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QConvoneDNN Class — pytorch Architecture

Architecture documentation for the QConvoneDNN class in qconv.h from the pytorch codebase.

Entity Profile

Source Code

aten/src/ATen/native/quantized/cpu/qconv.h lines 8–97

class QConvoneDNN final {
 public:

  C10_API static at::Tensor run_pointwise(
      at::Tensor act, // contains quantized values but not QTensor
      double act_scale,
      int64_t act_zero_point,
      at::Tensor weight, // contains quantized values but not QTensor
      at::Tensor weight_scales,
      at::Tensor weight_zero_points,
      std::optional<at::Tensor> bias,
      torch::List<int64_t> stride,
      torch::List<int64_t> padding,
      torch::List<int64_t> dilation,
      int64_t groups,
      double output_scale,
      int64_t output_zero_point,
      std::optional<c10::ScalarType> output_dtype,
      std::string_view attr,
      torch::List<std::optional<at::Scalar>> scalars,
      std::optional<std::string_view> algorithm);

  C10_API static at::Tensor run_pointwise_tensor(
      at::Tensor act, // contains quantized values but not QTensor
      at::Tensor act_scale,
      at::Tensor act_zero_point,
      at::Tensor weight, // contains quantized values but not QTensor
      at::Tensor weight_scales,
      at::Tensor weight_zero_points,
      std::optional<at::Tensor> bias,
      torch::List<int64_t> stride,
      torch::List<int64_t> padding,
      torch::List<int64_t> dilation,
      int64_t groups,
      double output_scale,
      int64_t output_zero_point,
      std::optional<c10::ScalarType> output_dtype,
      std::string_view attr,
      torch::List<std::optional<at::Scalar>> scalars,
      std::optional<std::string_view> algorithm);

  C10_API static at::Tensor run_pointwise_binary(
      at::Tensor act, // contains quantized values but not QTensor
      double act_scale,
      int64_t act_zero_point,
      at::Tensor weight, // contains quantized values but not QTensor
      at::Tensor weight_scales,
      at::Tensor weight_zero_points,
      at::Tensor accum, // contains quantized values but not QTensor
      std::optional<at::Tensor> bias,
      torch::List<int64_t> stride,
      torch::List<int64_t> padding,
      torch::List<int64_t> dilation,
      int64_t groups,
      double output_scale,
      int64_t output_zero_point,
      std::optional<c10::ScalarType> output_dtype,
      double accum_scale,
      int64_t accum_zero_point,
      std::string_view binary_attr,
      std::optional<at::Scalar> alpha,
      std::optional<std::string_view> unary_attr,
      torch::List<std::optional<at::Scalar>> unary_scalars,
      std::optional<std::string_view> unary_algorithm);

  C10_API static at::Tensor run_pointwise_binary_tensor(
      at::Tensor act, // contains quantized values but not QTensor
      at::Tensor act_scale,
      at::Tensor act_zero_point,
      at::Tensor weight, // contains quantized values but not QTensor
      at::Tensor weight_scales,
      at::Tensor weight_zero_points,
      at::Tensor accum, // contains quantized values but not QTensor
      std::optional<at::Tensor> bias,
      torch::List<int64_t> stride,
      torch::List<int64_t> padding,
      torch::List<int64_t> dilation,
      int64_t groups,
      double output_scale,
      int64_t output_zero_point,
      std::optional<c10::ScalarType> output_dtype,
      double accum_scale,
      int64_t accum_zero_point,
      std::string_view binary_attr,
      std::optional<at::Scalar> alpha,
      std::optional<std::string_view> unary_attr,
      torch::List<std::optional<at::Scalar>> unary_scalars,
      std::optional<std::string_view> unary_algorithm);

};

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