Convert to a multi-hot index in the CSV, to simplify our DataSets and DataLoaders
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@ -96,11 +96,7 @@ def parse_and_extract(input_dir, verbose):
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cats = list()
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for cat in doc.findall('./category'):
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# TODO check against a list of current categories,
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# and strip any non-current categories
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cats.append(cat.text)
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#entry["categories"] = cats # if you want a list
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entry["categories"] = ";".join(cats) # if you want a string
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text = list()
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lang = ""
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@ -115,10 +111,19 @@ def parse_and_extract(input_dir, verbose):
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except Exception as e:
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print(f"{xml_file} : {e}")
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if text is not None and len(cats) > 1:
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entry["content"] = "\n".join(text)
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if text is not None and len(cats) >= 1:
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entry["language"] = lang
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entry["content"] = "\n".join(text)
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for cat in cats:
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entry[cat] = 1
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articles.append(entry)
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else:
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if len(cats) < 1:
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print(f"No article added for key {key} due to lack of categories")
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elif text is None:
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print(f"No article added for key {key} due to lack of text")
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else:
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print(f"No article added for key {key} due to unknown error")
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except ET.ParseError as e:
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if verbose > 1:
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@ -158,7 +163,10 @@ def scrub_data(articles, verbose):
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data['content'] = data.content.parallel_apply(lambda x: x.strip())
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data['content'] = data.content.parallel_apply(lambda x: re.sub(" +", " ", x))
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# TODO: lemmas? See spaCy
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# Any remaining text processing can be done by training/inference step
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# sort category columns: lowercase first (key, language, content), then title-cased categories
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data.reindex(columns=sorted(data.columns, key=lambda x: (x.casefold(), x.swapcase())))
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return data
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@ -19,19 +19,19 @@ import tqdm
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import torch
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import torchdata.datapipes as dp
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import torchtext.transforms as T
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import torchtext.vocab as vocab
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from torch import nn
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from torch.utils.data import Dataset, DataLoader
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from torchtext.vocab import build_vocab_from_iterator
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from models.rnn import RNN
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xlmr_vocab_path = r"https://download.pytorch.org/models/text/xlmr.vocab.pt"
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xlmr_spm_model_path = r"https://download.pytorch.org/models/text/xlmr.sentencepiece.bpe.model"
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all_categories = list()
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# XXX None for all stories
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#story_num = 128
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story_num = 128
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#story_num = 256
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#story_num = 512
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#story_num = 1024
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story_num = 4096
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#story_num = 4096
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#story_num = None
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def read_csv(input_csv, rows=None, verbose=0):
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@ -42,6 +42,7 @@ def read_csv(input_csv, rows=None, verbose=0):
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pd.read_csv(f,
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encoding="utf-8",
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quoting=csv.QUOTE_ALL,
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index_col=0,
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nrows=rows,
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chunksize=50,
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),
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@ -52,10 +53,10 @@ def read_csv(input_csv, rows=None, verbose=0):
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data = pd.read_csv(f,
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encoding="utf-8",
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quoting=csv.QUOTE_ALL,
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index_col=0,
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nrows=rows,
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)
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data.dropna(axis='index', inplace=True)
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#print(data)
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#sys.exit(0)
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return data
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@ -83,9 +84,9 @@ def split_dataset(data, verbose=0):
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#print("Length of tests_data: {}".format(len(tests_idx)))
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# Create the training and validation sets, as dataframes
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train_data = data.iloc[train_idx].reset_index().drop('index', axis=1)
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valid_data = data.iloc[valid_idx].reset_index().drop('index', axis=1)
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#tests_data = data.iloc[tests_idx].reset_index().drop('index', axis=1)
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train_data = data.iloc[train_idx].reset_index()
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valid_data = data.iloc[valid_idx].reset_index()
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#tests_data = data.iloc[tests_idx].reset_index()
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#return(train_data, valid_data, tests_data)
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return(train_data, valid_data)
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@ -96,24 +97,25 @@ def split_dataset(data, verbose=0):
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'''
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class TextCategoriesDataset(Dataset):
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''' Dataset of Text and Categories '''
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def __init__(self, df, text_column, cats_column, lang_column, transform=None, verbose=0):
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def __init__(self, df, lang_column, text_column, first_cats_column=0, transform=None, verbose=0):
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'''
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Arguments:
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df (panda.Dataframe): csv content, loaded as dataframe
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lang_column (str): the name of the column containing the language
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text_column (str): the name of the column containing the text
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cats_column (str): the name of the column containing
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semicolon-separated categories
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text_column (str): the name of the column containing the language
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transform (callable, optional): Optional transform to be
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applied on a sample.
