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import pickle
import sys
from keras.preprocessing.text import Tokenizer
from sklearn.model_selection import train_test_split
import json
import random
sys.path.append("data_processing/codenn/src")
from data_processing.code_processing import *
import pandas as pd
from keras.preprocessing.text import text_to_word_sequence
iid_labeled = pickle.load(open('annotation_tool/crowd_sourcing/python_annotator/all_agreed_iid_to_label.pickle','rb'))
q_code_snippet = pickle.load(open('annotation_tool/data/code_solution_labeled_data/source/python_how_to_do_it_by_classifier_multiple_iid_to_code.pickle', 'rb'))
qid_to_title = pickle.load(open('annotation_tool/data/code_solution_labeled_data/source/python_how_to_do_it_by_classifier_multiple_qid_to_title.pickle','rb'))
qid_code_labeled = dict([(key, q_code_snippet[key]) for key in iid_labeled])
tokenized_code, bool_failed_var, bool_failed_token = tokenize_code_corpus(qid_code_labeled, "python")
all_tokenized_code, all_bool_failed_var, all_bool_failed_token = tokenize_code_corpus(q_code_snippet, "python")
code_samples = [' '.join(tokenized_code[key]) for key in tokenized_code]
question_samples = [qid_to_title[qid] for qid, code_idx in iid_labeled]
samples = code_samples + question_samples
with open('data/samples_for_tokenizer.json', 'w') as write_file:
json.dump(samples, write_file)
tokenizer = Tokenizer()
tokenizer.fit_on_texts(samples)
# training_set: [{'question': [96, 3968, 21507, 13287, 16531, 4502], 'answers': [15916]}]
sample = {}
qid_code_tokenized = {}
for key, label in iid_labeled.items():
qid, code_idx = key
if label == 1:
if qid in qid_code_tokenized:
qid_code_tokenized[qid].append(' '.join(tokenized_code[key]))
else:
qid_code_tokenized[qid] = [' '.join(tokenized_code[key])]
sof_data = []
for qid, answers in qid_code_tokenized.items():
sample = {}
sample['question'] = tokenizer.texts_to_sequences([qid_to_title[qid]])[0]
sample['answers'] = tokenizer.texts_to_sequences(answers)
sof_data.append(sample)
train, test = train_test_split(sof_data, test_size = 0.33, random_state=20)
with open('data/train.json', 'w') as write_file:
json.dump(train, write_file)
answers = []
for key, label in iid_labeled.items():
answers.append(' '.join(tokenized_code[key]))
sample_answers = tokenizer.texts_to_sequences(answers)
with open('data/answers.json', 'w') as write_file:
json.dump(sample_answers, write_file)
test_data = []
for q in test:
sample = {}
sample['question'] = q['question']
sample['good'] = q['answers']
sample['bad'] = random.sample(sample_answers, 150)
test_data.append(sample)
with open('data/test.json', 'w') as write_file:
json.dump(test_data, write_file)
# export to csv
questions_with_correct_answer = [key for key, value in iid_labeled.items() if value == 1]
questions, question_length, question_number_of_words,\
code_snippets, code_snippet_length, code_snippet_number_of_words, labels,\
at_least_one_correct_answer = \
[qid_to_title[qid] for qid, label in iid_labeled],\
[len(qid_to_title[qid]) for qid, label in iid_labeled],\
[len(text_to_word_sequence(qid_to_title[qid])) for qid, label in iid_labeled],\
[q_code_snippet[key] for key in iid_labeled], \
[len(q_code_snippet[key]) for key in iid_labeled], \
[len(text_to_word_sequence(q_code_snippet[key])) for key in iid_labeled], \
[label for key, label in iid_labeled.items()], \
[1 if key in questions_with_correct_answer else 0 for key in iid_labeled]
df1 = pd.DataFrame({"questions": questions, "question_length": question_length,
"question_number_of_words": question_number_of_words,
"code_snippets": code_snippets, "code_snippet_length": code_snippet_length,
"code_snippet_number_of_words": code_snippet_number_of_words,
"labels": labels,
"at_least_one_correct_answer": at_least_one_correct_answer})
code_snippets_tokenized, code_snippet_tokenized_length, code_snippet_tokenized_number_of_words = \
[' '.join(tokenized_code[key]) for key in iid_labeled], \
[len(' '.join(tokenized_code[key])) for key in iid_labeled], \
[len(text_to_word_sequence(' '.join(tokenized_code[key]))) for key in iid_labeled]
df2 = pd.DataFrame({"questions": questions, "question_length": question_length,
"question_number_of_words": question_number_of_words,
"code_snippets_tokenized": code_snippets_tokenized,
"code_snippet_tokenized_length": code_snippet_tokenized_length,
"code_snippet_tokenized_number_of_words": code_snippet_tokenized_number_of_words,
"labels": labels,
"at_least_one_correct_answer": at_least_one_correct_answer})
df1.to_csv("python_annotated_dataset.csv", encoding='utf-8')
df2.to_csv("python_annotated_dataset_tokenized.csv", encoding='utf-8')
# export all multi-code answer posts
questions, question_length, question_number_of_words,\
code_snippets, code_snippet_length, code_snippet_number_of_words,\
labels, at_least_one_correct_answer = \
[qid_to_title[qid] for qid, code in q_code_snippet],\
[len(qid_to_title[qid]) for qid, code in q_code_snippet],\
[len(text_to_word_sequence(qid_to_title[qid])) for qid, code in q_code_snippet],\
[q_code_snippet[key] for key in q_code_snippet], \
[len(q_code_snippet[key]) for key in q_code_snippet], \
[len(text_to_word_sequence(q_code_snippet[key])) for key in q_code_snippet], \
[iid_labeled[key] if key in iid_labeled else "N/A" for key in q_code_snippet], \
[1 if key in questions_with_correct_answer else 0 for key in q_code_snippet]
df3 = pd.DataFrame({"questions": questions, "question_length": question_length,
"question_number_of_words": question_number_of_words,
"code_snippets": code_snippets, "code_snippet_length": code_snippet_length,
"code_snippet_number_of_words": code_snippet_number_of_words,
"labels": labels,
"at_least_one_correct_answer": at_least_one_correct_answer})
code_snippets_tokenized, code_snippet_tokenized_length, code_snippet_tokenized_number_of_words = \
[' '.join(all_tokenized_code[key]) for key in q_code_snippet], \
[len(' '.join(all_tokenized_code[key])) for key in q_code_snippet], \
[len(text_to_word_sequence(' '.join(all_tokenized_code[key]))) for key in q_code_snippet]
df4 = pd.DataFrame({"questions": questions, "question_length": question_length,
"question_number_of_words": question_number_of_words,
"code_snippets_tokenized": code_snippets_tokenized,
"code_snippet_tokenized_length": code_snippet_tokenized_length,
"code_snippet_tokenized_number_of_words": code_snippet_tokenized_number_of_words,
"labels": labels,
"at_least_one_correct_answer": at_least_one_correct_answer})
df3.to_csv('python_all_multi_question_code_pair.csv', encoding='utf-8')
df4.to_csv('python_all_multi_question_code_pair_tokenized.csv', encoding='utf-8')