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# ui_generators.py
"""
Generates HTML content and Matplotlib plots for the Gradio UI tabs,
and UI components for the Analytics tab.
"""
import pandas as pd
import logging
import matplotlib.pyplot as plt
import matplotlib # To ensure backend is switched before any plt import from other modules if app structure changes
import gradio as gr # Added for UI components

# Switch backend for Matplotlib to Agg for Gradio compatibility
matplotlib.use('Agg')


# Assuming config.py contains all necessary constants
from config import (
    BUBBLE_POST_DATE_COLUMN_NAME, BUBBLE_MENTIONS_DATE_COLUMN_NAME, BUBBLE_MENTIONS_ID_COLUMN_NAME,
    FOLLOWER_STATS_TYPE_COLUMN, FOLLOWER_STATS_CATEGORY_COLUMN, FOLLOWER_STATS_ORGANIC_COLUMN,
    FOLLOWER_STATS_PAID_COLUMN, FOLLOWER_STATS_CATEGORY_COLUMN_DT, UI_DATE_FORMAT, UI_MONTH_FORMAT
)

# Configure logging for this module if not already configured at app level
# logging.basicConfig(level=logging.INFO, format='%(asctime)s - %(levelname)s - %(module)s - %(message)s')

# --- Constants for Button Icons/Text ---
BOMB_ICON = "πŸ’£"
EXPLORE_ICON = "🧭"
FORMULA_ICON = "Ζ’"
ACTIVE_ICON = "❌ Close"


def display_main_dashboard(token_state):
    """Generates HTML for the main dashboard display using data from token_state."""
    if not token_state or not token_state.get("token"):
        logging.warning("Dashboard display: Access denied. No token available.")
        return "❌ Access denied. No token available for dashboard."

    html_parts = ["<div style='padding:10px;'><h3>Dashboard Overview</h3>"]

    # Display Recent Posts
    posts_df = token_state.get("bubble_posts_df", pd.DataFrame())
    html_parts.append(f"<h4>Recent Posts ({len(posts_df)} in Bubble):</h4>")
    if not posts_df.empty:
        cols_to_show_posts = [col for col in [BUBBLE_POST_DATE_COLUMN_NAME, 'text', 'sentiment', 'summary_text', 'li_eb_label'] if col in posts_df.columns]
        if not cols_to_show_posts:
            html_parts.append("<p>No relevant post columns found to display.</p>")
        else:
            display_df_posts = posts_df.copy()
            if BUBBLE_POST_DATE_COLUMN_NAME in display_df_posts.columns:
                try:
                    # Ensure the date column is datetime before formatting
                    display_df_posts[BUBBLE_POST_DATE_COLUMN_NAME] = pd.to_datetime(display_df_posts[BUBBLE_POST_DATE_COLUMN_NAME], errors='coerce')
                    display_df_posts = display_df_posts.sort_values(by=BUBBLE_POST_DATE_COLUMN_NAME, ascending=False)
                    # Format for display after sorting
                    display_df_posts[BUBBLE_POST_DATE_COLUMN_NAME] = display_df_posts[BUBBLE_POST_DATE_COLUMN_NAME].dt.strftime(UI_DATE_FORMAT)
                except Exception as e:
                    logging.error(f"Error formatting post dates for display: {e}")
                    html_parts.append("<p>Error formatting post dates.</p>")
            html_parts.append(display_df_posts[cols_to_show_posts].head().to_html(escape=False, index=False, classes="table table-striped table-sm"))
    else:
        html_parts.append("<p>No posts loaded from Bubble.</p>")
    html_parts.append("<hr/>")

