Airbnb Market & Pricing Intelligence analysis on 74K+ listings using MySQL — uncovering trust-driven pricing power, demand elasticity, and strategic market opportunities.
-
Updated
Feb 26, 2026 - Jupyter Notebook
Airbnb Market & Pricing Intelligence analysis on 74K+ listings using MySQL — uncovering trust-driven pricing power, demand elasticity, and strategic market opportunities.
Data analytics project exploring hotel performance using SQL queries, DAX measures, and Power BI dashboards with 800+ customer bookings.
hotel review extraction tool
Used MySQL to analyze OYO’s pricing structure and customer popularity behavior. Discovered hidden demand winners, discount effectiveness patterns, and location-wise competition insights.
Hotel bookings dataset (119k records, 2015–2017) from a City Hotel and a Resort Hotel was analyzed to understand how booking patterns and cancellations impact revenue and operations. Using Python for data cleaning, SQL for exploratory analysis and Power BI for visualizations.
Predict hotel booking cancellations using Logistic Regression and Decision Trees; deliver policy recommendations for refunds, deposits, and segment-based rules
Power BI dashboard analyzing 119k hotel bookings to validate revenue hypotheses. Identified €5M opportunity in family segment, 2.4x cancellation risk for early bookings, and 72% summer revenue concentration.
Add a description, image, and links to the hotel-analytics topic page so that developers can more easily learn about it.
To associate your repository with the hotel-analytics topic, visit your repo's landing page and select "manage topics."