Quicktour
Let’s have a quick look at the 🤗 Tokenizers library features. The library provides an implementation of today’s most used tokenizers that is both easy to use and blazing fast.
It can be used to instantiate a pretrained tokenizer but we will start our quicktour by building one from scratch and see how we can train it.
Build a tokenizer from scratch
To illustrate how fast the 🤗 Tokenizers library is, let’s train a new tokenizer on wikitext-103 (516M of text) in just a few seconds. First things first, you will need to download this dataset and unzip it with:
wget https://s3.amazonaws.com/research.metamind.io/wikitext/wikitext-103-raw-v1.zip
unzip wikitext-103-raw-v1.zip
Training the tokenizer
In this tour, we will build and train a Byte-Pair Encoding (BPE) tokenizer. For more information about the different type of tokenizers, check out this guide in the 🤗 Transformers documentation. Here, training the tokenizer means it will learn merge rules by:
Start with all the characters present in the training corpus as tokens.
Identify the most common pair of tokens and merge it into one token.
Repeat until the vocabulary (e.g., the number of tokens) has reached the size we want.
The main API of the library is the class Tokenizer
, here is how we instantiate
one with a BPE model:
from tokenizers import Tokenizer
from tokenizers.models import BPE
tokenizer = Tokenizer(BPE(unk_token="[UNK]"))
To train our tokenizer on the wikitext files, we will need to instantiate a trainer, in this case
a BpeTrainer
from tokenizers.trainers import BpeTrainer
trainer = BpeTrainer(special_tokens=["[UNK]", "[CLS]", "[SEP]", "[PAD]", "[MASK]"])
We can set the training arguments like vocab_size
or min_frequency
(here left at
their default values of 30,000 and 0) but the most important part is to give the
special_tokens
we plan to use later on (they are not used at all during training) so that
they get inserted in the vocabulary.
Note
The order in which you write the special tokens list matters: here "[UNK]"
will get the
ID 0, "[CLS]"
will get the ID 1 and so forth.
We could train our tokenizer right now, but it wouldn’t be optimal. Without a pre-tokenizer that
will split our inputs into words, we might get tokens that overlap several words: for instance we
could get an "it is"
token since those two words often appear next to each other. Using a
pre-tokenizer will ensure no token is bigger than a word returned by the pre-tokenizer. Here we want
to train a subword BPE tokenizer, and we will use the easiest pre-tokenizer possible by splitting
on whitespace.
from tokenizers.pre_tokenizers import Whitespace
tokenizer.pre_tokenizer = Whitespace()
Now, we can just call the train()
method with any list of files we want
to use:
files = [f"data/wikitext-103-raw/wiki.{split}.raw" for split in ["test", "train", "valid"]]
tokenizer.train(files, trainer)
This should only take a few seconds to train our tokenizer on the full wikitext dataset!
To save the tokenizer in one file that contains all its configuration and vocabulary, just use the
save()
method:
tokenizer.save("data/tokenizer-wiki.json")
and you can reload your tokenizer from that file with the from_file()
class method:
tokenizer = Tokenizer.from_file("data/tokenizer-wiki.json")
Using the tokenizer
Now that we have trained a tokenizer, we can use it on any text we want with the
encode()
method:
output = tokenizer.encode("Hello, y'all! How are you 😁 ?")
This applied the full pipeline of the tokenizer on the text, returning an
Encoding
object. To learn more about this pipeline, and how to apply (or
customize) parts of it, check out this page.
This Encoding
object then has all the attributes you need for your deep
learning model (or other). The tokens
attribute contains the segmentation of your text in
tokens:
print(output.tokens)
# ["Hello", ",", "y", "'", "all", "!", "How", "are", "you", "[UNK]", "?"]
Similarly, the ids
attribute will contain the index of each of those tokens in the
tokenizer’s vocabulary:
print(output.ids)
# [27253, 16, 93, 11, 5097, 5, 7961, 5112, 6218, 0, 35]
An important feature of the 🤗 Tokenizers library is that it comes with full alignment tracking,
meaning you can always get the part of your original sentence that corresponds to a given token.
Those are stored in the offsets
attribute of our Encoding
object. For
instance, let’s assume we would want to find back what caused the "[UNK]"
token to appear,
which is the token at index 9 in the list, we can just ask for the offset at the index:
print(output.offsets[9])
# (26, 27)
and those are the indices that correspond to the emoji in the original sentence:
sentence = "Hello, y'all! How are you 😁 ?"
sentence[26:27]
# "😁"
Post-processing
We might want our tokenizer to automatically add special tokens, like "[CLS]"
or
"[SEP]"
. To do this, we use a post-processor. TemplateProcessing
is the
most commonly used, you just have to specify a template for the processing of single sentences and
pairs of sentences, along with the special tokens and their IDs.
