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Vacation Rental DataAirDNA

Vacation rental data and analytics SaaS for STR hosts, investors, pricing, and market performance insights.

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Product details

Overview

AirDNA is a SaaS platform offering deep short‑term rental (STR) market data and analytics globally. It aggregates performance metrics, rental demand, pricing trends, and revenue forecasts from millions of Airbnb and Vrbo listings across 120,000+ markets. The software enables hosts, property managers, and real estate investors to evaluate markets, optimize pricing, forecast earnings, and benchmark performance, driving data‑led decisions in STR operations.

Features and Capabilities

  • **Market Analytics: **Provides historical and current STR market trends (occupancy, revenue, ADR). Covers tens of thousands of global markets with data visualization and trend scoring.
  • **Revenue & Pricing Insights: **Tracks dynamic pricing and suggests optimal nightly rates. Users can analyze average daily rates, revenue per available rental, and seasonal shifts.
  • **Property Performance: **Compare a property’s performance against local competitors. Includes custom comparison sets of listings to benchmark occupancy and income potential.
  • **Rentalizer & Forecast Tools: **Estimate a property’s potential annual revenue using key inputs (location, size, market data), useful for investment decisions.
  • **Custom Data & Exports: **Download detailed datasets or integrate via APIs for advanced analysis. Enables enterprise and custom report generation.
  • **Submarket & Filter Tools: **Segment markets by geography, amenities, listing attributes, and performance metrics to isolate the most promising areas.
  • **User Dashboards: **Interactive dashboards show key KPIs, revenue projections, occupancy forecasts, and trend summaries at a glance.
  • **Historical Data Access: **View years of historical performance data to understand seasonality and long‑term market shifts.