tf.contrib.data.group_by_window( key_func, reduce_func, window_size=None, window_size_func=None )
Defined in tensorflow/contrib/data/python/ops/grouping.py
.
See the guide: Dataset Input Pipeline > Transformations on existing datasets
A transformation that groups windows of elements by key and reduces them.
This transformation maps each consecutive element in a dataset to a key using key_func
and groups the elements by key. It then applies reduce_func
to at most window_size_func(key)
elements matching the same key. All except the final window for each key will contain window_size_func(key)
elements; the final window may be smaller.
You may provide either a constant window_size
or a window size determined by the key through window_size_func
.
key_func
: A function mapping a nested structure of tensors (having shapes and types defined by self.output_shapes
and self.output_types
) to a scalar tf.int64
tensor.reduce_func
: A function mapping a key and a dataset of up to window_size
consecutive elements matching that key to another dataset.window_size
: A tf.int64
scalar tf.Tensor
, representing the number of consecutive elements matching the same key to combine in a single batch, which will be passed to reduce_func
. Mutually exclusive with window_size_func
.window_size_func
: A function mapping a key to a tf.int64
scalar tf.Tensor
, representing the number of consecutive elements matching the same key to combine in a single batch, which will be passed to reduce_func
. Mutually exclusive with window_size
.A Dataset
transformation function, which can be passed to tf.data.Dataset.apply
.
ValueError
: if neither or both of {window_size
, window_size_func
} are passed.
© 2018 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/data/group_by_window