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from transformers import BertTokenizerFast, BertConfig
from typing import Dict, List, Union, Tuple
def num_unique_labels(dataset: Dict[str, Union[str, List[str]]]) -> Tuple[int, int]:
"""
Calculate the number of NER labels and INTENT labels in the dataset.
Args:
dataset (dict): A dictionary containing 'text', 'entities' and 'intent' keys.
Returns:
Tuple: Number of unique NER and INTENT lables.
"""
one_dimensional_ner = [tag for subset in dataset['entities'] for tag in subset]
return len(set(one_dimensional_ner)), len(set(dataset['intent']))
def ner_labels_to_ids() -> Dict[str, int]:
"""
Map NER labels to corresponding numeric IDs.
Returns:
Dict[str, int]: A dictionary where keys are NER labels, and values are their corresponding IDs.
"""
labels_to_ids_ner = {
'O': 0,
'B-DATE': 1,
'I-DATE': 2,
'B-TIME': 3,
'I-TIME': 4,
'B-TASK': 5,
'I-TASK': 6,
'B-DUR': 7,
'I-DUR': 8
}
return labels_to_ids_ner
def ner_ids_to_labels(ner_labels_to_ids) -> Dict[int, str]:
"""
Map numeric IDs to corresponding NER labels.
Returns:
Dict[int, str]: A dictionary where keys are numeric IDs, and values are their corresponding NER labels.
"""
ner_ids_to_labels = {v: k for k, v in ner_labels_to_ids.items()}
return ner_ids_to_labels
def intent_labels_to_ids() -> Dict[str, int]:
"""
Map intent labels to corresponding numeric values.
Returns:
Dict[str, int]: A dictionary where keys are intent labels, and values are their corresponding numeric IDs.
"""
intent_labels_to_ids = {
"'Schedule Appointment'": 0,
"'Schedule Meeting'": 1,
"'Set Alarm'": 2,
"'Set Reminder'": 3,
"'Set Timer'": 4
}
return intent_labels_to_ids
def intent_ids_to_labels(intent_labels_to_ids) -> Dict[int, str]:
"""
Map numeric values to corresponding intent labels.
Returns:
Dict[int, str]: A dictionary where keys are numeric IDs, and values are their corresponding intent labels.
"""
intent_ids_to_labels = {v: k for k, v in intent_labels_to_ids.items()}
return intent_ids_to_labels
def tokenizer() -> BertTokenizerFast:
tokenizer = BertTokenizerFast.from_pretrained('bert-base-uncased')
return tokenizer
def bert_config() -> BertConfig:
config = BertConfig.from_pretrained('bert-base-uncased')
return config
def structure_data(dataset):
structured_data = {'text': [], 'entities': [], 'intent': []}
for sample in dataset:
structured_data['text'].append(sample['text'])
structured_data['entities'].append(sample['entities'].split())
structured_data['intent'].append(sample['intent'])
return structured_data