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setup.py
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setup.py
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"""Download and pre-process SQuAD and GloVe.
Usage:
> source activate squad
> python setup.py
Pre-processing code adapted from:
> https://github.com/HKUST-KnowComp/R-Net/blob/master/prepro.py
Author:
Chris Chute ([email protected])
"""
import numpy as np
import os
import spacy
import ujson as json
import urllib.request
from args import get_setup_args
from codecs import open
from collections import Counter
from subprocess import run
from tqdm import tqdm
from zipfile import ZipFile
def download_url(url, output_path, show_progress=True):
class DownloadProgressBar(tqdm):
def update_to(self, b=1, bsize=1, tsize=None):
if tsize is not None:
self.total = tsize
self.update(b * bsize - self.n)
if show_progress:
# Download with a progress bar
with DownloadProgressBar(unit='B', unit_scale=True,
miniters=1, desc=url.split('/')[-1]) as t:
urllib.request.urlretrieve(url,
filename=output_path,
reporthook=t.update_to)
else:
# Simple download with no progress bar
urllib.request.urlretrieve(url, output_path)
def url_to_data_path(url):
return os.path.join('./data/', url.split('/')[-1])
def download(args):
downloads = [
# Can add other downloads here (e.g., other word vectors)
('GloVe word vectors', args.glove_url),
]
for name, url in downloads:
output_path = url_to_data_path(url)
if not os.path.exists(output_path):
print(f'Downloading {name}...')
download_url(url, output_path)
if os.path.exists(output_path) and output_path.endswith('.zip'):
extracted_path = output_path.replace('.zip', '')
if not os.path.exists(extracted_path):
print(f'Unzipping {name}...')
with ZipFile(output_path, 'r') as zip_fh:
zip_fh.extractall(extracted_path)
print('Downloading spacy language model...')
run(['python', '-m', 'spacy', 'download', 'en'])
def word_tokenize(sent):
doc = nlp(sent)
return [token.text for token in doc]
def convert_idx(text, tokens):
current = 0
spans = []
for token in tokens:
current = text.find(token, current)
if current < 0:
print(f"Token {token} cannot be found")
raise Exception()
spans.append((current, current + len(token)))
current += len(token)
return spans
def process_file(filename, data_type, word_counter, char_counter):
print(f"Pre-processing {data_type} examples...")
examples = []
eval_examples = {}
total = 0
with open(filename, "r") as fh:
source = json.load(fh)
for article in tqdm(source["data"]):
for para in article["paragraphs"]:
context = para["context"].replace(
"''", '" ').replace("``", '" ')
context_tokens = word_tokenize(context)
context_chars = [list(token) for token in context_tokens]
spans = convert_idx(context, context_tokens)
for token in context_tokens:
word_counter[token] += len(para["qas"])
for char in token:
char_counter[char] += len(para["qas"])
for qa in para["qas"]:
total += 1
ques = qa["question"].replace(
"''", '" ').replace("``", '" ')
ques_tokens = word_tokenize(ques)
ques_chars = [list(token) for token in ques_tokens]
for token in ques_tokens:
word_counter[token] += 1
for char in token:
char_counter[char] += 1
y1s, y2s = [], []
answer_texts = []
for answer in qa["answers"]:
answer_text = answer["text"]
answer_start = answer['answer_start']
answer_end = answer_start + len(answer_text)
answer_texts.append(answer_text)
answer_span = []
for idx, span in enumerate(spans):
if not (answer_end <= span[0] or answer_start >= span[1]):
answer_span.append(idx)
y1, y2 = answer_span[0], answer_span[-1]
y1s.append(y1)
y2s.append(y2)
example = {"context_tokens": context_tokens,
"context_chars": context_chars,
"ques_tokens": ques_tokens,
"ques_chars": ques_chars,
"y1s": y1s,
"y2s": y2s,
"id": total}
examples.append(example)
eval_examples[str(total)] = {"context": context,
"question": ques,
"spans": spans,
"answers": answer_texts,
"uuid": qa["id"]}
print(f"{len(examples)} questions in total")
return examples, eval_examples
def get_embedding(counter, data_type, limit=-1, emb_file=None, vec_size=None, num_vectors=None):
print(f"Pre-processing {data_type} vectors...")
