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import streamlit as st |
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import spacy |
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import wikipediaapi |
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import wikipedia |
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from wikipedia.exceptions import DisambiguationError |
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from transformers import TFAutoModel, AutoTokenizer |
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import numpy as np |
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import pandas as pd |
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import faiss |
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import datetime |
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import time |
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try: |
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nlp = spacy.load("en_core_web_sm") |
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except: |
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spacy.cli.download("en_core_web_sm") |
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nlp = spacy.load("en_core_web_sm") |
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wh_words = ['what', 'who', 'how', 'when', 'which'] |
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def get_concepts(text): |
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text = text.lower() |
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doc = nlp(text) |
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concepts = [] |
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for chunk in doc.noun_chunks: |
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if chunk.text not in wh_words: |
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concepts.append(chunk.text) |
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return concepts |
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def get_passages(text, k=100): |
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doc = nlp(text) |
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passages = [] |
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passage_len = 0 |
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passage = "" |
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sents = list(doc.sents) |
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for i in range(len(sents)): |
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sen = sents[i] |
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passage_len += len(sen) |
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if passage_len >= k: |
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passages.append(passage) |
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passage = sen.text |
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passage_len = len(sen) |
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continue |
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elif i == (len(sents) - 1): |
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passage += " " + sen.text |
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passages.append(passage) |
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passage = "" |
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passage_len = 0 |
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continue |
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passage += " " + sen.text |
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return passages |
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def get_dicts_for_dpr(concepts, n_results=20, k=100): |
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dicts = [] |
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for concept in concepts: |
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wikis = wikipedia.search(concept, results=n_results) |
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st.write(f"{concept} No of Wikis: {len(wikis)}") |
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for wiki in wikis: |
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try: |
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html_page = wikipedia.page(title=wiki, auto_suggest=False) |
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except DisambiguationError: |
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continue |
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htmlResults = html_page.content |
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passages = get_passages(htmlResults, k=k) |
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for passage in passages: |
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i_dicts = {} |
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i_dicts['text'] = passage |
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i_dicts['title'] = wiki |
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dicts.append(i_dicts) |
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return dicts |
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passage_encoder = TFAutoModel.from_pretrained("nlpconnect/dpr-ctx_encoder_bert_uncased_L-2_H-128_A-2") |
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query_encoder = TFAutoModel.from_pretrained("nlpconnect/dpr-question_encoder_bert_uncased_L-2_H-128_A-2") |
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p_tokenizer = AutoTokenizer.from_pretrained("nlpconnect/dpr-ctx_encoder_bert_uncased_L-2_H-128_A-2") |
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q_tokenizer = AutoTokenizer.from_pretrained("nlpconnect/dpr-question_encoder_bert_uncased_L-2_H-128_A-2") |
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def get_title_text_combined(passage_dicts): |
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res = [] |
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for p in passage_dicts: |
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res.append(tuple((p['title'], p['text']))) |
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return res |
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def extracted_passage_embeddings(processed_passages, max_length=156): |
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passage_inputs = p_tokenizer.batch_encode_plus( |
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processed_passages, |
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add_special_tokens=True, |
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truncation=True, |
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padding="max_length", |
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max_length=max_length, |
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return_token_type_ids=True |
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) |
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passage_embeddings = passage_encoder.predict([np.array(passage_inputs['input_ids']), np.array(passage_inputs['attention_mask']), |
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np.array(passage_inputs['token_type_ids'])], |
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batch_size=64, |
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verbose=1) |
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return passage_embeddings |
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def extracted_query_embeddings(queries, max_length=64): |
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query_inputs = q_tokenizer.batch_encode_plus( |
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queries, |
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add_special_tokens=True, |
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truncation=True, |
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padding="max_length", |
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max_length=max_length, |
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return_token_type_ids=True |
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) |
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query_embeddings = query_encoder.predict([np.array(query_inputs['input_ids']), |
