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import streamlit as st
import plotly.graph_objects as go
import networkx as nx
import numpy as np

def create_intake_graph():
    """Create the intake graph structure."""
    G = nx.DiGraph()
    
    # Add nodes with their categories
    nodes = {
        'A': {'name': 'Student Enrollment', 'category': 'start'},
        'B': {'name': 'Learner Profile Assessment', 'category': 'assessment'},
        'C': {'name': 'Technical Background', 'category': 'profile'},
        'D': {'name': 'Mathematical Foundation', 'category': 'profile'},
        'E': {'name': 'Domain Knowledge', 'category': 'profile'},
        'F': {'name': 'Learning Preferences', 'category': 'profile'},
        'G': {'name': 'Prior Knowledge', 'category': 'profile'},
        'H': {'name': 'Profile Classification', 'category': 'classification'},
        'I': {'name': 'Learner Archetype', 'category': 'archetype'},
        'J': {'name': 'Advanced Technical Path', 'category': 'path'},
        'K': {'name': 'Accelerated Technical Path', 'category': 'path'},
        'L': {'name': 'Applied Research Path', 'category': 'path'},
        'M': {'name': 'Foundational Path', 'category': 'path'},
        'N': {'name': "Bloom's Taxonomy Outcomes", 'category': 'outcomes'},
        'O': {'name': 'Remember Level', 'category': 'bloom'},
        'P': {'name': 'Understand Level', 'category': 'bloom'},
        'Q': {'name': 'Apply Level', 'category': 'bloom'},
        'R': {'name': 'Analyze Level', 'category': 'bloom'},
        'S': {'name': 'Evaluate Level', 'category': 'bloom'},
        'T': {'name': 'Create Level', 'category': 'bloom'},
        'U': {'name': 'Adaptive Content Selection', 'category': 'content'},
        'V': {'name': 'Personalized Learning Activities', 'category': 'learning'},
        'W': {'name': 'Personalized Clustering Curriculum', 'category': 'final'},
    }
    
    # Add nodes to graph
    for node_id, node_data in nodes.items():
        G.add_node(node_id, **node_data)
    
    # Add edges
    edges = [
        ('A', 'B'),
        ('B', 'C'), ('B', 'D'), ('B', 'E'), ('B', 'F'), ('B', 'G'),
        ('C', 'H'), ('D', 'H'), ('E', 'H'), ('F', 'H'), ('G', 'H'),
        ('H', 'I'),
        ('I', 'J'), ('I', 'K'), ('I', 'L'), ('I', 'M'),
        ('J', 'N'), ('K', 'N'), ('L', 'N'), ('M', 'N'),
        ('N', 'O'), ('N', 'P'), ('N', 'Q'), ('N', 'R'), ('N', 'S'), ('N', 'T'),
        ('O', 'U'), ('P', 'U'), ('Q', 'U'), ('R', 'U'), ('S', 'U'), ('T', 'U'),
        ('U', 'V'),
        ('V', 'W')
    ]
    G.add_edges_from(edges)
    
    return G

def get_node_colors(G):
    """Get colors for different node categories."""
    # Define colors with better contrast
    category_colors = {
        'start': '#2E7D32',  # Darker Green
        'assessment': '#1565C0',  # Darker Blue
        'profile': '#F57F17',  # Darker Amber
        'classification': '#6A1B9A',  # Darker Purple
        'archetype': '#BF360C',  # Darker Deep Orange
        'path': '#AD1457',  # Darker Pink
        'outcomes': '#00695C',  # Darker Cyan
        'bloom': '#283593',  # Darker Indigo
        'content': '#E65100',  # Darker Orange
        'learning': '#004D40',  # Darker Teal
        'final': '#4527A0'  # Darker Deep Purple
    }
    return [category_colors[G.nodes[node]['category']] for node in G.nodes()]

def create_interactive_graph(G):
    """Create an interactive Plotly visualization of the graph."""
    # Define node levels for hierarchical organization
    node_levels = {
        'A': 0,  # Student Enrollment
        'B': 1,  # Learner Profile Assessment
        'C': 2, 'D': 2, 'E': 2, 'F': 2, 'G': 2,  # Profile components
        'H': 3,  # Profile Classification
        'I': 4,  # Learner Archetype
        'J': 5, 'K': 5, 'L': 5, 'M': 5,  # Learning Paths
        'N': 6,  # Bloom's Taxonomy Outcomes
        'O': 7, 'P': 7, 'Q': 7, 'R': 7, 'S': 7, 'T': 7,  # Bloom's levels
        'U': 8,  # Adaptive Content Selection
        'V': 9,  # Personalized Learning Activities
        'W': 10  # Personalized Clustering Curriculum
    }
    
