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tf.IndexedSlices

A sparse representation of a set of tensor slices at given indices.

This class is a simple wrapper for a pair of `Tensor` objects:

• `values`: A `Tensor` of any dtype with shape `[D0, D1, ..., Dn]`.
• `indices`: A 1-D integer `Tensor` with shape `[D0]`.

An `IndexedSlices` is typically used to represent a subset of a larger tensor `dense` of shape `[LARGE0, D1, .. , DN]` where `LARGE0 >> D0`. The values in `indices` are the indices in the first dimension of the slices that have been extracted from the larger tensor.

The dense tensor `dense` represented by an `IndexedSlices` `slices` has

``````dense[slices.indices[i], :, :, :, ...] = slices.values[i, :, :, :, ...]
``````

The `IndexedSlices` class is used principally in the definition of gradients for operations that have sparse gradients (e.g. `tf.gather`).

Contrast this representation with `tf.SparseTensor`, which uses multi-dimensional indices and scalar values.

`dense_shape` A 1-D `Tensor` containing the shape of the corresponding dense tensor.
`device` The name of the device on which `values` will be produced, or `None`.
`dtype` The `DType` of elements in this tensor.
`graph` The `Graph` that contains the values, indices, and shape tensors.
`indices` A 1-D `Tensor` containing the indices of the slices.
`name` The name of this `IndexedSlices`.
`op` The `Operation` that produces `values` as an output.
`values` A `Tensor` containing the values of the slices.

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