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np.array(query_inputs['attention_mask']), |
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np.array(query_inputs['token_type_ids'])], |
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batch_size=1, |
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verbose=1) |
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return query_embeddings |
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def get_pagetext(page): |
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s = str(page).replace("/t","") |
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return s |
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def get_wiki_summary(search): |
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wiki_wiki = wikipediaapi.Wikipedia('en') |
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page = wiki_wiki.page(search) |
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def get_wiki_summaryDF(search): |
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wiki_wiki = wikipediaapi.Wikipedia('en') |
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page = wiki_wiki.page(search) |
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isExist = page.exists() |
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if not isExist: |
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return isExist, "Not found", "Not found", "Not found", "Not found" |
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pageurl = page.fullurl |
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pagetitle = page.title |
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pagesummary = page.summary[0:60] |
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pagetext = get_pagetext(page.text) |
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backlinks = page.backlinks |
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linklist = "" |
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for link in backlinks.items(): |
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pui = link[0] |
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linklist += pui + " , " |
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a=1 |
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categories = page.categories |
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categorylist = "" |
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for category in categories.items(): |
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pui = category[0] |
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categorylist += pui + " , " |
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a=1 |
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links = page.links |
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linklist2 = "" |
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for link in links.items(): |
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pui = link[0] |
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linklist2 += pui + " , " |
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a=1 |
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sections = page.sections |
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ex_dic = { |
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'Entity' : ["URL","Title","Summary", "Text", "Backlinks", "Links", "Categories"], |
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'Value': [pageurl, pagetitle, pagesummary, pagetext, linklist,linklist2, categorylist ] |
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} |
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df = pd.DataFrame(ex_dic) |
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return df |
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def save_message(name, message): |
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now = datetime.datetime.now() |
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timestamp = now.strftime("%Y-%m-%d %H:%M:%S") |
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with open("chat.txt", "a") as f: |
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f.write(f"{timestamp} - {name}: {message}\n") |
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def press_release(): |
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st.markdown("""🎉🎊 Breaking News! 📢📣 |
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Introducing StreamlitWikipediaChat - the ultimate way to chat with Wikipedia and the whole world at the same time! 🌎📚👋 |
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Are you tired of reading boring articles on Wikipedia? Do you want to have some fun while learning new things? Then StreamlitWikipediaChat is just the thing for you! 😃💻 |
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With StreamlitWikipediaChat, you can ask Wikipedia anything you want and get instant responses! Whether you want to know the capital of Madagascar or how to make a delicious chocolate cake, Wikipedia has got you covered. 🍰🌍 |
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But that's not all! You can also chat with other people from around the world who are using StreamlitWikipediaChat at the same time. It's like a virtual classroom where you can learn from and teach others. 🌐👨🏫👩🏫 |
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And the best part? StreamlitWikipediaChat is super easy to use! All you have to do is type in your question and hit send. That's it! 🤯🙌 |
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So, what are you waiting for? Join the fun and start chatting with Wikipedia and the world today! 😎🎉 |
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StreamlitWikipediaChat - where learning meets fun! 🤓🎈""") |
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def main(): |
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st.title("Streamlit Chat") |
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name = st.text_input("Enter your name") |
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message = st.text_input("Enter a topic to share from Wikipedia") |
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if st.button("Submit"): |
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df = get_wiki_summaryDF(message) |
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save_message(name, message) |
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save_message(name, df) |
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st.text("Message sent!") |
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st.text("Chat history:") |
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with open("chat.txt", "a+") as f: |
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f.seek(0) |
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chat_history = f.read() |
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st.markdown(chat_history) |
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countdown = st.empty() |
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t = 60 |
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while t: |
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mins, secs = divmod(t, 60) |
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countdown.text(f"Time remaining: {mins:02d}:{secs:02d}") |
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time.sleep(1) |
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t -= 1 |
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if t == 0: |
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countdown.text("Time's up!") |
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with open("chat.txt", "a+") as f: |
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f.seek(0) |
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chat_history = f.read() |
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st.markdown(chat_history) |
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press_release() |
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t = 15 |
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if __name__ == "__main__": |
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main() |
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