Spaces:
Sleeping
Sleeping
| import streamlit as st | |
| import seaborn as sns | |
| import matplotlib.pyplot as plt | |
| import pandas as pd | |
| # Load data | |
| def load_data(): | |
| df = pd.read_csv("processed_data.csv") # replace with your dataset | |
| return df | |
| # Create Streamlit app | |
| def app(): | |
| # Title for the app | |
| st.title("Pizza Sales Data Analysis Dashboard") | |
| df = load_data() | |
| df = pd.DataFrame(df) | |
| # Calculate key metrics | |
| total_orders = df['order_id'].nunique() | |
| total_revenue = df['total_price'].sum() | |
| most_popular_size = df['pizza_size'].value_counts().idxmax() | |
| most_frequent_category = df['pizza_category'].value_counts().idxmax() | |
| total_pizzas_sold = df['quantity'].sum() | |
| repeat_customers = df.groupby('order_id').size().value_counts().get(2, 0) | |
| # Sidebar with key metrics | |
| st.sidebar.header("Key Metrics") | |
| st.sidebar.metric("Total Orders", total_orders) | |
| st.sidebar.metric("Total Revenue", f"${total_revenue:,.2f}") | |
| st.sidebar.metric("Most Popular Size", most_popular_size) | |
| st.sidebar.metric("Most Popular Category", most_frequent_category) | |
| st.sidebar.metric("Total Pizzas Sold", total_pizzas_sold) | |
| st.sidebar.metric("Repeat Customers", repeat_customers) | |
| plots = [ | |
| {"title": "Top Selling Pizzas (by Quantity)", "x": "pizza_name", "y": "quantity", "top": 5}, | |
| {"title": "Quantity of Pizzas Sold by Category and Time of the Day", "x": "time_of_day", "hue": "pizza_category"}, | |
| {"title": "Quantity of Pizzas Sold by Size and Time of the Day", "x": "time_of_day", "hue": "pizza_size"}, | |
| {"title": "Monthly Revenue Trends by Pizza Category", "x": "order_month", "y": "total_price", "hue": "pizza_category", "estimator": "sum", "marker": "o"}, | |
| ] | |
| for plot in plots: | |
| st.header(plot["title"]) | |
| fig, ax = plt.subplots() | |
| if "Top" in plot["title"]: | |
| data = df.groupby(plot["x"])[plot["y"]].sum().reset_index().sort_values(by=plot["y"], ascending=False).head(plot["top"]) | |
| ax.bar(data[plot["x"]].values, data[plot["y"]].values) | |
| if "Quantity" in plot["title"]: | |
| sns.countplot(x=plot["x"], hue=plot["hue"], data=df, ax=ax) | |
| if "Revenue" in plot["title"]: | |
| sns.lineplot(x=plot["x"], y=plot["y"], hue=plot["hue"], data=df, estimator=plot["estimator"], marker=plot["marker"], ax=ax) | |
| ax.set_xlabel(plot["x"].capitalize()) | |
| ax.set_ylabel(plot["y"].capitalize()) | |
| st.pyplot(fig) | |
| if __name__ == "__main__": | |
| app() | |