Skythena — Real Estate Analytics Platform
Unlocked actionable property insights with a multi-database analytics architecture combining MongoDB document storage and Neo4J relationship graphs.
Multi-DB analytics engine
The Challenge
Skythena needed a platform to aggregate real estate data from multiple sources, map complex property relationships (ownership chains, geographic proximity, market comparisons), and serve analytics through REST APIs. The data requirements demanded both flexible document storage for varied property attributes and graph-based relationship modeling for interconnected property networks.
نهجنا
Daiviksoft built a multi-database analytics platform using MongoDB for flexible document storage of property data and Neo4J as a graph database for relationship mapping between properties, owners, and market segments. The system runs on multiple AWS EC2 instances — separate services for the API layer, MongoDB access, and Neo4J graph queries — providing scalable, purpose-built data access for different query patterns.
Key Deliverables
Results & Impact
Skythena launched a real estate analytics platform leveraging purpose-built databases for different data patterns — document storage for flexible property schemas and graph queries for relationship analysis. The multi-database architecture enables complex analytics that would be difficult to achieve with a single database technology.
Project Overview
Client
Skythena
Category
Enterprise Software
Industry
Real Estate
Key Metrics
Multi-DB analytics engine
Technology Stack
Have a Similar Project?
Schedule a free consultation to discuss how we can deliver similar results for your organization.
