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import warnings
from pathlib import Path
import gradio as gr
import pandas as pd
import plotly.express as px
import plotly.graph_objects as go
import statsmodels.api as sm
APP_DIR = Path(__file__).resolve().parent
DEFAULT_BOOKINGS = APP_DIR / "hotel_bookings.csv"
DEFAULT_SYNTHETIC = APP_DIR / "synthetic_pricing_data.csv"
REVIEWS_SAMPLES = [
"Absolutely loved the stay, the room was clean and staff were friendly.",
"Terrible experience, the room was dirty and service was slow.",
"It was okay, nothing special but nothing bad either.",
"Amazing hotel, will definitely come back next summer!",
"Very disappointed, the price was too high for what we got.",
"Decent stay, the location was great but the food was average.",
"Wonderful experience, exceeded all expectations!",
"Not worth the money, would not recommend to friends.",
"Pleasant stay overall, the pool was lovely.",
"Average hotel, did the job but nothing memorable.",
]
def safe_read_csv(file_obj, fallback_path: Path) -> pd.DataFrame:
if file_obj is None:
return pd.read_csv(fallback_path)
if isinstance(file_obj, str):
return pd.read_csv(file_obj)
name = getattr(file_obj, "name", None)
if name:
return pd.read_csv(name)
if hasattr(file_obj, "read"):
content = file_obj.read()
if isinstance(content, bytes):
return pd.read_csv(io.BytesIO(content))
return pd.read_csv(io.StringIO(content))
raise ValueError("Unsupported file input.")
def preprocess_bookings(df: pd.DataFrame) -> pd.DataFrame:
data = df.copy()
data["children"] = data["children"].fillna(0)
data["country"] = data["country"].fillna("Unknown")
for col in ["agent", "company"]:
if col in data.columns:
data = data.drop(columns=col)
data["total_nights"] = data["stays_in_weekend_nights"] + data["stays_in_week_nights"]
data["revenue"] = data["adr"] * data["total_nights"]
active = data[data["is_canceled"] == 0].copy()
active["arrival_date"] = pd.to_datetime(
active["arrival_date_year"].astype(str) + "-" + active["arrival_date_month"] + "-01",
errors="coerce",
)
active = active.dropna(subset=["arrival_date"])
return active
def attach_sentiment(df: pd.DataFrame) -> pd.DataFrame:
data = df.copy()
if "review" not in data.columns:
repeated = (REVIEWS_SAMPLES * ((len(data) // len(REVIEWS_SAMPLES)) + 1))[: len(data)]
data["review"] = repeated
positive_words = {"love", "loved", "amazing", "wonderful", "friendly", "great", "pleasant", "excellent", "clean", "recommend", "lovely", "exceeded"}
negative_words = {"terrible", "dirty", "slow", "disappointed", "high", "bad", "not", "nothing", "average", "poor", "worst", "awful"}
def get_sentiment(text: str) -> str:
tokens = [t.strip(".,!?:;\"\'").lower() for t in str(text).split()]
pos = sum(token in positive_words for token in tokens)
neg = sum(token in negative_words for token in tokens)
if pos > neg:
return "Positive"
if neg > pos:
return "Negative"
return "Neutral"
data["sentiment"] = data["review"].apply(get_sentiment)
return data
def filter_bookings(df: pd.DataFrame, hotel_types, start_date, end_date):
filtered = df.copy()
if hotel_types:
filtered = filtered[filtered["hotel"].isin(hotel_types)]
if start_date:
start = pd.to_datetime(start_date)
filtered = filtered[filtered["arrival_date"] >= start]
if end_date:
end = pd.to_datetime(end_date)
filtered = filtered[filtered["arrival_date"] <= end]
return filtered
def monthly_revenue_chart(df: pd.DataFrame):
monthly = df.groupby(pd.Grouper(key="arrival_date", freq="MS"))["revenue"].sum().reset_index()
