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# Set page config as the very first command
import streamlit as st
st.set_page_config(layout="wide")

# Debug: Check for any unexpected Streamlit commands or state before this point
st.write("Starting app with page config set as first command.")

# Imports (after set_page_config)
import networkx as nx
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns
from sklearn.datasets import make_blobs, make_circles, make_moons
from sklearn.preprocessing import StandardScaler
from mlxtend.plotting import plot_decision_regions
import tensorflow as tf
from keras.models import Sequential
from keras.layers import Input, Dense
from keras.optimizers import SGD
from keras.losses import MeanSquaredError, BinaryCrossentropy
from keras.regularizers import l2, l1
from keras.callbacks import Callback

# Check TensorFlow and Keras versions with fallback
try:
    tf_version = tf.__version__
    # Try multiple ways to get Keras version, accounting for TensorFlow integration
    keras_version = None
    if hasattr(tf.keras, '__version__'):
        keras_version = tf.keras.__version__
    elif hasattr(tf, 'keras') and hasattr(tf.keras, 'version'):
        keras_version = tf.keras.version.__version__
    else:
        keras_version = "Keras version not available (bundled with TensorFlow)"
    st.write(f"TensorFlow version: {tf_version}")
    st.write(f"Keras version: {keras_version}")
except AttributeError as e:
    st.error(f"Error checking versions: {e}")
    st.write("Falling back to default versions: TensorFlow ~2.15, Keras ~2.15")

# Set TensorFlow Playground CSS
st.markdown("""
    <style>
    .stApp {
        background-color: #252830;
        color: white;
        font-family: Arial, sans-serif;
    }
    h1, h2, h3 {
        color: white;
        font-weight: bold;
        margin: 0;
        padding: 5px 0;
    }
    .stButton>button {
        background-color: #555;
        color: white;
        border: 2px solid #777;
        border-radius: 5px;
        padding: 5px 10px;
        font-size: 14px;
        font-weight: bold;
    }
    .stButton>button:hover {
        background-color: #777;
        border-color: #999;
    }
    .stSelectbox, .stSlider {
        background-color: #333;
        color: white;
        border: 2px solid #777;
        border-radius: 5px;
        padding: 5px;
    }
    .stCheckbox label {
        color: white;
        font-size: 14px;
        font-weight: bold;
    }
    .control-bar {
        background-color: #1e2126;
        padding: 10px;
        border: 2px solid #333;
        border-radius: 5px;
        margin-bottom: 10px;
    }
    .panel {
        background-color: #2e3238;
        padding: 10px;
        border: 2px solid #777;
        border-radius: 5px;
        margin: 10px 0;
    }
    .stSelectbox label, .stSlider label {
        color: white;
        font-size: 12px;
        font-weight: bold;
    }
    </style>
""", unsafe_allow_html=True)

# Session state initialization
if "training" not in st.session_state:
    st.session_state.training = False
if "num_hidden_layers" not in st.session_state:
    st.session_state.num_hidden_layers = 2
if "hidden_layer_neurons" not in st.session_state:
    st.session_state.hidden_layer_neurons = [4, 2]
if "prev_params" not in st.session_state:
    st.session_state.prev_params = {}

def reset_session():
    st.session_state.clear()
    st.session_state.num_hidden_layers = 2
    st.session_state.hidden_layer_neurons = [4, 2]

# Two-row top control bar
with st.container():
    st.markdown('<div class="control-bar">', unsafe_allow_html=True)
    # Row 1
    col1, col2, col3, col4, col5 = st.columns(5)
    with col1:
        problem_type = st.selectbox("Problem Type", ["Classification", "Regression"])
    with col2:
        dataset_options = {"Classification": ["Blobs", "Circles", "Spirals", "XOR"], "Regression": ["Sine Wave"]}
        dataset_type = st.selectbox("Dataset", dataset_options[problem_type])
    with col3:
        learning_rate = st.selectbox("Learning Rate", [0.0001, 0.001, 0.03, 0.1, 0.3, 1], index=2)
    with col4:
        activation = st.selectbox("Activation", ["ReLU", "Sigmoid", "Tanh"], index=2)
    with col5:
        batch_size = st.slider("Batch Size", 1, 10, 5)  # Reduced max batch size for Spaces
    
