tokenizer
is pure Go package to facilitate applying Natural Language Processing (NLP) models train/test and inference in Go.
It is heavily inspired by and based on the popular HuggingFace Tokenizers.
tokenizer
is part of an ambitious goal (together with transformer and gotch) to bring more AI/deep-learning tools to Gophers so that they can stick to the language they love and build faster software in production.
tokenizer
is built in modules located in sub-packages.
- Normalizer
- Pretokenizer
- Tokenizer
- Post-processing
It implements various tokenizer models:
- Word level model
- Wordpiece model
- Byte Pair Encoding (BPE)
It can be used for both training new models from scratch or fine-tuning existing models. See examples detail.
This tokenizer package is compatible to load pretrained models from Huggingface. Some of them can be loaded using pretrained
subpackage.
import (
"fmt"
"log"
"github.com/sugarme/tokenizer/pretrained"
)
func main() {
tk := pretrained.BertBaseUncased()
sentence := `The Gophers craft code using [MASK] language.`
en, err := tk.EncodeSingle(sentence)
if err != nil {
log.Fatal(err)
}
fmt.Printf("tokens: %q\n", en.Tokens)
fmt.Printf("offsets: %v\n", en.Offsets)
// Output
// tokens: ["the" "go" "##pher" "##s" "craft" "code" "using" "[MASK]" "language" "."]
// offsets: [[0 3] [4 6] [6 10] [10 11] [12 17] [18 22] [23 28] [29 35] [36 44] [44 45]]
}
All models can be loaded from files manually. pkg.go.dev for detail APIs.
- See pkg.go.dev for detail APIs
tokenizer
is Apache 2.0 licensed.
- This project has been inspired and used many concepts from HuggingFace Tokenizers.