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import gradio as gr
import pdfplumber
import pandas as pd
import re
import warnings
import logging
import os
from dotenv import load_dotenv
import json
from concurrent.futures import ThreadPoolExecutor
from typing import List, Dict, Optional
import traceback
import time
import openai

# Debugging setup
DEBUG = True
debug_messages = []

def log_debug(message):
    """Log debug messages and keep last 20 entries"""
    if DEBUG:
        timestamp = time.strftime("%Y-%m-%d %H:%M:%S")
        full_message = f"[{timestamp}] {message}"
        debug_messages.append(full_message)
        print(full_message)  # Print to console
        # Keep only the last 20 messages
        if len(debug_messages) > 20:
            debug_messages.pop(0)
        return "\n".join(debug_messages)
    return ""

# Initialize debug logging
log_debug("Application starting...")

# Load environment variables
load_dotenv()

# Configure logging for pdfminer
logging.getLogger('pdfminer').setLevel(logging.ERROR)

# Suppress specific warnings
warnings.filterwarnings("ignore", category=UserWarning, message="CropBox.*")

 
# ================= DataFrame initializations =================
try:
    job_families_df = pd.read_csv("job_families1.csv", on_bad_lines='skip')
    log_debug(f"Reading {len(job_families_df)} job_families")
except Exception as e:
    log_debug(f"Error reading job_families1.csv: {e}")
    job_families_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately

try:
    occupational_groups_df = pd.read_csv("occupational_groups.csv", on_bad_lines='skip')
    log_debug(f"Reading  {len(occupational_groups_df)} occupational_groups")
except Exception as e:
    log_debug(f"Error reading occupational_groups.csv: {e}")
    occupational_groups_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately

try:
    esco_df = pd.read_csv("ISCOGroups_en.csv", on_bad_lines='skip', dtype={'code': str}  ) # Force 'code' to be read as string
    log_debug(f"Reading  {len(esco_df)}  esco groups")
except Exception as e:
    log_debug(f"Error reading ISCOGroups_en.csv: {e}")
    esco_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately

try:
    esco_level5_df = pd.read_csv("occupations_en.csv", on_bad_lines='skip',  dtype={'code': str, 'iscoGroup': str, }  ) # Force 'code' to be read as string
    log_debug(f"Reading  {len(esco_level5_df)} esco_level5")
except Exception as e:
    log_debug(f"Error reading occupations_en.csv: {e}")
    esco_level5_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately    

try:
    esco_skill_df = pd.read_csv("skills_en.csv", on_bad_lines='skip')
    log_debug(f"Reading  {len(esco_skill_df)}  esco_skill")
except Exception as e:
    log_debug(f"Error reading skills_en.csv: {e}")
    esco_skill_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately
        
try:
    esco_skill_map_df = pd.read_csv("occupationSkillRelations_en.csv", on_bad_lines='skip')
    log_debug(f"Reading  {len(esco_skill_map_df)} esco_skill_map")
except Exception as e:
    log_debug(f"Error reading occupationSkillRelations_en.csv: {e}")
    esco_skill_map_df = pd.DataFrame()  # Fallback to an empty DataFrame or handle the error appropriately


# ================= LLM API =================
def initialize_openai_client():
    try:
        client = openai.AzureOpenAI(
            api_key=os.getenv("AZURE_OPENAI_API_KEY"),
            azure_endpoint=os.getenv("AZURE_OPENAI_ENDPOINT"),
            api_version=os.getenv("OPENAI_API_VERSION"),
        )
        return client
    except Exception as e:
        raise Exception(f"Failed to initialize OpenAI client: {e}")

client = initialize_openai_client()

def gpt_call(system_prompt: str, user_prompt: str) -> str:
    try:
        response = client.chat.completions.create(
            model=os.getenv("AZURE_DEPLOYMENT_NAME"),
            messages=[
                {"role": "system", "content": system_prompt},
                {"role": "user", "content": user_prompt}
            ],
            temperature=0.3
        )
        return response.choices[0].message.content.strip()
    except Exception as e:
        return f"ERROR: {e}"
        
# ================= Extract text =================
def extract_text_from_pdf(pdf_path: str) -> str:
    text = ""
    with pdfplumber.open(pdf_path) as pdf:
        for page in pdf.pages:
            page_text = page.extract_text()
            if page_text:
                text += page_text + "\n"
            for table in page.extract_tables():
                for row in table:
                    for cell in row:
                        if isinstance(cell, str):
                            text += cell + " "
                    text += "\n"
    return text

# ================= AI Functions =================
def extract_section_from_pdf(full_text: str, section_title: str) -> str:
    user_prompt = f"""
    Carefully evaluate the provided position description (PD) document and extract the content of the section titled "{section_title}" from the following text.
    Return only the content of the section, without the title.
    If the section cannot be found or explicitly mentioned in the text, use "N/A" as the default value.
    Do not repeat in the extracted text the name of the section.
    Extract precisely all the related text.
    Text of the position description:
    {full_text}
    Section to identify: "{section_title}":
    """
    return gpt_call("You are an HR expert working for IOM.", user_prompt)

def classify_job_family(responsibilities: List[str]) -> str:    

    job_family_list = "\n".join(f"- {row['Job_family']}: {row['Job_subfamily']}" for _, row in job_families_df.iterrows())
    user_prompt = f"""
    Here is a list of job responsibilities:
    {responsibilities}
    Here is a list of Job families:
    {job_family_list}
    Based on the responsibilities, suggest the most relevant job family and subfamily from the list above.
    **Important:**
    - Return ONLY the job family, nothing else.
    - The job family should be exactly as shown in the list.
    - Do not include any additional text or explanation.
    """
    return gpt_call("Suggest job family and subfamily based on responsibilities.", user_prompt)

def get_level_CCOG_info(df, code, level_name):
    matches = df[df['code'] == code]
    if len(matches) == 0:
        log_debug(f"Warning: No {level_name} found for CCOG code {code}")
        return {
            f'{level_name}_CCOG_code': code,
            f'{level_name}_CCOG_name': 'UNKNOWN',
            f'{level_name}_CCOG_desc': 'No matching occupation found'
        }
    info = matches.iloc[0]
    return {
        f'{level_name}_CCOG_code': code,
        f'{level_name}_CCOG_name': info['occupation'],
        f'{level_name}_CCOG_desc': info.get('occupation_description', '')
    }

def code_sanitize(input_string, valid_codes):
    for code in valid_codes:
        if code in input_string:
            return code
    return None

