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import streamlit as st
import pandas as pd
import io
import os
import fitz
import docx2txt
import tempfile
from groq import Groq
from dotenv import load_dotenv
from pydantic import BaseModel, Field, ValidationError
from typing import Optional, List

# --------------------
# Config & Secrets
# --------------------
# Ensure page config is the very first Streamlit command (done here)
st.set_page_config(layout="wide", page_title="Quantum Scrutiny Platform | Groq-Powered")

# Load local .env if present (useful for local testing)
load_dotenv()

# Try multiple locations for the API key: environment variables, Streamlit secrets
GROQ_API_KEY = os.getenv("GROQ_API_KEY") or os.getenv("GROQ_APIKEY")
if not GROQ_API_KEY:
    # If deployed on Streamlit Cloud or similar, users might put secrets in st.secrets
    try:
        GROQ_API_KEY = st.secrets["GROQ_API_KEY"]
    except Exception:
        GROQ_API_KEY = None

# Admin password (for demo). In production, store this in secrets.
ADMIN_PASSWORD = os.getenv("ADMIN_PASSWORD", "admin")

# Initialize Groq Client (if key present)
groq_client = None
if GROQ_API_KEY:
    try:
        groq_client = Groq(api_key=GROQ_API_KEY)
    except Exception as e:
        st.warning(f"Warning: Failed to initialize Groq client: {e}")
        groq_client = None
else:
    st.warning("GROQ_API_KEY not found in environment or Streamlit secrets. The app will run in fallback mode.")

# --------------------
# Session state init
# --------------------
if 'is_admin_logged_in' not in st.session_state:
    st.session_state.is_admin_logged_in = False

if 'analyzed_data' not in st.session_state:
    initial_cols = [
        'Name', 'Job Role', 'Resume Score (100)', 'Email', 'Phone', 'Shortlisted',
        'Experience Summary', 'Education Summary', 'Communication Rating (1-10)', 
        'Skills/Technologies', 'Certifications', 'ABA Skills (1-10)', 
        'RBT/BCBA Cert', 'Autism-Care Exp (1-10)'
    ]
    st.session_state.analyzed_data = pd.DataFrame(columns=initial_cols)

# --------------------
# Pydantic Schema
# --------------------
class ResumeAnalysis(BaseModel):
    name: str = Field(description="Full name of the candidate.")
    email: str = Field(description="Professional email address.")
    phone: str = Field(description="Primary phone number.")
    certifications: List[str] = Field(default_factory=list, description="List of professional certifications.")
    experience_summary: str = Field(default="", description="A concise summary of the candidate's professional experience.")
    education_summary: str = Field(default="", description="A concise summary of the candidate's highest education.")

    communication_skills: str = Field(default="N/A", description="A score as a STRING (e.g., '8') or description of communication skills.")
    technical_skills: List[str] = Field(default_factory=list, description="List of technical skills/technologies mentioned.")

    aba_therapy_skills: Optional[str] = Field(default="N/A", description="Specific score as a STRING (e.g., '7').")
    rbt_bcba_certification: Optional[str] = Field(default="N/A", description="Indicate 'Yes' or 'No'.")
    autism_care_experience_score: Optional[str] = Field(default="N/A", description="A score as a STRING (e.g., '9').")

# --------------------
# Helpers
# --------------------

def extract_text_from_file(uploaded_file) -> str:
    """Extract text from uploaded file safely by writing to a temp file."""
    try:
        suffix = os.path.splitext(uploaded_file.name)[1].lower()
        with tempfile.NamedTemporaryFile(delete=False, suffix=suffix) as tmp:
            tmp.write(uploaded_file.read())
            tmp_path = tmp.name

        text = ""
        if suffix == '.pdf':
            try:
                doc = fitz.open(tmp_path)
                for page in doc:
                    text += page.get_text()
                doc.close()
            except Exception as e:
                st.error(f"PDF extraction error for {uploaded_file.name}: {e}")
                text = ""
        elif suffix in ['.docx', '.doc']:
            try:
                text = docx2txt.process(tmp_path) or ""
            except Exception as e:
                st.error(f"DOCX extraction error for {uploaded_file.name}: {e}")
                text = ""
        else:
            st.warning(f"Unsupported file type: {suffix}")

