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Create a tensor of n-grams based on data
.
tf.strings.ngrams( data, ngram_width, separator=' ', pad_values=None, padding_width=None, preserve_short_sequences=False, name=None )
Creates a tensor of n-grams based on data
. The n-grams are created by joining windows of width
adjacent strings from the inner axis of data
using separator
.
The input data can be padded on both the start and end of the sequence, if desired, using the pad_values
argument. If set, pad_values
should contain either a tuple of strings or a single string; the 0th element of the tuple will be used to pad the left side of the sequence and the 1st element of the tuple will be used to pad the right side of the sequence. The padding_width
arg controls how many padding values are added to each side; it defaults to ngram_width-1
.
If this op is configured to not have padding, or if it is configured to add padding with padding_width
set to less than ngram_width-1, it is possible that a sequence, or a sequence plus padding, is smaller than the ngram width. In that case, no ngrams will be generated for that sequence. This can be prevented by setting preserve_short_sequences
, which will cause the op to always generate at least one ngram per non-empty sequence.
tf.strings.ngrams(["A", "B", "C", "D"], 2).numpy() array([b'A B', b'B C', b'C D'], dtype=object) tf.strings.ngrams(["TF", "and", "keras"], 1).numpy() array([b'TF', b'and', b'keras'], dtype=object)
Args | |
---|---|
data | A Tensor or RaggedTensor containing the source data for the ngrams. |
ngram_width | The width(s) of the ngrams to create. If this is a list or tuple, the op will return ngrams of all specified arities in list order. Values must be non-Tensor integers greater than 0. |
separator | The separator string used between ngram elements. Must be a string constant, not a Tensor. |
pad_values | A tuple of (left_pad_value, right_pad_value), a single string, or None. If None, no padding will be added; if a single string, then that string will be used for both left and right padding. Values must be Python strings. |
padding_width | If set, padding_width pad values will be added to both sides of each sequence. Defaults to ngram_width -1. Must be greater than
|
preserve_short_sequences | If true, then ensure that at least one ngram is generated for each input sequence. In particular, if an input sequence is shorter than min(ngram_width) + 2*pad_width , then generate a single ngram containing the entire sequence. If false, then no ngrams are generated for these short input sequences. |
name | The op name. |
Returns | |
---|---|
A RaggedTensor of ngrams. If data.shape=[D1...DN, S] , then output.shape=[D1...DN, NUM_NGRAMS] , where NUM_NGRAMS=S-ngram_width+1+2*padding_width . |
Raises | |
---|---|
TypeError | if pad_values is set to an invalid type. |
ValueError | if pad_values , padding_width , or ngram_width is set to an invalid value. |
© 2020 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/versions/r2.3/api_docs/python/tf/strings/ngrams