    # Row 2
    col6, col7, col8, col9, col10 = st.columns(5)
    with col6:
        noise_level = st.slider("Noise", 0, 50, 0, step=5)
    with col7:
        reg_type = st.selectbox("Regularization", ["None", "L1", "L2"], index=0)
    with col8:
        reg_rate = st.selectbox("Reg Rate", [0.0, 0.001, 0.01, 0.1, 1], index=0)
    with col9:
        train_ratio = st.slider("Train %", 10, 90, 50, 10) / 100
    with col10:
        st.button("Reset", key="reset_global", on_click=reset_session)
    st.markdown('</div>', unsafe_allow_html=True)

# Dataset generation (reduced sample size for performance)
def generate_xor(n_samples=400):  # Reduced from 800 for performance
    X = np.random.rand(n_samples, 2) * 2 - 1
    y = np.logical_xor(X[:, 0] > 0, X[:, 1] > 0).astype(int)
    return X, y

def generate_sine_wave(noise, n_samples=400):  # Reordered: non-default before default
    X = np.linspace(-3, 3, n_samples).reshape(-1, 1)
    y = np.sin(X) + np.random.normal(0, noise / 100, X.shape)
    return np.hstack([X, X**2]), y.ravel()

if problem_type == "Classification":
    if dataset_type == "Blobs":
        fv, cv = make_blobs(n_samples=400, centers=2, n_features=2, cluster_std=1.5 + noise_level / 50, random_state=42)
    elif dataset_type == "Circles":
        fv, cv = make_circles(n_samples=400, noise=noise_level / 250, factor=0.2)
    elif dataset_type == "Spirals":
        fv, cv = make_moons(n_samples=400, noise=noise_level / 250)
    elif dataset_type == "XOR":
        fv, cv = generate_xor(400)
else:
    fv, cv = generate_sine_wave(noise_level, 400)

# Feature preprocessing
std = StandardScaler()
X = std.fit_transform(fv)
x1, x2 = X[:, 0], X[:, 1]
features = {
    "X1": x1, "X2": x2, "X1*X2": x1 * x2, "X1^2": x1**2, "X2^2": x2**2,
    "cos(X1)": np.cos(x1), "sin(X1)": np.sin(x1), "cos(X2)": np.cos(x2), "sin(X2)": np.sin(x2)
}
selected_features = [f for f in features.keys() if st.session_state.get(f, f in ["X1", "X2"])]
selected_data = np.column_stack([features[f] for f in selected_features])

if problem_type == "Classification":
    cv = cv.astype(int)

# Main layout
col_left, col_center, col_right = st.columns([1, 2, 1])

# Left panel: Dataset with Seaborn (3x3 size)
with col_left:
    st.markdown('<div class="panel">', unsafe_allow_html=True)
    st.subheader("Data")
    fig, ax = plt.subplots(figsize=(3, 3))  # Fixed size for consistency
    if problem_type == "Classification":
        sns.scatterplot(x=fv[:, 0], y=fv[:, 1], hue=cv, palette="coolwarm", edgecolor="k", alpha=0.7, ax=ax, legend=False)
    else:
        sns.scatterplot(x=fv[:, 0], y=cv, color="blue", edgecolor="k", alpha=0.7, ax=ax)
    ax.set_xticks([])
    ax.set_yticks([])
    ax.set_facecolor("#333")
    st.pyplot(fig)
    st.subheader("Features")
    for feature in features.keys():
        st.checkbox(feature, value=feature in ["X1", "X2"], key=feature)
    st.markdown('</div>', unsafe_allow_html=True)

# Center panel: Horizontal Network Visualization
with col_center:
    st.markdown('<div class="panel">', unsafe_allow_html=True)
    st.subheader("Network")

    def draw_nn(features, hidden_neurons):
        G = nx.DiGraph()
        input_layer = features
        hidden_layers = [[f"H{i+1}_{j+1}" for j in range(n)] for i, n in enumerate(hidden_neurons)]
        output_layer = ["Output"]
        all_layers = [input_layer] + hidden_layers + [output_layer]

        node_colors = {}
        for layer_idx, layer in enumerate(all_layers):
            for node in layer:
                G.add_node(node, layer=layer_idx)
                if layer_idx == 0:
                    node_colors[node] = "#90EE90"  # Green for input
                elif layer_idx == len(all_layers) - 1:
                    node_colors[node] = "#FFA07A"  # Orange for output
                else:
                    node_colors[node] = "#87CEFA"  # Blue for hidden