def classify_occupational_group_by_level(responsibilities: List[str]) -> dict:

    result = {}
    try:
        for level in range(1, 5):
            level_df = occupational_groups_df[occupational_groups_df['level'] == f"Level {level}"]
            if level > 1:
                prev_level_code = result[f'Level_{level-1}_CCOG_code']
                level_df = level_df[level_df['code'].str.startswith(prev_level_code)]
            job_occupation_list = "\n".join(f"- {row['code']}: {row['occupation']} - {row.get('occupation_description', '')}" for _, row in level_df.iterrows())
            list_output = level_df["code"].tolist()
            user_prompt = f"""
            Here is a list of job responsibilities:
            {responsibilities}
            Here is a list of level {level} Occupation classifications:
            {job_occupation_list}
            Based on the responsibilities, suggest the most relevant level {level} Occupation code from within this list: {', '.join(map(str, list_output))}.
            **Important:**
            - Return ONLY the code, nothing else.
            - The code should be exactly as shown in the list.
            - Do not include any additional text or explanation.
            """
            level_code = gpt_call(f"Identify level {level} occupational group", user_prompt).strip()
            level_code = code_sanitize(level_code, list_output)
            result.update(get_level_CCOG_info(level_df, level_code, f'Level_{level}'))
    except Exception as e:
        log_debug(f"Error during classification: {str(e)}")
        result['error'] = str(e)
    return result


 
def classify_esco_by_hierarchical_level(responsibilities: List[str]) -> dict:
    """
    Classifies job responsibilities into occupational groups at 4 levels,
    [European Skills, Competences, Qualifications, and Occupations (ESCO)](https://esco.ec.europa.eu/en)
    returning codes, names, and descriptions for each level.
    Args:
        responsibilities: List of job responsibility strings
    Returns:
        Dictionary containing classification information or error message
    """



    result = {}

    ######################## Level 1 ###################
    # Get all top-level codes (single character/digit)
    top_level_codes = sorted({
        code for code in esco_df['code']
        if len(code) == 1 and code.isalnum()
    })

    level1_code = None
    if top_level_codes:
        level1_df = esco_df[esco_df['code'].isin(top_level_codes)]
        job_occupation_list = "\n".join(f"- {row['code']}: {row['preferredLabel']} - {row['description']}"
                                        for _, row in level1_df.iterrows())
        list1_output = level1_df["code"].tolist()  # Convert Series to list
        list1 = ", ".join(map(str, list1_output))  # Join elements with comma

    user_prompt1 = f"""
    Here is a list of job responsibilities:
    {responsibilities}

    Select the most relevant top-level code from these options:
    {job_occupation_list}

    Based on the responsibilities, suggest the most relevant level 1 Occupation code from within this list: {list1}.
        **Important:**
        - Return ONLY the code, nothing else.
        - The code should be exactly as shown in the list.
        - Do not include any additional text or explanation.
    """
    level1_code = gpt_call("Identify top-level occupational group", user_prompt1).strip()
    level1_code = code_sanitize(level1_code, list1_output)
    result.update(get_level_ESCO_info(level1_df, level1_code, 'Level_1'))

    ######################## Level 2 ###################

    level2_code = None
    if level1_code:
        level2_df = esco_df[
            (esco_df['code'].str.startswith(level1_code)) & (esco_df['code'].str.len() == len(level1_code) + 1)
        ]
        if not level2_df.empty:
            level2_options = "\n".join(f"- {row['code']}: {row['preferredLabel']} - {row['description']}"
                                        for _, row in level2_df.iterrows())
        list2_output = level2_df["code"].tolist()  # Convert Series to list
        list2 = ", ".join(map(str, list2_output))  # Join elements with comma

        user_prompt2 = f"""
    Here is a list of job responsibilities:
    {responsibilities}

    Here is a list of level 2 Occupation classifications within {level1_code}:
    {level2_options}

    Based on the responsibilities, suggest the most relevant level 2 Occupation code from within this list: {list2}.
        **Important:**
        - Return ONLY the code, nothing else.
        - The code should be exactly as shown in the list.
        - Do not include any additional text or explanation.
    """
        level2_code = gpt_call("Identify second-level occupational group", user_prompt2).strip()
        level2_code = code_sanitize(level2_code, list2_output)
        result.update(get_level_ESCO_info(level2_df, level2_code, 'Level_2'))

    ######################## Level 3 ###################
    level3_code = None
    if level2_code:
        level3_df = esco_df[
            (esco_df['code'].str.startswith(level2_code)) & (esco_df['code'].str.len() == len(level2_code) + 1)
        ]
        if not level3_df.empty:
            level3_options = "\n".join(f"- {row['code']}: {row['preferredLabel']} - {row['description']}"
                                        for _, row in level3_df.iterrows())
        list3_output = level3_df["code"].tolist()  # Convert Series to list
        list3 = ", ".join(map(str, list3_output))  # Join elements with comma

        user_prompt3 = f"""
    Here is a list of job responsibilities:
    {responsibilities}

    Here is a list of level 3 Occupation classifications within {level2_code}:
    {level3_options}

    Based on the responsibilities, suggest the most relevant level 3 Occupation code from within this list: {list3}.

        **Important:**
        - Return ONLY the code, nothing else.
        - The code should be exactly as shown in the list.
        - Do not include any additional text or explanation.

    """
        level3_code = gpt_call("Identify third-level occupational group", user_prompt3).strip()
        level3_code = code_sanitize(level3_code, list3_output)
        result.update(get_level_ESCO_info(level3_df, level3_code, 'Level_3'))

    ######################## Level 4 ###################
    level4_code = None
    if level3_code:
        level4_df = esco_df[
            (esco_df['code'].str.startswith(level3_code)) & (esco_df['code'].str.len() == len(level3_code) + 1)
        ]
        if not level4_df.empty:
            level4_options = "\n".join(f"- {row['code']}: {row['preferredLabel']} - {row['description']}"
                                        for _, row in level4_df.iterrows())
        list4_output = level4_df["code"].tolist()  # Convert Series to list
        list4 = ", ".join(map(str, list4_output))  # Join elements with comma
        user_prompt4 = f"""
    Here is a list of job responsibilities:
    {responsibilities}

    Here is a list of level 4 Occupation classifications within {level3_code}:
    {level4_options}

