A Model and Survey of Distributed Data-Intensive Systems

被引:8
作者
Margara, Alessandro [1 ]
Cugola, Gianpaolo [1 ]
Felicioni, Nicolo [1 ]
Cilloni, Stefano [1 ]
机构
[1] Politecn Milan, Piazza Leonardo,Vinci 32, I-20133 Milan, Italy
关键词
Data-intensive systems; distributed systems; data management; data processing; model; taxonomy; TRANSACTIONS; MANAGEMENT; ENGINE; SCALE;
D O I
10.1145/3604801
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Data is a precious resource in today's society, and it is generated at an unprecedented and constantly growing pace. The need to store, analyze, and make data promptly available to a multitude of users introduces formidable challenges in modern software platforms. These challenges radically impacted the research fields that gravitate around data management and processing, with the introduction of distributed data-intensive systems that offer innovative programming models and implementation strategies to handle data characteristics such as its volume, the rate at which it is produced, its heterogeneity, and its distribution. Each data-intensive system brings its specific choices in terms of data model, usage assumptions, synchronization, processing strategy, deployment, guarantees in terms of consistency, fault tolerance, and ordering. Yet, the problems data-intensive systems face and the solutions they propose are frequently overlapping. This article proposes a unifying model that dissects the core functionalities of data-intensive systems, and discusses alternative design and implementation strategies, pointing out their assumptions and implications. The model offers a common ground to understand and compare highly heterogeneous solutions, with the potential of fostering cross-fertilization across research communities. We apply our model by classifying tens of systems: an exercise that brings to interesting observations on the current trends in the domain of data-intensive systems and suggests open research directions.
引用
收藏
页数:69
相关论文
共 50 条
[21]   Toward efficient execution of data-intensive workflows [J].
Sukhoroslov, Oleg .
JOURNAL OF SUPERCOMPUTING, 2021, 77 (08) :7989-8012
[22]   Skills and Knowledge for Data-Intensive Environmental Research [J].
Hampton, Stephanie E. ;
Jones, Matthew B. ;
Wasser, Leah A. ;
Schildhauer, Mark P. ;
Supp, Sarah R. ;
Brun, Julien ;
Hernandez, Rebecca R. ;
Boettiger, Carl ;
Collins, Scott L. ;
Gross, Louis J. ;
Fernandez, Denny S. ;
Budden, Amber ;
White, Ethan P. ;
Teal, Tracy K. ;
Labou, Stephanie G. ;
Aukema, Juliann E. .
BIOSCIENCE, 2017, 67 (06) :546-557
[23]   Toward efficient execution of data-intensive workflows [J].
Oleg Sukhoroslov .
The Journal of Supercomputing, 2021, 77 :7989-8012
[24]   Data-intensive research in physics: challenges and perspectives [J].
Meera, B. M. ;
Hiremath, Vani .
ANNALS OF LIBRARY AND INFORMATION STUDIES, 2018, 65 (01) :43-49
[25]   An Energy-Efficient and Reliable Storage Mechanism for Data-Intensive Academic Archive Systems [J].
Chen, Tseng-Yi ;
Wei, Hsin-Wen ;
Yeh, Tsung-Tai ;
Hsu, Tsan-Sheng ;
Shih, Wei-Kuan .
ACM TRANSACTIONS ON STORAGE, 2015, 11 (02)
[26]   Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines [J].
Athanassoulis, Manos ;
Idreos, Stratos ;
Shasha, Dennis .
FOUNDATIONS AND TRENDS IN DATABASES, 2023, 13 (1-2) :1-168
[27]   Algorithms and applications towards the convergence of high-end data-intensive and computing systems [J].
Carretero, Jesus ;
Garcia-Blas, Javier ;
Nakano, Koji ;
Mueller, Peter .
CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2017, 29 (24)
[28]   Data-intensive computing in the 21st century [J].
Gorton, Ian ;
Greenfield, Paul ;
Szalay, Alex ;
Williams, Roy .
COMPUTER, 2008, 41 (04) :30-32
[29]   The Research on Data-Intensive Resource Scheduling in Intelligence Processing [J].
Cui Yun-fei ;
Li Yi ;
Liu Dong ;
Li Kang ;
Lv Peng .
WORLD CONGRESS ON ENGINEERING - WCE 2013, VOL II, 2013, :869-872
[30]   Towards a Replication Service for Data-Intensive Fog Applications [J].
Hasenburg, Jonathan ;
Grambow, Martin ;
Bermbach, David .
PROCEEDINGS OF THE 35TH ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING (SAC'20), 2020, :267-270