# Copyright 2020 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # maxlengthations under the License. # ============================================================================== """bincount ops.""" from tensorflow.python.framework import constant_op from tensorflow.python.framework import dtypes from tensorflow.python.framework import ops from tensorflow.python.framework import sparse_tensor from tensorflow.python.ops import array_ops from tensorflow.python.ops import check_ops from tensorflow.python.ops import gen_count_ops from tensorflow.python.ops import gen_math_ops from tensorflow.python.ops import math_ops from tensorflow.python.ops.ragged import ragged_tensor from tensorflow.python.util import deprecation from tensorflow.python.util.tf_export import tf_export @tf_export("math.bincount", v1=[]) def bincount(arr, weights=None, minlength=None, maxlength=None, dtype=dtypes.int32, name=None, axis=None, binary_output=False): """Counts the number of occurrences of each value in an integer array. If `minlength` and `maxlength` are not given, returns a vector with length `tf.reduce_max(arr) + 1` if `arr` is non-empty, and length 0 otherwise. If `weights` are non-None, then index `i` of the output stores the sum of the value in `weights` at each index where the corresponding value in `arr` is `i`. ```python values = tf.constant([1,1,2,3,2,4,4,5]) tf.math.bincount(values) #[0 2 2 1 2 1] ``` Vector length = Maximum element in vector `values` is 5. Adding 1, which is 6 will be the vector length. Each bin value in the output indicates number of occurrences of the particular index. Here, index 1 in output has a value 2. This indicates value 1 occurs two times in `values`. ```python values = tf.constant([1,1,2,3,2,4,4,5]) weights = tf.constant([1,5,0,1,0,5,4,5]) tf.math.bincount(values, weights=weights) #[0 6 0 1 9 5] ``` Bin will be incremented by the corresponding weight instead of 1. Here, index 1 in output has a value 6. This is the summation of weights corresponding to the value in `values`. **Bin-counting on a certain axis** This example takes a 2 dimensional input and returns a `Tensor` with bincounting on each sample. >>> data = np.array([[1, 2, 3, 0], [0, 0, 1, 2]], dtype=np.int32) >>> tf.math.bincount(data, axis=-1) **Bin-counting with binary_output** This example gives binary output instead of counting the occurrence. >>> data = np.array([[1, 2, 3, 0], [0, 0, 1, 2]], dtype=np.int32) >>> tf.math.bincount(data, axis=-1, binary_output=True) Args: arr: A Tensor, RaggedTensor, or SparseTensor whose values should be counted. These tensors must have a rank of 2 if `axis=-1`. weights: If non-None, must be the same shape as arr. For each value in `arr`, the bin will be incremented by the corresponding weight instead of 1. minlength: If given, ensures the output has length at least `minlength`, padding with zeros at the end if necessary. maxlength: If given, skips values in `arr` that are equal or greater than `maxlength`, ensuring that the output has length at most `maxlength`. dtype: If `weights` is None, determines the type of the output bins. name: A name scope for the associated operations (optional). axis: The axis to slice over. Axes at and below `axis` will be flattened before bin counting. Currently, only `0`, and `-1` are supported. If None, all axes will be flattened (identical to passing `0`). binary_output: If True, this op will output 1 instead of the number of times a token appears (equivalent to one_hot + reduce_any instead of one_hot + reduce_add). Defaults to False. Returns: A vector with the same dtype as `weights` or the given `dtype`. The bin values. Raises: `InvalidArgumentError` if negative values are provided as an input. """ name = "bincount" if name is None else name with ops.name_scope(name): # Somehow forward compatible needs to be False. if not binary_output and axis is None: arr = ops.convert_to_tensor(arr, name="arr", dtype=dtypes.int32) array_is_nonempty = math_ops.reduce_prod(array_ops.shape(arr)) > 0 output_size = math_ops.cast(array_is_nonempty, dtypes.int32) * ( math_ops.reduce_max(arr) + 1) if minlength is not None: minlength = ops.convert_to_tensor( minlength, name="minlength", dtype=dtypes.int32) output_size = gen_math_ops.maximum(minlength, output_size) if maxlength is not None: maxlength = ops.convert_to_tensor( maxlength, name="maxlength", dtype=dtypes.int32) output_size = gen_math_ops.minimum(maxlength, output_size) if weights is not None: weights = ops.convert_to_tensor(weights, name="weights") return gen_math_ops.unsorted_segment_sum(weights, arr, output_size) weights = constant_op.constant([], dtype) arr = array_ops.reshape(arr, [-1]) return gen_math_ops.bincount(arr, output_size, weights) if not isinstance(arr, sparse_tensor.SparseTensor): arr = ragged_tensor.convert_to_tensor_or_ragged_tensor(arr, name="arr") if weights is not None: if not isinstance(weights, sparse_tensor.SparseTensor): weights = ragged_tensor.convert_to_tensor_or_ragged_tensor( weights, name="weights") if weights is not None and binary_output: raise ValueError("Arguments `binary_output` and `weights` are mutually " "exclusive. Please specify only one.") if not arr.dtype.is_integer: arr = math_ops.cast(arr, dtypes.int32) if axis is None: axis = 0 if axis not in [0, -1]: raise ValueError(f"Unsupported value for argument axis={axis}. Only 0 and" " -1 are currently supported.") if isinstance(arr, ragged_tensor.RaggedTensor): array_is_nonempty = math_ops.reduce_prod(array_ops.shape(arr.values)) > 0 else: array_is_nonempty = math_ops.reduce_prod(array_ops.shape(arr)) > 0 if isinstance(arr, sparse_tensor.SparseTensor): output_size = math_ops.cast(array_is_nonempty, arr.dtype) * ( math_ops.reduce_max(arr.values) + 1) else: output_size = math_ops.cast(array_is_nonempty, arr.dtype) * ( math_ops.reduce_max(arr) + 1) if minlength is not None: minlength = ops.convert_to_tensor( minlength, name="minlength", dtype=arr.dtype) output_size = gen_math_ops.maximum(minlength, output_size) if maxlength is not None: maxlength = ops.convert_to_tensor( maxlength, name="maxlength", dtype=arr.dtype) output_size = gen_math_ops.minimum(maxlength, output_size) if axis == 0: if isinstance(arr, sparse_tensor.SparseTensor): if weights is not None: weights = validate_sparse_weights(arr, weights, dtype) arr = arr.values elif isinstance(arr, ragged_tensor.RaggedTensor): if weights is not None: weights = validate_ragged_weights(arr, weights, dtype) arr = arr.values else: if weights is not None: weights = array_ops.reshape(weights, [-1]) arr = array_ops.reshape(arr, [-1]) if isinstance(arr, sparse_tensor.SparseTensor): weights = validate_sparse_weights(arr, weights, dtype) return gen_math_ops.sparse_bincount( indices=arr.indices, values=arr.values, dense_shape=arr.dense_shape, size=output_size, weights=weights, binary_output=binary_output) elif isinstance(arr, ragged_tensor.RaggedTensor): weights = validate_ragged_weights(arr, weights, dtype) return gen_math_ops.ragged_bincount( splits=arr.row_splits, values=arr.values, size=output_size, weights=weights, binary_output=binary_output) else: weights = validate_dense_weights(arr, weights, dtype) return gen_math_ops.dense_bincount( input=arr, size=output_size, weights=weights, binary_output=binary_output) @tf_export(v1=["math.bincount", "bincount"]) @deprecation.deprecated_endpoints("bincount") def bincount_v1(arr, weights=None, minlength=None, maxlength=None, dtype=dtypes.int32): """Counts the number of occurrences of each value in an integer array. If `minlength` and `maxlength` are not given, returns a vector with length `tf.reduce_max(arr) + 1` if `arr` is non-empty, and length 0 otherwise. If `weights` are non-None, then index `i` of the output stores the sum of the value in `weights` at each index where the corresponding value in `arr` is `i`. Args: arr: An int32 tensor of non-negative values. weights: If non-None, must be the same shape as arr. For each value in `arr`, the bin will be incremented by the corresponding weight instead of 1. minlength: If given, ensures the output has length at least `minlength`, padding with zeros at the end if necessary. maxlength: If given, skips values in `arr` that are equal or greater than `maxlength`, ensuring that the output has length at most `maxlength`. dtype: If `weights` is None, determines the type of the output bins. Returns: A vector with the same dtype as `weights` or the given `dtype`. The bin values. """ return bincount(arr, weights, minlength, maxlength, dtype) @tf_export("sparse.bincount") def sparse_bincount(values, weights=None, axis=0, minlength=None, maxlength=None, binary_output=False, name=None): """Count the number of times an integer value appears in a tensor. This op takes an N-dimensional `Tensor`, `RaggedTensor`, or `SparseTensor`, and returns an N-dimensional int64 SparseTensor where element `[i0...i[axis], j]` contains the number of times the value `j` appears in slice `[i0...i[axis], :]` of the input tensor. Currently, only N=0 