Sam Passaglia
initial commit
9aba307
raw
history blame
No virus
15.6 kB
"""
dbert.py
Provides the dBert class that implements Reader using BERT contextual embeddings to disambiguate heteronyms.
"""
import logging
import os
from pathlib import Path
import numpy as np
import torch
from speach.ttlig import RubyFrag, RubyToken
from transformers import (
AutoModelForTokenClassification,
BertJapaneseTokenizer,
DataCollatorForTokenClassification,
EarlyStoppingCallback,
Trainer,
TrainingArguments,
)
from config import config
from config.config import logger
from yomikata import utils
from yomikata.reader import Reader
from yomikata.utils import LabelEncoder
logging.getLogger("transformers").setLevel(logging.ERROR)
logging.getLogger("transformers.trainer").setLevel(logging.ERROR)
logging.getLogger("datasets").setLevel(logging.ERROR)
class dBert(Reader):
def __init__(
self,
artifacts_dir: Path = Path(config.STORES_DIR, "dbert"),
reinitialize: bool = False,
device=torch.device("cuda" if torch.cuda.is_available() else "cpu"),
) -> None:
# Set the device
self.device = device
logger.info(f"Running on {self.device}")
if self.device.type == "cuda":
logger.info(torch.cuda.get_device_name(0))
# Hardcoded parameters
self.max_length = 128
# Load the model
self.artifacts_dir = artifacts_dir
if reinitialize:
# load tokenizer from upstream huggingface repository
default_model = "cl-tohoku/bert-base-japanese-v2"
self.tokenizer = BertJapaneseTokenizer.from_pretrained(default_model)
logger.info(f"Using {default_model} tokenizer")
# load the heteronyms list
self.heteronyms = config.HETERONYMS
# make the label encoder
label_list = ["<OTHER>"]
for i, heteronym in enumerate(self.heteronyms.keys()):
for j, reading in enumerate(self.heteronyms[heteronym]):
label_list.append(heteronym + ":" + reading)
self.label_encoder = LabelEncoder()
self.label_encoder.fit(label_list)
logger.info("Made label encoder with default heteronyms")
# add surface forms to tokenizer vocab
surfaces = list(
set([x.split(":")[0] for x in self.label_encoder.classes if x != "<OTHER>"])
)
new_tokens = [
surface
for surface in surfaces
if surface
not in (list(self.tokenizer.vocab.keys()) + list(self.tokenizer.get_added_vocab()))
]
self.tokenizer.add_tokens(new_tokens)
if len(new_tokens) > 0:
logger.info(f"Added {len(new_tokens)} surface forms to tokenizer vocab")
# check that new tokens were added properly
assert [
self.tokenizer.decode(
self.tokenizer.encode(
[surface],
add_special_tokens=False,
)
)
for surface in surfaces
] == surfaces
self.surfaceIDs = self.tokenizer.encode(
list(set([x.split(":")[0] for x in self.label_encoder.classes if x != "<OTHER>"])),
add_special_tokens=False,
)
assert len(self.surfaceIDs) == len(surfaces)
# Load model from upstream huggingface repository
self.model = AutoModelForTokenClassification.from_pretrained(
default_model, num_labels=len(self.label_encoder.classes)
)
self.model.resize_token_embeddings(len(self.tokenizer))
logger.info(f"Using model {default_model}")
self.save(artifacts_dir)
else:
self.load(artifacts_dir)
def load(self, directory):
self.tokenizer = BertJapaneseTokenizer.from_pretrained(directory)
self.model = AutoModelForTokenClassification.from_pretrained(directory).to(self.device)
self.label_encoder = LabelEncoder.load(Path(directory, "label_encoder.json"))
self.heteronyms = utils.load_dict(Path(directory, "heteronyms.json"))
self.surfaceIDs = self.tokenizer.encode(
list(set([x.split(":")[0] for x in self.label_encoder.classes if x != "<OTHER>"])),
add_special_tokens=False,
)
logger.info(f"Loaded model from directory {directory}")
def save(self, directory):
self.tokenizer.save_pretrained(directory)
self.model.save_pretrained(directory)