    # Display Recent Mentions
    mentions_df = token_state.get("bubble_mentions_df", pd.DataFrame())
    html_parts.append(f"<h4>Recent Mentions ({len(mentions_df)} in Bubble):</h4>")
    if not mentions_df.empty:
        cols_to_show_mentions = [col for col in [BUBBLE_MENTIONS_DATE_COLUMN_NAME, "mention_text", "sentiment_label"] if col in mentions_df.columns]
        if not cols_to_show_mentions:
            html_parts.append("<p>No relevant mention columns found to display.</p>")
        else:
            display_df_mentions = mentions_df.copy()
            if BUBBLE_MENTIONS_DATE_COLUMN_NAME in display_df_mentions.columns:
                try:
                    display_df_mentions[BUBBLE_MENTIONS_DATE_COLUMN_NAME] = pd.to_datetime(display_df_mentions[BUBBLE_MENTIONS_DATE_COLUMN_NAME], errors='coerce')
                    display_df_mentions = display_df_mentions.sort_values(by=BUBBLE_MENTIONS_DATE_COLUMN_NAME, ascending=False)
                    display_df_mentions[BUBBLE_MENTIONS_DATE_COLUMN_NAME] = display_df_mentions[BUBBLE_MENTIONS_DATE_COLUMN_NAME].dt.strftime(UI_DATE_FORMAT)
                except Exception as e:
                    logging.error(f"Error formatting mention dates for display: {e}")
                    html_parts.append("<p>Error formatting mention dates.</p>")
            html_parts.append(display_df_mentions[cols_to_show_mentions].head().to_html(escape=False, index=False, classes="table table-striped table-sm"))
    else:
        html_parts.append("<p>No mentions loaded from Bubble.</p>")
    html_parts.append("<hr/>")

    # Display Follower Statistics Summary
    follower_stats_df = token_state.get("bubble_follower_stats_df", pd.DataFrame())
    html_parts.append(f"<h4>Follower Statistics ({len(follower_stats_df)} entries in Bubble):</h4>")
    if not follower_stats_df.empty:
        monthly_gains = follower_stats_df[follower_stats_df[FOLLOWER_STATS_TYPE_COLUMN] == 'follower_gains_monthly'].copy()
        if not monthly_gains.empty and FOLLOWER_STATS_CATEGORY_COLUMN in monthly_gains.columns and \
           FOLLOWER_STATS_ORGANIC_COLUMN in monthly_gains.columns and FOLLOWER_STATS_PAID_COLUMN in monthly_gains.columns:
            try:
                monthly_gains.loc[:, FOLLOWER_STATS_CATEGORY_COLUMN_DT] = pd.to_datetime(monthly_gains[FOLLOWER_STATS_CATEGORY_COLUMN], errors='coerce')
                monthly_gains_display = monthly_gains.sort_values(by=FOLLOWER_STATS_CATEGORY_COLUMN_DT, ascending=False)
                latest_gain = monthly_gains_display.head(1).copy()
                if not latest_gain.empty:
                    latest_gain.loc[:, FOLLOWER_STATS_CATEGORY_COLUMN] = latest_gain[FOLLOWER_STATS_CATEGORY_COLUMN_DT].dt.strftime(UI_DATE_FORMAT)
                    html_parts.append("<h5>Latest Monthly Follower Gain:</h5>")
                    html_parts.append(latest_gain[[FOLLOWER_STATS_CATEGORY_COLUMN, FOLLOWER_STATS_ORGANIC_COLUMN, FOLLOWER_STATS_PAID_COLUMN]].to_html(escape=True, index=False, classes="table table-sm"))
                else:
                    html_parts.append("<p>No valid monthly follower gain data to display after processing.</p>")
            except Exception as e:
                logging.error(f"Error formatting follower gain dates for display: {e}", exc_info=True)
                html_parts.append("<p>Error displaying monthly follower gain data.</p>")
        else:
            html_parts.append("<p>No monthly follower gain data or required columns are missing.</p>")

        demographics_count = len(follower_stats_df[follower_stats_df[FOLLOWER_STATS_TYPE_COLUMN] != 'follower_gains_monthly'])
        html_parts.append(f"<p>Total demographic entries (seniority, industry, etc.): {demographics_count}</p>")
    else:
        html_parts.append("<p>No follower statistics loaded from Bubble.</p>")