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first_cats_column (int): the index of the first column containing
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a category
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transform (callable, optional): Optional transform to be applied
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on a sample.
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'''
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self.df = df
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self.transform = transform
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self.verbose = verbose
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self.text = self.df[text_column]
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self.cats = self.df[cats_column]
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self.lang = self.df[lang_column]
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self.text = self.df[text_column]
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self.cats = self.df.iloc[:, first_cats_column:].sort_index(axis="columns")
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self.cats_vocab = self.cats.columns
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# index-to-token dict
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# <pad> : padding, used for padding the shorter sentences in a batch
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@ -126,26 +128,6 @@ class TextCategoriesDataset(Dataset):
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# token-to-index dict
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self.stoi = {k:j for j, k in self.itos.items()}
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# Create vocabularies upon initialisation
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self.text_vocab = build_vocab_from_iterator(
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[self.textTokens(text) for i, text in self.df[text_column].items()],
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min_freq=2,
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specials=self.itos.values(),
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special_first=True
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)
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self.text_vocab.set_default_index(self.text_vocab['<unk>'])
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#print(self.text_vocab.get_itos())
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self.cats_vocab = build_vocab_from_iterator(
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#[self.catTokens(cats) for i, cats in self.df[cats_column].items()],
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[self.catTokens(all_categories)],
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min_freq=1,
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specials=['<unk>'],
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special_first=True
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)
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self.cats_vocab.set_default_index(self.cats_vocab['<unk>'])
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#print(self.cats_vocab.get_itos())
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def __len__(self):
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return len(self.df)
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@ -158,58 +140,41 @@ class TextCategoriesDataset(Dataset):
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idx = idx.tolist()
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# Get the raw data
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text = self.text[idx]
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cats = self.cats[idx]
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lang = self.lang[idx]
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text = self.text[idx]
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cats = self.cats.iloc[idx]
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#print(self.textTransform()(text))
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#print(cats)
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#print(cats.fillna(0).values)
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if self.transform:
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text, cats = self.transform(text, cats)
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#print(cats)
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#print(self.catTokens(cats))
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#print(self.getTransform(self.cats_vocab, "cats")(self.catTokens(cats)))
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# Numericalise by applying transforms
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# Numericalise text by applying transforms, and cats by converting
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# NaN to zeros and stripping the index
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return (
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self.getTransform(self.text_vocab, "text")(self.textTokens(text)),
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self.getTransform(self.cats_vocab, "cats")(self.catTokens(cats)),
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self.textTransform()(text),
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cats.fillna(0).values,
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)
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@staticmethod
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def textTokens(text):
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if isinstance(text, str):
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return [word for word in text.split()]
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@staticmethod
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def catTokens(cats):
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if isinstance(cats, str):
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return [cat for cat in cats.split(';')]
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elif isinstance(cats, list):
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return [cat for cat in cats]
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def getTransform(self, vocab, vType):
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def textTransform(self):
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'''
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Create transforms based on given vocabulary. The returned transform
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is applied to a sequence of tokens.
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'''
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if vType == "text":
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return T.Sequential(
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# converts the sentences to indices based on given vocabulary
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T.VocabTransform(vocab=vocab),
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# Add <sos> at beginning of each sentence. 1 because the index
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# for <sos> in vocabulary is 1 as seen in previous section
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T.AddToken(self.text_vocab['<sos>'], begin=True),
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# Add <eos> at end of each sentence. 2 because the index
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# for <eos> in vocabulary is 2 as seen in previous section
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T.AddToken(self.text_vocab['<eos>'], begin=False)
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)
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elif vType == "cats":
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return T.Sequential(
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# converts the sentences to indices based on given vocabulary
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T.VocabTransform(vocab=vocab),
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)
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else:
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raise Exception('wrong transformation type')
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return T.Sequential(
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# converts the sentences to indices based on given vocabulary using SentencePiece
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T.SentencePieceTokenizer(xlmr_spm_model_path),
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T.VocabTransform(torch.hub.load_state_dict_from_url(xlmr_vocab_path)),
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# Add <sos> at beginning of each sentence. 1 because the index
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# for <sos> in vocabulary is 1 as seen in previous section
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T.AddToken(self.stoi['<sos>'], begin=True),
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# Add <eos> at end of each sentence. 2 because the index
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# for <eos> in vocabulary is 2 as seen in previous section
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T.AddToken(self.stoi['<eos>'], begin=False)
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)
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'''
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@ -223,12 +188,11 @@ class CollateBatch:
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in a batch of equal length. We can do this a collate_fn callback class,
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which returns a tensor
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'''
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def __init__(self, pad_idx, cats):
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def __init__(self, pad_idx):
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'''
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pad_idx (int): the index of the "<pad>" token in the vocabulary.
