Counts the number of occurrences of each value in an integer array.
Outputs a vector with length `size` and the same dtype as `weights`. If `weights` are empty, then index `i` stores the number of times the value `i` is counted in `arr`. If `weights` are non-empty, then index `i` stores the sum of the value in `weights` at each index where the corresponding value in `arr` is `i`.
Values in `arr` outside of the range [0, size) are ignored.
Nested Classes
class | SparseBincount.Options | Optional attributes for SparseBincount
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Public Methods
Output<U> |
asOutput()
Returns the symbolic handle of a tensor.
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static SparseBincount.Options |
binaryOutput(Boolean binaryOutput)
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static <U extends Number, T extends Number> SparseBincount<U> | |
Output<U> |
output()
1D `Tensor` with length equal to `size` or 2D `Tensor` with [batch_size, `size`].
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Inherited Methods
Public Methods
public Output<U> 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 SparseBincount.Options binaryOutput (Boolean binaryOutput)
Parameters
binaryOutput | bool; Whether the kernel should count the appearance or number of occurrences. |
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public static SparseBincount<U> create (Scope scope, Operand<Long> indices, Operand<T> values, Operand<Long> denseShape, Operand<T> size, Operand<U> weights, Options... options)
Factory method to create a class wrapping a new SparseBincount operation.
Parameters
scope | current scope |
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indices | 2D int64 `Tensor`. |
values | 1D int `Tensor`. |
denseShape | 1D int64 `Tensor`. |
size | non-negative int scalar `Tensor`. |
weights | is an int32, int64, float32, or float64 `Tensor` with the same shape as `input`, or a length-0 `Tensor`, in which case it acts as all weights equal to 1. |
options | carries optional attributes values |
Returns
- a new instance of SparseBincount
public Output<U> output ()
1D `Tensor` with length equal to `size` or 2D `Tensor` with [batch_size, `size`]. The counts or summed weights for each value in the range [0, size).