        # Clean up temp file
        try:
            os.unlink(tmp_path)
        except Exception:
            pass

        return text
    except Exception as e:
        st.error(f"Failed to extract text: {e}")
        return ""


@st.cache_data
def analyze_resume_with_groq(resume_text: str, job_role: str) -> ResumeAnalysis:
    """Call Groq to extract structured data. If Groq is not available or returns invalid JSON,
    fall back to a lightweight heuristic parser.
    """
    # If no groq client, skip to fallback
    if not groq_client:
        return fallback_simple_extraction(resume_text, job_role)

    # Build role-specific instructions
    therapist_instructions = ""
    if job_role == "Therapist":
        therapist_instructions = (
            "Because the job role is 'Therapist', carefully look for ABA Therapy Skills, RBT/BCBA Certification, "
            "and Autism-Care Experience. Provide a score from 1-10 as a STRING (e.g., '7') for these fields. "
            "If not found, return 'N/A'."
        )
    else:
        therapist_instructions = (
            "Since the role is not 'Therapist', set specialized therapist fields to 'N/A' if not present."
        )

    system_prompt = (
        f"You are a professional Resume Analyzer. Extract fields exactly matching the JSON schema: name, email, phone, certifications (list), "
        f"experience_summary, education_summary, communication_skills (STRING), technical_skills (list), aba_therapy_skills, rbt_bcba_certification, autism_care_experience_score. "
        f"The candidate is applying for '{job_role}'. {therapist_instructions} Return valid JSON only."
    )

    try:
        chat_completion = groq_client.chat.completions.create(
            model="mixtral-8x7b-32768",
            messages=[
                {"role": "system", "content": system_prompt},
                {"role": "user", "content": f"Analyze the following resume text:\n\n---\n{resume_text}\n---"}
            ],
            response_model={"type": "json_object", "schema": ResumeAnalysis.schema()},
            temperature=0.0
        )

        # Extract raw content (SDK may vary β€” keep defensive)
        raw = None
        try:
            raw = chat_completion.choices[0].message.content
        except Exception:
            raw = str(chat_completion)

        # Parse with Pydantic
        try:
            analysis = ResumeAnalysis.parse_raw(raw)
        except ValidationError as ve:
            st.warning(f"Groq returned invalid format; falling back to heuristic extraction. Details: {ve}")
            return fallback_simple_extraction(resume_text, job_role)

        # Ensure string coercions
        analysis.communication_skills = str(analysis.communication_skills or 'N/A')
        analysis.aba_therapy_skills = str(analysis.aba_therapy_skills or 'N/A')
        analysis.rbt_bcba_certification = str(analysis.rbt_bcba_certification or 'N/A')
        analysis.autism_care_experience_score = str(analysis.autism_care_experience_score or 'N/A')

        return analysis

    except Exception as e:
        st.warning(f"Groq API call failed: {e}. Using fallback extraction.")
        return fallback_simple_extraction(resume_text, job_role)


def fallback_simple_extraction(text: str, job_role: str) -> ResumeAnalysis:
    """A minimal, robust heuristic extractor used when the LLM call fails.
    It tries to find name/email/phone and picks up some keywords for skills and certifications.
    """
    import re

    # Very simple heuristics (intended as a fallback only)
    email_match = re.search(r"[\w\.-]+@[\w\.-]+", text)
    phone_match = re.search(r"(\+?\d[\d\-\s]{7,}\d)", text)

    name = "Unknown"
    # Heuristic: first line that looks like a name (two words, capitalized)
    lines = [l.strip() for l in text.splitlines() if l.strip()]
    if lines:
        for line in lines[:5]:
            if len(line.split()) <= 4 and any(ch.isalpha() for ch in line) and line[0].isupper():
                name = line
                break

    email = email_match.group(0) if email_match else ""
    phone = phone_match.group(0) if phone_match else ""

    # Skills: gather common programming / therapy keywords
    skills_candidates = []
    certifications = []
    keywords = ['python','java','c++','machine learning','deep learning','tensorflow','pytorch','rbt','bcba','aba','autism']
    lower_text = text.lower()
    for kw in keywords:
        if kw in lower_text:
            skills_candidates.append(kw)
            if kw in ['rbt','bcba']:
                certifications.append(kw.upper())

    experience_summary = ' '.join(lines[:4]) if lines else ''
    education_summary = ''