    Based on the responsibilities, suggest the most relevant level 4 Occupation code from within this list: {list4}.
        **Important:**
        - Return ONLY the code, nothing else.
        - The code should be exactly as shown in the list.
        - Do not include any additional text or explanation.
    """

        level4_code = gpt_call("Identify fourth-level occupational group", user_prompt4).strip()
        level4_code = code_sanitize(level4_code, list4_output)
        result.update(get_level_ESCO_info(level4_df, level4_code, 'Level_4'))

    ######################## Level 5 ###################
    level5_code = None
    if level4_code:
        level5_df = esco_level5_df[
            (esco_level5_df['iscoGroup'].str.startswith(level4_code))
        ]
        if not level5_df.empty:
            level5_options = "\n".join(f"- {row['code']}: {row['preferredLabel']} - {row['description']}"
                                        for _, row in level5_df.iterrows())

        list5_output = level5_df["code"].tolist()  # Convert Series to list
        list5 = ", ".join(map(str, list5_output))  # Join elements with comma
        user_prompt5 = f"""
    Here is a list of job responsibilities:
    {responsibilities}

    Here is a list of level 4 Occupation classifications within {level4_code}:
    {level5_options}

    Based on the responsibilities, suggest the most relevant level 4 Occupation code from within this list: {list5}.
        **Important:**
        - Return ONLY the code as stated in the provided list, nothing else.
        - The code should be exactly as shown in the list.
        - Do not include any additional text, occupation code or explanation.
    """

        level5_code = gpt_call("Identify fifth-level occupational group", user_prompt5).strip()
        # Handle the case where the LLM might return just the code part
        level5_code = code_sanitize(level5_code, list5_output)
        result.update(get_level_ESCO_info(level5_df, level5_code, 'Level_5'))

    ## Et voila!!
    return result



def get_level_ESCO_info(df, code, level_name):
    """Helper function to get level info with error handling"""
    matches = df[df['code'] == code]
    if len(matches) == 0:
        log_debug(f"Warning: No {level_name} found for ESCO code {code}")
        return {
            f'{level_name}_ESCO_code': code,
            f'{level_name}_ESCO_name': 'UNKNOWN',
            f'{level_name}_ESCO_desc': 'No matching occupation found'
        }
    info = matches.iloc[0]
    return {
        f'{level_name}_ESCO_code': code,
        f'{level_name}_ESCO_name': info['preferredLabel'],
        f'{level_name}_ESCO_desc': info.get('description', '')
    }


def get_skills_info_esco(Level_5_code):
 
    matches = esco_level5_df[esco_level5_df['code'] == Level_5_code]
    conceptUris = matches['conceptUri'].values.tolist()
         
    skills = esco_skill_map_df[esco_skill_map_df['occupationUri'].isin(conceptUris)]
    skillUris = skills['skillUri'].values.tolist()

    
    thisskillslist = esco_skill_df[esco_skill_df['conceptUri'].isin(skillUris)]
    result = thisskillslist[['preferredLabel', 'conceptUri', 'description']].drop_duplicates()
    result = result.rename(columns={'preferredLabel': 'skill_name', 'description': 'skill_description', 'conceptUri': 'skill_code'})
    return result

def review_skills(Level_5_code: str, top_n: int = 10) -> List[Dict[str, str]]:
    matches = esco_level5_df[esco_level5_df['code'] == Level_5_code]
    esco_occup = matches['preferredLabel'].values.tolist()
    skill_filtered = get_skills_info_esco(Level_5_code)
    skill_filtered_options = "\n".join(f"- {row['skill_code']}: {row['skill_name']} - {row['skill_description']}" for _, row in skill_filtered.iterrows())
    prompt = f"""
    Here is a list of skills:
    {skill_filtered_options}
    Filter the skills that are relevant in the context of the work of the International Organisation for Migration.
    Ensure that skills are relevant in the context of a {esco_occup} working for a non-profit public organization.
    Required JSON structure:
    {{
        "skills": [
            {{
                "skill_name": "string",
                "skill_description": "string",
                "skill_code": "string"
            }}
        ]
    }}
    **Important:**
    - Do not duplicate any records of skills
    - Keep only the 10 most relevant skills
    - Return ONLY the JSON object with no other text
    - Use double quotes for all strings
    - No trailing commas in arrays/objects
    - No markdown formatting (no ```json)
    - No text before or after the JSON
    - Escape all special characters in strings
    - Ensure all brackets are properly closed
    - No trailing commas in arrays/objects, especially before closing brackets
    """
    raw = gpt_call("You are an HR expert working for the International Organisation for Migration and with in-depth knowledge of the European Skills, Competences, Qualifications and Occupations. Extract skills required for this position.", prompt)
    json_text = _extract_json(raw)
    if not json_text:
        return []
    try:
        result = json.loads(json_text)
        skills = result.get("skills", [])
    except json.JSONDecodeError as e:
        log_debug(f"❌ JSON Skills parsing error: {e}")
        log_debug(f"🔍 Problematic JSON Skills: {json_text}")
        return []
    validated_skills = []
    for skill in skills:
        try:
            validated = {
                "skill_name": str(skill["skill_name"]).strip(),
                "skill_description": str(skill["skill_description"]).strip(),
                "skill_code": str(skill["skill_code"]).strip()
            }
            validated_skills.append(validated)
        except (KeyError, TypeError) as e:
            log_debug(f"⚠️ Skipping invalid skill: {skill}. Error: {e}")
            continue
    return validated_skills[:top_n]

def extract_skills(responsibilities: List[str], top_n: int = 10) -> List[Dict[str, str]]:
    prompt = f"""
    Here is a list of job responsibilities:
    {responsibilities}
    List the required skills and knowledge as bullet points (without numbers) using ESCO-style terms.
    For each Skill:
    1. skill_name: precise skills name as used in ESCO framework
    2. skill_description: add the long description as mentioned in ESCO framework
    3. skill_code: include the detailed corresponding ESCO code for that skill.
    Required JSON structure:
    {{
        "skills": [
            {{
                "skill_name": "string",
                "skill_description": "string",
                "skill_code": "string"
            }}
        ]
    }}
    **Important:**
    - Return ONLY the JSON object with no other text
    - Use double quotes for all strings
    - No trailing commas in arrays/objects
    - No markdown formatting (no ```json)
    - No text before or after the JSON
    - Escape all special characters in strings
    - Ensure all brackets are properly closed
    """
    raw = gpt_call("You are an HR expert working for the International Organisation for Migration and with in-depth knowledge of the European Skills, Competences, Qualifications and Occupations. Extract skills required for this position.", prompt)
    json_text = _extract_json(raw)
    if not json_text:
        return []
    try:
        result = json.loads(json_text)
        skills = result.get("skills", [])
    except json.JSONDecodeError as e:
        log_debug(f"❌ JSON Skills extrac parsing error: {e}")
        log_debug(f"🔍 Problematic JSON Skills extract: {json_text}")
        return []
    validated_skills = []
    for skill in skills:
        try:
            validated = {
                "skill_name": str(skill["skill_name"]).strip(),
                "skill_description": str(skill["skill_description"]).strip(),
                "skill_code": str(skill["skill_code"]).strip()
            }
            validated_skills.append(validated)
        except (KeyError, TypeError) as e:
            log_debug(f"⚠️ Skipping invalid skill extract: {skill}. Error: {e}")
            continue
    return validated_skills[:top_n]

