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import tokenize_uk
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import torch
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def get_word_predictions(model, tokenizer, texts, is_split_to_words=False, device='cpu'):
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words_res = []
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y_res = []
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if not is_split_to_words:
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texts = [tokenize_uk.tokenize_words(text) for text in texts]
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for text in texts:
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size = len(text)
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idx_list = [idx + 1 for idx, val in enumerate(text) if val in ['.', '?', '!']]
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if len(idx_list):
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sents = [text[i: j] for i, j in zip([0] + idx_list, idx_list + ([size] if idx_list[-1] != size else []))]
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else:
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sents = [text]
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y_res_x = []
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words_res_x = []
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for sent_tokens in sents:
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tokenized_inputs = [101]
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word_ids = [None]
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for word_id, word in enumerate(sent_tokens):
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word_tokens = tokenizer.encode(word)[1:-1]
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tokenized_inputs += word_tokens
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word_ids += [word_id]*len(word_tokens)
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tokenized_inputs = tokenized_inputs[:(tokenizer.model_max_length-1)]
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word_ids = word_ids[:(tokenizer.model_max_length-1)]
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tokenized_inputs += [102]
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word_ids += [None]
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torch_tokenized_inputs = torch.tensor(tokenized_inputs).unsqueeze(0)
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torch_attention_mask = torch.ones(torch_tokenized_inputs.shape)
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predictions = model.forward(input_ids=torch_tokenized_inputs.to(device), attention_mask=torch_attention_mask.to(device))
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predictions = torch.argmax(predictions.logits.squeeze(), axis=1).numpy()
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predictions = [model.config.id2label[i] for i in predictions]
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previous_word_idx = None
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sent_words = []
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predictions_words = []
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word_tokens = []
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first_pred = None
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for i, word_idx in enumerate(word_ids):
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if word_idx != previous_word_idx:
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sent_words.append(tokenizer.decode(word_tokens))
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word_tokens = [tokenized_inputs[i]]
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predictions_words.append(first_pred)
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first_pred = predictions[i]
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else:
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word_tokens.append(tokenized_inputs[i])
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previous_word_idx = word_idx
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words_res_x.extend(sent_words[1:])
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y_res_x.extend(predictions_words[1:])
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words_res.append(words_res_x)
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y_res.append(y_res_x)
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return words_res, y_res |