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import streamlit as st |
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import pandas as pd |
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import streamlit.components.v1 as stc |
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import nltk |
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import nltk |
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nltk.download('all') |
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from sumy.parsers.plaintext import PlaintextParser |
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from nltk.tokenize import word_tokenize |
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from nltk.tag import pos_tag |
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from nltk.stem import WordNetLemmatizer |
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from sumy.summarizers.lex_rank import LexRankSummarizer |
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from sumy.summarizers.text_rank import TextRankSummarizer |
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from nltk.corpus import stopwords |
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from nltk.tokenize import sent_tokenize |
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from sumy.nlp.tokenizers import Tokenizer |
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from rouge import Rouge |
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from transformers import BartForConditionalGeneration, BartTokenizer |
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from transformers import T5ForConditionalGeneration, T5Tokenizer |
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from nltk.tag import StanfordNERTagger |
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from collections import Counter |
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from textblob import TextBlob |
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import seaborn as sns |
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import matplotlib.pyplot as plt |
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from wordcloud import WordCloud |
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import base64 |
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import time |
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stanford_ner_jar = '/Users/ujjwalbansal/Desktop/Summary-app/stanford-ner-2020-11-17/stanford-ner.jar' |
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stanford_ner_model = '/Users/ujjwalbansal/Desktop/Summary-app/stanford-ner-2020-11-17/classifiers/english.all.3class.distsim.crf.ser.gz' |
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timestr = time.strftime("%Y%m%d-%H%M%S") |
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import neattext as nt |
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import neattext.functions as nfx |
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HTML_WRAPPER = """<div style="overflow-x: auto; border: 1px solid red; border-radius: 0.25rem; padding: 1rem";>{} |
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</div> |
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""" |
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def evaluate_summary(summary,reference): |
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r=Rouge() |
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eval_score=r.get_scores(summary,reference) |
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eval_score_df=pd.DataFrame(eval_score[0]) |
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return eval_score_df |
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def bart_summary(docx): |
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model=BartForConditionalGeneration.from_pretrained('facebook/bart-large-cnn') |
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tokenizer = BartTokenizer.from_pretrained('facebook/bart-large-cnn') |
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inputs = tokenizer.batch_encode_plus([docx], truncation=True, padding='longest', max_length=1024, return_tensors='pt') |
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summary_ids = model.generate(inputs['input_ids'], num_beams=6, max_length=100, early_stopping=True) |
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summary = tokenizer.decode(summary_ids[0], skip_special_tokens=True) |
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return summary |
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def T5_summary(docx): |
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model = T5ForConditionalGeneration.from_pretrained('t5-base') |
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tokenizer = T5Tokenizer.from_pretrained('t5-base') |
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input_text = "summarize: " + docx |
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input_ids = tokenizer.encode(input_text, return_tensors='pt') |
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summary_ids = model.generate(input_ids, max_length=100, num_beams=4, early_stopping=True) |
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summary = tokenizer.decode(summary_ids[0], skip_special_tokens=True) |
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return summary |
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def sumy_summarizer(docx,num=5): |
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parser=PlaintextParser.from_string(docx,Tokenizer("english")) |
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lex_summ=LexRankSummarizer() |
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summary=lex_summ(parser.document,sentences_count= num) |
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summary_list=[str(sentence) for sentence in summary] |
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result=' '.join(summary_list) |
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return result |
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def sumy_text_summarizer(docx, num=5): |
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parser = PlaintextParser.from_string(docx, Tokenizer("english")) |
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text_rank_summarizer = TextRankSummarizer() |
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summary = text_rank_summarizer(parser.document, sentences_count=num) |
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summary_list = [str(sentence) for sentence in summary] |
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result = ' '.join(summary_list) |
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return result |
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def nlp_analysis(text): |
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token_data = [] |
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tokens=word_tokenize(text) |
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tagged_tokens = pos_tag(tokens) |
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stop_words = set(stopwords.words('english')) |
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lemmatizer = WordNetLemmatizer() |
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for token in tagged_tokens: |
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token_text=token[0] |
