Housing.com
Real estate analytics
Data silos blocked pricing accuracy. A unified lakehouse saved a week of manual work per ML model.
- 5.5% increase in prospect-to-lead rate
- 0.05% reduction in fraud instances
- 1 week reduction in ML deployment time
Staff navigated dozens of dashboards to find data. Now, hundreds of users query structured tables in plain English.
An Australian property marketplace manages extensive real estate data to support property lifecycle decisions for buyers, sellers, and investors.
Hundreds of internal users relied on static tables and complex dashboards like Tableau to access weekly business data. Poring over dozens of reports...
Real estate listings and property services marketplace in Australia.
Cloud-based data warehousing, processing, and analytics platform.
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