def map_proficiency_and_assessment(skills: List[str], responsibilities: List[str]) -> List[Dict]:
    prompt = f"""
    Here is a list of job responsibilities: {responsibilities} that have been associated with the following skills: {skills}
    For each skill, accounting for the context defined within the responsibilities, return a JSON object with:
        - skill_name: the name of the skill
        - importance: essential or optional
        - type: "skill/competence" or "knowledge"
        - proficiency_level: Basic, Intermediate, or Advanced
        - distinctive_elements: what specific and distinctive elements are required at this defined proficiency level?
        - resume_signals: what to look for in a resume to assess this skill?
        - assessment_method: what is the preferred assessment method to accurately assess this skill?
    Respond ONLY with a list of dictionaries in valid JSON.
    Use double quotes for all strings. No markdown, no commentary, no trailing commas.
    """
    raw = gpt_call("Define proficiency level and assessment for each skill.", prompt)
    json_text = _extract_json_array(raw)
    if not json_text:
        return []
    try:
        results = json.loads(json_text)
    except json.JSONDecodeError as e:
        log_debug(f"❌ JSON proficiency parsing error: {e}")
        log_debug(f"🔍 Problematic JSON proficiency: {json_text}")
        return []
    validated = []
    for item in results:
        try:
            validated.append({
                "skill_name": str(item["skill_name"]).strip(),
                "importance": item["importance"].strip().lower(),
                "type": item["type"].strip().lower(),
                "proficiency_level": item["proficiency_level"].strip().capitalize(),
                "distinctive_elements": item["distinctive_elements"].strip(),
                "resume_signals": item["resume_signals"].strip(),
                "assessment_method": item["assessment_method"].strip()
            })
        except (KeyError, TypeError) as e:
            log_debug(f"⚠️ Skipping invalid profiency item: {item}. Error: {e}")
            continue
    return validated

def _extract_json_array(raw: str) -> str:
    json_start = raw.find('[')
    json_end = raw.rfind(']') + 1
    if json_start == -1 or json_end == 0:
        log_debug(f"❌ No JSON array found in response: {raw}")
        return ""
    json_text = raw[json_start:json_end]
    json_text = re.sub(r',\s*([}\]])', r'\1', json_text)
    json_text = re.sub(r'[\n\r\t]', ' ', json_text)
    json_text = re.sub(r'(?<!\\)"', '"', json_text)
    return json_text

def extract_qualification(responsibilities: List[str]) -> List[str]:
    prompt = f"""
    Here is a list of job responsibilities: {responsibilities}
    Infer the required level within the European Qualifications Framework (EQF) to implement them.
    Identify the potential diplomas to testify such qualification
    """
    raw = gpt_call("You are an HR expert that excel in developing competency-based interview questions.", prompt)
    return [line.strip("-• ").strip() for line in raw.splitlines() if line.strip()]

def build_interview(responsibilities: List[str], skill_assess: List[str]) -> List[str]:
    prompt = f"""
    Here is a list of job responsibilities: {responsibilities} and related skills: {skill_assess}
    Output: A structured 40-minute interview with:
        Opening questions (5 min)
        Core competency-based questions (30 min, 5-6 questions)
        Closing & candidate questions (5 min)
    """
    raw = gpt_call("You are an HR expert that excel in developing competency-based interview questions.", prompt)
    return [line.strip("-• ").strip() for line in raw.splitlines() if line.strip()]

def _extract_json(raw: str) -> str:
    json_start = raw.find('{')
    json_end = raw.rfind('}') + 1
    if json_start == -1 or json_end == 0:
        log_debug(f"❌ No JSON found in response: {raw}")
        return ""
    json_text = raw[json_start:json_end]
    json_text = re.sub(r',\s*([}\]])', r'\1', json_text)
    json_text = re.sub(r'[\n\r\t]', ' ', json_text)
    json_text = re.sub(r'\s{2,}', ' ', json_text)
    json_text = re.sub(r'\\(?!["\\/bfnrtu])', r'\\\\', json_text)
    json_text = json_text.strip()
    return json_text

# ================= Format Skills Visualisation =================
def format_skill_cards(skills_data):
    if not skills_data:
        return "No skills data available"
    
    cards = []
    for skill in skills_data:
        card = f"""
        <div class='skill-card'>
            <div class='skill-header'>
                <h3>{skill.get('skill_name', 'Unnamed Skill')}</h3>
                <div class='skill-pill {skill.get("type", "").lower()}'>{skill.get("type", "").capitalize()}</div>
                <div class='skill-pill {skill.get("importance", "").lower()}'>{skill.get("importance", "").capitalize()}</div>
            </div>
            <div class='skill-body'>
                <p><strong>Description:</strong> {skill.get('skill_description', '')}</p>
                <div class='skill-meta'>
                    <span class='proficiency'>
                        <strong>Level:</strong> 
                        <progress value={get_progress_value(skill.get("proficiency_level"))} max="3"></progress>
                        {skill.get("proficiency_level", "").capitalize()}
                    </span>
                    <span class='assessment'>
                        <strong>Assessment:</strong> {skill.get("assessment_method", "")}
                    </span>
                </div>
            </div>
        </div>
        """
        cards.append(card)
    
    return f"<div class='skills-container'>{''.join(cards)}</div>"

def get_progress_value(level):
    level_map = {"basic": 1, "intermediate": 2, "advanced": 3}
    return str(level_map.get(level.lower(), 1))


