Have a question?
Have a question?
+82-2-6001-3191
The Denodo Platform, built on a foundation of data virtualization, delivers unmatched query acceleration by combining advanced query optimization, caching, and efficient data processing across multiple data sources. Engineered so that every query is executed with maximum efficiency, the Denodo Platform’s capabilities include intelligent caching, optimized data movement, and embedded massively parallel processing (MPP) to handle the most complex data challenges. From large-scale cloud analytics to high-speed federated queries, the Denodo Platform’s query acceleration features empower businesses to unlock the full potential of their data.
Specialized data virtualization layers streamline complex query execution across multiple data sources, making data readily accessible in real time without sacrificing performance. By optimizing the handling of federated data queries, users experience swift data access without needing extensive knowledge of each source.
The embedded Presto-based MPP engine combines the scalability of data lake processing with advanced optimization. This setup enables seamless parallel query execution across cloud and on-premises data, empowering organizations to harness the full power of both traditional and data lake environments.
Integrated caching and aggregate-aware acceleration enable rapid query responses by reusing frequently accessed data and leveraging pre-aggregated results. This approach significantly reduces query response times, enabling users to access insights in seconds rather than minutes or hours.
Through data movement optimization, the Denodo Platform only transfers essential data, reducing unnecessary load and accelerating response times. The Denodo Platform’s intelligent processing dynamically chooses the best strategy—whether pushing down processes to the data source or using in-memory handling—to balance performance with efficiency.
A sophisticated, cost-based optimizer analyzes query patterns and data source capabilities to select the optimal execution plan for each query. This minimizes delays in multi-source environments, enabling high-speed performance even in the most complex data landscapes.