    html_parts.append("</div>")
    return "".join(html_parts)


def run_mentions_tab_display(token_state):
    """Generates HTML and a plot for the Mentions tab."""
    logging.info("Updating Mentions Tab display.")
    if not token_state or not token_state.get("token"):
        logging.warning("Mentions tab: Access denied. No token.")
        return "❌ Access denied. No token available for mentions.", None

    mentions_df = token_state.get("bubble_mentions_df", pd.DataFrame())
    if mentions_df.empty:
        logging.info("Mentions tab: No mentions data in Bubble.")
        return "<p style='text-align:center;'>No mentions data in Bubble. Try syncing.</p>", None

    html_parts = ["<h3 style='text-align:center;'>Recent Mentions</h3>"]
    display_columns = [col for col in [BUBBLE_MENTIONS_DATE_COLUMN_NAME, "mention_text", "sentiment_label", BUBBLE_MENTIONS_ID_COLUMN_NAME] if col in mentions_df.columns]

    mentions_df_display = mentions_df.copy()
    if BUBBLE_MENTIONS_DATE_COLUMN_NAME in mentions_df_display.columns:
        try:
            mentions_df_display[BUBBLE_MENTIONS_DATE_COLUMN_NAME] = pd.to_datetime(mentions_df_display[BUBBLE_MENTIONS_DATE_COLUMN_NAME], errors='coerce')
            mentions_df_display = mentions_df_display.sort_values(by=BUBBLE_MENTIONS_DATE_COLUMN_NAME, ascending=False)
            mentions_df_display[BUBBLE_MENTIONS_DATE_COLUMN_NAME] = mentions_df_display[BUBBLE_MENTIONS_DATE_COLUMN_NAME].dt.strftime(UI_DATE_FORMAT)
        except Exception as e:
            logging.error(f"Error formatting mention dates for tab display: {e}")
            html_parts.append("<p>Error formatting mention dates.</p>")

    if not display_columns or mentions_df_display[display_columns].empty:
        html_parts.append("<p>Required columns for mentions display are missing or no data after processing.</p>")
    else:
        html_parts.append(mentions_df_display[display_columns].head(20).to_html(escape=False, index=False, classes="table table-sm"))

    mentions_html_output = "\n".join(html_parts)
    fig = None 
    fig_plot_local = None 
    if not mentions_df.empty and "sentiment_label" in mentions_df.columns:
        try:
            fig_plot_local, ax = plt.subplots(figsize=(6,4))
            sentiment_counts = mentions_df["sentiment_label"].value_counts()
            sentiment_counts.plot(kind='bar', ax=ax, color=['#4CAF50', '#FFC107', '#F44336', '#9E9E9E', '#2196F3'])
            ax.set_title("Mention Sentiment Distribution", y=1.03) # Adjusted y for Matplotlib title
            ax.set_ylabel("Count")
            plt.xticks(rotation=45, ha='right')
            
            plt.tight_layout() 
            fig_plot_local.subplots_adjust(top=0.90) # MODIFIED: Add space at the top of the figure
                                                  # This pushes plot content down from Gradio's label
            fig = fig_plot_local 
            logging.info("Mentions tab: Sentiment distribution plot generated.")
        except Exception as e:
            logging.error(f"Error generating mentions plot: {e}", exc_info=True)
            fig = None 
        finally:
            if fig_plot_local and fig_plot_local is not plt:
                 plt.close(fig_plot_local)
    return mentions_html_output, fig


def run_follower_stats_tab_display(token_state):
    """Generates HTML and plots for the Follower Stats tab."""
    logging.info("Updating Follower Stats Tab display.")
    if not token_state or not token_state.get("token"):
        logging.warning("Follower stats tab: Access denied. No token.")
        return "❌ Access denied. No token available for follower stats.", None, None, None