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'''
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self.pad_idx = pad_idx
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self.cats = cats
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def __call__(self, batch):
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'''
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@ -236,13 +200,6 @@ class CollateBatch:
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is a list of tokens
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'''
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batch_text, batch_cats = zip(*batch)
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#for i in range(len(batch)):
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# print(batch[i])
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#max_text_len = len(max(batch_text, key=len))
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#max_cats_len = len(max(batch_cats, key=len))
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#text_tensor = T.ToTensor(self.pad_idx)(batch_text)
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#cats_tensor = T.ToTensor(self.pad_idx)(batch_cats)
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# Pad text to the longest
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text_tensor = nn.utils.rnn.pad_sequence(
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@ -251,44 +208,7 @@ class CollateBatch:
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)
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text_lengths = torch.tensor([t.shape[0] for t in text_tensor])
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#cats_tensor = torch.nn.utils.rnn.pad_sequence(
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# [torch.LongTensor(s) for s in batch_cats],
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# batch_first=True, padding_value=self.pad_idx
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#)
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#cats_lengths = torch.LongTensor(list(map(len, batch_cats)))
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'''
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# Pad cats_tensor to all possible categories
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num_cats = len(all_categories)
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# Convert cats to multi-label one-hot representation
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cats_tensor = torch.full((len(batch_cats), num_cats), self.pad_idx).float()
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cats_lengths = torch.LongTensor(list(map(len, batch_cats)))
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for idx, cats in enumerate(batch_cats):
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#print("\nsample", idx, cats)
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for c in cats:
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#print(c)
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cats_tensor[idx][c] = 1
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#print(cats_tensor[idx])
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'''
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# Convert cats to multi-label one-hot representation
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# add one to all_categories to account for <unk>
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cats_tensor = torch.full((len(batch_cats), len(all_categories)+1), self.pad_idx).float()
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for idx, cats in enumerate(batch_cats):
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#print("\nsample", idx, cats)
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for c in cats:
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cats_tensor[idx][c] = 1
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#print(cats_tensor[idx])
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#sys.exit(0)
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'''
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# XXX why??
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## SORT YOUR TENSORS BY LENGTH!
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text_lengths, perm_idx = text_lengths.sort(0, descending=True)
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text_tensor = text_tensor[perm_idx]
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cats_tensor = cats_tensor[perm_idx]
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'''
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cats_tensor = torch.tensor(batch_cats, dtype=torch.float32)
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#print("text", text_tensor)
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#print("text shape:", text_tensor.shape)
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@ -296,7 +216,6 @@ class CollateBatch:
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#print("cats shape:", cats_tensor.shape)
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#print(text_lengths)
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#print("text_lengths shape:", text_lengths.shape)
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#sys.exit(0)
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return (
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@ -305,48 +224,27 @@ class CollateBatch:
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text_lengths,
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)
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def cat2tensor(label_vocab, labels, pad_idx: int):
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all_labels = vocab.get_itos()
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num_labels = len(all_labels)
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# add <unk>
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if 0 not in all_labels:
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num_labels += 1
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labels_tensor = torch.full((len(labels), num_labels), pad_idx).float()
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labels_lengths = torch.LongTensor(list(map(len, labels)))
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for idx, labels in enumerate(labels):
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#print("\nsample", idx, labels)
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for l in labels:
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labels_tensor[idx][l] = 1
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#print(labels_tensor[idx])
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return labels_tensor
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def tensor2cat(vocab, tensor):
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all_cats = vocab.get_itos()
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def tensor2cat(dataset, tensor):
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cats = dataset.cats_vocab
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if tensor.ndimension() == 2:
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batch = list()
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for result in tensor:
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chance = dict()
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for idx, pred in enumerate(result):
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if pred > 0: # XXX
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chance[all_cats[idx]] = pred.item()
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#print(chance)
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chance[cats[idx]] = pred.item()
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batch.append(chance)
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return batch
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elif tensor.ndimension() == 1:
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chance = dict()
