Abstract
IoT big data has many dimensions, many business types and many customized requirements, and each business needs to be implemented using a stream computing model with a wide variety of stream computing models. This paper proposes a management method for streaming computing models, which can dynamically manage streaming computing models and achieve hot loading of streaming computing models. This makes it easier to manage computational models in a streaming computing cluster.
Publisher
Darcy & Roy Press Co. Ltd.
Reference8 articles.
1. Cai H , Xu B , Jiang L , et al: IoT-Based Big Data Storage Systems in Cloud Computing: Perspectives and Challenges, IEEE Internet of Things Journal, Vol. 4 (2017) No.1, p.75-87.
2. Wang, Z, Z, et al: IoT-based real-time production logistics synchronization system under smart cloud manufacturing, International Journal of Advanced Manufacturing Technology, 2016.
3. Cheng D , Yuan C , Zhou X , et al: Adaptive scheduling of parallel jobs in spark streaming, IEEE INFOCOM 2017 - IEEE Conference on Computer Communications (Atlanta, USA, May 1-4, 2017), vol. 29 (2012).
4. Nabi Z: Pro Spark Streaming: The Zen of Real-Time Analytics Using Apache Spark(Apress, USA 2016).
5. Upfal, E, and A. Wigderson: How To Share Memory In A Distributed System, 25th Annual Symposium on Foundations of Computer Science(Florida, USA, October 24-26, 1984).