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import streamlit as st
import spacy
import wikipediaapi
import wikipedia
from wikipedia.exceptions import DisambiguationError
from transformers import TFAutoModel, AutoTokenizer
import numpy as np
import pandas as pd
import faiss
import datetime
import time
try:
nlp = spacy.load("en_core_web_sm")
except:
spacy.cli.download("en_core_web_sm")
nlp = spacy.load("en_core_web_sm")
wh_words = ['what', 'who', 'how', 'when', 'which']
def get_concepts(text):
text = text.lower()
doc = nlp(text)
concepts = []
for chunk in doc.noun_chunks:
if chunk.text not in wh_words:
concepts.append(chunk.text)
return concepts
def get_passages(text, k=100):
doc = nlp(text)
passages = []
passage_len = 0
passage = ""
sents = list(doc.sents)
for i in range(len(sents)):
sen = sents[i]
passage_len += len(sen)
if passage_len >= k:
passages.append(passage)
passage = sen.text
passage_len = len(sen)
continue
elif i == (len(sents) - 1):
passage += " " + sen.text
passages.append(passage)
passage = ""
passage_len = 0
continue
passage += " " + sen.text
return passages
def get_dicts_for_dpr(concepts, n_results=20, k=100):
dicts = []
for concept in concepts:
wikis = wikipedia.search(concept, results=n_results)
st.write(f"{concept} No of Wikis: {len(wikis)}")
for wiki in wikis:
try:
html_page = wikipedia.page(title=wiki, auto_suggest=False)
except DisambiguationError:
continue
htmlResults = html_page.content
passages = get_passages(htmlResults, k=k)
for passage in passages:
i_dicts = {}
i_dicts['text'] = passage
i_dicts['title'] = wiki
dicts.append(i_dicts)
return dicts
passage_encoder = TFAutoModel.from_pretrained("nlpconnect/dpr-ctx_encoder_bert_uncased_L-2_H-128_A-2")
query_encoder = TFAutoModel.from_pretrained("nlpconnect/dpr-question_encoder_bert_uncased_L-2_H-128_A-2")
p_tokenizer = AutoTokenizer.from_pretrained("nlpconnect/dpr-ctx_encoder_bert_uncased_L-2_H-128_A-2")
q_tokenizer = AutoTokenizer.from_pretrained("nlpconnect/dpr-question_encoder_bert_uncased_L-2_H-128_A-2")
def get_title_text_combined(passage_dicts):
res = []
for p in passage_dicts:
res.append(tuple((p['title'], p['text'])))
return res
def extracted_passage_embeddings(processed_passages, max_length=156):
passage_inputs = p_tokenizer.batch_encode_plus(
processed_passages,
add_special_tokens=True,
truncation=True,
padding="max_length",
max_length=max_length,
return_token_type_ids=True
)
passage_embeddings = passage_encoder.predict([np.array(passage_inputs['input_ids']), np.array(passage_inputs['attention_mask']),
np.array(passage_inputs['token_type_ids'])],
batch_size=64,
verbose=1)
return passage_embeddings
def extracted_query_embeddings(queries, max_length=64):
query_inputs = q_tokenizer.batch_encode_plus(
queries,
add_special_tokens=True,
truncation=True,
padding="max_length",
max_length=max_length,
return_token_type_ids=True
)
query_embeddings = query_encoder.predict([np.array(query_inputs['input_ids']),
np.array(query_inputs['attention_mask']),
np.array(query_inputs['token_type_ids'])],
batch_size=1,
verbose=1)
return query_embeddings
def get_pagetext(page):
s = str(page).replace("/t","")
return s
def get_wiki_summary(search):
wiki_wiki = wikipediaapi.Wikipedia('en')
page = wiki_wiki.page(search)
def get_wiki_summaryDF(search):
wiki_wiki = wikipediaapi.Wikipedia('en')
page = wiki_wiki.page(search)
isExist = page.exists()
if not isExist:
return isExist, "Not found", "Not found", "Not found", "Not found"
pageurl = page.fullurl
pagetitle = page.title
pagesummary = page.summary[0:60]
pagetext = get_pagetext(page.text)
backlinks = page.backlinks
linklist = ""
for link in backlinks.items():
pui = link[0]
linklist += pui + " , "
a=1
categories = page.categories
categorylist = ""
for category in categories.items():
pui = category[0]
categorylist += pui + " , "
a=1
links = page.links
linklist2 = ""
for link in links.items():
pui = link[0]
linklist2 += pui + " , "
a=1
sections = page.sections
ex_dic = {
'Entity' : ["URL","Title","Summary", "Text", "Backlinks", "Links", "Categories"],
'Value': [pageurl, pagetitle, pagesummary, pagetext, linklist,linklist2, categorylist ]
}
df = pd.DataFrame(ex_dic)
return df
def save_message(name, message):
now = datetime.datetime.now()
timestamp = now.strftime("%Y-%m-%d %H:%M:%S")
with open("chat.txt", "a") as f:
f.write(f"{timestamp} - {name}: {message}\n")
def main():
st.title("Streamlit Chat")
name = st.text_input("Name")
message = st.text_input("Message")
if st.button("Submit"):
# wiki
df = get_wiki_summaryDF(message)
save_message(name, message)
save_message(name, df)
st.text("Message sent!")
st.text("Chat history:")
with open("chat.txt", "a+") as f:
f.seek(0)
chat_history = f.read()
#st.text(chat_history)
st.markdown(chat_history)
countdown = st.empty()
t = 60
while t:
mins, secs = divmod(t, 60)
countdown.text(f"Time remaining: {mins:02d}:{secs:02d}")
time.sleep(1)
t -= 1
if t == 0:
countdown.text("Time's up!")
with open("chat.txt", "a+") as f:
f.seek(0)
chat_history = f.read()
#st.text(chat_history)
st.markdown(chat_history)
t = 60
if __name__ == "__main__":
main()
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