fig = px.line(monthly, x="arrival_date", y="revenue", markers=True, title="Monthly Revenue Over Time")
fig.update_layout(xaxis_title="Month", yaxis_title="Total Revenue")
return fig, monthly
def hotel_type_rates_chart(df: pd.DataFrame):
fig = px.box(df, x="hotel", y="adr", color="hotel", title="Average Daily Rate by Hotel Type")
fig.update_layout(showlegend=False, xaxis_title="Hotel Type", yaxis_title="ADR")
return fig
def top_countries_chart(df: pd.DataFrame):
top = df["country"].value_counts().head(10).reset_index()
top.columns = ["country", "bookings"]
fig = px.bar(top, x="country", y="bookings", title="Top 10 Countries by Number of Bookings")
fig.update_layout(xaxis_title="Country", yaxis_title="Bookings")
return fig
def arima_forecast_chart(monthly: pd.DataFrame):
if len(monthly) < 12:
fig = go.Figure()
fig.add_annotation(text="Not enough monthly data for ARIMA forecast. At least 12 months is recommended.", showarrow=False)
fig.update_layout(title="Revenue Forecast - Next 6 Months (ARIMA)")
return fig
ts = monthly.set_index("arrival_date")["revenue"].asfreq("MS")
ts = ts.ffill()
with warnings.catch_warnings():
warnings.simplefilter("ignore")
model = sm.tsa.ARIMA(ts, order=(1, 1, 2))
result = model.fit()
forecast = result.get_forecast(steps=6)
forecast_index = pd.date_range(start=ts.index[-1] + pd.DateOffset(months=1), periods=6, freq="MS")
forecast_values = forecast.predicted_mean
fig = go.Figure()
fig.add_trace(go.Scatter(x=ts.index, y=ts.values, mode="lines+markers", name="Historical Revenue"))
fig.add_trace(go.Scatter(x=forecast_index, y=forecast_values, mode="lines+markers", name="Forecasted Revenue"))
fig.update_layout(title="Revenue Forecast - Next 6 Months (ARIMA)", xaxis_title="Month", yaxis_title="Revenue")
return fig
def sentiment_distribution_chart(df: pd.DataFrame):
with_sentiment = attach_sentiment(df)
counts = with_sentiment["sentiment"].value_counts().reset_index()
counts.columns = ["sentiment", "count"]
order = ["Positive", "Neutral", "Negative"]
counts["sentiment"] = pd.Categorical(counts["sentiment"], categories=order, ordered=True)
counts = counts.sort_values("sentiment")
fig = px.bar(counts, x="sentiment", y="count", title="Guest Review Sentiment Distribution")
fig.update_layout(xaxis_title="Sentiment", yaxis_title="Number of Reviews")
return fig
def synthetic_pricing_chart(df: pd.DataFrame):
data = df.copy()
data["month"] = pd.to_datetime(data["month"])
fig = px.bar(
data.sort_values("month"),
x="month",
y="expected_revenue",
color="hotel_type",
barmode="group",
title="Synthetic Expected Monthly Revenue by Pricing Strategy",
hover_data=["suggested_price_per_night", "expected_occupancy_rate", "season", "promotion_active"],
)
fig.update_layout(xaxis_title="Month", yaxis_title="Expected Revenue")
return fig
def summary_table(df: pd.DataFrame) -> pd.DataFrame:
if df.empty:
return pd.DataFrame({"metric": ["No data after filtering"], "value": [""]})
monthly_rev = df.groupby(pd.Grouper(key="arrival_date", freq="MS"))["revenue"].sum()
return pd.DataFrame(
{
"metric": [
"Bookings",
"Total revenue",
"Average ADR",
"Average length of stay",
"Average monthly revenue",
],
"value": [
int(len(df)),
round(df["revenue"].sum(), 2),
round(df["adr"].mean(), 2),
round(df["total_nights"].mean(), 2),
round(monthly_rev.mean(), 2) if len(monthly_rev) else 0,
],
}
)
def update_dashboard(bookings_file, pricing_file, hotel_types, start_date, end_date):