    # Define key nodes that should be highlighted
    key_nodes = {'A', 'B', 'H', 'I', 'N', 'W'}
    
    # Calculate positions based on levels
    pos = {}
    level_nodes = {}
    for node, level in node_levels.items():
        if level not in level_nodes:
            level_nodes[level] = []
        level_nodes[level].append(node)
    
    # Position nodes by level with increased spacing
    for level in sorted(level_nodes.keys()):
        nodes = level_nodes[level]
        n_nodes = len(nodes)
        for i, node in enumerate(nodes):
            # Center nodes horizontally within their level with more spacing
            x = (i - (n_nodes - 1) / 2) * 3  # Increased from 2 to 3
            y = -level * 2.5  # Increased from 2 to 2.5
            pos[node] = (x, y)
    
    # Create edge traces with arrows
    edge_x = []
    edge_y = []
    for edge in G.edges():
        x0, y0 = pos[edge[0]]
        x1, y1 = pos[edge[1]]
        edge_x.extend([x0, x1, None])
        edge_y.extend([y0, y1, None])
    
    edge_trace = go.Scatter(
        x=edge_x, y=edge_y,
        line=dict(width=2, color='#888'),
        hoverinfo='none',
        mode='lines',
        line_shape='spline'
    )
    
    # Create node traces
    node_x = []
    node_y = []
    node_text = []
    node_hover = []
    node_sizes = []
    node_colors = get_node_colors(G)
    
    def format_node_text(text):
        """Format node text with line breaks for multi-word labels."""
        words = text.split()
        if len(words) > 1:
            return '<br>'.join(words)  # Line break between words
        return text
    
    for i, node in enumerate(G.nodes()):
        x, y = pos[node]
        node_x.append(x)
        node_y.append(y)
        category = G.nodes[node]['category']
        node_text.append(format_node_text(G.nodes[node]['name']))
        node_hover.append(f"""
            <b>{G.nodes[node]['name']}</b><br>
            Category: {category.title()}<br>
            Click to learn more
        """)
        # Make key nodes larger
        node_sizes.append(45 if node in key_nodes else 35)
    
    # Create separate traces for nodes
    node_trace = go.Scatter(
        x=node_x, y=node_y,
        mode='markers',
        hoverinfo='text',
        hovertext=node_hover,
        marker=dict(
            showscale=False,
            color=node_colors,
            size=node_sizes,
            line_width=3,
            line=dict(color='white')
        )
    )
    
    # Add text annotations for each node
    annotations = []
    for i, (x, y, text) in enumerate(zip(node_x, node_y, node_text)):
        # Adjust vertical offset based on text length
        y_offset = 0.15 if '  ' in text else 0.1
        
        annotations.append(
            dict(
                x=x,
                y=y + y_offset,
                text=text,
                showarrow=False,
                textangle=0,  # No tilting
                font=dict(
                    size=14,
                    color='white',
                    family='Arial Black'
                ),
                xanchor='center',
                yanchor='bottom'
            )
        )
    
    # Create figure with adjusted layout
    fig = go.Figure(data=[edge_trace, node_trace],
                   layout=go.Layout(
                       showlegend=False,
                       hovermode='closest',
                       margin=dict(b=20, l=5, r=5, t=40),
                       xaxis=dict(showgrid=False, zeroline=False, showticklabels=False),
                       yaxis=dict(showgrid=False, zeroline=False, showticklabels=False),
                       plot_bgcolor='#1E1E1E',
                       paper_bgcolor='#1E1E1E',
                       font=dict(color='white', size=14, family='Arial'),
                       height=1200,
                       dragmode='pan',  # Enable panning
                       annotations=annotations + [
                           dict(
                               text="Hover over nodes to see details<br>Use pan mode to move around",
                               showarrow=False,
                               xref="paper",
                               yref="paper",
                               x=0,
                               y=1.1,
                               font=dict(size=16, color='white', family='Arial Black')
                           )
                       ]
                   ))
    
