapper> tensorWrappers;
  nvte_tensor_lists.reserve(num_lists);
  nvte_tensor_list_ptrs.reserve(num_lists);
  tensorWrappers.reserve(num_lists * num_tensors);

  for (const auto& at_list : at_tensor_lists) {
    NVTE_CHECK(at_list.size() == num_tensors, "Wrong number of tensors");
    std::vector<NVTETensor> te_list;
    te_list.reserve(num_tensors);

    for (const auto& at_tensor : at_list) {
      tensorWrappers.push_back(makeTransformerEngineTensor(at_tensor));
      te_list.push_back(tensorWrappers.back().data());
    }

    nvte_tensor_lists.push_back(std::move(te_list));
  }

  for (auto& te_tensor_list : nvte_tensor_lists) {
    nvte_tensor_list_ptrs.push_back(te_tensor_list.data());
  }

  return std::make_tuple(std::move(tensorWrappers), std::move(nvte_tensor_lists),
                         std::move(nvte_tensor_list_ptrs), num_lists, num_tensors);
}

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transformer_engine::TensorWrapper makeTransformerEngineTensor(
    void* data_ptr, const std::vector<size_t>& shape, const transformer_engine::DType type,
    void* amax_ptr, void* scale_ptr, void* scale_inv_ptr, std::vector<size_t> scale_inv_shape,
    NVTEScalingMode scaling_mode) {
  TensorWrapper ret(scaling_mode);
  ret.set_rowwise_data(data_ptr, type, shape);
  const std::vector<size_t> meta_shape{1};
  ret.set_amax(amax_ptr, DType::kFloat32, meta_shape);
  ret.set_scale(scale_ptr, DType::kFloat32, meta_shape);
  auto scale_inv_dtype =
      (scaling_mode == NVTE_MXFP8_1D_SCALING) ? DType::kFloat8E8M0 : DType::kFloat32;
  ret.set_rowwise_scale_inv(scale_inv_ptr, scale_inv_dtype, scale_inv_shape);
  return ret;
}

transformer_engine::TensorWrapper makeTransformerEngineTensor(
    void* data_ptr, void* columnwise_data_ptr, const std::vector<size_t>& shape,
    const std::vector<size_t>& columnwise_shape, const transformer_engine::DType type,
    void* amax_ptr, void* scale_ptr, void* scale_inv_ptr, void* columnwise_scale_inv_ptr,
    const std::vector<size_t>& scale_inv_shape,
    const std::vector<size_t>& columnwise_scale_inv_shape, NVTEScalingMode scaling_mode) {
  TensorWrapper ret(scaling_mode);
  ret.set_rowwise_data(data_ptr, type, shape);
  ret.set_columnwise_data(columnwise_data_ptr, type, columnwise_shape);
  const std::vector<size_t> meta_shape{1};
  ret.set_amax(amax_ptr, DType::kFloat32, meta_shape);
  ret.set_scale(scale_ptr, DType::kFloat32, meta_shape);
  auto scale_inv_dtype =
      (scaling_mode == NVTE_MXFP8_1D_SCALING) ? DType::kFloat8E8M0 : DType::kFloat32;
  ret.set_rowwise_scale_inv(scale_inv_ptr, scale_inv_dtype, scale_inv_shape);
  ret.set_columnwise_scale_inv(columnwise_scale_inv_ptr, scale_inv_dtype,
                               columnwise_scale_inv_shape);
  return ret;
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}

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transformer_engine::TensorWrapper makeTransformerEngineTensor(at::Tensor tensor, at::Tensor amax,
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                                                              const at::Tensor scale,
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                                                              at::Tensor scale_inv,
                                                              NVTEScalingMode scaling_mode) {
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  transformer_engine::DType dtype = GetTransformerEngineDType(tensor.scalar_type());

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  auto tensor_shape = getTensorShape(tensor);
  auto scale_inv_shape = getTensorShape(scale_inv);

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  NVTE_CHECK(amax.scalar_type() == at::kFloat);
  NVTE_CHECK(scale.scalar_type() == at::kFloat);
  NVTE_CHECK(scale_inv.scalar_type() == at::kFloat);

