Shared-nothing has become the dominant parallel architecture for big data systems, such as MapReduce and Spark, analytics platforms, NoSQL databases and search engines [Özsu & Valduriez 2020]. The reason is […]
Blending Seamlessly Current & Historical Data: LeanXcale Bidimensional Partitioning
Motivation: Support Any Historical Monitoring Data Depth with High Efficiency One of the main tasks of a monitoring tool is to collect historical data. Tracking historical data allows companies to […]
Understanding Cluster Replication Scalability
Real Time KPIs
Understanding Cluster Replication Scalability
Cluster Replication and Logarithmic Scalability If you have been using cluster replication with some open source operational database, you might have noticed that they do not scale out well. If […]
Scalability
KPI Calculation: LeanXcale Online Aggregates
Motivation: Supporting High Data Ingestion Rates and Performing Frequent Aggregate Queries In real time analytics, a major requirement is to be able to ingest data at high rates, while at […]
Monitoring: High Data Ingestion
Understanding Distributed Databases Scalability
Scalability & Performance What is scalability? Scalability is an overloaded term that has been perverted by technical marketing to confuse potential customers. Every system today would be advertised as scalable […]
High Data Ingestion: LeanXcale Dual Interface SQL & NoSQL
Motivation: Supporting High Data Ingestion Rates and Efficient SQL queries The cost of monitoring solutions highly depends on the required footprint to ingest the monitoring data and to query these […]