Padding and truncation
Batched inputs are often different lengths, so they can’t be converted to fixed-size tensors. Padding and truncation are strategies for dealing with this problem, to create rectangular tensors from batches of varying lengths. Padding adds a special padding token to ensure shorter sequences will have the same length as either the longest sequence in a batch or the maximum length accepted by the model. Truncation works in the other direction by truncating long sequences.
In most cases, padding your batch to the length of the longest sequence and truncating to the maximum length a model can accept works pretty well. However, the API supports more strategies if you need them. The three arguments you need to know are: padding
, truncation
and max_length
.
The padding
argument controls padding. It can be a boolean or a string:
True
or'longest'
: pad to the longest sequence in the batch (no padding is applied if you only provide a single sequence).'max_length'
: pad to a length specified by themax_length
argument or the maximum length accepted by the model if nomax_length
is provided (max_length=None
). Padding will still be applied if you only provide a single sequence.False
or'do_not_pad'
: no padding is applied. This is the default behavior.
The truncation
argument controls truncation. It can be a boolean or a string:
True
or'longest_first'
: truncate to a maximum length specified by themax_length
argument or the maximum length accepted by the model if nomax_length
is provided (max_length=None
). This will truncate token by token, removing a token from the longest sequence in the pair until the proper length is reached.'only_second'
: truncate to a maximum length specified by themax_length
argument or the maximum length accepted by the model if nomax_length
is provided (max_length=None
). This will only truncate the second sentence of a pair if a pair of sequences (or a batch of pairs of sequences) is provided.'only_first'
: truncate to a maximum length specified by themax_length
argument or the maximum length accepted by the model if nomax_length
is provided (max_length=None
). This will only truncate the first sentence of a pair if a pair of sequences (or a batch of pairs of sequences) is provided.False
or'do_not_truncate'
: no truncation is applied. This is the default behavior.
The max_length
argument controls the length of the padding and truncation. It can be an integer or None
, in which case it will default to the maximum length the model can accept. If the model has no specific maximum input length, truncation or padding to max_length
is deactivated.
The following table summarizes the recommended way to setup padding and truncation. If you use pairs of input sequences in any of the following examples, you can replace truncation=True
by a STRATEGY
selected in
['only_first', 'only_second', 'longest_first']
, i.e. truncation='only_second'
or truncation='longest_first'
to control how both sequences in the pair are truncated as detailed before.
Truncation | Padding | Instruction |
---|---|---|
no truncation | no padding | tokenizer(batch_sentences) |
padding to max sequence in batch | tokenizer(batch_sentences, padding=True) or | |
tokenizer(batch_sentences, padding='longest') | ||
padding to max model input length | tokenizer(batch_sentences, padding='max_length') | |
padding to specific length | tokenizer(batch_sentences, padding='max_length', max_length=42) | |
padding to a multiple of a value | tokenizer(batch_sentences, padding=True, pad_to_multiple_of=8) | |
truncation to max model input length | no padding | tokenizer(batch_sentences, truncation=True) or |
tokenizer(batch_sentences, truncation=STRATEGY) | ||
padding to max sequence in batch | tokenizer(batch_sentences, padding=True, truncation=True) or | |
tokenizer(batch_sentences, padding=True, truncation=STRATEGY) | ||
padding to max model input length | tokenizer(batch_sentences, padding='max_length', truncation=True) or | |
tokenizer(batch_sentences, padding='max_length', truncation=STRATEGY) | ||
padding to specific length | Not possible | |
truncation to specific length | no padding | tokenizer(batch_sentences, truncation=True, max_length=42) or |
tokenizer(batch_sentences, truncation=STRATEGY, max_length=42) | ||
padding to max sequence in batch | tokenizer(batch_sentences, padding=True, truncation=True, max_length=42) or | |
tokenizer(batch_sentences, padding=True, truncation=STRATEGY, max_length=42) | ||
padding to max model input length | Not possible | |
padding to specific length | tokenizer(batch_sentences, padding='max_length', truncation=True, max_length=42) or | |
tokenizer(batch_sentences, padding='max_length', truncation=STRATEGY, max_length=42) |