def scatter_min(ref, indices, updates, use_locking=False, name=None):
    # pylint: disable=line-too-long
    r"""Reduces sparse updates into a variable reference using the `min` operation.

  This operation computes

      # Scalar indices
      ref[indices, ...] = min(ref[indices, ...], updates[...])

      # Vector indices (for each i)
      ref[indices[i], ...] = min(ref[indices[i], ...], updates[i, ...])

      # High rank indices (for each i, ..., j)
      ref[indices[i, ..., j], ...] = min(ref[indices[i, ..., j], ...],
      updates[i, ..., j, ...])

  This operation outputs `ref` after the update is done.
  This makes it easier to chain operations that need to use the reset value.

  Duplicate entries are handled correctly: if multiple `indices` reference
  the same location, their contributions combine.

  Requires `updates.shape = indices.shape + ref.shape[1:]` or `updates.shape =
  []`.

  <div style="width:70%; margin:auto; margin-bottom:10px; margin-top:20px;">
  <img style="width:100%" src="https://www.tensorflow.org/images/ScatterAdd.png"
  alt>
  </div>

  Args:
    ref: A mutable `Tensor`. Must be one of the following types: `half`,
      `bfloat16`, `float32`, `float64`, `int32`, `int64`. Should be from a
      `Variable` node.
    indices: A `Tensor`. Must be one of the following types: `int32`, `int64`. A
      tensor of indices into the first dimension of `ref`.
    updates: A `Tensor`. Must have the same type as `ref`. A tensor of updated
      values to reduce into `ref`.
    use_locking: An optional `bool`. Defaults to `False`. If True, the update
      will be protected by a lock; otherwise the behavior is undefined, but may
      exhibit less contention.
    name: A name for the operation (optional).

  Returns:
    A mutable `Tensor`. Has the same type as `ref`.
  """
    if ref.dtype._is_ref_dtype:
        return gen_state_ops.scatter_min(ref,
                                         indices,
                                         updates,
                                         use_locking=use_locking,
                                         name=name)
    return ref._lazy_read(
        gen_resource_variable_ops.resource_scatter_min(  # pylint: disable=protected-access
            ref.handle,
            indices,
            ops.convert_to_tensor(updates, ref.dtype),
            name=name))
Beispiel #2
0
def scatter_min(ref, indices, updates, use_locking=False, name=None):
  # pylint: disable=line-too-long
  r"""Reduces sparse updates into a variable reference using the `min` operation.

  This operation computes

      # Scalar indices
      ref[indices, ...] = min(ref[indices, ...], updates[...])

      # Vector indices (for each i)
      ref[indices[i], ...] = min(ref[indices[i], ...], updates[i, ...])

      # High rank indices (for each i, ..., j)
      ref[indices[i, ..., j], ...] = min(ref[indices[i, ..., j], ...],
      updates[i, ..., j, ...])

  This operation outputs `ref` after the update is done.
  This makes it easier to chain operations that need to use the reset value.

  Duplicate entries are handled correctly: if multiple `indices` reference
  the same location, their contributions combine.

  Requires `updates.shape = indices.shape + ref.shape[1:]` or `updates.shape =
  []`.

  <div style="width:70%; margin:auto; margin-bottom:10px; margin-top:20px;">
  <img style="width:100%" src="https://www.tensorflow.org/images/ScatterAdd.png"
  alt>
  </div>

  Args:
    ref: A mutable `Tensor`. Must be one of the following types: `half`,
      `bfloat16`, `float32`, `float64`, `int32`, `int64`. Should be from a
      `Variable` node.
    indices: A `Tensor`. Must be one of the following types: `int32`, `int64`. A
      tensor of indices into the first dimension of `ref`.
    updates: A `Tensor`. Must have the same type as `ref`. A tensor of updated
      values to reduce into `ref`.
    use_locking: An optional `bool`. Defaults to `False`. If True, the update
      will be protected by a lock; otherwise the behavior is undefined, but may
      exhibit less contention.
    name: A name for the operation (optional).

  Returns:
    A mutable `Tensor`. Has the same type as `ref`.
  """
  return gen_state_ops.scatter_min(
      ref=ref,
      indices=indices,
      updates=updates,
      use_locking=use_locking,
      name=name)