        for i in range(len(all_layers) - 1):
            for node1 in all_layers[i]:
                for node2 in all_layers[i + 1]:
                    G.add_edge(node1, node2)

        pos = nx.multipartite_layout(G, subset_key="layer", align="vertical")
        pos_rotated = {node: (-y, x) for node, (x, y) in pos.items()}
        for node in pos_rotated:
            pos_rotated[node] = (pos_rotated[node][0] * 2, pos_rotated[node][1] * 2)

        fig, ax = plt.subplots(figsize=(8, 4))
        ax.set_facecolor("#252830")
        nx.draw(
            G, pos_rotated,
            with_labels=True,
            node_color=[node_colors[node] for node in G.nodes()],
            edge_color="white",
            node_size=600,
            font_size=8,
            font_color="black",
            font_weight="bold",
            edgecolors="black",
            width=1.0,
            arrows=True,
            ax=ax
        )
        plt.title("Neural Network Structure", color="white", fontsize=12, pad=10)
        return fig

    st.pyplot(draw_nn(selected_features, st.session_state.hidden_layer_neurons))

    def add_layer():
        if st.session_state.num_hidden_layers < 6:
            st.session_state.num_hidden_layers += 1
            st.session_state.hidden_layer_neurons.append(1)

    def remove_layer():
        if st.session_state.num_hidden_layers > 0:
            st.session_state.num_hidden_layers -= 1
            st.session_state.hidden_layer_neurons.pop()

    def increase_neurons(i):
        if st.session_state.hidden_layer_neurons[i] < 8:
            st.session_state.hidden_layer_neurons[i] += 1

    def decrease_neurons(i):
        if st.session_state.hidden_layer_neurons[i] > 1:
            st.session_state.hidden_layer_neurons[i] -= 1

    for i in range(st.session_state.num_hidden_layers):
        col1, col2, col3 = st.columns([1, 2, 1])
        with col1:
            st.button("−", key=f"dec_{i}", on_click=decrease_neurons, args=(i,))
        with col2:
            st.write(f"Layer {i+1}: {st.session_state.hidden_layer_neurons[i]} neurons")
        with col3:
            st.button("+", key=f"inc_{i}", on_click=increase_neurons, args=(i,))
    col_btn1, col_btn2 = st.columns(2)
    with col_btn1:
        st.button("Add Layer", on_click=add_layer)
    with col_btn2:
        st.button("Remove Layer", on_click=remove_layer)
    st.markdown('</div>', unsafe_allow_html=True)

# Right panel: Output and Training (decision region and loss plots stacked vertically, same size as dataset scatterplot)
with col_right:
    st.markdown('<div class="panel">', unsafe_allow_html=True)
    st.subheader("Output")
    col_start, col_stop = st.columns(2)
    with col_start:
        if st.button("▶️ Play"):
            st.session_state.training = True
    with col_stop:
        if st.button("⏹️ Stop"):
            st.session_state.training = False

    def create_model(input_dim, neurons):
        model = Sequential()
        model.add(Input(shape=(input_dim,)))
        reg = l1(reg_rate) if reg_type == "L1" else l2(reg_rate) if reg_type == "L2" else None
        for n in neurons:
            model.add(Dense(n, activation=activation.lower(), kernel_regularizer=reg))
        output_activation = "sigmoid" if problem_type == "Classification" else "linear"
        loss = BinaryCrossentropy() if problem_type == "Classification" else MeanSquaredError()
        model.add(Dense(1, activation=output_activation))
        model.compile(optimizer=SGD(learning_rate=learning_rate), loss=loss, metrics=["accuracy" if problem_type == "Classification" else "mae"])
        return model

    class OutputCallback(tf.keras.callbacks.Callback):
        def __init__(self, X, y):
            super().__init__()
            self.X, self.y = X, y
            self.losses = {"Epoch": [], "Train Loss": [], "Val Loss": []}
            self.placeholder = st.empty()
            self.current_epoch = 0  # Track current epoch

        def on_train_begin(self, logs=None):
            self.model = self.model  # Use the model passed implicitly by Keras
            self.current_epoch = 0