self.label_encoder.save(Path(directory, "label_encoder.json"))
utils.save_dict(self.heteronyms, Path(directory, "heteronyms.json"))
logger.info(f"Saved model to directory {directory}")
def batch_preprocess_function(self, entries, pad=False):
inputs = [entry for entry in entries["sentence"]]
furiganas = [entry for entry in entries["furigana"]]
if pad:
tokenized_inputs = self.tokenizer(
inputs,
max_length=self.max_length,
truncation=True,
padding="max_length",
# return_tensors="np",
)
else:
tokenized_inputs = self.tokenizer(
inputs,
max_length=self.max_length,
truncation=True,
)
labels = []
for i, input_ids in enumerate(tokenized_inputs["input_ids"]):
furigana_temp = furiganas[i]
label_ids = []
assert inputs[i] == utils.remove_furigana(furiganas[i])
for j, input_id in enumerate(input_ids):
if input_id not in self.surfaceIDs:
label = -100
else:
surface = self.tokenizer.decode([input_id])
try:
reading_start_idx = furigana_temp.index(surface) + len(surface)
furigana_temp = furigana_temp[reading_start_idx + 1 :]
reading_end_idx = furigana_temp.index("}")
reading = furigana_temp[:reading_end_idx]
furigana_temp = furigana_temp[reading_end_idx + 1 :]
label = self.label_encoder.class_to_index[surface + ":" + reading]
except KeyError:
# this means there's an unknown reading
label = 0
except ValueError:
# this means that the surface form is not present in the furigana
# probably it got split between two different words
label = 0
label_ids.append(label)
assert len(label_ids) == len(input_ids)
labels.append(label_ids)
assert len(labels) == len(tokenized_inputs["input_ids"])
return {
"input_ids": tokenized_inputs["input_ids"],
"attention_mask": tokenized_inputs["attention_mask"],
"labels": labels,
}
def train(self, dataset, training_args={}) -> dict:
dataset = dataset.map(
self.batch_preprocess_function, batched=True, fn_kwargs={"pad": False}
)
dataset = dataset.filter(
lambda entry: any(x in entry["input_ids"] for x in list(self.surfaceIDs))
)
# put the model in training mode
self.model.train()
default_training_args = {
"output_dir": self.artifacts_dir,
"num_train_epochs": 10,
"evaluation_strategy": "steps",
"eval_steps": 10,
"logging_strategy": "steps",
"logging_steps": 10,
"save_strategy": "steps",
"save_steps": 10,
"learning_rate": 2e-5,
"per_device_train_batch_size": 128,
"per_device_eval_batch_size": 128,
"load_best_model_at_end": True,
"metric_for_best_model": "loss",
"weight_decay": 0.01,
"save_total_limit": 3,
"fp16": True,
"report_to": "tensorboard",
}
default_training_args.update(training_args)
training_args = default_training_args
# Not padding in batch_preprocess_function so need data_collator for trainer
data_collator = DataCollatorForTokenClassification(tokenizer=self.tokenizer, padding=True)
if "val" in list(dataset):
trainer = Trainer(
model=self.model,
args=TrainingArguments(**training_args),
train_dataset=dataset["train"],
eval_dataset=dataset["val"],
tokenizer=self.tokenizer,
callbacks=[
EarlyStoppingCallback(early_stopping_patience=5),
],
data_collator=data_collator,
)
else:
trainer = Trainer(
model=self.model,
args=TrainingArguments(**training_args),
train_dataset=dataset["train"],
tokenizer=self.tokenizer,
data_collator=data_collator,
)
result = trainer.train()
# Output some training information
print(f"Time: {result.metrics['train_runtime']:.2f}")
print(f"Samples/second: {result.metrics['train_samples_per_second']:.2f}")
gpu_index = int(os.environ["CUDA_VISIBLE_DEVICES"])
utils.print_gpu_utilization(gpu_index)
# Get metrics for each train/val/split
self.model.eval()
full_performance = {}
for key in dataset.keys():
max_evals = min(100000, len(dataset[key]))
# max_evals = len(dataset[key])
logger.info(f"getting predictions for {key}")
