Ejemplo n.º 1
0
def sparse_to_dense(sparse_indices,
                    output_shape,
                    sparse_values,
                    default_value=0,
                    validate_indices=True,
                    name=None):
    """Converts a sparse representation into a dense tensor.

  Builds an array `dense` with shape `output_shape` such that

  ```python
  # If sparse_indices is scalar
  dense[i] = (i == sparse_indices ? sparse_values : default_value)

  # If sparse_indices is a vector, then for each i
  dense[sparse_indices[i]] = sparse_values[i]

  # If sparse_indices is an n by d matrix, then for each i in [0, n)
  dense[sparse_indices[i][0], ..., sparse_indices[i][d-1]] = sparse_values[i]
  ```

  All other values in `dense` are set to `default_value`.  If `sparse_values`
  is a scalar, all sparse indices are set to this single value.

  Indices should be sorted in lexicographic order, and indices must not
  contain any repeats. If `validate_indices` is True, these properties
  are checked during execution.

  Args:
    sparse_indices: A 0-D, 1-D, or 2-D `Tensor` of type `int32` or `int64`.
      `sparse_indices[i]` contains the complete index where `sparse_values[i]`
      will be placed.
    output_shape: A 1-D `Tensor` of the same type as `sparse_indices`.  Shape
      of the dense output tensor.
    sparse_values: A 0-D or 1-D `Tensor`.  Values corresponding to each row of
      `sparse_indices`, or a scalar value to be used for all sparse indices.
    default_value: A 0-D `Tensor` of the same type as `sparse_values`.  Value
      to set for indices not specified in `sparse_indices`.  Defaults to zero.
    validate_indices: A boolean value.  If True, indices are checked to make
      sure they are sorted in lexicographic order and that there are no repeats.
    name: A name for the operation (optional).

  Returns:
    Dense `Tensor` of shape `output_shape`.  Has the same type as
    `sparse_values`.
  """
    return gen_sparse_ops._sparse_to_dense(sparse_indices,
                                           output_shape,
                                           sparse_values,
                                           default_value=default_value,
                                           validate_indices=validate_indices,
                                           name=name)
Ejemplo n.º 2
0
def sparse_to_dense(sparse_indices,
                    output_shape,
                    sparse_values,
                    default_value=0,
                    validate_indices=True,
                    name=None):
  """Converts a sparse representation into a dense tensor.

  Builds an array `dense` with shape `output_shape` such that

  ```python
  # If sparse_indices is scalar
  dense[i] = (i == sparse_indices ? sparse_values : default_value)

  # If sparse_indices is a vector, then for each i
  dense[sparse_indices[i]] = sparse_values[i]

  # If sparse_indices is an n by d matrix, then for each i in [0, n)
  dense[sparse_indices[i][0], ..., sparse_indices[i][d-1]] = sparse_values[i]
  ```

  All other values in `dense` are set to `default_value`.  If `sparse_values`
  is a scalar, all sparse indices are set to this single value.

  Indices should be sorted in lexicographic order, and indices must not
  contain any repeats. If `validate_indices` is True, these properties
  are checked during execution.

  Args:
    sparse_indices: A 0-D, 1-D, or 2-D `Tensor` of type `int32` or `int64`.
      `sparse_indices[i]` contains the complete index where `sparse_values[i]`
      will be placed.
    output_shape: A 1-D `Tensor` of the same type as `sparse_indices`.  Shape
      of the dense output tensor.
    sparse_values: A 0-D or 1-D `Tensor`.  Values corresponding to each row of
      `sparse_indices`, or a scalar value to be used for all sparse indices.
    default_value: A 0-D `Tensor` of the same type as `sparse_values`.  Value
      to set for indices not specified in `sparse_indices`.  Defaults to zero.
    validate_indices: A boolean value.  If True, indices are checked to make
      sure they are sorted in lexicographic order and that there are no repeats.
    name: A name for the operation (optional).

