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# ==========================================================
# streamlit_app.py β Stable Layout + Latest Backend Improvements
# ==========================================================
import os
import re
import streamlit as st
import torch
# ==========================================================
# β
PAGE CONFIG
# ==========================================================
st.set_page_config(page_title="Enterprise Knowledge Assistant", layout="wide")
print("CUDA available:", torch.cuda.is_available())
# ==========================================================
# βοΈ CACHE SETUP
# ==========================================================
CACHE_DIR = "/tmp/hf_cache"
os.makedirs(CACHE_DIR, exist_ok=True)
os.environ.update({
"HF_HOME": CACHE_DIR,
"TRANSFORMERS_CACHE": CACHE_DIR,
"HF_DATASETS_CACHE": CACHE_DIR,
"HF_MODULES_CACHE": CACHE_DIR,
})
# ==========================================================
# π¦ IMPORTS
# ==========================================================
from ingestion import extract_text_from_pdf, chunk_text
from vectorstore import build_faiss_index
from qa import retrieve_chunks, generate_answer, cache_embeddings, embed_chunks, genai_generate
# ==========================================================
# π§ SMART SUGGESTION GENERATOR
# ==========================================================
def generate_dynamic_suggestions_from_toc(toc, chunks, doc_name="Document"):
if not toc or not chunks:
return []
titles = []
for sec, raw_title in toc:
title = re.sub(r"^\s*[\dA-Za-z.\-]+\s*", "", raw_title)
title = re.sub(r"\.{2,}\s*\d+$", "", title).strip()
if 4 < len(title) < 120:
titles.append(title)
context_sample = " ".join(chunks[:3])[:4000]
prompt = f"""
You are generating short, natural, and context-aware questions for users reading "{doc_name}".
Use the Table of Contents and some document text for inspiration.
TABLE OF CONTENTS:
{chr(10).join(['- ' + t for t in titles[:8]])}
SAMPLE TEXT:
{context_sample}
Generate 5β7 clear and human-like questions based strictly on this document.
Each should sound natural, under 18 words, and avoid robotic phrasing.
"""
try:
ai_response = genai_generate(prompt)
questions = re.findall(r"[-β’]?\s*(.+?)\?", ai_response)
clean_qs = [q.strip("β’-β ").strip() + "?" for q in questions if 8 < len(q) < 120]
seen, final = set(), []
for q in clean_qs:
if q.lower() not in seen:
seen.add(q.lower())
final.append(q)
return final[:7]
except Exception:
return ["How do I start using this guide?", "What does this document cover?"]
# ==========================================================
# π¨ STYLING β MINIMAL ENTERPRISE DESIGN
# ==========================================================
st.markdown("""
<style>
div.block-container {padding-top: 1.2rem; max-width: 1080px;}
h1, h2, h3 {color: #f3f4f6; font-weight: 600;}
.suggest-chip {
background: #0f1724;
border: 1px solid #374151;
border-radius: 14px;
color: #e6eef8;
padding: 8px 12px;
cursor: pointer;
font-size: 13px;
margin: 6px 6px 6px 0;
display: inline-block;
transition: background 0.2s, transform 0.1s;
}
.suggest-chip:hover {background: #1e3a8a; transform: translateY(-2px);}
.answer-box {
background: linear-gradient(180deg,#0b1220,#071027);
border-left: 4px solid #3b82f6;
border-radius: 8px;
padding: 16px 18px;
color: #e6eef8;
margin-top: 12px;
box-shadow: 0 4px 14px rgba(0,0,0,0.35);
}
.stTextInput > div > div > input {
background-color: #0f172a !important;
color: #f1f5f9 !important;
border-radius: 6px !important;
border: 1px solid #334155 !important;
padding: 8px 10px !important;
font-size: 15px !important;
}
.stTextInput > label {font-weight: 500;}
.small-link {
font-size: 13px;
color: #60a5fa;
cursor: pointer;
}
</style>
""", unsafe_allow_html=True)
# ==========================================================
# π§ SIDEBAR
# ==========================================================
with st.sidebar:
st.markdown("### π§ Response Style")
mode = st.radio(
"",
("Strict (Document-only)", "Extended (Document + general)"),
index=0,
help="Strict = answers only from the uploaded document. Extended = may include related general info.",
)
st.markdown("---")
show_dev = st.checkbox("Show advanced settings (for developers)", value=False)
if show_dev:
st.markdown("### βοΈ Developer Options")
chunk_size = st.slider("Chunk Size", 200, 1500, 1000, step=50)
overlap = st.slider("Chunk Overlap", 50, 200, 120, step=10)
top_k = st.slider("Top K Results", 1, 10, 5)
else:
chunk_size, overlap, top_k = 1000, 120, 5
st.markdown("---")
st.caption("β¨ Built by Shubham Sharma")
# ==========================================================
# π§ SESSION STATE
# ==========================================================
for key, val in {
"user_query_input": "",
"show_more": False,
"selected_suggestion": None,
"query_suggestions_fixed": None,
"last_doc": None,
}.items():
if key not in st.session_state:
st.session_state[key] = val
def set_user_query(q, idx):
st.session_state["user_query_input"] = q
st.session_state["selected_suggestion"] = idx
st.experimental_rerun()
# ==========================================================
# π MAIN SECTION
# ==========================================================
st.title("π Enterprise Knowledge Assistant")
st.caption("Query SAP documentation and enterprise PDFs β powered by reasoning and retrieval.")
