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import streamlit as st
import os
import requests
import pdfplumber
import chromadb
import re
from langchain.document_loaders import PDFPlumberLoader
from langchain_huggingface import HuggingFaceEmbeddings
from langchain_experimental.text_splitter import SemanticChunker
from langchain_chroma import Chroma
from langchain.chains import LLMChain
from langchain.prompts import PromptTemplate
from langchain_groq import ChatGroq
from prompts import rag_prompt, relevancy_prompt, relevant_context_picker_prompt, response_synth
# ----------------- Streamlit UI Setup -----------------
st.set_page_config(page_title="Blah", layout="centered")
st.title("Blah-1")
# ----------------- API Keys -----------------
os.environ["GROQ_API_KEY"] = st.secrets.get("GROQ_API_KEY", "")
# ----------------- ChromaDB Persistent Directory -----------------
CHROMA_DB_DIR = "/mnt/data/chroma_db"
os.makedirs(CHROMA_DB_DIR, exist_ok=True)
# ----------------- Initialize Session State -----------------
if "pdf_loaded" not in st.session_state:
st.session_state.pdf_loaded = False
if "chunked" not in st.session_state:
st.session_state.chunked = False
if "vector_created" not in st.session_state:
st.session_state.vector_created = False
if "processed_chunks" not in st.session_state:
st.session_state.processed_chunks = None
if "vector_store" not in st.session_state:
st.session_state.vector_store = None
# ----------------- Improved Metadata Extraction -----------------
def extract_metadata(pdf_path):
"""Extracts title, author, emails, and affiliations from PDF."""
with pdfplumber.open(pdf_path) as pdf:
metadata = pdf.metadata or {}
# Extract title
title = metadata.get("Title", "").strip()
if not title and pdf.pages:
text = pdf.pages[0].extract_text()
title_match = re.search(r"(?i)title[:\-]?\s*(.*)", text or "")
title = title_match.group(1) if title_match else text.split("\n")[0] if text else "Untitled Document"
# Extract author
author = metadata.get("Author", "").strip()
if not author and pdf.pages:
author_match = re.search(r"(?i)by\s+([A-Za-z\s,]+)", pdf.pages[0].extract_text() or "")
author = author_match.group(1).strip() if author_match else "Unknown Author"
# Extract emails
emails = re.findall(r"[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\.[a-zA-Z]{2,}", pdf.pages[0].extract_text() or "")
email_str = ", ".join(emails) if emails else "No emails found"
# Extract affiliations
affiliations = re.findall(r"(?:Department|Faculty|Institute|University|College|School)\s+[\w\s]+", pdf.pages[0].extract_text() or "")
affiliation_str = ", ".join(affiliations) if affiliations else "No affiliations found"
return title, author, email_str, affiliation_str
# ----------------- PDF Selection -----------------
pdf_source = st.radio("Choose a PDF source:", ["Upload a PDF file", "Enter a PDF URL"], index=0, horizontal=True)
if pdf_source == "Upload a PDF file":
uploaded_file = st.file_uploader("Upload your PDF file", type=["pdf"])
if uploaded_file:
st.session_state.pdf_path = "/mnt/data/temp.pdf"
with open(st.session_state.pdf_path, "wb") as f:
f.write(uploaded_file.getbuffer())
st.session_state.pdf_loaded = False
st.session_state.chunked = False
st.session_state.vector_created = False
# ----------------- Process PDF -----------------
if not st.session_state.pdf_loaded and "pdf_path" in st.session_state:
with st.spinner("πŸ”„ Processing document... Please wait."):
loader = PDFPlumberLoader(st.session_state.pdf_path)
docs = loader.load()
st.json(docs[0].metadata)
# Extract metadata
title, author, email_str, affiliation_str = extract_metadata(st.session_state.pdf_path)
# Display extracted metadata
st.subheader("πŸ“„ Extracted Document Metadata")
st.write(f"**Title:** {title}")
st.write(f"**Author:** {author}")
st.write(f"**Emails:** {email_str}")
st.write(f"**Affiliations:** {affiliation_str}")
# Embedding Model
model_name = "nomic-ai/modernbert-embed-base"
embedding_model = HuggingFaceEmbeddings(model_name=model_name, model_kwargs={"device": "cpu"}, encode_kwargs={'normalize_embeddings': False})
# Convert metadata into a retrievable chunk
metadata_text = f"Title: {title}\nAuthor: {author}\nEmails: {email_str}\nAffiliations: {affiliation_str}"
metadata_doc = {"page_content": metadata_text, "metadata": {"source": "metadata"}}
# Prevent unnecessary re-chunking
if not st.session_state.chunked:
text_splitter = SemanticChunker(embedding_model)
document_chunks = text_splitter.split_documents(docs)
document_chunks.insert(0, metadata_doc) # Insert metadata as a retrievable document
st.session_state.processed_chunks = document_chunks
st.session_state.chunked = True
st.session_state.pdf_loaded = True
st.success("βœ… Document processed and chunked successfully!")