  Returns:
    Dense `Tensor` of shape `output_shape`.  Has the same type as
    `sparse_values`.
  """
  return gen_sparse_ops._sparse_to_dense(sparse_indices,
                                         output_shape,
                                         sparse_values,
                                         default_value=default_value,
                                         validate_indices=validate_indices,
                                         name=name)
Ejemplo n.º 3
0
def sparse_to_dense(sparse_indices,
                    output_shape,
                    sparse_values,
                    default_value=0,
                    name=None):
    """Converts a sparse representation into a dense tensor.

  Builds an array `dense` with shape `output_shape` such that

  ```python
  # If sparse_indices is scalar
  dense[i] = (i == sparse_indices ? sparse_values : default_value)

  # If sparse_indices is a vector, then for each i
  dense[sparse_indices[i]] = sparse_values[i]

  # If sparse_indices is an n by d matrix, then for each i in [0, n)
  dense[sparse_indices[i][0], ..., sparse_indices[i][d-1]] = sparse_values[i]
  ```

  All other values in `dense` are set to `default_value`.  If `sparse_values`
  is a scalar, all sparse indices are set to this single value.

  Args:
    sparse_indices: A 0-D, 1-D, or 2-D `Tensor` of type `int32` or `int64`.
      `sparse_indices[i]` contains the complete index where `sparse_values[i]`
      will be placed.
    output_shape: A 1-D `Tensor` of the same type as `sparse_indices`.  Shape
      of the dense output tensor.
    sparse_values: A 0-D or 1-D `Tensor`.  Values corresponding to each row of
      `sparse_indices`, or a scalar value to be used for all sparse indices.
    default_value: A 0-D `Tensor` of the same type as `sparse_values`.  Value
      to set for indices not specified in `sparse_indices`.  Defaults to zero.
    name: A name for the operation (optional).

  Returns:
    Dense `Tensor` of shape `output_shape`.  Has the same type as
    `sparse_values`.
  """
    return gen_sparse_ops._sparse_to_dense(sparse_indices,
                                           output_shape,
                                           sparse_values,
                                           default_value,
                                           name=name)
Ejemplo n.º 4
0
def sparse_to_dense(sparse_indices,
                    output_shape,
                    sparse_values,
                    default_value=0,
                    name=None):
  """Converts a sparse representation into a dense tensor.

  Builds an array `dense` with shape `output_shape` such that

  ```python
  # If sparse_indices is scalar
  dense[i] = (i == sparse_indices ? sparse_values : default_value)

  # If sparse_indices is a vector, then for each i
  dense[sparse_indices[i]] = sparse_values[i]

  # If sparse_indices is an n by d matrix, then for each i in [0, n)
  dense[sparse_indices[i][0], ..., sparse_indices[i][d-1]] = sparse_values[i]
  ```

  All other values in `dense` are set to `default_value`.  If `sparse_values`
  is a scalar, all sparse indices are set to this single value.

  Args:
    sparse_indices: A 0-D, 1-D, or 2-D `Tensor` of type `int32` or `int64`.
      `sparse_indices[i]` contains the complete index where `sparse_values[i]`
      will be placed.
    output_shape: A 1-D `Tensor` of the same type as `sparse_indices`.  Shape
      of the dense output tensor.
    sparse_values: A 0-D or 1-D `Tensor`.  Values corresponding to each row of
      `sparse_indices`, or a scalar value to be used for all sparse indices.
    default_value: A 0-D `Tensor` of the same type as `sparse_values`.  Value
      to set for indices not specified in `sparse_indices`.  Defaults to zero.
    name: A name for the operation (optional).

  Returns:
    Dense `Tensor` of shape `output_shape`.  Has the same type as
    `sparse_values`.
  """
  return gen_sparse_ops._sparse_to_dense(sparse_indices,
                                         output_shape,
                                         sparse_values,
                                         default_value,
                                         name=name)