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|
Encodes each sequence of Unicode code points in input into a string.
tf.strings.unicode_encode(
input,
output_encoding,
errors='replace',
replacement_char=65533,
name=None
)
result[i1...iN] is the string formed by concatenating the Unicode
codepoints input[1...iN, :], encoded using output_encoding.
Args |
|---|
input
N+1 dimensional potentially ragged integer tensor with shape
[D1...DN, num_chars].
output_encoding
"UTF-8", "UTF-16-BE", or "UTF-32-BE".
errors
* `'replace'`: Replace invalid codepoint with the
`replacement_char`. (default)
* `'ignore'`: Skip invalid codepoints.
* `'strict'`: Raise an exception for any invalid codepoint.
replacement_char
errors='replace'. Any valid unicode codepoint may
be used. The default value is the default unicode replacement character
which is 0xFFFD (U+65533).
name
Returns | |
|---|---|
A N dimensional string tensor with shape [D1...DN].
|
Example:
input = tf.ragged.constant([[71, 246, 246, 100, 110, 105, 103, 104, 116], [128522]])print(unicode_encode(input, 'UTF-8'))tf.Tensor([b'G\xc3\xb6\xc3\xb6dnight' b'\xf0\x9f\x98\x8a'],shape=(2,), dtype=string)
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