and N=-1 are supported. Args: values: A Tensor, RaggedTensor, or SparseTensor whose values should be counted. These tensors must have a rank of 2 if `axis=-1`. weights: If non-None, must be the same shape as arr. For each value in `value`, the bin will be incremented by the corresponding weight instead of 1. axis: The axis to slice over. Axes at and below `axis` will be flattened before bin counting. Currently, only `0`, and `-1` are supported. If None, all axes will be flattened (identical to passing `0`). minlength: If given, ensures the output has length at least `minlength`, padding with zeros at the end if necessary. maxlength: If given, skips values in `values` that are equal or greater than `maxlength`, ensuring that the output has length at most `maxlength`. binary_output: If True, this op will output 1 instead of the number of times a token appears (equivalent to one_hot + reduce_any instead of one_hot + reduce_add). Defaults to False. name: A name for this op. Returns: A SparseTensor with `output.shape = values.shape[:axis] + [N]`, where `N` is * `maxlength` (if set); * `minlength` (if set, and `minlength > reduce_max(values)`); * `0` (if `values` is empty); * `reduce_max(values) + 1` otherwise. Raises: `InvalidArgumentError` if negative values are provided as an input. Examples: **Bin-counting every item in individual batches** This example takes an input (which could be a Tensor, RaggedTensor, or SparseTensor) and returns a SparseTensor where the value of (i,j) is the number of times value j appears in batch i. >>> data = np.array([[10, 20, 30, 20], [11, 101, 11, 10001]], dtype=np.int64) >>> output = tf.sparse.bincount(data, axis=-1) >>> print(output) SparseTensor(indices=tf.Tensor( [[ 0 10] [ 0 20] [ 0 30] [ 1 11] [ 1 101] [ 1 10001]], shape=(6, 2), dtype=int64), values=tf.Tensor([1 2 1 2 1 1], shape=(6,), dtype=int64), dense_shape=tf.Tensor([ 2 10002], shape=(2,), dtype=int64)) **Bin-counting with defined output shape** This example takes an input (which could be a Tensor, RaggedTensor, or SparseTensor) and returns a SparseTensor where the value of (i,j) is the number of times value j appears in batch i. However, all values of j above 'maxlength' are ignored. The dense_shape of the output sparse tensor is set to 'minlength'. Note that, while the input is identical to the example above, the value '10001' in batch item 2 is dropped, and the dense shape is [2, 500] instead of [2,10002] or [2, 102]. >>> minlength = maxlength = 500 >>> data = np.array([[10, 20, 30, 20], [11, 101, 11, 10001]], dtype=np.int64) >>> output = tf.sparse.bincount( ... data, axis=-1, minlength=minlength, maxlength=maxlength) >>> print(output) SparseTensor(indices=tf.Tensor( [[ 0 10] [ 0 20] [ 0 30] [ 1 11] [ 1 101]], shape=(5, 2), dtype=int64), values=tf.Tensor([1 2 1 2 1], shape=(5,), dtype=int64), dense_shape=tf.Tensor([ 2 500], shape=(2,), dtype=int64)) **Binary bin-counting** This example takes an input (which could be a Tensor, RaggedTensor, or SparseTensor) and returns a SparseTensor where (i,j) is 1 if the value j appears in batch i at least once and is 0 otherwise. Note that, even though some values (like 20 in batch 1 and 11 in batch 2) appear more than once, the 'values' tensor is all 1s. >>> data = np.array([[10, 20, 30, 20], [11, 101, 11, 10001]], dtype=np.int64) >>> output = tf.sparse.bincount(data, binary_output=True, axis=-1) >>> print(output) SparseTensor(indices=tf.Tensor( [[ 0 10] [ 0 20] [ 0 30] [ 1 11] [ 1 101] [ 1 10001]], shape=(6, 2), dtype=int64), values=tf.Tensor([1 1 1 1 1 1], shape=(6,), dtype=int64), dense_shape=tf.Tensor([ 2 10002], shape=(2,), dtype=int64)) **Weighted bin-counting** This example takes two inputs - a values tensor and a weights tensor. These tensors must be identically shaped, and have the same row splits or indices in the case of RaggedTensors or SparseTensors. When performing a weighted count, the op will output a SparseTensor where the value of (i, j) is the sum of the values in the weight tensor's batch i in the locations where the values tensor has the value j. In this case, the output dtype is the same as the dtype of the weights tensor. >>> data = np.array([[10, 20, 30, 20], [11, 101, 11, 10001]], dtype=np.int64) >>> weights = [[2, 0.25, 15, 0.5], [2, 17, 3, 0.9]] >>> output = tf.sparse.bincount(data, weights=weights, axis=-1) >>> print(output) SparseTensor(indices=tf.Tensor( [[ 0 10] [ 0 20] [ 0 30] [ 1 11] [ 1 101] [ 1 10001]], shape=(6, 2), dtype=int64), values=tf.Tensor([2. 