    # Therapist-specific small heuristics
    aba = 'N/A'
    rbt_cert = 'Yes' if 'rbt' in lower_text or 'registered behavior technician' in lower_text else 'N/A'
    autism_score = 'N/A'

    return ResumeAnalysis(
        name=name,
        email=email,
        phone=phone,
        certifications=certifications,
        experience_summary=experience_summary,
        education_summary=education_summary,
        communication_skills='5',
        technical_skills=list(set(skills_candidates)),
        aba_therapy_skills=aba,
        rbt_bcba_certification=rbt_cert,
        autism_care_experience_score=autism_score
    )


def calculate_resume_score(analysis: ResumeAnalysis) -> float:
    """Calculates a weighted score out of 100 based on heuristics and extracted values."""
    total_score = 0.0

    # 1. Experience Score (Max 40)
    exp_len = len(analysis.experience_summary or "")
    exp_factor = min(exp_len / 100.0, 1.0)
    total_score += exp_factor * 40.0

    # 2. Skills Score (Max 30)
    skills_factor = min(len(analysis.technical_skills) / 10.0, 1.0)
    total_score += skills_factor * 30.0

    # 3. Communication (Max 20)
    try:
        score_str = str(analysis.communication_skills).split('-')[0].strip()
        comm_rating = float(score_str)
    except Exception:
        comm_rating = 5.0
    total_score += (comm_rating / 10.0) * 20.0

    # 4. Certifications (Max 10)
    total_score += min(len(analysis.certifications), 10) * 1.0

    # Therapist bonus (max 10)
    if st.session_state.get('selected_role') == 'Therapist':
        try:
            aba = float(str(analysis.aba_therapy_skills)) if str(analysis.aba_therapy_skills).upper() not in ['N/A', 'NONE', ''] else 0.0
            autism = float(str(analysis.autism_care_experience_score)) if str(analysis.autism_care_experience_score).upper() not in ['N/A', 'NONE', ''] else 0.0
            total_score += ((aba + autism) / 20.0) * 10.0
        except Exception:
            pass

    final_score = round(min(total_score, 100))
    return float(final_score)


def append_analysis_to_dataframe(job_role: str, analysis: ResumeAnalysis, score: float):
    data = analysis.dict()
    data['Job Role'] = job_role
    data['Resume Score'] = score
    data['Shortlisted'] = 'No'

    technical_skills_list = ", ".join(data.get('technical_skills', []))
    certifications_list = ", ".join(data.get('certifications', []))

    df_data = {
        'Name': data.get('name', ''),
        'Job Role': job_role,
        'Resume Score (100)': score,
        'Email': data.get('email', ''),
        'Phone': data.get('phone', ''),
        'Shortlisted': data.get('Shortlisted', 'No'),
        'Experience Summary': data.get('experience_summary', ''),
        'Education Summary': data.get('education_summary', ''),
        'Communication Rating (1-10)': str(data.get('communication_skills', 'N/A')),
        'Skills/Technologies': technical_skills_list,
        'Certifications': certifications_list,
        'ABA Skills (1-10)': str(data.get('aba_therapy_skills', 'N/A')),
        'RBT/BCBA Cert': str(data.get('rbt_bcba_certification', 'N/A')),
        'Autism-Care Exp (1-10)': str(data.get('autism_care_experience_score', 'N/A')),
    }

    new_df = pd.DataFrame([df_data])
    st.session_state.analyzed_data = pd.concat([st.session_state.analyzed_data, new_df], ignore_index=True)

# --------------------
# App layout
# --------------------
st.title("🌌 Quantum Scrutiny Platform: AI Resume Analysis")

tab_user, tab_admin = st.tabs(["πŸ‘€ Resume Uploader (User Panel)", "πŸ”’ Admin Dashboard (Password Protected)"])

with tab_user:
    st.header("Upload Resumes for Analysis")
    st.info("Upload multiple PDF or DOCX files. The Groq AI engine will extract and score key data. If the API key is missing, a fallback heuristic extractor will run.")

