This presentation discusses hybrid transactional/analytical processing (HTAP) and the GigaSpaces solution. HTAP aims to support both real-time transactions and complex analytics by combining transaction processing and data warehousing capabilities. However, analytics needs have evolved faster than databases to include real-time streaming and predictive analytics. The GigaSpaces solution advocates a polyglot approach using Spark for analytics combined with an in-memory data grid for transactional storage and processing to better support insight-driven applications. Case studies demonstrate how the architecture provides unified low-latency access to data, distributed analytics, and triggered actions.