roberta-base-thai / train_tokenizer.py
sakares's picture
train with 10K batch_size
89c14b0
from datasets import load_dataset, concatenate_datasets
from tokenizers import ByteLevelBPETokenizer
from transformers import AutoConfig
from pythainlp.tokenize import word_tokenize
language = "th"
model_config = "roberta-base"
model_dir = model_config + f"-pretrained-{language}"
config = AutoConfig.from_pretrained(model_config)
config.save_pretrained(f"{model_dir}")
# load dataset
# only the train subset for tokenizing purposes
raw_dataset = load_dataset(
"oscar", f"unshuffled_deduplicated_{language}", split="train"
)
# Instantiate tokenizer
tokenizer = ByteLevelBPETokenizer()
## For Thai NLP Library, please feel free to check https://pythainlp.github.io/docs/2.3/api/tokenize.html
def th_tokenize(text):
result = " ".join(word_tokenize(text, engine="newmm", keep_whitespace=False))
return result
def batch_iterator(batch_size=10000):
for i in range(0, len(raw_dataset), batch_size):
yield [th_tokenize(text) for text in raw_dataset[i : i + batch_size]["text"]]
# Customized training
tokenizer.train_from_iterator(
batch_iterator(),
vocab_size=50265,
min_frequency=2,
special_tokens=["<s>", "<pad>", "</s>", "<unk>", "<mask>",],
)
# Save files to disk
tokenizer.save(f"./tokenizer.json")