    follower_stats_df_orig = token_state.get("bubble_follower_stats_df", pd.DataFrame())
    if follower_stats_df_orig.empty:
        logging.info("Follower stats tab: No follower stats data in Bubble.")
        return "<p style='text-align:center;'>No follower stats data in Bubble. Try syncing.</p>", None, None, None

    follower_stats_df = follower_stats_df_orig.copy()
    html_parts = ["<div style='padding:10px;'><h3 style='text-align:center;'>Follower Statistics Overview</h3>"]

    plot_monthly_gains = None
    plot_seniority_dist = None
    plot_industry_dist = None

    # Monthly Gains Plot
    fig_gains_local = None
    try:
        monthly_gains_df = follower_stats_df[
            (follower_stats_df[FOLLOWER_STATS_TYPE_COLUMN] == 'follower_gains_monthly') &
            (follower_stats_df[FOLLOWER_STATS_CATEGORY_COLUMN].notna()) &
            (follower_stats_df[FOLLOWER_STATS_ORGANIC_COLUMN].notna()) &
            (follower_stats_df[FOLLOWER_STATS_PAID_COLUMN].notna())
        ].copy()

        if not monthly_gains_df.empty:
            monthly_gains_df.loc[:, FOLLOWER_STATS_CATEGORY_COLUMN_DT] = pd.to_datetime(monthly_gains_df[FOLLOWER_STATS_CATEGORY_COLUMN], errors='coerce')
            monthly_gains_df_sorted_table = monthly_gains_df.sort_values(by=FOLLOWER_STATS_CATEGORY_COLUMN_DT, ascending=False)

            html_parts.append("<h4>Monthly Follower Gains (Last 13 Months):</h4>")
            table_display_df = monthly_gains_df_sorted_table.copy()
            table_display_df.loc[:,FOLLOWER_STATS_CATEGORY_COLUMN] = table_display_df[FOLLOWER_STATS_CATEGORY_COLUMN_DT].dt.strftime(UI_MONTH_FORMAT)
            html_parts.append(table_display_df[[FOLLOWER_STATS_CATEGORY_COLUMN, FOLLOWER_STATS_ORGANIC_COLUMN, FOLLOWER_STATS_PAID_COLUMN]].head(13).to_html(escape=True, index=False, classes="table table-sm"))

            monthly_gains_df_sorted_plot = monthly_gains_df.sort_values(by=FOLLOWER_STATS_CATEGORY_COLUMN_DT, ascending=True).copy()
            monthly_gains_df_sorted_plot.loc[:, '_plot_month'] = monthly_gains_df_sorted_plot[FOLLOWER_STATS_CATEGORY_COLUMN_DT].dt.strftime(UI_MONTH_FORMAT)
            plot_data = monthly_gains_df_sorted_plot.groupby('_plot_month').agg(
                organic=(FOLLOWER_STATS_ORGANIC_COLUMN, 'sum'),
                paid=(FOLLOWER_STATS_PAID_COLUMN, 'sum')
            ).reset_index()
            plot_data['_plot_month_dt'] = pd.to_datetime(plot_data['_plot_month'], format=UI_MONTH_FORMAT)
            plot_data = plot_data.sort_values(by='_plot_month_dt')


            fig_gains_local, ax_gains = plt.subplots(figsize=(10,5))
            ax_gains.plot(plot_data['_plot_month'], plot_data['organic'], marker='o', linestyle='-', label='Organic Gain')
            ax_gains.plot(plot_data['_plot_month'], plot_data['paid'], marker='x', linestyle='--', label='Paid Gain')
            ax_gains.set_title("Monthly Follower Gains Over Time", y=1.03) # Adjusted y for Matplotlib title
            ax_gains.set_ylabel("Follower Count")
            ax_gains.set_xlabel("Month (YYYY-MM)")
            plt.xticks(rotation=45, ha='right')
            ax_gains.legend()
            plt.grid(True, linestyle='--', alpha=0.7)
            