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token_shape = None |
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token_pos = token[1] |
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token_lemma = lemmatizer.lemmatize(token_text) |
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token_is_alpha = token_text.isalpha() |
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token_is_stop = token_text.lower() in stop_words |
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token_data.append([token_text,token_shape,token_pos,token_lemma,token_is_alpha,token_is_stop]) |
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df=pd.DataFrame(token_data,columns=['Token','Shape','Position','lemma','Contains_Alphabets','Contains_Stop_words']) |
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return df |
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def find_entities(text): |
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stan = StanfordNERTagger(stanford_ner_model, stanford_ner_jar) |
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text=text.replace("\n\n","\n") |
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tokens = nltk.word_tokenize(text) |
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tagged_tokens = stan.tag(tokens) |
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entities = [(token, tag) for token, tag in tagged_tokens if tag != 'O'] |
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entities=HTML_WRAPPER.format(entities) |
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return entities |
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def file_download(data): |
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csv_file= data.to_csv() |
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b64=base64.b64encode(csv_file.encode()).decode() |
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new_filename="result_{}.csv".format(timestr) |
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st.markdown('### 🗃️ Download csv file ') |
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href=f'<a href="data:file/csv;base64,{b64}" download="{new_filename}"> Click Here! </a>' |
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st.markdown(href, unsafe_allow_html=True) |
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def get_most_common_tokens(text): |
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word_tokens=Counter(text.split()) |
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most_common=dict(word_tokens.most_common(len(text))) |
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return most_common |
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def get_semantics(text): |
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blob=TextBlob(text) |
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sentiment=blob.sentiment |
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return sentiment |
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def plot_wordcloud(text): |
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text_workcloud= WordCloud().generate(text) |
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fig=plt.figure() |
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plt.imshow(text_workcloud,interpolation='bilinear') |
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plt.axis('off') |
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st.pyplot(fig) |
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def pos_tags(text): |
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blob=TextBlob(text) |
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tagged_text=blob.tags |
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tagged_df=pd.DataFrame(tagged_text,columns=['tokens','tags']) |
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return tagged_df |
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TAGS = { |
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'NN' : 'green', |
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'NNS' : 'green', |
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'NNP' : 'green', |
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'NNPS' : 'green', |
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'VB' : 'blue', |
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'VBD' : 'blue', |
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'VBG' : 'blue', |
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'VBN' : 'blue', |
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'VBP' : 'blue', |
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'VBZ' : 'blue', |
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'JJ' : 'red', |
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'JJR' : 'red', |
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'JJS' : 'red', |
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'RB' : 'cyan', |
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'RBR' : 'cyan', |
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'RBS' : 'cyan', |
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'IN' : 'darkwhite', |
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'POS' : 'darkyellow', |
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'PRP$' : 'magenta', |
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'PRP$' : 'magenta', |
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'DET' : 'black', |
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'CC' : 'black', |
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'CD' : 'black', |
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'WDT' : 'black', |
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'WP' : 'black', |
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'WP$' : 'black', |
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'WRB' : 'black', |
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'EX' : 'yellow', |
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'FW' : 'yellow', |
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'LS' : 'yellow', |
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'MD' : 'yellow', |
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'PDT' : 'yellow', |
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'RP' : 'yellow', |
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'SYM' : 'yellow', |
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'TO' : 'yellow', |
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'None' : 'off' |
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} |
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def tag_visualize(tagged_df): |
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colored_text=[] |
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for i in tagged_df: |
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if i[1] in TAGS.keys(): |
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token=i[0] |
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color_of_text=TAGS.get(i[1]) |
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changed_text='<span style=color:{}>{}</span>'.format(color_of_text,token) |
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colored_text.append(changed_text) |
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result=''.join(colored_text) |
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return result |