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Update app.py
Browse files
app.py
CHANGED
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@@ -74,6 +74,120 @@ df_builder_pivot_str = ""
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def plot_model_results(results_df, average_value, title, model_type):
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"""
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Plot model results with specific orders and colors for Trust and NPS models.
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@@ -663,6 +777,7 @@ def analyze_excel_single(file_path):
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average_value_nps = results_df_nps["Importance_percent"].mean()
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img_nps = plot_model_results(
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results_df_nps,
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f"NPS Drivers: {file_name}",
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"NPS",
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)
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@@ -1039,6 +1154,18 @@ def variable_outputs(file_inputs):
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"<span style='font-size:20px; font-weight:bold;'>3) Trust and KPI Drivers</span>",
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visible=True,
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),
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gr.Image(
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value=img_trust,
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def plot_model_results(results_df, average_value, title, model_type):
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"""
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Plot model results with specific orders and colors for Trust and NPS models.
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Args:
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results_df (DataFrame): DataFrame containing predictor names and their importance.
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average_value (float): Average importance value.
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title (str): Title of the plot.
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model_type (str): Type of model (either "Trust" or "NPS").
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Returns:
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Image: Image object containing the plot.
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"""
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logger.info(
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"Plotting model results for %s model with title '%s'.", model_type, title
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)
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try:
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import math
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# Color mapping
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color_map = {
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"Stability": "#375570",
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"Development": "#E3B05B",
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"Relationship": "#C63F48",
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"Benefit": "#418387",
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"Vision": "#DF8859",
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"Competence": "#6D93AB",
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"Trust": "#f5918a",
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}
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# Load Trust Core Image
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image_path = "./images/image.png"
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try:
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trust_core_img = Image.open(image_path)
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except FileNotFoundError:
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raise FileNotFoundError(f"❌ Error: Trust Core image '{image_path}' not found!")
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# 🟠 NORMAL BAR PLOT
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# 🟢 BUBBLE PLOT for NPS (copied exactly from your plot_trust_driver_bubbles)
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order = ["Trust", "Stability", "Development", "Relationship", "Benefit", "Vision", "Competence"]
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results_df["Predictor"] = pd.Categorical(
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results_df["Predictor"], categories=order, ordered=True
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)
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results_df.sort_values("Predictor", ascending=False, inplace=True)
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# Extract values
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values_dict = results_df.set_index("Predictor")["Importance_percent"].to_dict()
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percentages = [values_dict.get(pred, 0) for pred in order]
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# Bubble sizes
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min_radius = 0.15
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base_percentage = min(percentages) if min(percentages) > 0 else 1
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bubble_radii = [min_radius * (p / base_percentage) ** 0.75 for p in percentages]
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# Central core
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central_radius = 0.8
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# Bubble positions
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default_positions = {
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"Trust": (0.0, 1.3),
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"Stability": (-1.05, 0.0),
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"Development": (1.05, 0.0),
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"Relationship": (-0.6, 0.85),
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"Benefit": (0.6, -0.85),
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"Vision": (0.6, 0.85),
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"Competence": (-0.6, -0.85)
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}
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# Adjust bubble positions slightly to touch core
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for i, predictor in enumerate(order):
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x, y = default_positions[predictor]
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r = bubble_radii[i]
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distance = np.sqrt(x**2 + y**2)
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scale_factor = (central_radius + r - 0.2) / distance
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default_positions[predictor] = (x * scale_factor, y * scale_factor)
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fig, ax = plt.subplots(figsize=(10, 10), dpi=300)
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ax.set_xlim(-2, 2)
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ax.set_ylim(-2, 2)
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ax.set_aspect('equal')
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ax.axis("off")
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# Draw Trust Core
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extent = [-central_radius, central_radius, -central_radius, central_radius]
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ax.imshow(trust_core_img, extent=extent, alpha=1.0)
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# Draw Bubbles
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for i, predictor in enumerate(order):
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x, y = default_positions[predictor]
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r = bubble_radii[i]
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color = color_map.get(predictor, "#cccccc")
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circle = patches.Circle((x, y), r, facecolor=color, alpha=1.0, lw=1.5)
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ax.add_patch(circle)
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ax.text(x, y, f"{percentages[i]:.1f}%", fontsize=10, fontweight="bold", ha="center", va="center", color="white")
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plt.title(title, fontsize=12)
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# Save and return image
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img_data = io.BytesIO()
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plt.savefig(img_data, format="png", bbox_inches="tight", facecolor=fig.get_facecolor())
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img_data.seek(0)
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img = Image.open(img_data)
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plt.close(fig)
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return img
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except Exception as e:
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logger.error("Error plotting model results: %s", e)
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raise
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def plot_model_results(results_df, average_value, title, model_type):
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"""
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Plot model results with specific orders and colors for Trust and NPS models.
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average_value_nps = results_df_nps["Importance_percent"].mean()
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img_nps = plot_model_results(
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results_df_nps,
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average_value_nps,
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f"NPS Drivers: {file_name}",
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"NPS",
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)
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"<span style='font-size:20px; font-weight:bold;'>3) Trust and KPI Drivers</span>",
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visible=True,
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),
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gr.Markdown(
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"""
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<div style='font-size:16px;'>
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This analysis highlights which Trust Buckets® are most effective in improving NPS and building trust.
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<br><br>
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The baseline impact for each driver is <b>16.7%</b> (100% divided across 6 Trust Buckets®). Any percentage above this average indicates higher significance,
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meaning these Trust Buckets® require more attention. To maximise their potential, focus on “filling” them with the right attributes and tailored messaging.
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</div>
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""",
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visible=True,
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),
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gr.Image(
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value=img_trust,
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