            plt.tight_layout()
            fig_gains_local.subplots_adjust(top=0.90) # MODIFIED: Add space at the top of the figure
            plot_monthly_gains = fig_gains_local
            logging.info("Follower stats tab: Monthly gains plot generated.")
        else:
            html_parts.append("<p>No monthly follower gain data available or required columns missing.</p>")
    except Exception as e:
        logging.error(f"Error processing or plotting monthly gains: {e}", exc_info=True)
        html_parts.append("<p>Error displaying monthly follower gain data.</p>")
        plot_monthly_gains = None
    finally:
        if fig_gains_local and fig_gains_local is not plt:
             plt.close(fig_gains_local)
    html_parts.append("<hr/>")


    # Seniority Plot
    fig_seniority_local = None
    try:
        seniority_df = follower_stats_df[
            (follower_stats_df[FOLLOWER_STATS_TYPE_COLUMN] == 'follower_seniority') &
            (follower_stats_df[FOLLOWER_STATS_CATEGORY_COLUMN].notna()) &
            (follower_stats_df[FOLLOWER_STATS_ORGANIC_COLUMN].notna())
        ].copy()
        if not seniority_df.empty:
            seniority_df_sorted = seniority_df.sort_values(by=FOLLOWER_STATS_ORGANIC_COLUMN, ascending=False)
            html_parts.append("<h4>Followers by Seniority (Top 10 Organic):</h4>")
            html_parts.append(seniority_df_sorted[[FOLLOWER_STATS_CATEGORY_COLUMN, FOLLOWER_STATS_ORGANIC_COLUMN, FOLLOWER_STATS_PAID_COLUMN]].head(10).to_html(escape=True, index=False, classes="table table-sm"))

            fig_seniority_local, ax_seniority = plt.subplots(figsize=(8,5))
            top_n_seniority = seniority_df_sorted.nlargest(10, FOLLOWER_STATS_ORGANIC_COLUMN)
            ax_seniority.bar(top_n_seniority[FOLLOWER_STATS_CATEGORY_COLUMN], top_n_seniority[FOLLOWER_STATS_ORGANIC_COLUMN], color='skyblue')
            ax_seniority.set_title("Follower Distribution by Seniority (Top 10 Organic)", y=1.03) # Adjusted y
            ax_seniority.set_ylabel("Organic Follower Count")
            plt.xticks(rotation=45, ha='right')
            plt.grid(axis='y', linestyle='--', alpha=0.7)

            plt.tight_layout()
            fig_seniority_local.subplots_adjust(top=0.88) # MODIFIED: Add space. Experiment with this value.
            plot_seniority_dist = fig_seniority_local
            logging.info("Follower stats tab: Seniority distribution plot generated.")
        else:
            html_parts.append("<p>No follower seniority data available or required columns missing.</p>")
    except Exception as e:
        logging.error(f"Error processing or plotting seniority data: {e}", exc_info=True)
        html_parts.append("<p>Error displaying follower seniority data.</p>")
        plot_seniority_dist = None
    finally:
        if fig_seniority_local and fig_seniority_local is not plt:
             plt.close(fig_seniority_local)
    html_parts.append("<hr/>")

    # Industry Plot
    fig_industry_local = None
    try:
        industry_df = follower_stats_df[
            (follower_stats_df[FOLLOWER_STATS_TYPE_COLUMN] == 'follower_industry') &
            (follower_stats_df[FOLLOWER_STATS_CATEGORY_COLUMN].notna()) &
            (follower_stats_df[FOLLOWER_STATS_ORGANIC_COLUMN].notna())
        ].copy()
        if not industry_df.empty:
            industry_df_sorted = industry_df.sort_values(by=FOLLOWER_STATS_ORGANIC_COLUMN, ascending=False)
            html_parts.append("<h4>Followers by Industry (Top 10 Organic):</h4>")
            html_parts.append(industry_df_sorted[[FOLLOWER_STATS_CATEGORY_COLUMN, FOLLOWER_STATS_ORGANIC_COLUMN, FOLLOWER_STATS_PAID_COLUMN]].head(10).to_html(escape=True, index=False, classes="table table-sm"))