# ================= Process Analysis =================
from concurrent.futures import ThreadPoolExecutor

def process_pdf(file):
    if file is None:
        return (
            "Please upload a PDF file.",
            "",
            "",
            "",
            {},
            "",
            [],
            {},
            {},
            "No file uploaded."
        )

    try:
        extracted_text = extract_text_from_pdf(file.name)
        responsibilities = extract_section_from_pdf(extracted_text, section_title="Responsibilities and Accountabilities")
        if not responsibilities:
            log_debug(f"Skipping {os.path.basename(file.name)} - no responsibilities section found")
            return (
                os.path.basename(file.name),
                "",
                "",
                "",
                {},
                "",
                [],
                {},
                {},
                "No responsibilities section found."
            )

        # Use ThreadPoolExecutor to parallelize independent tasks
        with ThreadPoolExecutor() as executor:
            # Submit tasks to the executor
            job_family_future = executor.submit(classify_job_family, responsibilities)
            occ_group_future = executor.submit(classify_occupational_group_by_level, responsibilities)
            esco_occ_future = executor.submit(classify_esco_by_hierarchical_level, responsibilities)
            qualification_future = executor.submit(extract_qualification, responsibilities)
            skills_future = executor.submit(extract_skills, responsibilities)

            # Retrieve results from futures
            job_family = job_family_future.result()
            occ_group = occ_group_future.result()
            esco_occ = esco_occ_future.result()
            qualification = qualification_future.result()
            skills = skills_future.result()

        log_debug(f"Identified {job_family}")

        skill_map = map_proficiency_and_assessment(skills, responsibilities)

        has_esco = esco_occ.get("Level_5_ESCO_code") is not None
        skill_esco_extract = []
        skill_esco_map = []
        if has_esco:
            Level_5_code = esco_occ["Level_5_ESCO_code"]
            skill_esco_extract = review_skills(Level_5_code)
            skill_esco_map = map_proficiency_and_assessment(skill_esco_extract, responsibilities)
        else:
            log_debug(f"No Level 5 ESCO code found for {os.path.basename(file.name)}, skipping ESCO skills mapping")

        time.sleep(6)
        assessment_lookup = {item['skill_name']: item for item in skill_map}
        joined_skills = [
            {
                "skill_name": skill["skill_name"],
                "skill_description": skill["skill_description"],
                "skill_code": skill["skill_code"],
                "importance": assessment_lookup.get(skill["skill_name"], {}).get("importance"),
                "type": assessment_lookup.get(skill["skill_name"], {}).get("type"),
                "proficiency_level": assessment_lookup.get(skill["skill_name"], {}).get("proficiency_level"),
                "distinctive_elements": assessment_lookup.get(skill["skill_name"], {}).get("distinctive_elements"),
                "resume_signals": assessment_lookup.get(skill["skill_name"], {}).get("resume_signals"),
                "assessment_method": assessment_lookup.get(skill["skill_name"], {}).get("assessment_method")
            }
            for skill in skills
        ]

        # Format skills before returning
        formatted_skills = format_skill_cards(joined_skills)
        
        joined_skills_esco = []
        if has_esco and skill_esco_extract:
            assessment_esco_lookup = {item['skill_name']: item for item in skill_esco_map}
            joined_skills_esco = [
                {
                    "skill_name": skill["skill_name"],
                    "skill_description": skill["skill_description"],
                    "skill_code": skill["skill_code"],
                    **assessment_esco_lookup.get(skill["skill_name"], {})
                }
                for skill in skill_esco_extract
            ]

        interview = build_interview(responsibilities, skills)

        # Prepare the results for each output component
        ccoq_levels = {f"Level_{i}_CCOG_{field}": occ_group.get(f"Level_{i}_CCOG_{field}")
                       for i in range(1, 5) for field in ["code", "name", "desc"]}

        if has_esco:
            esco_levels = {f"Level_{i}_ESCO_{field}": esco_occ.get(f"Level_{i}_ESCO_{field}")
                           for i in range(1, 6) for field in ["code", "name", "desc"]}
            esco_skills = {
                "file": os.path.basename(file.name),
                "classified_job_family": job_family,
                "skills": joined_skills_esco
            }
        else:
            esco_levels = {f"Level_{i}_ESCO_{field}": None
                           for i in range(1, 6) for field in ["code", "name", "desc"]}
            esco_skills = None

        debug_message = "Processing completed successfully."
        return (
            os.path.basename(file.name),
            responsibilities,
            job_family,
            "\n".join(qualification),
            ccoq_levels,
            "\n".join(interview),
            joined_skills,
            esco_levels,
            esco_skills,
            debug_message if DEBUG else None
        )

    except Exception as e:
        error_message = f"Error processing PDF: {str(e)}"
        return (
            error_message,
            "",
            "",
            "",
            {},
            "",
            [],
            {},
            {},
            error_message
        )
# ================= Build Word Report =================
from docx import Document
import os
import re
import time
import tempfile
from typing import Dict, List, Union

def generate_word_document(
    file_name: str,
    responsibilities: str,
    job_family: str,
    qualification: str,
    ccoq_levels: Dict,
    interview: str,
    skills: List[Dict],
    esco_levels: Dict,
    esco_skills: Dict
) -> str:
    """
    Generate a comprehensive Word document from analysis results with multiple fallback mechanisms.
    
    Args:
        file_name: Original PDF filename
        responsibilities: Extracted responsibilities text
        job_family: Identified job family
        qualification: Required qualifications
        ccoq_levels: CCOG classification levels
        interview: Generated interview questions
        skills: List of required skills
        esco_levels: ESCO classification levels
        esco_skills: ESCO mapped skills
        
    Returns:
        Path to the generated Word document
    """
    # Initialize document with metadata
    doc = Document()
    doc.core_properties.author = "IOM Talent Management System"
    doc.core_properties.title = "Position Description Analysis Report"
    
    # Default values for all fields
    default_values = {
        "file": "Unknown file",
        "responsibilities": "No responsibilities extracted",
        "classified_job_family": "No job family identified",
        "qualification": ["No qualification information available"],
        "interview": ["No interview questions generated"],
        "skills": {"skills": [{"skill_name": "No skills identified", "description": "", "code": ""}]},
        "skills_esco": {"skills": [{"skill_name": "No ESCO skills identified", "description": "", "code": ""}]}
    }

    # Safely build the result dictionary with fallbacks
    try:
        result = {
            "file": file_name if file_name and isinstance(file_name, str) else default_values["file"],
            "responsibilities": responsibilities if responsibilities else default_values["responsibilities"],
            "classified_job_family": job_family if job_family else default_values["classified_job_family"],
            "qualification": qualification.split('\n') if qualification else default_values["qualification"],
            "interview": interview.split('\n') if interview else default_values["interview"],
            "skills": {"skills": skills} if skills and isinstance(skills, list) else default_values["skills"],
            "skills_esco": esco_skills if esco_skills and isinstance(esco_skills, dict) else default_values["skills_esco"]
        }
        
