Distributed data stream processing and edge computing: A survey on resource elasticity and future directions
Under several emerging application scenarios, such as in smart cities, operational
monitoring of large infrastructure, wearable assistance, and Internet of Things, continuous …
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 …
event information. In this survey, we summarize the latest cutting-edge work done on EP …
Discretized streams: Fault-tolerant streaming computation at scale
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 …
ever-larger scales requires parallel platforms that automatically handle faults and stragglers …
State management in Apache Flink®: consistent stateful distributed stream processing
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 …
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 …
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
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 …
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
We present Mesos, a platform for sharing commodity clusters between multiple diverse
cluster computing frameworks, such as Hadoop and MPI. Sharing improves cluster …
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
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 …
current programming models for distributed stream processing are relatively low-level, often …
Kineograph: taking the pulse of a fast-changing and connected world
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 …
continuously changing graph, which captures the relationships that exist in the data feed. As …
Incoop: MapReduce for incremental computations
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 …
are deleted or modified. Taking advantage of this, systems for incremental bulk data …