A Scalable Adaptive Method for Complex Reasoning Over Semantic Data Streams
نویسنده
چکیده
Data streams are the infinite sequences of data elements that are being generated by companies, social network, mobile phones, smart homes, public transport vehicles and other modern infrastructures. Current stream processing solutions can handle streams of data to timely produce new results but they lack the complex reasoning capacities that are required to go from data to actionable knowledge. Conversely, engines that can perform such complex reasoning tasks, are mostly designed to work on static data. The main aim of my research proposal is to provide a solution to perform complex reasoning on dynamic semantic information in a scalable way. At its core, this requires a solution which combines advantages of both stream processing and reasoning research areas, and has flexible heuristics for adaptation of the stream reasoning processes in order to enhance scalability.
منابع مشابه
Adaptive Information Analysis in Higher Education Institutes
Information integration plays an important role in academic environments since it provides a comprehensive view of education data and enables mangers to analyze and evaluate the effectiveness of education processes. However, the problem in the traditional information integration is the lack of personalization due to weak information resource or unavailability of analysis functionality. In this ...
متن کاملAdaptive Information Analysis in Higher Education Institutes
Information integration plays an important role in academic environments since it provides a comprehensive view of education data and enables mangers to analyze and evaluate the effectiveness of education processes. However, the problem in the traditional information integration is the lack of personalization due to weak information resource or unavailability of analysis functionality. In this ...
متن کاملTowards Expressive Stream Reasoning
Stream Data processing has become a popular topic in database research addressing the challenge of efficiently answering queries over continuous data streams. Meanwhile data streams have become more and more important as a basis for higher level decision processes that require complex reasoning over data streams and rich background knowledge. In previous work the foundation for complex reasonin...
متن کاملUsing Semantic Annotation for Knowledge Extraction from Geographically Distributed and Heterogeneous Sensor Data
Using semantic technologies for enriching sensor data description in scalable and heterogeneous sensor network are intended as a solution for better interoperability and easier maintainability. Through semantic annotations it is possible to provide context for sensor networks, which will improve knowledge extractions from sensor data streams and will facilitate reasoning capabilities. We propos...
متن کاملStream reasoning and complex event processing in ETALIS
Addressing the dynamics and notification in the Semantic Web realm has recently become an important area of research. Run time data is generated by multiple social networks, sensor networks, various on-line services, and so on. The challenge is how to get advantage of a huge amount of real time data, i.e., how to integrate heterogeneous data streams, combine data streams with the background kno...
متن کامل