doc_choice = st.radio("Select a document:", ["-- Select --", "Sample PDF", "Upload Custom PDF"], index=0)
# ==========================================================
# π DOCUMENT HANDLING
# ==========================================================
if doc_choice == "-- Select --":
st.info("β¬
οΈ Select or upload a document to begin.")
else:
if doc_choice == "Sample PDF":
temp_path = os.path.join(os.path.dirname(__file__), "sample.pdf")
st.success("π Sample document loaded successfully β you can start asking your questions below.")
else:
uploaded_file = st.file_uploader("", type="pdf", label_visibility="collapsed")
if uploaded_file:
temp_path = os.path.join("/tmp", uploaded_file.name)
with open(temp_path, "wb") as f:
f.write(uploaded_file.getbuffer())
st.success("β
Document processed successfully β you can start asking your questions below.")
else:
temp_path = None
if temp_path:
with st.spinner("π Processing document..."):
text, toc, toc_source = extract_text_from_pdf(temp_path)
chunks = chunk_text(text, chunk_size=chunk_size, overlap=overlap)
#st.caption(f"π TOC Source: {toc_source}")
with st.spinner("βοΈ Building search index..."):
embeddings = cache_embeddings(os.path.basename(temp_path), chunks, embed_chunks)
index = build_faiss_index(embeddings)
doc_name = os.path.basename(temp_path)
if st.session_state["last_doc"] != doc_name:
query_suggestions = generate_dynamic_suggestions_from_toc(toc, chunks, doc_name)
st.session_state["query_suggestions_fixed"] = query_suggestions
st.session_state["last_doc"] = doc_name
else:
query_suggestions = st.session_state["query_suggestions_fixed"]
# ----------------------------------------------------------
# π¬ ASK SECTION
# ----------------------------------------------------------
st.markdown("### π¬ Ask the Assistant")
if query_suggestions:
visible = query_suggestions if st.session_state["show_more"] else query_suggestions[:3]
cols = st.columns(min(3, len(visible)))
for i, q in enumerate(visible):
if cols[i % 3].button(f"π¬ {q}", key=f"sugg_{i}"):
set_user_query(q, i)
toggle_text = "Show less β²" if st.session_state["show_more"] else "Show more βΌ"
if st.button(toggle_text, help="Show or hide more suggestions"):
st.session_state["show_more"] = not st.session_state["show_more"]
st.experimental_rerun()
user_query = st.text_input("Type your question or click one above:", key="user_query_input")
# ----------------------------------------------------------
# π‘ RESPONSE SECTION
# ----------------------------------------------------------
if user_query.strip():
reasoning_mode = mode == "Extended (Document + general)"
with st.spinner("π Generating your answer..."):
retrieved = retrieve_chunks(user_query, index, chunks, top_k=top_k, embeddings=embeddings)
answer = generate_answer(user_query, retrieved, reasoning_mode=reasoning_mode)
st.markdown("### π€ Assistantβs Answer")
# β
Apply bullet formatting only for strict factual mode (not reasoning)
if not reasoning_mode and not answer.startswith("β οΈ"):
answer = re.sub(r"(^|\n)-\s*", r"\1<br>β’ ", answer)
st.markdown(f"<div class='answer-box'>{answer}</div>", unsafe_allow_html=True)
with st.expander("π Supporting Context"):
for i, r in enumerate(retrieved, start=1):
st.markdown(f"**Chunk {i}:** {r}")
if toc:
with st.expander("π Explore Document Sections"):
toc_text = "\n".join([f"{sec}. {title}" for sec, title in toc])
st.text_area("", toc_text, height=140)
with st.expander("π Document Preview"):
st.text_area("", text[:1000], height=140)
st.caption(f"{len(chunks)} chunks processed.")
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