    # Add arrows to edges
    for edge in G.edges():
        x0, y0 = pos[edge[0]]
        x1, y1 = pos[edge[1]]
        # Calculate arrow position (80% along the edge)
        arrow_x = x0 + 0.8 * (x1 - x0)
        arrow_y = y0 + 0.8 * (y1 - y0)
        
        fig.add_annotation(
            x=arrow_x,
            y=arrow_y,
            axref="x",
            ayref="y",
            ax=x0,
            ay=y0,
            xref="x",
            yref="y",
            showarrow=True,
            arrowhead=2,
            arrowsize=1,
            arrowwidth=2,
            arrowcolor="#888"
        )
    
    # Add interactive features
    fig.update_layout(
        modebar=dict(
            add=['drawopenpath', 'eraseshape'],
            remove=['lasso2d', 'select2d']
        )
    )
    
    return fig

def show():
    """Display the interactive intake graph."""
    st.title("Customized Learning Path")
    
    # Create two columns for layout
    col1, col2 = st.columns([2, 1])
    
    with col1:
        st.info("""
            This interactive flowchart visualizes your personalized learning journey from enrollment to curriculum.
            - Hover over nodes to see detailed information
            - Follow the arrows to understand the learning progression
            - Explore different paths based on your profile
        """)
        
        # Create and display the graph
        G = create_intake_graph()
        fig = create_interactive_graph(G)
        st.plotly_chart(fig, use_container_width=True)
    
    with col2:
        st.subheader("Bloom's Taxonomy Research")
        
        st.markdown("""
            ### Key Research Papers
            
            #### Original Taxonomy (1956)
            - [Bloom, B. S. (1956). Taxonomy of Educational Objectives: The Classification of Educational Goals](https://doi.org/10.1177/001316445601600310)
            
            #### Revised Taxonomy (2001)
            - [Anderson, L. W., & Krathwohl, D. R. (2001). A Taxonomy for Learning, Teaching, and Assessing](https://doi.org/10.1207/s15430421tip4104_2)
            
            #### Digital Age Applications
            - [Churches, A. (2008). Bloom's Digital Taxonomy](https://doi.org/10.1007/978-1-4419-1428-6_1)
            
            #### Modern Learning Applications
            - [Armstrong, P. (2010). Bloom's Taxonomy](https://cft.vanderbilt.edu/guides-sub-pages/blooms-taxonomy/)
            
            ### Key Concepts
            
            #### Cognitive Process
            1. **Remember**: Recall facts and basic concepts
            2. **Understand**: Explain ideas or concepts
            3. **Apply**: Use information in new situations
            4. **Analyze**: Draw connections among ideas
            5. **Evaluate**: Justify a stand or decision
            6. **Create**: Produce new or original work
            
            #### Knowledge Dimensions
            - **Factual**: Basic elements
            - **Conceptual**: Interrelationships
            - **Procedural**: How to do something
            - **Metacognitive**: Knowledge of cognition
        """)
    
    # Add a legend for key nodes with summaries
    st.subheader("Key Learning Path Components")
    key_nodes = {
        'Student Enrollment': {
            'color': '#2E7D32',
            'summary': 'Initial entry point where students begin their learning journey'
        },
        'Learner Profile Assessment': {
            'color': '#1565C0',
            'summary': 'Comprehensive evaluation of student background and capabilities'
        },
        'Profile Classification': {
            'color': '#6A1B9A',
            'summary': 'Categorization of student profiles based on assessment results'
        },
        'Learner Archetype': {
            'color': '#BF360C',
            'summary': 'Identification of student learning style and preferences'
        },
        "Bloom's Taxonomy Outcomes": {
            'color': '#283593',
            'summary': 'Framework for defining learning objectives and outcomes'
        },
        'Personalized Clustering Curriculum': {
            'color': '#4527A0',
            'summary': 'Final customized learning path based on all assessments'
        }
    }
    
    for node, info in key_nodes.items():
        st.markdown(f"""
            <div style='background-color: {info['color']}; padding: 10px; border-radius: 5px; margin-bottom: 10px;'>
                <div style='color: white; font-weight: bold;'>{node}</div>
                <div style='color: white; font-size: 0.9em;'>{info['summary']}</div>
            </div>
        """, unsafe_allow_html=True)