        # Add level information with validation
        if ccoq_levels and isinstance(ccoq_levels, dict):
            result.update({k: v for k, v in ccoq_levels.items() if v is not None})
        
        if esco_levels and isinstance(esco_levels, dict):
            result.update({k: v for k, v in esco_levels.items() if v is not None})

    except Exception as e:
        log_debug(f"Error building result dictionary: {str(e)}")
        result = default_values


    
    # ================= DOCUMENT CONTENT GENERATION =================
    try:
        # Document header
        doc.add_heading('Job Description Analysis Report', level=0)
        doc.add_paragraph(f"Generated on {time.strftime('%Y-%m-%d %H:%M:%S')}")
        doc.add_paragraph("International Organization for Migration", style="Intense Quote")
        
        # Metadata table
        table = doc.add_table(rows=1, cols=2)
        table.style = 'Light Shading Accent 1'
        hdr_cells = table.rows[0].cells
        hdr_cells[0].text = 'Field'
        hdr_cells[1].text = 'Value'
        
        def _add_table_row(table, field, value):
            row = table.add_row().cells
            row[0].text = field
            row[1].text = str(value or "Not available")

        _add_table_row(table, "File Name", result["file"])
        _add_table_row(table, "Job Family", result["classified_job_family"])
        
        # Section generator with error handling
        def _add_section(heading, content, level=2):
            doc.add_heading(heading, level=level)
            if not content:
                doc.add_paragraph("No information available", style='Subtle Emphasis')
                return
                
            if isinstance(content, (list, tuple)):
                for item in content:
                    if item and str(item).strip():
                        doc.add_paragraph(str(item).strip(), style='List Bullet' if level > 2 else None)
            elif isinstance(content, dict):
                for k, v in content.items():
                    if v is not None:
                        doc.add_paragraph(f"{k}: {v}")
            elif isinstance(content, str):
                doc.add_paragraph(content)

        # Core sections
        _add_section("1. Responsibilities", result["responsibilities"])
        _add_section("2. Qualifications", result["qualification"])
        
        # Skills sections with robust handling
        def _add_skills_section(heading, skills_data):
            doc.add_heading(heading, level=2)
            if not skills_data or not skills_data.get("skills"):
                doc.add_paragraph("No skills information available", style='Subtle Emphasis')
                return
            
            try:
                skills_table = doc.add_table(rows=1, cols=4)
                skills_table.style = 'Medium List 2 Accent 1'
                hdr = skills_table.rows[0].cells
                hdr[0].text = 'Skill'
                hdr[1].text = 'Description'
                hdr[2].text = 'Proficiency'
                hdr[3].text = 'Assessment'
                
                for skill in skills_data["skills"]:
                    if not isinstance(skill, dict):
                        continue
                        
                    row = skills_table.add_row().cells
                    row[0].text = str(skill.get("skill_name", "Unnamed skill"))
                    row[1].text = str(skill.get("skill_description", ""))[:100] + ("..." if len(str(skill.get("skill_description", ""))) > 100 else "")
                    row[2].text = str(skill.get("proficiency_level", "Not specified"))
                    row[3].text = str(skill.get("assessment_method", "Not specified"))
            except Exception as e:
                doc.add_paragraph(f"Could not display skills table: {str(e)}", style='Subtle Emphasis')

        _add_skills_section("3. Required Skills", result["skills"])
        _add_skills_section("4. ESCO Mapped Skills", result["skills_esco"])
        
        # Classification sections
        def _add_classification_section(heading, prefix, levels=4):
            doc.add_heading(heading, level=2)
            found = False
            for i in range(1, levels+1):
                code = result.get(f"{prefix}_{i}_code")
                name = result.get(f"{prefix}_{i}_name")
                desc = result.get(f"{prefix}_{i}_desc")
                
                if any([code, name, desc]):
                    found = True
                    doc.add_heading(f"Level {i}", level=3)
                    if code:
                        doc.add_paragraph(f"Code: {code}")
                    if name:
                        doc.add_paragraph(f"Name: {name}")
                    if desc:
                        doc.add_paragraph(f"Description: {desc}")
            
            if not found:
                doc.add_paragraph("No classification information available", style='Subtle Emphasis')

        _add_classification_section("5. CCOG Classification", "Level_CCOG")
        _add_classification_section("6. ESCO Classification", "Level_ESCO", levels=5)
        
        # Interview questions
        doc.add_heading("7. Suggested Interview Questions", level=2)
        if result["interview"] and any(q.strip() for q in result["interview"]):
            for i, question in enumerate(result["interview"], 1):
                if question.strip():
                    doc.add_paragraph(f"{i}. {question}", style='List Number')
        else:
            doc.add_paragraph("No interview questions generated", style='Subtle Emphasis')
        
        # Footer
        doc.add_paragraph()
        doc.add_paragraph("Generated by IOM Talent Management AI Tool", style='Footer')

    except Exception as e:
        log_debug(f"Error generating document content: {str(e)}")
        # Fallback to simple error document
        doc = Document()
        doc.add_heading("Partial Report Generated", level=1)
        doc.add_paragraph(f"Some sections could not be generated due to: {str(e)}")

    # ================= FILE SAVING WITH MULTIPLE FALLBACKS =================
    try:
        # Generate appropriate filename
        if file_name and isinstance(file_name, str):
            base_name = os.path.splitext(os.path.basename(file_name))[0]
            clean_name = re.sub(r'[^\w\-]', '_', base_name)[:50]  # Sanitize and truncate
            output_filename = f"{clean_name}_analysis_{time.strftime('%Y%m%d')}.docx"
        else:
            output_filename = f"job_analysis_{time.strftime('%Y%m%d_%H%M%S')}.docx"
        
        # Try saving to reports directory first
        output_dir = "generated_reports"
        try:
            os.makedirs(output_dir, exist_ok=True)
            output_path = os.path.join(output_dir, output_filename)
            doc.save(output_path)
            return output_path
        except PermissionError:
            # Fallback to system temp directory
            temp_dir = tempfile.gettempdir()
            temp_path = os.path.join(temp_dir, output_filename)
            doc.save(temp_path)
            return temp_path
            
    except Exception as e:
        # Ultimate fallback with error document
        error_doc = Document()
        error_doc.add_heading("Error Generating Report", level=1)
        error_doc.add_paragraph(f"Could not save report due to: {str(e)}")
        fallback_path = os.path.join(tempfile.gettempdir(), f"error_report_{time.strftime('%Y%m%d_%H%M%S')}.docx")
        error_doc.save(fallback_path)
        return fallback_path


