Distributed data stream processing and edge computing: A survey on resource elasticity and future directions

MD de Assuncao, A da Silva Veith, R Buyya - Journal of Network and …, 2018 - Elsevier
Under several emerging application scenarios, such as in smart cities, operational
monitoring of large infrastructure, wearable assistance, and Internet of Things, continuous …

Recent advancements in event processing

M Dayarathna, S Perera - ACM Computing Surveys (CSUR), 2018 - dl.acm.org
Event processing (EP) is a data processing technology that conducts online processing of
event information. In this survey, we summarize the latest cutting-edge work done on EP …

Discretized streams: Fault-tolerant streaming computation at scale

M Zaharia, T Das, H Li, T Hunter, S Shenker… - Proceedings of the …, 2013 - dl.acm.org
Many" big data" applications must act on data in real time. Running these applications at
ever-larger scales requires parallel platforms that automatically handle faults and stragglers …

State management in Apache Flink®: consistent stateful distributed stream processing

P Carbone, S Ewen, G Fóra, S Haridi… - Proceedings of the …, 2017 - dl.acm.org
Stream processors are emerging in industry as an apparatus that drives analytical but also
mission critical services handling the core of persistent application logic. Thus, apart from …

[PDF][PDF] 大数据管理: 概念, 技术与挑战

孟小峰, 慈祥 - 2013 - idke.ruc.edu.cn
大数据管理:概念,技术与挑战 Page 1 大数据管理:概念,技术与挑战 孟小峰慈祥 (**人民大学信息
学院北京100872) Big Data Management: Concepts, Techniques and Challenges Meng …

Resilient distributed datasets: A {Fault-Tolerant} abstraction for {In-Memory} cluster computing

M Zaharia, M Chowdhury, T Das, A Dave, J Ma… - 9th USENIX symposium …, 2012 - usenix.org
We present Resilient Distributed Datasets (RDDs), a distributed memory abstraction that lets
programmers perform in-memory computations on large clusters in a fault-tolerant manner …

[PDF][PDF] Mesos: A platform for {Fine-Grained} resource sharing in the data center

B Hindman, A Konwinski, M Zaharia, A Ghodsi… - … USENIX Symposium on …, 2011 - usenix.org
We present Mesos, a platform for sharing commodity clusters between multiple diverse
cluster computing frameworks, such as Hadoop and MPI. Sharing improves cluster …

Discretized streams: an efficient and {Fault-Tolerant} model for stream processing on large clusters

M Zaharia, T Das, H Li, S Shenker, I Stoica - 4th USENIX Workshop on …, 2012 - usenix.org
Many important “big data” applications need to process data arriving in real time. However,
current programming models for distributed stream processing are relatively low-level, often …

Kineograph: taking the pulse of a fast-changing and connected world

R Cheng, J Hong, A Kyrola, Y Miao, X Weng… - Proceedings of the 7th …, 2012 - dl.acm.org
Kineograph is a distributed system that takes a stream of incoming data to construct a
continuously changing graph, which captures the relationships that exist in the data feed. As …

Incoop: MapReduce for incremental computations

P Bhatotia, A Wieder, R Rodrigues, UA Acar… - Proceedings of the 2nd …, 2011 - dl.acm.org
Many online data sets evolve over time as new entries are slowly added and existing entries
are deleted or modified. Taking advantage of this, systems for incremental bulk data …