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for idx, pred in enumerate(tensor):
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if idx >= len(all_cats):
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print(f"Idx {idx} not in {len(all_cats)} categories")
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#elif pred > 0: # XXX
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#print(idx, len(all_cats))
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chance[all_cats[idx]] = pred.item()
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#print(chance)
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if idx >= len(cats):
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print(f"Idx {idx} not in {len(cats)} categories")
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elif pred > 0: # XXX
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chance[cats[idx]] = pred.item()
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return chance
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else:
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raise ValueError("Only tensors with 2 dimensions are supported")
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return vocab.get_itos(cat)
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raise ValueError("Only tensors with 1 dimension or batches with 2 dimensions are supported")
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def train(dataloader, dataset, model, optimizer, criterion, epoch=0):
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@ -452,6 +350,17 @@ def evaluate(dataloader, dataset, model, criterion, epoch=0):
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})
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return total_acc / total_count
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# TODO seeding:
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def seed_everything(seed=42):
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random.seed(seed)
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os.environ['PYTHONHASHSEED'] = str(seed)
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np.random.seed(seed)
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torch.manual_seed(seed)
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torch.cuda.manual_seed(seed)
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torch.cuda.manual_seed_all(seed)
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# Some cudnn methods can be random even after fixing the seed
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# unless you tell it to be deterministic
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torch.backends.cudnn.deterministic = True
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def main():
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parser = argparse.ArgumentParser(
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@ -487,37 +396,26 @@ def main():
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data = read_csv(input_csv=args.input, rows=story_num, verbose=args.verbose)
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# create list of all categories
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global all_categories
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for cats in data.categories:
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for c in cats.split(";"):
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if c not in all_categories:
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all_categories.append(c)
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all_categories = sorted(all_categories)
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#print(all_categories)
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#print(len(all_categories))
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#sys.exit(0)
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train_data, valid_data, = split_dataset(data, verbose=args.verbose)
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'''
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dataset = TextCategoriesDataset(df=data,
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text_column="content",
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cats_column="categories",
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lang_column="language",
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text_column="content",
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first_cats_column=data.columns.get_loc("content")+1,
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verbose=args.verbose,
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)
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'''
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train_dataset = TextCategoriesDataset(df=train_data,
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text_column="content",
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cats_column="categories",
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lang_column="language",
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text_column="content",
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first_cats_column=train_data.columns.get_loc("content")+1,
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verbose=args.verbose,
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)
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valid_dataset = TextCategoriesDataset(df=valid_data,
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text_column="content",
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cats_column="categories",
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lang_column="language",
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text_column="content",
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first_cats_column=valid_data.columns.get_loc("content")+1,
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verbose=args.verbose,
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)
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#for text, cat in enumerate(train_dataset):
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@ -525,6 +423,7 @@ def main():
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#print("-" * 20)
|
||||
#for text, cat in enumerate(valid_dataset):
|
||||
# print(text, cat)
|
||||
#print(tensor2cat(train_dataset, torch.tensor([0, 0, 0, 1., 0.9])))
|
||||
#sys.exit(0)
|
||||
|
||||
# Get cpu, gpu or mps device for training.
|
||||
@ -565,7 +464,7 @@ def main():
|
||||
drop_last=True,
|
||||
shuffle=True,
|
||||
num_workers=0,
|
||||
collate_fn=CollateBatch(cats=train_dataset.cats_vocab.get_stoi(), pad_idx=train_dataset.stoi['<pad>']),
|
||||
collate_fn=CollateBatch(pad_idx=train_dataset.stoi['<pad>']),
|
||||
)
|
||||
'''
|
||||
train_dataloader = DataLoader(train_dataset,
|
||||
@ -573,20 +472,20 @@ def main():
|
||||
drop_last=True,
|
||||
shuffle=True,
|
||||
num_workers=0,
|
||||
collate_fn=CollateBatch(cats=train_dataset.cats_vocab.get_stoi(), pad_idx=train_dataset.stoi['<pad>']),
|
||||
collate_fn=CollateBatch(pad_idx=train_dataset.stoi['<pad>']),
|
||||
)
|
||||
valid_dataloader = DataLoader(valid_dataset,
|
||||
batch_size=batch_size,
|
||||
drop_last=True,
|
||||
shuffle=True,
|
||||
num_workers=0,
|
||||
collate_fn=CollateBatch(cats=train_dataset.cats_vocab.get_stoi(), pad_idx=train_dataset.stoi['<pad>']),
|
||||
collate_fn=CollateBatch(pad_idx=train_dataset.stoi['<pad>']),
|
||||
)
|
||||
#for i_batch, sample_batched in enumerate(dataloader):
|
||||
# print(i_batch, sample_batched[0], sample_batched[1])
|
||||
#for i_batch, sample_batched in enumerate(train_dataloader):
|
||||
# print(i_batch, sample_batched[0], sample_batched[1])
|
||||
#sys.exit(0)
|
||||
for i_batch, sample_batched in enumerate(train_dataloader):
|
||||
print(i_batch, sample_batched[0], sample_batched[1])
|
||||
sys.exit(0)
|
||||
|
||||
input_size = len(train_dataset.text_vocab)
|
||||
output_size = len(train_dataset.cats_vocab) # every output item is the likelihood of a particular category
|
||||
|
Loading…
Reference in New Issue
Block a user