# ================= GRADIO INTERFACE =================
with gr.Blocks(
    title="AI-powered tool to review Job Position Description",
css="""
    @import url('https://fonts.googleapis.com/css2?family=Lato:wght@400;700&display=swap');
    @import url('https://cdnjs.cloudflare.com/ajax/libs/font-awesome/6.4.0/css/all.min.css');
/* Completely disable Gradio's dark theme */
.gradio-container.dark {
    --body-background-fill: white !important;
    --background-fill-primary: white !important;
    --background-fill-secondary: #f8f9fa !important;
    --block-background-fill: white !important;
    --input-background-fill: white !important;
    --block-label-text-color: #212529 !important;
    --body-text-color: #212529 !important;
    --block-title-text-color: var(--primary-color) !important;
    --border-color-primary: #dee2e6 !important;
}
.gradio-container.dark .gr-markdown,
.gradio-container.dark .gr-textbox,
.gradio-container.dark .gr-dropdown,
.gradio-container.dark .output-section {
    background: white !important;
    color: #212529 !important;
    border-color: #dee2e6 !important;
}

/* Set the size of the SVG icon for file download */
.feather-file {
    width: 20px !important; /* Adjust the size as needed */
    height: 20px !important; /* Adjust the size as needed */
}

/* Base Styles */
:root {
    --primary-color: #0033A0;
    --secondary-color: #e67e22;
    --accent-color: #f59e0b;
    --dark-color: #34495e;
    --light-color: #ecf0f1;
    --success-color: #27ae60;
    --warning-color: #f39c12;
    --danger-color: #e74c3c;
    --text-color: #333;
    --text-light: #7f8c8d;
    --border-radius: 8px;
    --box-shadow: 0 4px 6px rgba(0, 0, 0, 0.1);
    --transition: all 0.3s ease;
}
/* Header Styles */
.header {
    text-align: center;
    margin-bottom: 2rem;
    padding: 1rem;
}
.header h1 {
    margin: 0;
    font-family: 'Lato', sans-serif;
    font-size: 2.5rem;
    font-weight: 600;
    color: var(--primary-color);
}
.header p {
    margin: 0.5rem 0 0;
    font-family: 'Lato', sans-serif;
    opacity: 0.9;
    font-size: 1.5rem;
    color: #4b5563;
}
/* Section Titles */
.section-title {
    display: flex;
    align-items: left;
    font-family: 'Lato', sans-serif;
    gap: 0.5rem;
    color: var(--primary-color);
    margin: 1rem 0;
    font-size: 1.25rem;
    font-weight: 600;
}
.section-title i {
    font-size: 1.1em;
    color: var(--accent-color);
}
/* Input Section */
.input-section {
    background: white;
    padding: 0.75rem 0.5rem;
    border: 1px solid #d1d5db;
    border-radius: var(--border-radius);
    box-shadow: var(--box-shadow);
    margin-right: 1rem;
}
/* Output Section */
.output-section {
    background: white;
    padding: 1.5rem;
    border-radius: var(--border-radius);
    box-shadow: var(--box-shadow);
}
/* Form Elements */
.gr-textbox, .gr-dropdown {
    border: 1px solid #ddd;
    border-radius: var(--border-radius) !important;
    padding: 0.75rem 1rem !important;
    transition: var(--transition);
}
.gr-textbox:focus, .gr-dropdown:focus {
    border-color: var(--primary-color) !important;
    box-shadow: 0 0 0 2px rgba(44, 110, 203, 0.2) !important;
    outline: none !important;
}
.gr-textbox::placeholder {
    color: var(--text-light) !important;
    opacity: 0.7 !important;
}
label {
    font-weight: 500 !important;
    color: var(--dark-color) !important;
    margin-bottom: 0.5rem !important;
    display: block !important;
}
/* Buttons */
.btn-primary {
    background: var(--primary-color) !important;
    color: white !important;
    border: none !important;
    border-radius: var(--border-radius) !important;
    padding: 0.75rem 1.5rem !important;
    font-weight: 500 !important;
    transition: var(--transition) !important;
    text-transform: uppercase !important;
    letter-spacing: 0.5px !important;
}
.btn-primary:hover {
    background: #002080 !important;
    transform: translateY(-2px) !important;
    box-shadow: 0 4px 8px rgba(0, 0, 0, 0.15) !important;
}
.btn-primary:active {
    transform: translateY(0) !important;
}

/* Intro */
.intro-box {
        background: #f0f7ff;
        border-left: 4px solid #0033A0;
        border-radius: 4px;
        padding: 16px;
        margin-bottom: 20px;
}
.intro-title {
        color: #0033A0;
        font-weight: 600;
        margin-top: 0 !important;
}
.intro-icon {
        color: #0033A0;
        margin-right: 8px;
}
.benefits-grid {
        display: grid;
        grid-template-columns: repeat(auto-fit, minmax(250px, 1fr));
        gap: 12px;
        margin: 16px 0;
}
.benefit-card {
        background: white;
        padding: 12px;
        border-radius: 8px;
        box-shadow: 0 2px 4px rgba(0,0,0,0.05);
}

/* Skills Card */
.skills-container {
    display: grid;
    grid-template-columns: repeat(auto-fill, minmax(350px, 1fr));
    gap: 1rem;
    padding: 1rem;
}

.skill-card {
    background: white;
    border-radius: 8px;
    box-shadow: 0 2px 8px rgba(0,0,0,0.1);
    overflow: hidden;
    transition: transform 0.2s;
}

.skill-card:hover {
    transform: translateY(-3px);
    box-shadow: 0 4px 12px rgba(0,0,0,0.15);
}

.skill-header {
    background: #0033A0;
    color: white;
    padding: 1rem;
    display: flex;
    flex-wrap: wrap;
    gap: 0.5rem;
    align-items: center;
}

.skill-header h3 {
    margin: 0;
    flex-grow: 1;
    font-size: 1.1rem;
}

.skill-pill {
    padding: 0.25rem 0.5rem;
    border-radius: 999px;
    font-size: 0.8rem;
    font-weight: bold;
}