            fig_industry_local, ax_industry = plt.subplots(figsize=(8,5))
            top_n_industry = industry_df_sorted.nlargest(10, FOLLOWER_STATS_ORGANIC_COLUMN)
            ax_industry.bar(top_n_industry[FOLLOWER_STATS_CATEGORY_COLUMN], top_n_industry[FOLLOWER_STATS_ORGANIC_COLUMN], color='lightcoral')
            ax_industry.set_title("Follower Distribution by Industry (Top 10 Organic)", y=1.03) # Adjusted y
            ax_industry.set_ylabel("Organic Follower Count")
            plt.xticks(rotation=45, ha='right')
            plt.grid(axis='y', linestyle='--', alpha=0.7)
            
            plt.tight_layout()
            fig_industry_local.subplots_adjust(top=0.88) # MODIFIED: Add space. Experiment with this value.
            plot_industry_dist = fig_industry_local
            logging.info("Follower stats tab: Industry distribution plot generated.")
        else:
            html_parts.append("<p>No follower industry data available or required columns missing.</p>")
    except Exception as e:
        logging.error(f"Error processing or plotting industry data: {e}", exc_info=True)
        html_parts.append("<p>Error displaying follower industry data.</p>")
        plot_industry_dist = None
    finally:
        if fig_industry_local and fig_industry_local is not plt:
            plt.close(fig_industry_local)


    html_parts.append("</div>")
    follower_html_output = "\n".join(html_parts)
    return follower_html_output, plot_monthly_gains, plot_seniority_dist, plot_industry_dist

def create_analytics_plot_panel(plot_label_str, plot_id_str):
    """
    Creates an individual plot panel with its plot component and action buttons.
    Plot title and action buttons are on the same row.
    Returns the panel (Column), plot component, and button components.
    """
    # Values for BOMB_ICON, EXPLORE_ICON, FORMULA_ICON should be sourced from where they are defined,
    # e.g., imported from config or passed as arguments if they vary.
    try:
        # Assuming these are defined in your config.py and imported in app.py,
        # they might not be directly available here unless explicitly passed or re-imported.
        # For robustness, using string literals if not found.
        from config import BOMB_ICON, EXPLORE_ICON, FORMULA_ICON
    except ImportError:
        logging.warning("Icons BOMB_ICON, EXPLORE_ICON, FORMULA_ICON not found in config for ui_generators, using defaults.")
        BOMB_ICON = "πŸ’£"
        EXPLORE_ICON = "🧭"
        FORMULA_ICON = "Ζ’"

    with gr.Column(visible=True) as panel_component: # Main container for this plot
        with gr.Row(variant="compact", vertical_align="center"): # Ensure vertical alignment for title and buttons
            gr.Markdown(f"#### {plot_label_str}", scale=3) # Plot title, give it more space
            with gr.Row(elem_classes="plot-actions", scale=1, min_width=120): # Action buttons container, adjust scale/min_width as needed
                bomb_button = gr.Button(value=BOMB_ICON, variant="secondary", size="sm", min_width=30, elem_id=f"bomb_btn_{plot_id_str}")
                formula_button = gr.Button(value=FORMULA_ICON, variant="secondary", size="sm", min_width=30, elem_id=f"formula_btn_{plot_id_str}")
                explore_button = gr.Button(value=EXPLORE_ICON, variant="secondary", size="sm", min_width=30, elem_id=f"explore_btn_{plot_id_str}")
        
        plot_component = gr.Plot(label=plot_label_str, show_label=False) # Label is shown in Markdown above

    logging.debug(f"Created analytics panel (styled) for: {plot_label_str} (ID: {plot_id_str})")
    return panel_component, plot_component, bomb_button, explore_button, formula_button


def build_analytics_tab_plot_area(plot_configs):
    """
    Builds the main plot area for the Analytics tab, arranging plot panels into rows of two,
    with section titles appearing before their respective plots.
    
