Elastic stream processing in the Cloud
Citations Over TimeTop 10% of 2013 papers
Abstract
Stream processing is a computing paradigm that has emerged from the necessity of handling high volumes of data in real time. In contrast to traditional databases, stream‐processing systems perform continuous queries and handle data on‐the‐fly. Today, a wide range of application areas relies on efficient pattern detection and queries over streams. The advent of Cloud computing fosters the development of elastic stream‐processing platforms, which are able to dynamically adapt based on different cost–benefit trade‐offs. This article provides an overview of the historical evolution and the key concepts of stream processing, with special focus on adaptivity and Cloud‐based elasticity. This article is categorized under: Application Areas > Data Mining Software Tools Technologies > Computer Architectures for Data Mining
Related Papers
- → A Sliding Window Method for Finding Recently Frequent Itemsets over Online Data Streams(2004)138 cited
- → A Survey on Issues of Data Stream Mining in Classification(2017)4 cited
- → Comparative Study of Various Decision Tree Methods for Data Stream Mining(2018)1 cited
- → Trends in Data Stream Mining(2023)