Real-Time Distributed Complex Event Processing for Big Data Scenarios
نویسنده
چکیده
The PhD thesis presented in this paper aims for the development of novel methods that enable the realization of highly scalable, highly reliable distributed Complex Event Processing systems that are capable of processing huge amounts of incoming events within a guaranteed time.
منابع مشابه
Design and Test of the Real-time Text mining dashboard for Twitter
One of today's major research trends in the field of information systems is the discovery of implicit knowledge hidden in dataset that is currently being produced at high speed, large volumes and with a wide variety of formats. Data with such features is called big data. Extracting, processing, and visualizing the huge amount of data, today has become one of the concerns of data science scholar...
متن کاملA Middleware for Data-centric and Dynamic Distributed Complex Event Processing for IoT Real-time Analytics in the Cloud
IoT big data real-time analytics systems need to effectively process and manage massive amounts of data from streams produced by distributed data sources. There are many challenges in deploying and managing processing logic at execution time in those systems, especially when 24x7 availability is required. Aiming to address those challenges, we have developed and tested a middleware for Distribu...
متن کاملIssues in complex event processing: Status and prospects in the Big Data era
Many Big Data technologies were built to enable the processing of human generated data, setting aside the enormous amount of data generated from Machine-to-Machine (M2M) interactions and Internet-of-Things (IoT) platforms. Such interactions create real-time data streams that are much more structured, often in the form of series of event occurrences. In this paper, we provide an overview on the ...
متن کاملBIDCEP: A Vision of Big Data Complex Event Processing for Near Real Time Data Streaming
This position paper aims to trigger a technical discussion by proposing a conceptual architecture for big data streaming integrated with complex event processing (BiDCEP). BiDCEP expands the Lambda and Kappa (LK) architectures for big data streaming to fit the complex event processing (CEP) and event management domains of enterprise IT. BiDCEP links CEP components as defined in previous work of...
متن کاملDISTL: Distributed In-Memory Spatio-Temporal Event-based Storyline Categorization Platform in Social Media
Event analysis in social media is challenging due to endless amount of information generated daily. While current research has put a strong focus on detecting events, there is no clear guidance on how those storylines should be processed such that they would make sense to a human analyst. In this paper, we present DISTL, an event processing platform which takes as input a set of storylines (a s...
متن کامل