    job_role_options = ["Software Engineer", "ML Engineer", "Therapist", "Data Analyst", "Project Manager"]
    selected_role = st.selectbox("**1. Select the Target Job Role**", options=job_role_options, key='selected_role')

    uploaded_files = st.file_uploader("**2. Upload Resumes** (PDF or DOCX)", type=["pdf", "docx"], accept_multiple_files=True)

    if st.button("πŸš€ Analyze All Uploaded Resumes"):
        if not uploaded_files:
            st.warning("Please upload one or more resume files to begin analysis.")
        else:
            total_files = len(uploaded_files)
            progress_bar = st.progress(0.0)
            st.session_state.individual_analysis = []

            with st.spinner("Processing resumes..."):
                for i, file in enumerate(uploaded_files):
                    file_name = file.name
                    st.write(f"Analyzing **{file_name}**...")

                    resume_text = extract_text_from_file(file)
                    if not resume_text:
                        st.error(f"Could not extract text from {file_name}. Skipping.")
                        continue

                    analysis = analyze_resume_with_groq(resume_text, selected_role)
                    if isinstance(analysis, ResumeAnalysis) and analysis.name == "Extraction Failed":
                        st.error(f"Extraction failed for {file_name}. Skipping.")
                        continue

                    score = calculate_resume_score(analysis)
                    append_analysis_to_dataframe(selected_role, analysis, score)

                    st.session_state.individual_analysis.append({
                        'name': analysis.name,
                        'score': score,
                        'role': selected_role,
                        'file_name': file_name
                    })

                    progress_bar.progress((i + 1) / total_files)

            st.success(f"**βœ… Successfully processed {len(st.session_state.individual_analysis)} / {total_files} resumes.**")

    if 'individual_analysis' in st.session_state and st.session_state.individual_analysis:
        st.subheader("Last Analysis Summary")
        for item in st.session_state.individual_analysis:
            st.markdown(f"**{item['name']}** (for **{item['role']}**) - **Score: {item['score']}/100**")

        st.markdown("---")
        st.caption("All analyzed data is stored in the **Admin Dashboard**.")

with tab_admin:
    if not st.session_state.is_admin_logged_in:
        st.header("Admin Login")
        password = st.text_input("Enter Admin Password", type="password")
        if st.button("πŸ”‘ Login"):
            if password == ADMIN_PASSWORD:
                st.session_state.is_admin_logged_in = True
                st.experimental_rerun()
            else:
                st.error("Incorrect password.")
        st.stop()

    st.header("🎯 Recruitment Dashboard")
    st.markdown("---")

    if st.button("πŸšͺ Logout"):
        st.session_state.is_admin_logged_in = False
        st.experimental_rerun()

    if st.session_state.analyzed_data.empty:
        st.warning("No resume data has been analyzed yet. Please upload files in the User Panel.")
    else:
        df = st.session_state.analyzed_data.copy()
        st.subheader("Candidate Data Table")
        st.success(f"**Total Candidates Analyzed: {len(df)}**")

        display_cols = ['Name', 'Job Role', 'Resume Score (100)', 'Shortlisted', 'Email', 'Skills/Technologies']

        edited_df = st.data_editor(
            df[display_cols],
            column_config={
                "Shortlisted": st.column_config.SelectboxColumn(
                    "Shortlisted",
                    help="Mark the candidate as Shortlisted or Rejected.",
                    options=["No", "Yes"],
                    required=True,
                )
            },
            key="dashboard_editor",
            hide_index=True
        )

        # Persist shortlist changes back to session state
        st.session_state.analyzed_data['Shortlisted'] = edited_df['Shortlisted']

        st.markdown("---")
        st.subheader("πŸ“₯ Download Data")

        df_export = st.session_state.analyzed_data.copy()
        excel_buffer = io.BytesIO()
        with pd.ExcelWriter(excel_buffer, engine='openpyxl') as writer:
            df_export.to_excel(writer, index=False, sheet_name='Resume Analysis Data')
        excel_buffer.seek(0)

        st.download_button(
            label="πŸ’Ύ Download All Data as Excel (.xlsx)",
            data=excel_buffer.getvalue(),
            file_name="quantum_scrutiny_report.xlsx",
            mime="application/vnd.openxmlformats-officedocument.spreadsheetml.sheet",
            help="Downloads the full table including all extracted fields and shortlist status."
        )

# End of file