subset = dataset[key].shuffle().select(range(max_evals))
prediction_output = trainer.predict(subset)
logger.info(f"processing predictions for {key}")
metrics = prediction_output[2]
labels = prediction_output[1]
predictions = np.argmax(prediction_output[0], axis=2)
true_inputs = [
self.tokenizer.decode([input_id])
for row in subset["input_ids"]
for input_id in row
if input_id in self.surfaceIDs
]
true_predictions = [
str(self.label_encoder.index_to_class[p])
for prediction, label in zip(predictions, labels)
for (p, l) in zip(prediction, label)
if l != -100
]
true_labels = [
str(self.label_encoder.index_to_class[l])
for prediction, label in zip(predictions, labels)
for (p, l) in zip(prediction, label)
if l != -100
]
logger.info("processing performance")
performance = {
heteronym: {
"n": 0,
"readings": {
reading: {
"n": 0,
"found": {
readingprime: 0
for readingprime in list(self.heteronyms[heteronym].keys())
+ ["<OTHER>"]
},
}
for reading in list(self.heteronyms[heteronym].keys()) + ["<OTHER>"]
},
}
for heteronym in self.heteronyms.keys()
}
for i, surface in enumerate(true_inputs):
performance[surface]["n"] += 1
true_reading = true_labels[i].split(":")[-1]
performance[surface]["readings"][true_reading]["n"] += 1
if true_predictions[i] != "<OTHER>":
if true_predictions[i].split(":")[0] != surface:
logger.warning(f"big failure at {surface} {true_predictions[i]}")
found_reading = "<OTHER>"
else:
found_reading = true_predictions[i].split(":")[1]
else:
found_reading = "<OTHER>"
performance[surface]["readings"][true_reading]["found"][found_reading] += 1
# if found_reading != true_reading:
# # pass
# logger.info(
# f"Predicted {found_reading} instead of {true_reading} in {subset["furigana"][furi_rows[i]]}"
# )
n = 0
correct = 0
for surface in performance.keys():
for true_reading in performance[surface]["readings"].keys():
performance[surface]["readings"][true_reading]["accuracy"] = np.round(
performance[surface]["readings"][true_reading]["found"][true_reading]
/ np.array(performance[surface]["readings"][true_reading]["n"]),
3,
)
performance[surface]["accuracy"] = np.round(
sum(
performance[surface]["readings"][true_reading]["found"][true_reading]
for true_reading in performance[surface]["readings"].keys()
)
/ np.array(performance[surface]["n"]),
3,
)
correct += sum(
performance[surface]["readings"][true_reading]["found"][true_reading]
for true_reading in performance[surface]["readings"].keys()
)
n += performance[surface]["n"]
performance = {
"metrics": metrics,
"accuracy": round(correct / n, 3),
"heteronym_performance": performance,
}
full_performance[key] = performance
trainer.save_model()
return full_performance
def furigana(self, text: str) -> str:
text = utils.standardize_text(text)
text = utils.remove_furigana(text)
text = text.replace("{", "").replace("}", "")
self.model.eval()
text_encoded = self.tokenizer(
text,
max_length=self.max_length,
truncation=True,
return_tensors="pt",
)
input_ids = text_encoded["input_ids"].to(self.device)
input_mask = text_encoded["attention_mask"].to(self.device)
logits = self.model(input_ids=input_ids, attention_mask=input_mask).logits
predictions = torch.argmax(logits, dim=2)
output_ruby = []
for (i, p) in enumerate(predictions[0]):
text = self.tokenizer.decode([input_ids[0][i]])
if text in ["[CLS]", "[SEP]"]:
continue
if text[:2] == "##":
text = text[2:]
if input_ids[0][i].item() in self.surfaceIDs:
furi = self.label_encoder.index_to_class[p.item()]
if furi == "<OTHER>":
output_ruby.append(f"{{{text}}}")
elif furi.split(":")[0] != text:
output_ruby.append(f"{{{text}}}")
else:
output_ruby.append(RubyFrag(text=text, furi=furi.split(":")[1]))
else:
output_ruby.append(text)
return RubyToken(groups=output_ruby).to_code()