bookings_raw = safe_read_csv(bookings_file, DEFAULT_BOOKINGS)
pricing_raw = safe_read_csv(pricing_file, DEFAULT_SYNTHETIC)
bookings = preprocess_bookings(bookings_raw)
if not hotel_types:
hotel_types = sorted(bookings["hotel"].dropna().unique().tolist())
filtered = filter_bookings(bookings, hotel_types, start_date, end_date)
monthly_fig, monthly = monthly_revenue_chart(filtered)
adr_fig = hotel_type_rates_chart(filtered)
countries_fig = top_countries_chart(filtered)
forecast_fig = arima_forecast_chart(monthly)
sentiment_fig = sentiment_distribution_chart(filtered)
pricing_fig = synthetic_pricing_chart(pricing_raw)
preview = filtered.head(200)
summary = summary_table(filtered)
return summary, preview, monthly_fig, adr_fig, countries_fig, forecast_fig, sentiment_fig, pricing_fig
def available_hotel_types(bookings_file):
bookings_raw = safe_read_csv(bookings_file, DEFAULT_BOOKINGS)
bookings = preprocess_bookings(bookings_raw)
options = sorted(bookings["hotel"].dropna().unique().tolist())
min_date = bookings["arrival_date"].min().date().isoformat()
max_date = bookings["arrival_date"].max().date().isoformat()
return gr.CheckboxGroup(choices=options, value=options), min_date, max_date
DESCRIPTION = """
# Luxury Hotel Revenue Management App
Use booking data and review sentiment to explore how a luxury hotel chain can optimize pricing.
### What this Space does
- Upload your own hotel bookings CSV or use the bundled dataset
- Filter by hotel type and date range
- View the notebook visuals as an interactive dashboard
- Inspect monthly revenue, ADR by hotel type, top countries, ARIMA forecast, sentiment mix, and synthetic pricing strategy revenue
"""
with gr.Blocks(title="Luxury Hotel Revenue Management") as demo:
gr.Markdown(DESCRIPTION)
with gr.Row():
bookings_file = gr.File(label="Upload hotel booking data CSV (optional)", file_types=[".csv"], type="filepath")
pricing_file = gr.File(label="Upload synthetic pricing data CSV (optional)", file_types=[".csv"], type="filepath")
with gr.Row():
hotel_selector = gr.CheckboxGroup(label="Filter by hotel type", choices=[], value=[])
start_date = gr.Textbox(label="Start date (YYYY-MM-DD)")
end_date = gr.Textbox(label="End date (YYYY-MM-DD)")
load_btn = gr.Button("Load / Refresh Dashboard", variant="primary")
summary_df = gr.Dataframe(label="Summary metrics", interactive=False)
preview_df = gr.Dataframe(label="Filtered booking data preview", interactive=False)
with gr.Tab("Revenue Overview"):
monthly_plot = gr.Plot(label="Monthly Revenue")
adr_plot = gr.Plot(label="ADR by Hotel Type")
countries_plot = gr.Plot(label="Top Countries")
with gr.Tab("Forecasting"):
forecast_plot = gr.Plot(label="ARIMA Forecast")
with gr.Tab("Sentiment"):
sentiment_plot = gr.Plot(label="Sentiment Distribution")
with gr.Tab("Pricing Strategy"):
pricing_plot = gr.Plot(label="Synthetic Pricing Revenue")
bookings_file.change(
fn=available_hotel_types,
inputs=[bookings_file],
outputs=[hotel_selector, start_date, end_date],
)
demo.load(
fn=available_hotel_types,
inputs=[bookings_file],
outputs=[hotel_selector, start_date, end_date],
)
load_btn.click(
fn=update_dashboard,
inputs=[bookings_file, pricing_file, hotel_selector, start_date, end_date],
outputs=[summary_df, preview_df, monthly_plot, adr_plot, countries_plot, forecast_plot, sentiment_plot, pricing_plot],
)
if __name__ == "__main__":
demo.launch(theme=gr.themes.Soft())
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