tokenizers0.21.0
Published
pip install tokenizers
Package Downloads
Requires Python
>=3.7
Dependencies
- huggingface-hub
<1.0,>=0.16.4
- pytest
; extra == "testing"
- requests
; extra == "testing"
- numpy
; extra == "testing"
- datasets
; extra == "testing"
- black
==22.3; extra == "testing"
- ruff
; extra == "testing"
- sphinx
; extra == "docs"
- sphinx-rtd-theme
; extra == "docs"
- setuptools-rust
; extra == "docs"
- tokenizers
[testing]; extra == "dev"
Tokenizers
Provides an implementation of today's most used tokenizers, with a focus on performance and versatility.
Bindings over the Rust implementation. If you are interested in the High-level design, you can go check it there.
Otherwise, let's dive in!
Main features:
- Train new vocabularies and tokenize using 4 pre-made tokenizers (Bert WordPiece and the 3 most common BPE versions).
- Extremely fast (both training and tokenization), thanks to the Rust implementation. Takes less than 20 seconds to tokenize a GB of text on a server's CPU.
- Easy to use, but also extremely versatile.
- Designed for research and production.
- Normalization comes with alignments tracking. It's always possible to get the part of the original sentence that corresponds to a given token.
- Does all the pre-processing: Truncate, Pad, add the special tokens your model needs.
Installation
With pip:
pip install tokenizers
From sources:
To use this method, you need to have the Rust installed:
# Install with:
curl https://sh.rustup.rs -sSf | sh -s -- -y
export PATH="$HOME/.cargo/bin:$PATH"
Once Rust is installed, you can compile doing the following
git clone https://github.com/huggingface/tokenizers
cd tokenizers/bindings/python
# Create a virtual env (you can use yours as well)
python -m venv .env
source .env/bin/activate
# Install `tokenizers` in the current virtual env
pip install -e .
Load a pretrained tokenizer from the Hub
from tokenizers import Tokenizer
tokenizer = Tokenizer.from_pretrained("bert-base-cased")
Using the provided Tokenizers
We provide some pre-build tokenizers to cover the most common cases. You can easily load one of
these using some vocab.json
and merges.txt
files:
from tokenizers import CharBPETokenizer
# Initialize a tokenizer
vocab = "./path/to/vocab.json"
merges = "./path/to/merges.txt"
tokenizer = CharBPETokenizer(vocab, merges)
# And then encode:
encoded = tokenizer.encode("I can feel the magic, can you?")
print(encoded.ids)
print(encoded.tokens)
And you can train them just as simply:
from tokenizers import CharBPETokenizer
# Initialize a tokenizer
tokenizer = CharBPETokenizer()
# Then train it!
tokenizer.train([ "./path/to/files/1.txt", "./path/to/files/2.txt" ])
# Now, let's use it:
encoded = tokenizer.encode("I can feel the magic, can you?")
# And finally save it somewhere
tokenizer.save("./path/to/directory/my-bpe.tokenizer.json")
Provided Tokenizers
CharBPETokenizer
: The original BPEByteLevelBPETokenizer
: The byte level version of the BPESentencePieceBPETokenizer
: A BPE implementation compatible with the one used by SentencePieceBertWordPieceTokenizer
: The famous Bert tokenizer, using WordPiece
All of these can be used and trained as explained above!
Build your own
Whenever these provided tokenizers don't give you enough freedom, you can build your own tokenizer, by putting all the different parts you need together. You can check how we implemented the provided tokenizers and adapt them easily to your own needs.
Building a byte-level BPE
Here is an example showing how to build your own byte-level BPE by putting all the different pieces together, and then saving it to a single file:
from tokenizers import Tokenizer, models, pre_tokenizers, decoders, trainers, processors
# Initialize a tokenizer
tokenizer = Tokenizer(models.BPE())
# Customize pre-tokenization and decoding
tokenizer.pre_tokenizer = pre_tokenizers.ByteLevel(add_prefix_space=True)
tokenizer.decoder = decoders.ByteLevel()
tokenizer.post_processor = processors.ByteLevel(trim_offsets=True)
# And then train
trainer = trainers.BpeTrainer(
vocab_size=20000,
min_frequency=2,
initial_alphabet=pre_tokenizers.ByteLevel.alphabet()
)
tokenizer.train([
"./path/to/dataset/1.txt",
"./path/to/dataset/2.txt",
"./path/to/dataset/3.txt"
], trainer=trainer)
# And Save it
tokenizer.save("byte-level-bpe.tokenizer.json", pretty=True)
Now, when you want to use this tokenizer, this is as simple as:
from tokenizers import Tokenizer
tokenizer = Tokenizer.from_file("byte-level-bpe.tokenizer.json")
encoded = tokenizer.encode("I can feel the magic, can you?")