embedding_dict = {}
filtered_elements = [k for k, v in counter.items() if v > limit]
if emb_file is not None:
assert vec_size is not None
with open(emb_file, "r", encoding="utf-8") as fh:
for line in tqdm(fh, total=num_vectors):
array = line.split()
word = "".join(array[0:-vec_size])
vector = list(map(float, array[-vec_size:]))
if word in counter and counter[word] > limit:
embedding_dict[word] = vector
print(f"{len(embedding_dict)} / {len(filtered_elements)} tokens have corresponding {data_type} embedding vector")
else:
assert vec_size is not None
for token in filtered_elements:
embedding_dict[token] = [np.random.normal(
scale=0.1) for _ in range(vec_size)]
print(f"{len(filtered_elements)} tokens have corresponding {data_type} embedding vector")
NULL = "--NULL--"
OOV = "--OOV--"
token2idx_dict = {token: idx for idx, token in enumerate(embedding_dict.keys(), 2)}
token2idx_dict[NULL] = 0
token2idx_dict[OOV] = 1
embedding_dict[NULL] = [0. for _ in range(vec_size)]
embedding_dict[OOV] = [0. for _ in range(vec_size)]
idx2emb_dict = {idx: embedding_dict[token]
for token, idx in token2idx_dict.items()}
emb_mat = [idx2emb_dict[idx] for idx in range(len(idx2emb_dict))]
return emb_mat, token2idx_dict
def convert_to_features(args, data, word2idx_dict, char2idx_dict, is_test):
example = {}
context, question = data
context = context.replace("''", '" ').replace("``", '" ')
question = question.replace("''", '" ').replace("``", '" ')
example['context_tokens'] = word_tokenize(context)
example['ques_tokens'] = word_tokenize(question)
example['context_chars'] = [list(token) for token in example['context_tokens']]
example['ques_chars'] = [list(token) for token in example['ques_tokens']]
para_limit = args.test_para_limit if is_test else args.para_limit
ques_limit = args.test_ques_limit if is_test else args.ques_limit
char_limit = args.char_limit
def filter_func(example):
return len(example["context_tokens"]) > para_limit or \
len(example["ques_tokens"]) > ques_limit
if filter_func(example):
raise ValueError("Context/Questions lengths are over the limit")
context_idxs = np.zeros([para_limit], dtype=np.int32)
context_char_idxs = np.zeros([para_limit, char_limit], dtype=np.int32)
ques_idxs = np.zeros([ques_limit], dtype=np.int32)
ques_char_idxs = np.zeros([ques_limit, char_limit], dtype=np.int32)
def _get_word(word):
for each in (word, word.lower(), word.capitalize(), word.upper()):
if each in word2idx_dict:
return word2idx_dict[each]
return 1
def _get_char(char):
if char in char2idx_dict:
return char2idx_dict[char]
return 1
for i, token in enumerate(example["context_tokens"]):
context_idxs[i] = _get_word(token)
for i, token in enumerate(example["ques_tokens"]):
ques_idxs[i] = _get_word(token)
for i, token in enumerate(example["context_chars"]):
for j, char in enumerate(token):
if j == char_limit:
break
context_char_idxs[i, j] = _get_char(char)
for i, token in enumerate(example["ques_chars"]):
for j, char in enumerate(token):
if j == char_limit:
break
ques_char_idxs[i, j] = _get_char(char)
return context_idxs, context_char_idxs, ques_idxs, ques_char_idxs
def is_answerable(example):
return len(example['y2s']) > 0 and len(example['y1s']) > 0
def build_features(args, examples, data_type, out_file, word2idx_dict, char2idx_dict, is_test=False):
para_limit = args.test_para_limit if is_test else args.para_limit
ques_limit = args.test_ques_limit if is_test else args.ques_limit
ans_limit = args.ans_limit
char_limit = args.char_limit
def drop_example(ex, is_test_=False):
if is_test_:
drop = False
else:
drop = len(ex["context_tokens"]) > para_limit or \
len(ex["ques_tokens"]) > ques_limit or \
(is_answerable(ex) and
ex["y2s"][0] - ex["y1s"][0] > ans_limit)
return drop
print(f"Converting {data_type} examples to indices...")
