ResearchTrend.AI
  • Communities
  • Connect sessions
  • AI calendar
  • Organizations
  • Join Slack
  • Contact Sales
Papers
Communities
Social Events
Terms and Conditions
Pricing
Contact Sales
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 1901.09716
  4. Cited By
A Comprehensive Survey on Parallelization and Elasticity in Stream
  Processing
v1v2 (latest)

A Comprehensive Survey on Parallelization and Elasticity in Stream Processing

28 January 2019
Henriette Roger
R. Mayer
ArXiv (abs)PDFHTML

Papers citing "A Comprehensive Survey on Parallelization and Elasticity in Stream Processing"

11 / 11 papers shown
Title
Daedalus: Self-Adaptive Horizontal Autoscaling for Resource Efficiency
  of Distributed Stream Processing Systems
Daedalus: Self-Adaptive Horizontal Autoscaling for Resource Efficiency of Distributed Stream Processing Systems
Benjamin J. J. Pfister
Dominik Scheinert
Morgan K. Geldenhuys
O. Kao
176
7
0
04 Mar 2024
StreamBed: capacity planning for stream processing
StreamBed: capacity planning for stream processingDistributed Event-Based Systems (DEBS), 2023
Guillaume Rosinosky
Donatien Schmitz
Etienne Rivière
127
4
0
06 Sep 2023
Dirigo: Self-scaling Stateful Actors For Serverless Real-time Data
  Processing
Dirigo: Self-scaling Stateful Actors For Serverless Real-time Data Processing
Le Xu
Divyanshu Saxena
N. Yadwadkar
Aditya Akella
Indranil Gupta
AI4CE
162
1
0
07 Aug 2023
A Model and Survey of Distributed Data-Intensive Systems
A Model and Survey of Distributed Data-Intensive SystemsACM Computing Surveys (ACM CSUR), 2022
Alessandro Margara
G. Cugola
Nicolò Felicioni
Stefano Cilloni
161
22
0
21 Mar 2022
To Migrate or not to Migrate: An Analysis of Operator Migration in
  Distributed Stream Processing
To Migrate or not to Migrate: An Analysis of Operator Migration in Distributed Stream ProcessingIEEE Communications Surveys and Tutorials (COMST), 2022
Espen Volnes
T. Plagemann
V. Goebel
MoMe
74
9
0
07 Mar 2022
TCEP: Transitions in Operator Placement to Adapt to Dynamic Network
  Environments
TCEP: Transitions in Operator Placement to Adapt to Dynamic Network Environments
Manisha Luthra
B. Koldehofe
Niels Danger
P. Weisenburger
G. Salvaneschi
I. Stavrakakis
48
12
0
23 Jun 2021
Theodolite: Scalability Benchmarking of Distributed Stream Processing
  Engines in Microservice Architectures
Theodolite: Scalability Benchmarking of Distributed Stream Processing Engines in Microservice ArchitecturesBig Data Research (Big Data Res.), 2020
S. Henning
Wilhelm Hasselbring
135
49
0
01 Sep 2020
A Survey on the Evolution of Stream Processing Systems
A Survey on the Evolution of Stream Processing Systems
Marios Fragkoulis
Paris Carbone
Vasiliki Kalavri
Asterios Katsifodimos
AI4TS
209
92
0
03 Aug 2020
Scalable and Reliable Multi-Dimensional Aggregation of Sensor Data
  Streams
Scalable and Reliable Multi-Dimensional Aggregation of Sensor Data Streams
S. Henning
Wilhelm Hasselbring
AI4TS
65
13
0
15 Nov 2019
Orchestrating the Development Lifecycle of Machine Learning-Based IoT
  Applications: A Taxonomy and Survey
Orchestrating the Development Lifecycle of Machine Learning-Based IoT Applications: A Taxonomy and Survey
Bin Qian
Jie Su
Z. Wen
D. N. Jha
Yinhao Li
...
Albert Y. Zomaya
Omer F. Rana
Lizhe Wang
Maciej Koutny
R. Ranjan
185
4
0
11 Oct 2019
Scalable Deep Learning on Distributed Infrastructures: Challenges,
  Techniques and Tools
Scalable Deep Learning on Distributed Infrastructures: Challenges, Techniques and Tools
R. Mayer
Hans-Arno Jacobsen
GNN
288
207
0
27 Mar 2019
1