Kyligence
Augmented OLAP and Unified Metric Stores for High-Performance Cloud Analytics.
The world's fastest in-memory analytics database for hybrid cloud and integrated AI.
Exasol is a high-performance, in-memory, massively parallel processing (MPP) relational database management system designed specifically for analytics. As of 2026, it has solidified its position in the enterprise market by bridging the gap between traditional Business Intelligence and modern AI workloads. Its architecture utilizes a column-oriented storage engine and sophisticated compression algorithms to minimize I/O, while its 'AI Lab' enables data scientists to run large-scale Python, R, and Java models directly within the database engine to eliminate data movement latency. Exasol differentiates itself through an 'Auto-Tuning' engine that automates indexing and performance optimization, significantly reducing the Total Cost of Ownership (TCO) compared to legacy systems. It supports deployment across AWS, Azure, Google Cloud, and on-premises environments, offering a seamless hybrid-cloud experience. By 2026, its integration with LLM frameworks and vector search capabilities has made it a primary choice for enterprises requiring low-latency RAG (Retrieval-Augmented Generation) applications on massive datasets.
Massively Parallel Processing combined with in-memory data distribution for sub-second query response times.
Augmented OLAP and Unified Metric Stores for High-Performance Cloud Analytics.
The industry's first AI-powered, end-to-end data management platform for multi-cloud environments.
Serverless analytics at the speed of DuckDB, scaled for the cloud.
The fastest cloud data warehouse for sub-second analytics at any scale.
Verified feedback from the global deployment network.
Post queries, share implementation strategies, and help other users.
Self-optimizing algorithms that automatically create indexes and reorganize data based on query patterns.
User-Defined Functions (UDFs) allow Python, R, and Java code to run in parallel directly on the data nodes.
An abstraction layer that allows querying external data sources as if they were local tables.
Advanced dictionary and delta encoding techniques to reduce storage footprint while boosting I/O.
Integrated vector data types and similarity search algorithms for RAG and Generative AI applications.
Identical architecture across all deployment targets (Cloud, On-prem, Hybrid).
Latency in traditional warehouses prevented real-time stock adjustments during peak shopping hours.
Registry Updated:2/7/2026
Inability to process millions of transactions against complex fraud models in milliseconds.
Siloed data across CRM, Web, and Mobile prevented a unified view.