Download PDFOpen PDF in browserDynamic Scaling Strategies in Cloud Data Warehousing: Balancing Cost and PerformanceEasyChair Preprint 158796 pages•Date: March 3, 2025AbstractCloud data warehousing has become a crucial component of modern analytics, enabling enterprises to store, manage, and process vast amounts of data. However, achieving a balance between performance and cost remains a challenge due to fluctuating workloads and unpredictable resource demands. Dynamic scaling strategies provide an effective solution by adjusting computational and storage resources in real-time based on workload requirements. This article explores various dynamic scaling strategies such as auto-scaling, workload-aware scaling, predictive scaling, and multi-cluster scaling. It also examines the challenges associated with dynamic scaling and presents best practices for achieving optimal cost-performance balance. The adoption of AI-driven scaling mechanisms and cloud-native tools has further enhanced the ability to optimize cloud data warehouse environments, ensuring high efficiency and cost control. Keyphrases: Auto-scaling, Cloud Data Warehousing, Dynamic Scaling, Elasticity, Multi-Cluster Architectures, Predictive Scaling, cost optimization, query performance
|