        def on_epoch_end(self, epoch, logs=None):
            try:
                self.current_epoch = epoch + 1  # Update current epoch
                self.losses["Epoch"].append(self.current_epoch)
                self.losses["Train Loss"].append(logs["loss"])
                self.losses["Val Loss"].append(logs.get("val_loss", logs["loss"]))
                with self.placeholder.container():
                    # Single column for vertical stacking
                    st.subheader("Decision Region & Loss")
                    # Display epoch count above decision region
                    st.write(f"Epoch: {self.current_epoch}")
                    # Decision region plot (3x3 size, improved accuracy)
                    fig1, ax1 = plt.subplots(figsize=(3, 3))  # Match dataset scatterplot size
                    if problem_type == "Classification":
                        X_2d = self.X[:, :2]  # Use only first two features for 2D
                        # Ensure model prediction for decision boundary
                        y_pred_proba = self.model.predict(X_2d, verbose=0)
                        y_pred = (y_pred_proba > 0.5).astype(int).ravel()
                        try:
                            # Use mlxtend for decision regions
                            plot_decision_regions(X_2d, self.y, clf=self.model, legend=2, colors='blue,red')
                            plt.scatter(X_2d[:, 0], X_2d[:, 1], c=self.y, cmap='coolwarm', edgecolors='k', alpha=0.7)
                            # Add precise decision boundary using contour
                            xx, yy = np.meshgrid(np.linspace(X_2d[:, 0].min(), X_2d[:, 0].max(), 100),
                                                 np.linspace(X_2d[:, 1].min(), X_2d[:, 1].max(), 100))
                            grid = np.c_[xx.ravel(), yy.ravel()]
                            Z = self.model.predict(grid, verbose=0)
                            Z = (Z > 0.5).astype(int).reshape(xx.shape)
                            plt.contour(xx, yy, Z, levels=[0.5], colors='black', linewidths=2)
                        except Exception as e:
                            st.warning(f"Decision region plot failed: {e}")
                            # Fallback: Use contourf for decision regions
                            xx, yy = np.meshgrid(np.linspace(X_2d[:, 0].min(), X_2d[:, 0].max(), 100),
                                                 np.linspace(X_2d[:, 1].min(), X_2d[:, 1].max(), 100))
                            grid = np.c_[xx.ravel(), yy.ravel()]
                            Z = self.model.predict(grid, verbose=0) if self.model else np.zeros((len(grid), 1))
                            Z = (Z > 0.5).astype(int).reshape(xx.shape)
                            plt.contour(xx, yy, Z, levels=[0.5], colors='black', linewidths=2)
                            plt.contourf(xx, yy, Z, alpha=0.3, cmap="coolwarm")
                            plt.scatter(X_2d[:, 0], X_2d[:, 1], c=self.y, cmap="coolwarm", edgecolors="k", alpha=0.7)
                    else:
                        y_pred = self.model.predict(self.X, verbose=0) if self.model else np.zeros_like(self.X[:, 0])
                        plt.scatter(self.X[:, 0], self.y, c="blue", alpha=0.5)
                        plt.plot(self.X[:, 0], y_pred, "r-", linewidths=2)
                    ax1.set_facecolor("#333")
                    ax1.set_xticks([])
                    ax1.set_yticks([])
                    st.pyplot(fig1)

                    # Train-Val-Loss plot (3x3 size)
                    fig2, ax2 = plt.subplots(figsize=(3, 3))  # Match dataset scatterplot size
                    ax2.plot(self.losses["Epoch"], self.losses["Train Loss"], "b-", label="Train")
                    ax2.plot(self.losses["Epoch"], self.losses["Val Loss"], "r--", label="Val")
                    ax2.legend()
                    ax2.set_facecolor("#333")
                    st.pyplot(fig2)
            except Exception as e:
                st.error(f"Error in epoch end: {e}")

    if st.session_state.training:
        try:
            model = create_model(len(selected_features), st.session_state.hidden_layer_neurons)
            callback = OutputCallback(selected_data, cv)
            callback.model = model  # Explicitly set the model for the callback
            model.fit(selected_data, cv, epochs=50,  # Further reduced for Spaces
                      batch_size=batch_size, validation_split=1-train_ratio,
                      callbacks=[callback], verbose=0)
        except Exception as e:
            st.error(f"Training failed: {e}")

    st.markdown('</div>', unsafe_allow_html=True)