# ----------------- Setup Vector Store -----------------
if not st.session_state.vector_created and st.session_state.processed_chunks:
with st.spinner("πŸ”„ Initializing Vector Store..."):
st.session_state.vector_store = Chroma(
persist_directory=CHROMA_DB_DIR, # <-- Ensures persistence
collection_name="deepseek_collection",
collection_metadata={"hnsw:space": "cosine"},
embedding_function=embedding_model
)
st.session_state.vector_store.add_documents(st.session_state.processed_chunks)
st.session_state.vector_created = True
st.success("βœ… Vector store initialized successfully!")
# ----------------- Query Input -----------------
query = st.text_input("πŸ” Ask a question about the document:")
if query:
with st.spinner("πŸ”„ Retrieving relevant context..."):
retriever = st.session_state.vector_store.as_retriever(search_type="similarity", search_kwargs={"k": 5})
retrieved_docs = retriever.invoke(query)
context = [d.page_content for d in retrieved_docs]
st.success("βœ… Context retrieved successfully!")
# ----------------- Run Individual Chains Explicitly -----------------
context_relevancy_chain = LLMChain(llm=llm_judge, prompt=PromptTemplate(input_variables=["retriever_query", "context"], template=relevancy_prompt), output_key="relevancy_response")
relevant_context_chain = LLMChain(llm=llm_judge, prompt=PromptTemplate(input_variables=["relevancy_response"], template=relevant_context_picker_prompt), output_key="context_number")
relevant_contexts_chain = LLMChain(llm=llm_judge, prompt=PromptTemplate(input_variables=["context_number", "context"], template=response_synth), output_key="relevant_contexts")
response_chain = LLMChain(llm=rag_llm, prompt=PromptTemplate(input_variables=["query", "context"], template=rag_prompt), output_key="final_response")
response_crisis = context_relevancy_chain.invoke({"context": context, "retriever_query": query})
relevant_response = relevant_context_chain.invoke({"relevancy_response": response_crisis["relevancy_response"]})
contexts = relevant_contexts_chain.invoke({"context_number": relevant_response["context_number"], "context": context})
final_response = response_chain.invoke({"query": query, "context": contexts["relevant_contexts"]})
# ----------------- Display All Outputs -----------------
st.markdown("### Context Relevancy Evaluation")
st.json(response_crisis["relevancy_response"])
st.markdown("### Picked Relevant Contexts")
st.json(relevant_response["context_number"])
st.markdown("### Extracted Relevant Contexts")
st.json(contexts["relevant_contexts"])
st.markdown("### RAG Final Response")
st.write(final_response["final_response"])
st.subheader("context_relevancy_evaluation_chain Statement")
st.json(final_response["relevancy_response"])
st.subheader("pick_relevant_context_chain Statement")
st.json(final_response["context_number"])
st.subheader("relevant_contexts_chain Statement")
st.json(final_response["relevant_contexts"])
st.subheader("RAG Response Statement")
st.json(final_response["final_response"])