total = 0
total_ = 0
meta = {}
context_idxs = []
context_char_idxs = []
ques_idxs = []
ques_char_idxs = []
y1s = []
y2s = []
ids = []
for n, example in tqdm(enumerate(examples)):
total_ += 1
if drop_example(example, is_test):
continue
total += 1
def _get_word(word):
for each in (word, word.lower(), word.capitalize(), word.upper()):
if each in word2idx_dict:
return word2idx_dict[each]
return 1
def _get_char(char):
if char in char2idx_dict:
return char2idx_dict[char]
return 1
context_idx = np.zeros([para_limit], dtype=np.int32)
context_char_idx = np.zeros([para_limit, char_limit], dtype=np.int32)
ques_idx = np.zeros([ques_limit], dtype=np.int32)
ques_char_idx = np.zeros([ques_limit, char_limit], dtype=np.int32)
for i, token in enumerate(example["context_tokens"]):
context_idx[i] = _get_word(token)
context_idxs.append(context_idx)
for i, token in enumerate(example["ques_tokens"]):
ques_idx[i] = _get_word(token)
ques_idxs.append(ques_idx)
for i, token in enumerate(example["context_chars"]):
for j, char in enumerate(token):
if j == char_limit:
break
context_char_idx[i, j] = _get_char(char)
context_char_idxs.append(context_char_idx)
for i, token in enumerate(example["ques_chars"]):
for j, char in enumerate(token):
if j == char_limit:
break
ques_char_idx[i, j] = _get_char(char)
ques_char_idxs.append(ques_char_idx)
if is_answerable(example):
start, end = example["y1s"][-1], example["y2s"][-1]
else:
start, end = -1, -1
y1s.append(start)
y2s.append(end)
ids.append(example["id"])
np.savez(out_file,
context_idxs=np.array(context_idxs),
context_char_idxs=np.array(context_char_idxs),
ques_idxs=np.array(ques_idxs),
ques_char_idxs=np.array(ques_char_idxs),
y1s=np.array(y1s),
y2s=np.array(y2s),
ids=np.array(ids))
print(f"Built {total} / {total_} instances of features in total")
meta["total"] = total
return meta
def save(filename, obj, message=None):
if message is not None:
print(f"Saving {message}...")
with open(filename, "w") as fh:
json.dump(obj, fh)
def pre_process(args):
# Process training set and use it to decide on the word/character vocabularies
word_counter, char_counter = Counter(), Counter()
train_examples, train_eval = process_file(args.train_file, "train", word_counter, char_counter)
word_emb_mat, word2idx_dict = get_embedding(
word_counter, 'word', emb_file=args.glove_file, vec_size=args.glove_dim, num_vectors=args.glove_num_vecs)
char_emb_mat, char2idx_dict = get_embedding(
char_counter, 'char', emb_file=None, vec_size=args.char_dim)
# Process dev and test sets
dev_examples, dev_eval = process_file(args.dev_file, "dev", word_counter, char_counter)
build_features(args, train_examples, "train", args.train_record_file, word2idx_dict, char2idx_dict)
dev_meta = build_features(args, dev_examples, "dev", args.dev_record_file, word2idx_dict, char2idx_dict)
if args.include_test_examples:
test_examples, test_eval = process_file(args.test_file, "test", word_counter, char_counter)
save(args.test_eval_file, test_eval, message="test eval")
test_meta = build_features(args, test_examples, "test",
args.test_record_file, word2idx_dict, char2idx_dict, is_test=True)
save(args.test_meta_file, test_meta, message="test meta")
save(args.word_emb_file, word_emb_mat, message="word embedding")
save(args.char_emb_file, char_emb_mat, message="char embedding")
save(args.train_eval_file, train_eval, message="train eval")
save(args.dev_eval_file, dev_eval, message="dev eval")
save(args.word2idx_file, word2idx_dict, message="word dictionary")
save(args.char2idx_file, char2idx_dict, message="char dictionary")
save(args.dev_meta_file, dev_meta, message="dev meta")
if __name__ == '__main__':
# Get command-line args
args_ = get_setup_args()
# Download resources
download(args_)
# Import spacy language model
nlp = spacy.blank("en")
# Preprocess dataset
args_.train_file = url_to_data_path(args_.train_url)
args_.dev_file = url_to_data_path(args_.dev_url)
if args_.include_test_examples:
args_.test_file = url_to_data_path(args_.test_url)
glove_dir = url_to_data_path(args_.glove_url.replace('.zip', ''))
glove_ext = f'.txt' if glove_dir.endswith('d') else f'.{args_.glove_dim}d.txt'
args_.glove_file = os.path.join(glove_dir, os.path.basename(glove_dir) + glove_ext)
pre_process(args_)