.skill-pill.skill { background: #4CAF50; }
.skill-pill.knowledge { background: #2196F3; }
.skill-pill.essential { background: #F44336; }
.skill-pill.optional { background: #FF9800; }

.skill-body {
    padding: 1rem;
}

.skill-meta {
    margin-top: 1rem;
    padding-top: 1rem;
    border-top: 1px solid #eee;
    display: flex;
    flex-direction: column;
    gap: 0.5rem;
}

progress {
    width: 100%;
    height: 6px;
    margin-top: 0.25rem;
}

/* Output Markdown */
.gr-markdown {
    background: #f9f9f9;
    padding: 1.5rem;
    border-radius: var(--border-radius);
    border-left: 4px solid var(--primary-color);
}
/* Debug Console */
.gr-textbox[label="⚠️ Console Log"] {
    font-family: monospace !important;
    background: #2c3e50 !important;
    color: #ecf0f1 !important;
    border-radius: var(--border-radius) !important;
    padding: 1rem !important;
}
/* Responsive Layout */
@media (max-width: 768px) {
    .gr-row {
        flex-direction: column !important;
    }
    
    .input-section {
        margin-right: 0 !important;
        margin-bottom: 1rem !important;
    }
}
    """,
    head='''
    <meta name="description" content="AI-powered tool to review Job Position Description.">
    <meta name="keywords" content="HR, Position, Job, Skills, Qualification, Interview">
    <meta name="author" content="Edouard Legoupil | IOM Chief Data Officer">
    <link rel="author" href="https://edouard-legoupil.github.io/">
    <meta property="og:title" content="AI-powered tool to review Job Position Description">
    <meta property="og:description" content="AI-powered tool to review Job Position Description">
    <meta property="og:type" content="website">
    <link rel="icon" href="https://www.iom.int/themes/custom/phoenix/favicon.ico" type="image/vnd.microsoft.icon">
    <link rel="apple-touch-icon" href="https://www.iom.int/sites/g/files/tmzbdl486/files/favicon.ico">
    '''
) as demo:

    # Header section
    with gr.Column():
        with gr.Row():
            with gr.Column():
                gr.HTML("""
                <div class="header">
                    <h1>Position Description Review (Demo)</h1>
                    <p>Use AI to standardise an initial draft position description and identify related Job Family, Occupation, Qualification, match Skills and suggest interview questions.</p>
                </div>
                """)
    # Introduction Section
    with gr.Column(elem_classes="intro-box"):
        gr.Markdown("""

        <div class='benefits-grid'>
            <div class='benefit-card'>
                <p><strong>🔍 Strategic Workforce Management</strong>: Aligns existing positions with standard Job Families as well as with the <a href="https://icsc.un.org/Home/JobClassification">UN Common Classification of Occupational Groups (CCOG)</a> and the <a href="https://esco.ec.europa.eu/en/classification">ESCO classification of the European Commission</a></p>
            </div>
            <div class='benefit-card'>
                <p><strong>⏱️ Time Saver</strong>: Reduces hours of manual research and mapping to minutes</p>
            </div>
            <div class='benefit-card'>
                <p><strong>⚖️ Reduced Recruitment Bias</strong>: Suggest Data-driven skills recommendations using both the description of responsibilities and mapped occupation</p>
            </div>
            <div class='benefit-card'>
                <p><strong>🎯 Better Hiring</strong>: Generates expected qualification description, skills assessment method and tailored interview questions</p>
            </div>
        </div>
        """)
                
    with gr.Row():
        with gr.Column():
            file_input = gr.File(
                        label="Upload a Post Description PDF file", 
                        file_types=[".pdf"])
            submit_btn = gr.Button(
                        value="✨ Analyse Post Description",
                        variant="primary",
                        elem_classes="btn-primary"
            )

    with gr.Row():
        with gr.Column():
            file_name_output = gr.Textbox(label="File Name", interactive=False)
            responsibilities_output = gr.Textbox(label="List of Responsibilities used for the review", lines=5, interactive=False)
            job_family_output = gr.Textbox(label="Classified Job Family", interactive=False)
            skills_output = gr.Textbox(label="Related identified Skills")
            
    with gr.Row():
        gr.HTML("""<p>This mapping uses the <a href="https://icsc.un.org/Home/JobClassification">UN Common Classification of Occupational Groups (CCOG)</a>
.</p>""")
        with gr.Column():
            gr.Markdown("### CCOG Occupation Group Levels")
            ccoq_levels_output = gr.Textbox(label="CCOG Levels")
 
            


    with gr.Row():
        gr.HTML("""<p>This mapping uses the <a href="https://esco.ec.europa.eu/en/classification">ESCO classification of the European Commission</a>.</p>""")
        with gr.Column():
            gr.Markdown("### ESCO Levels")
            esco_levels_output = gr.Textbox(label="ESCO Levels")
        with gr.Column():
            gr.Markdown("### ESCO Skills")
            esco_skills_output = gr.Textbox(label="ESCO Skills")

    with gr.Row():
        with gr.Column():
            gr.Markdown("### Expected Qualifications")
            qualification_output = gr.Textbox(label="Qualification", lines=5, interactive=False)


    with gr.Row():
        with gr.Column():
            gr.Markdown("## Interview Questions")
            interview_output = gr.Textbox(label="Interview Questions", lines=10, interactive=False)



    with gr.Row():
        with gr.Column():
            download_btn = gr.Button(
                        value="📄 Download Word Document",
                        variant="primary",
                        elem_classes="btn-primary")

    if DEBUG:
        with gr.Row():
            with gr.Column():
                debug_console = gr.Textbox(
                    label="⚠️ Execution Log",
                    interactive=False,
                    elem_classes=["debug-console"]
                )

    submit_btn.click(
        fn=process_pdf,
        inputs=file_input,
        outputs=[
            file_name_output,
            responsibilities_output,
            job_family_output,
            qualification_output,
            ccoq_levels_output,
            interview_output,
            skills_output,
            esco_levels_output,
            esco_skills_output,
            debug_console if DEBUG else None
        ]
    )

    download_btn.click(
        fn=generate_word_document,
        inputs=[
            file_name_output,
            responsibilities_output,
            job_family_output,
            qualification_output,
            ccoq_levels_output,
            interview_output,
            skills_output,
            esco_levels_output,
            esco_skills_output
        ],
        outputs=gr.File(label="Download Word Document")
    )

if __name__ == "__main__":
    demo.launch(show_error=True, debug=DEBUG)