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  return makeTransformerEngineTensor(tensor.data_ptr(), tensor_shape, dtype, amax.data_ptr(),
                                     scale.data_ptr(), scale_inv.data_ptr(), scale_inv_shape,
                                     scaling_mode);
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}

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template <typename T>
T product(const std::vector<T>& shape) {
  T ret = 1;
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  for (auto s : shape) {
    ret *= s;
  }
  return ret;
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}

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template size_t product<size_t>(const std::vector<size_t>& shape);
template int64_t product<int64_t>(const std::vector<int64_t>& shape);

size_t product(const NVTEShape& shape, size_t begin, size_t end) {
  NVTE_CHECK(begin <= end && end <= shape.ndim, "Attempted to access entries ", begin, " to ", end,
             " in a shape with ", shape.ndim, " entries");
  size_t ret = 1;
  for (size_t i = begin; i < end; ++i) {
    ret *= shape.data[i];
  }
  return ret;
}

std::vector<size_t> nvte_shape_to_vector(const NVTEShape& nvte_shape) {
  std::vector<size_t> shape;
  for (size_t i = 0; i < nvte_shape.ndim; i++) {
    shape.push_back(nvte_shape.data[i]);
  }
  return shape;
}

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at::Tensor allocateSpace(const std::vector<size_t>& shape, const transformer_engine::DType type,
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                         bool init_to_zeros) {
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  std::vector<int64_t> shape_int64(shape.begin(), shape.end());
  c10::IntArrayRef ar_shape(shape_int64);
  if (init_to_zeros) {
    return at::zeros(ar_shape, at::CUDA(GetATenDType(type)));
  } else {
    return at::empty(ar_shape, at::CUDA(GetATenDType(type)));
  }
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}

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at::Tensor allocateSpace(const NVTEShape& shape, const transformer_engine::DType type,
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                         bool init_to_zeros) {
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  auto size = shape.ndim;
  if (size == 2 && init_to_zeros) {
    return at::zeros({static_cast<int64_t>(shape.data[0]), static_cast<int64_t>(shape.data[1])},
                     at::CUDA(GetATenDType(type)));
  } else if (size == 2) {
    return at::empty({static_cast<int64_t>(shape.data[0]), static_cast<int64_t>(shape.data[1])},
                     at::CUDA(GetATenDType(type)));
  } else if (size == 1 && init_to_zeros) {
    return at::zeros({static_cast<int64_t>(shape.data[0])}, at::CUDA(GetATenDType(type)));
  } else if (size == 1) {
    return at::empty({static_cast<int64_t>(shape.data[0])}, at::CUDA(GetATenDType(type)));
  }
  NVTE_CHECK(false, "Should never reach here! func: allocateSpace");
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}

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at::Tensor allocateTorchTensor(int M, int N, transformer_engine::DType dtype) {
  return at::empty({static_cast<int64_t>(M), static_cast<int64_t>(N)},
                   at::CUDA(GetATenDType(dtype)));
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}

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at::Tensor allocateTorchTensor(int M, transformer_engine::DType dtype) {
  return at::empty({static_cast<int64_t>(M)}, at::CUDA(GetATenDType(dtype)));
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}
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void* getDataPtr(at::Tensor tensor, int offset) {
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  void* dptr = nullptr;
  if (tensor.numel() > 0) {
    dptr = tensor.data_ptr();
  }
  if (dptr != nullptr && offset != 0) {
    char* char_ptr = reinterpret_cast<char*>(dptr);
    char_ptr += offset * tensor.element_size();
    dptr = reinterpret_cast<void*>(char_ptr);
  }
  return dptr;
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}
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std::vector<size_t> convertShape(const NVTEShape& shape) {
  return std::vector<size_t>(shape.data, shape.data + shape.ndim);
}

int roundup(const int value, const int multiple) {
  assert(multiple > 0);
  return ((value + multiple - 1) / multiple) * multiple;
}

}  // namespace transformer_engine::pytorch