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Create app.py
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app.py
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#DocArrayInMemorySearch is a document index provided by Docarray that stores documents in memory.
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#It is a great starting point for small datasets, where you may not want to launch a database server.
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# import libraries
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import streamlit as st
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import requests
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from bs4 import BeautifulSoup
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from langchain.document_loaders import TextLoader #reads in a file as text and places it all into one document.
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from langchain.indexes import VectorstoreIndexCreator #Logic for creating indexes.
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from langchain.vectorstores import DocArrayInMemorySearch #document index provided by Docarray that stores documents in memory.
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from sentence_transformers import SentenceTransformer
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from langchain_community.llms import HuggingFaceEndpoint
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#import vertexai
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#from langchain.llms import VertexAI
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#from langchain.embeddings import VertexAIEmbeddings
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vertexai.init(project=PROJECT, location=LOCATION) #GCP PROJECT ID, LOCATION as region.
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#The PaLM 2 for Text (text-bison, text-unicorn) foundation models are optimized for a variety of natural language
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#tasks such as sentiment analysis, entity extraction, and content creation. The types of content that the PaLM 2 for
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#Text models can create include document summaries, answers to questions, and labels that classify content.
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llm = HuggingFaceEndpoint(repo_id="mistralai/Mistral-7B-Instruct-v0.2", Temperature=0.9)
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#llm = VertexAI(model_name="text-bison@001",max_output_tokens=256,temperature=0.1,top_p=0.8,top_k=40,verbose=True,)
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#embeddings = VertexAIEmbeddings()
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embeddings = model.encode(sentences)
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#The below code scrapes all the text data from the webpage link provided by the user and saves it in a text file.
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def get_text(url):
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# Send a GET request to the URL
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response = requests.get(url)
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# Create a BeautifulSoup object with the HTML content
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soup = BeautifulSoup(response.content, "html.parser")
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# Find the specific element or elements containing the text you want to scrape
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# Here, we'll find all <p> tags and extract their text
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paragraphs = soup.find_all("p")
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# Loop through the paragraphs and print their text
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with open("text\\temp.txt", "w", encoding='utf-8') as file:
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# Loop through the paragraphs and write their text to the file
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for paragraph in paragraphs:
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file.write(paragraph.get_text() + "\n")
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@st.cache_resource
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def create_langchain_index(input_text):
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print("--indexing---")
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get_text(input_text)
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loader = TextLoader("text\\temp.txt", encoding='utf-8')
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# data = loader.load()
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index = VectorstoreIndexCreator(vectorstore_cls=DocArrayInMemorySearch,embedding=embeddings).from_loaders([loader])
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return index
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# @st.cache_resource
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# def get_basic_page_details(input_text,summary_query,tweet_query,ln_query):
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# index = create_langchain_index(input_text)
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# summary_response = index.query(summary_query)
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# tweet_response = index.query(tweet_query)
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# ln_response = index.query(ln_query)
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# return summary_response,tweet_response,ln_response
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@st.cache_data
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def get_response(input_text,query):
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print(f"--querying---{query}")
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response = index.query(query,llm=llm)
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return response
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#The below code is a simple flow to accept the webpage link and process the queries
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#using the get_response function created above. Using the cache, the same.
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st.title('Webpage Question and Answering')
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input_text=st.text_input("Provide the link to the webpage...")
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summary_response = ""
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tweet_response = ""
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ln_response = ""
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# if st.button("Load"):
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if input_text:
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index = create_langchain_index(input_text)
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summary_query ="Write a 100 words summary of the document"
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summary_response = get_response(input_text,summary_query)
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tweet_query ="Write a twitter tweet"
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tweet_response = get_response(input_text,tweet_query)
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ln_query ="Write a linkedin post for the document"
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ln_response = get_response(input_text,ln_query)
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with st.expander('Page Summary'):
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st.info(summary_response)
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with st.expander('Tweet'):
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st.info(tweet_response)
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with st.expander('LinkedIn Post'):
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st.info(ln_response)
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st.session_state.input_text = ''
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question=st.text_input("Ask a question from the link you shared...")
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if st.button("Ask"):
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if question:
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index = create_langchain_index(input_text)
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response = get_response(input_text,question)
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st.write(response)
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else:
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st.warning("Please enter a question.")
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