Reviews
Description
Real-time data stream monitoring is crucial for process management in today's business environment. Using continuous data streams monitoring systems complex events can be detected that can trigger changes in control flow of business processes. This book presents a framework for knowledge-based event processing that integrates external background knowledge and improves expressiveness of event processing semantics. Fusion of available domain knowledge with streaming data can improve the event processing quality by enhancing the system to understand more about complex events and their relationships. A combinatorial event pattern specification is presented based on knowledge patterns and temporal event detection operators. The book explores three different approaches for real-time knowledge-based event processing: semantic enrichment of streams, enrichment of complex event patterns and type-based sampling of event streams.
EXTRA 10 % discount with code: EXTRA
The promotion ends in 22d.17:57:54
The discount code is valid when purchasing from 10 €. Discounts do not stack.
Real-time data stream monitoring is crucial for process management in today's business environment. Using continuous data streams monitoring systems complex events can be detected that can trigger changes in control flow of business processes. This book presents a framework for knowledge-based event processing that integrates external background knowledge and improves expressiveness of event processing semantics. Fusion of available domain knowledge with streaming data can improve the event processing quality by enhancing the system to understand more about complex events and their relationships. A combinatorial event pattern specification is presented based on knowledge patterns and temporal event detection operators. The book explores three different approaches for real-time knowledge-based event processing: semantic enrichment of streams, enrichment of complex event patterns and type-based sampling of event streams.
Reviews