0.75 15. 5. 17. 0.9], shape=(6,), dtype=float32), dense_shape=tf.Tensor([ 2 10002], shape=(2,), dtype=int64)) """ with ops.name_scope(name, "count", [values, weights]): if not isinstance(values, sparse_tensor.SparseTensor): values = ragged_tensor.convert_to_tensor_or_ragged_tensor( values, name="values") if weights is not None: if not isinstance(weights, sparse_tensor.SparseTensor): weights = ragged_tensor.convert_to_tensor_or_ragged_tensor( weights, name="weights") if weights is not None and binary_output: raise ValueError("Arguments `binary_output` and `weights` are mutually " "exclusive. Please specify only one.") if axis is None: axis = 0 if axis not in [0, -1]: raise ValueError(f"Unsupported value for argument axis={axis}. Only 0 and" " -1 are currently supported.") minlength_value = minlength if minlength is not None else -1 maxlength_value = maxlength if maxlength is not None else -1 if axis == 0: if isinstance(values, sparse_tensor.SparseTensor): if weights is not None: weights = validate_sparse_weights(values, weights) values = values.values elif isinstance(values, ragged_tensor.RaggedTensor): if weights is not None: weights = validate_ragged_weights(values, weights) values = values.values else: if weights is not None: weights = array_ops.reshape(weights, [-1]) values = array_ops.reshape(values, [-1]) if isinstance(values, sparse_tensor.SparseTensor): weights = validate_sparse_weights(values, weights) c_ind, c_val, c_shape = gen_count_ops.sparse_count_sparse_output( values.indices, values.values, values.dense_shape, weights, minlength=minlength_value, maxlength=maxlength_value, binary_output=binary_output) elif isinstance(values, ragged_tensor.RaggedTensor): weights = validate_ragged_weights(values, weights) c_ind, c_val, c_shape = gen_count_ops.ragged_count_sparse_output( values.row_splits, values.values, weights, minlength=minlength_value, maxlength=maxlength_value, binary_output=binary_output) else: weights = validate_dense_weights(values, weights) c_ind, c_val, c_shape = gen_count_ops.dense_count_sparse_output( values, weights=weights, minlength=minlength_value, maxlength=maxlength_value, binary_output=binary_output) return sparse_tensor.SparseTensor(c_ind, c_val, c_shape) def validate_dense_weights(values, weights, dtype=None): """Validates the passed weight tensor or creates an empty one.""" if weights is None: if dtype: return array_ops.constant([], dtype=dtype) return array_ops.constant([], dtype=values.dtype) if not isinstance(weights, ops.Tensor): raise ValueError( "Argument `weights` must be a tf.Tensor if `values` is a tf.Tensor. " f"Received weights={weights} of type: {type(weights).__name__}") return weights def validate_sparse_weights(values, weights, dtype=None): """Validates the passed weight tensor or creates an empty one.""" if weights is None: if dtype: return array_ops.constant([], dtype=dtype) return array_ops.constant([], dtype=values.values.dtype) if not isinstance(weights, sparse_tensor.SparseTensor): raise ValueError( "Argument `weights` must be a SparseTensor if `values` is a " f"SparseTensor. Received weights={weights} of type: " f"{type(weights).__name__}") checks = [] if weights.dense_shape is not values.dense_shape: checks.append( check_ops.assert_equal( weights.dense_shape, values.dense_shape, message="'weights' and 'values' must have the same dense shape.")) if weights.indices is not values.indices: checks.append( check_ops.assert_equal( weights.indices, values.indices, message="'weights' and 'values' must have the same indices.") ) if checks: with ops.control_dependencies(checks): weights = array_ops.identity(weights.values) else: weights = weights.values return weights def validate_ragged_weights(values, weights, dtype=None): """Validates the passed weight tensor or creates an empty one.""" if weights is None: if dtype: return array_ops.constant([], dtype=dtype) return array_ops.constant([], dtype=values.values.dtype) if not isinstance(weights, ragged_tensor.RaggedTensor): raise ValueError( "`weights` must be a RaggedTensor if `values` is a RaggedTensor. " f"Received argument weights={weights} of type: " f"{type(weights).__name__}.") checks = [] if weights.row_splits is not values.row_splits: checks.append( check_ops.assert_equal( weights.row_splits, values.row_splits, message="'weights' and 'values' must have the same row splits.")) if checks: with ops.control_dependencies(checks): weights = array_ops.identity(weights.values) else: weights = weights.values return weights