    Returns a tuple:
        - plot_ui_objects (dict): Dictionary of plot UI objects.
        - section_titles_map (dict): Dictionary mapping section names to their gr.Markdown title components.
    """
    logging.info(f"Building plot area for {len(plot_configs)} analytics plots with interleaved section titles and styled panels.")
    plot_ui_objects = {}
    section_titles_map = {} 
    
    last_rendered_section = None 
    
    idx = 0
    while idx < len(plot_configs):
        current_plot_config = plot_configs[idx]
        current_section_name = current_plot_config["section"]
        
        if current_section_name != last_rendered_section:
            if current_section_name not in section_titles_map:
                section_md_component = gr.Markdown(f"### {current_section_name}", visible=True)
                section_titles_map[current_section_name] = section_md_component
                logging.debug(f"Rendered and stored Markdown for section: {current_section_name}")
            else:
                # This case handles if a section name appears non-contiguously, ensure its component is made visible.
                # The component itself is already created.
                section_titles_map[current_section_name].visible = True 
                logging.debug(f"Ensuring visibility for existing Markdown for section: {current_section_name}")
            last_rendered_section = current_section_name

        with gr.Row(equal_height=False): # Row for one or two plots
            # --- Process the first plot in the row (config1) ---
            config1 = plot_configs[idx]
            # Safety check, though current_section_name should match config1["section"] here
            if config1["section"] != current_section_name:
                 logging.warning(f"Plot {config1['id']} section mismatch. Expected {current_section_name}, got {config1['section']}. Re-evaluating title.")
                 # This indicates a potential issue in plot_configs order or logic, but try to recover title
                 if config1["section"] not in section_titles_map:
                     sec_md = gr.Markdown(f"### {config1['section']}", visible=True)
                     section_titles_map[config1["section"]] = sec_md
                 last_rendered_section = config1["section"]


            panel_col1, plot_comp1, bomb_btn1, explore_btn1, formula_btn1 = \
                create_analytics_plot_panel(config1["label"], config1["id"]) # Use the styled panel creator
            plot_ui_objects[config1["id"]] = {
                "plot_component": plot_comp1, "bomb_button": bomb_btn1,
                "explore_button": explore_btn1, "formula_button": formula_btn1,
                "label": config1["label"], "panel_component": panel_col1,
                "section": config1["section"]
            }
            logging.debug(f"Created UI panel for plot_id: {config1['id']} in section {config1['section']}")
            idx += 1
            
            # --- Process the second plot in the row (config2), if applicable ---
            if idx < len(plot_configs):
                config2 = plot_configs[idx]
                if config2["section"] == current_section_name: # Must be in the same section for the same row
                    panel_col2, plot_comp2, bomb_btn2, explore_btn2, formula_btn2 = \
                        create_analytics_plot_panel(config2["label"], config2["id"]) # Use the styled panel creator
                    plot_ui_objects[config2["id"]] = {
                        "plot_component": plot_comp2, "bomb_button": bomb_btn2,
                        "explore_button": explore_btn2, "formula_button": formula_btn2,
                        "label": config2["label"], "panel_component": panel_col2,
                        "section": config2["section"]
                    }
                    logging.debug(f"Created UI panel for plot_id: {config2['id']} in same row, section {config2['section']}")
                    idx += 1
    
    logging.info(f"Finished building plot area. Total plot objects: {len(plot_ui_objects)}. Section titles created: {len(section_titles_map)}")
    if len(plot_ui_objects) != len(plot_configs):
        logging.error(f"MISMATCH: Expected {len(plot_configs)} plot objects, but created {len(plot_ui_objects)}.")
    
    return plot_ui_objects, section_titles_map