When we built our tokenizer, we set "[CLS]"
and "[SEP]"
in positions 1 and 2 of our
list of special tokens, so this should be their IDs. To double-check, we can use the
token_to_id()
method:
tokenizer.token_to_id("[SEP]")
# 2
Here is how we can set the post-processing to give us the traditional BERT inputs:
from tokenizers.processors import TemplateProcessing
tokenizer.post_processor = TemplateProcessing(
single="[CLS] $A [SEP]",
pair="[CLS] $A [SEP] $B:1 [SEP]:1",
special_tokens=[
("[CLS]", tokenizer.token_to_id("[CLS]")),
("[SEP]", tokenizer.token_to_id("[SEP]")),
],
)
Let’s go over this snippet of code in more details. First we specify the template for single
sentences: those should have the form "[CLS] $A [SEP]"
where $A
represents our
sentence.
Then, we specify the template for sentence pairs, which should have the form
"[CLS] $A [SEP] $B [SEP]"
where $A
represents the first sentence and $B
the
second one. The :1
added in the template represent the type IDs we want for each part of
our input: it defaults to 0 for everything (which is why we don’t have $A:0
) and here we set
it to 1 for the tokens of the second sentence and the last "[SEP]"
token.
Lastly, we specify the special tokens we used and their IDs in our tokenizer’s vocabulary.
To check out this worked properly, let’s try to encode the same sentence as before:
output = tokenizer.encode("Hello, y'all! How are you 😁 ?")
print(output.tokens)
# ["[CLS]", "Hello", ",", "y", "'", "all", "!", "How", "are", "you", "[UNK]", "?", "[SEP]"]
To check the results on a pair of sentences, we just pass the two sentences to
encode()
:
output = tokenizer.encode("Hello, y'all!", "How are you 😁 ?")
print(output.tokens)
# ["[CLS]", "Hello", ",", "y", "'", "all", "!", "[SEP]", "How", "are", "you", "[UNK]", "?", "[SEP]"]
You can then check the type IDs attributed to each token is correct with
print(output.type_ids)
# [0, 0, 0, 0, 0, 0, 0, 0, 1, 1, 1, 1, 1, 1]
If you save your tokenizer with save()
, the post-processor will be saved along.
Encoding multiple sentences in a batch
To get the full speed of the 🤗 Tokenizers library, it’s best to process your texts by batches by
using the encode_batch()
method:
output = tokenizer.encode_batch(["Hello, y'all!", "How are you 😁 ?"])
The output is then a list of Encoding
objects like the ones we saw before. You
can process together as many texts as you like, as long as it fits in memory.
To process a batch of sentences pairs, pass two lists to the
encode_batch()
method: the list of sentences A and the list of sentences
B:
output = tokenizer.encode_batch(
[["Hello, y'all!", "How are you 😁 ?"], ["Hello to you too!", "I'm fine, thank you!"]]
)
When encoding multiple sentences, you can automatically pad the outputs to the longest sentence
present by using enable_padding()
, with the pad_token
and its ID
(which we can double-check the id for the padding token with
token_to_id()
like before):
tokenizer.enable_padding(pad_id=3, pad_token="[PAD]")
We can set the direction
of the padding (defaults to the right) or a given length
if
we want to pad every sample to that specific number (here we leave it unset to pad to the size of
the longest text).
output = tokenizer.encode_batch(["Hello, y'all!", "How are you 😁 ?"])
print(output[1].tokens)
# ["[CLS]", "How", "are", "you", "[UNK]", "?", "[SEP]", "[PAD]"]
In this case, the attention mask generated by the tokenizer takes the padding into account:
print(output[1].attention_mask)
# [1, 1, 1, 1, 1, 1, 1, 0]
Using a pretrained tokenizer
You can load any tokenizer from the Hugging Face Hub as long as a tokenizer.json file is available in the repository.
from tokenizers import Tokenizer
tokenizer = Tokenizer.from_pretrained("bert-base-uncased")
Importing a pretrained tokenizer from legacy vocabulary files
You can also import a pretrained tokenizer directly in, as long as you have its vocabulary file. For instance, here is how to import the classic pretrained BERT tokenizer:
from tokenizers import BertWordPieceTokenizer
tokenizer = BertWordPieceTokenizer("bert-base-uncased-vocab.txt", lowercase=True)
as long as you have downloaded the file bert-base-uncased-vocab.txt with
wget https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-uncased-vocab.txt