Tokenizer for language models.
use kitoken::Kitoken;
let encoder = Kitoken::from_file("models/llama2.kit")?;
let tokens = encoder.encode("Your future belongs to me.", true)?;
let string = String::from_utf8(encoder.decode(&tokens, true)?)?;
assert!(string == "Your future belongs to me.");
- Fast encoding and decoding
Faster than most other tokenizers in both common and uncommon scenarios. - Support for a wide variety of tokenizer formats and tokenization strategies
Including support for Tokenizers, SentencePiece, Tiktoken and more. - Compatible with many systems and platforms
Runs on Windows, Linux, macOS and embedded, and comes with bindings for Web, Node and Python. - Compact data format
Definitions are stored in an efficient binary format and without merge list. - Support for normalization and pre-tokenization
Including unicode normalization, whitespace normalization, and many others.
Kitoken is a fast and versatile tokenizer for language models. Multiple tokenization algorithms are supported:
- BytePair: A variation of the BPE algorithm, merging byte or character pairs.
- Unigram: The Unigram subword algorithm.
- WordPiece: The WordPiece subword algorithm.
Kitoken is compatible with many existing tokenizers, including SentencePiece, HuggingFace Tokenizers, OpenAI Tiktoken and Mistral Tekken, while outperforming them in most scenarios. See the benchmarks for comparisons with different datasets.
Kitoken can load and convert many existing tokenizer formats. Every supported format is tested against the original implementation across a variety of inputs to ensure correctness and compatibility.
let encoder = Kitoken::from_sentencepiece_file("models/mistral.model")?;
Kitoken can convert and initialize with SentencePiece models in BPE
and Unigram
format.
BPE
models are converted toBytePair
definitions in character mode. A merge list is generated and sorted using the token scores, which is then used to sort the vocabulary by merge priority. The scores and the merge list are then discarded.Unigram
models are converted toUnigram
definitions retaining the token scores.
If the model does not contain a trainer definition, Unigram
is assumed as the default encoding mode. Normalization options and the unicode normalization scheme are taken from the contained normalizer definition and converted to the respective Kitoken configurations.
Notes
- SentencePiece uses different
nfkc
normalization rules in thenmt_nfkc
andnmt_nfkc_cf
schemes than during regularnfkc
normalization. This difference is not entirely additive and prevents the normalization of~
to~
. Kitoken uses the regularnfkc
normalization rules fornmt_nfkc
andnmt_nfkc_cf
and normalizes~
to~
. - SentencePiece's implementation of Unigram merges pieces with the same merge priority differently depending on preceding non-encodable pieces. For example, with
xlnet_base_cased
, SentencePiece encodes.nnn
andԶnnn
as.., 8705, 180
butԶԶnnn
as.., 180, 8705
. Kitoken always merges pieces with the same merge priority in the same order, resulting in.., 180, 8705
for either case in the example and matching the behavior of Tokenizers.
let encoder = Kitoken::from_tokenizers_file("models/llama2.json")?;
Kitoken can convert and initialize with HuggingFace Tokenizers definitions for BPE
, Unigram
and WordPiece
models.
BPE
models are converted toBytePair
definitions. The included merge list is used to sort the vocabulary by merge priority and is then discarded.Unigram
models are converted toUnigram
definitions retaining the token scores.WordPiece
models are converted toWordPiece
definitions.
Normalization, pre-tokenization, post-processing and decoding options contained in the definition are converted to the respective Kitoken configurations.
Some normalization, post-processing and decoding options used by Tokenizers are used for converting alternative token-byte representations during encoding and decoding. Kitoken always stores and operates on tokens as byte sequences, and will use these options to pre-normalize the vocabulary during conversion.
Notes
- When using a
BPE
definition with an incomplete vocabulary and without anunk
token, Tokenizers skips over non-encodable pieces and attempts to merge the surrounding ones. Kitoken always considers non-encodable pieces as un-mergeable and encodes the surrounding pieces individually. This can result in different encodings depending on vocabulary coverage and inputs in this scenario. - Tokenizers normalizes inputs character-by-character, while Kitoken normalizes inputs as one. This can result in differences during case-folding in some cases. For example, greek letter
Σ
has two lowercase forms,σ
for within-word andς
for end-of-word use. Tokenizers will always lowercaseΣ
toσ
, while Kitoken will lowercase it to either depending on the context.
let encoder = Kitoken::from_tiktoken_file("models/cl100k_base.tiktoken")?;
Tiktoken is a BPE
tokenizer with a custom definition format used by OpenAI for GPT-3 and newer models using BytePair
tokenization in byte mode.
Tiktoken definitions contain a sorted vocabulary of base64 encoded bytes and corresponding token ids without any additional metadata. Special tokens and the split regex are expected to be provided separately, but will be inferred from the data for common models including GPT-3, GPT-4 and GPT-4o. For other models, or depending on the data and requirements, these values can be adjusted manually.
let encoder = Kitoken::from_tekken_file("models/nemo.json")?;
Tekken is a BPE
tokenizer with a custom definition format based on Tiktoken, used by Mistral for NeMo and newer models using BytePair
tokenization in byte mode.
Tekken definitions contain a sorted vocabulary of base64 encoded bytes and corresponding token ids, as well as metadata including the split regex and special tokens.
Kitoken uses merge-list-free variations of the BPE algorithm and a reversed variation of the Unigram algorithm. The basis for the merge-list-free BPE algorithm was inspired by Tiktoken, which has similarly good performance characteristics with common tokenization inputs. However, Kitoken can be much faster with inputs that fail to split during pre-tokenization by falling back to a priority-queue-based implementation when optimal.
The core tokenization functions are optimized for multiple CPU architectures and make use of SIMD instructions where available. Kitoken also avoids memory allocations and copying of data to great extent, and most operations are performed in-place and buffers are reused where possible.
Benchmarks were performed on a MacBook Pro M1 Max using each libraries Python bindings with tokenizer-bench.
Llama 2 uses a SentencePiece-based tokenizer model and BytePair
tokenization in character mode with byte mode fallback.
GPT-2 uses a Tokenizers-based tokenizer model and BytePair
tokenization in byte mode.
-
Pride and Prejudice: A text document containing Pride and Prejudice by Jane Austen. This data is a good representation for common English-language inputs containing a mix of short and long paragraphs.
-
UTF-8 Sequence: A text document containing a single-line UTF-8 sequence. This data is a good representation of inputs that might fail to split during pre-tokenization.
-
Wagahai: A text document containing Wagahai wa Neko de Aru by Natsume Sōseki. This data is a good representation for Japanese-language inputs containing many long paragraphs.