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# DynamicStitch

public final class DynamicStitch

Interleave the values from the `data` tensors into a single tensor.

Builds a merged tensor such that

``````merged[indices[m][i, ..., j], ...] = data[m][i, ..., j, ...]
``````
For example, if each `indices[m]` is scalar or vector, we have
``````# Scalar indices:
merged[indices[m], ...] = data[m][...]

# Vector indices:
merged[indices[m][i], ...] = data[m][i, ...]
``````
Each `data[i].shape` must start with the corresponding `indices[i].shape`, and the rest of `data[i].shape` must be constant w.r.t. `i`. That is, we must have `data[i].shape = indices[i].shape + constant`. In terms of this `constant`, the output shape is

merged.shape = [max(indices)] + constant

Values are merged in order, so if an index appears in both `indices[m][i]` and `indices[n][j]` for `(m,i) < (n,j)` the slice `data[n][j]` will appear in the merged result. If you do not need this guarantee, ParallelDynamicStitch might perform better on some devices.

For example:

``````indices[0] = 6
indices[1] = [4, 1]
indices[2] = [[5, 2], [0, 3]]
data[0] = [61, 62]
data[1] = [[41, 42], [11, 12]]
data[2] = [[[51, 52], [21, 22]], [[1, 2], [31, 32]]]
merged = [[1, 2], [11, 12], [21, 22], [31, 32], [41, 42],
[51, 52], [61, 62]]
``````
This method can be used to merge partitions created by `dynamic_partition` as illustrated on the following example:
``````# Apply function (increments x_i) on elements for which a certain condition
# apply (x_i != -1 in this example).
x=tf.constant([0.1, -1., 5.2, 4.3, -1., 7.4])
partitioned_data = tf.dynamic_partition(
partitioned_data[1] = partitioned_data[1] + 1.0
condition_indices = tf.dynamic_partition(
x = tf.dynamic_stitch(condition_indices, partitioned_data)
# Here x=[1.1, -1., 6.2, 5.3, -1, 8.4], the -1. values remain
# unchanged.
``````

### Public Methods

 Output () Returns the symbolic handle of a tensor. static DynamicStitch ( Scope scope, Iterable< Operand > indices, Iterable< Operand > data) Factory method to create a class wrapping a new DynamicStitch operation. Output ()

## Public Methods

#### public Output <T> asOutput ()

Returns the symbolic handle of a tensor.

Inputs to TensorFlow operations are outputs of another TensorFlow operation. This method is used to obtain a symbolic handle that represents the computation of the input.

#### public static DynamicStitch <T> create ( Scope scope, Iterable< Operand <Integer>> indices, Iterable< Operand <T>> data)

Factory method to create a class wrapping a new DynamicStitch operation.

##### Parameters
 scope current scope
##### Returns
• a new instance of DynamicStitch

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