publication . Preprint . 2016

A survey of systems for massive stream analytics

Singh, Maninder Pal; Hoque, Mohammad A.; Tarkoma, Sasu;
Open Access English
  • Published: 29 May 2016
Abstract
The immense growth of data demands switching from traditional data processing solutions to systems, which can process a continuous stream of real time data. Various applications employ stream processing systems to provide solutions to emerging Big Data problems. Open-source solutions such as Storm, Spark Streaming, and S4 are the attempts to answer key stream processing questions. The recent introduction of real time stream processing commercial solutions such as Amazon Kinesis, IBM Infosphere Stream reflect industry requirements. The system and application related challenges to handle massive stream of real time data analytics are an active field of research. I...
Subjects
free text keywords: Computer Science - Distributed, Parallel, and Cluster Computing
Download from
17 references, page 1 of 2

[1] T. Akidau, A. Balikov, K. Bekiroglu, S. Chernyak, J. Haberman, R. Lax, S. McVeety, D. Mills, P. Nordstrom, and S. Whittle. Millwheel: Fault-tolerant stream processing at internet scale. In Very Large Data Bases, pages 734{746, 2013. [OpenAIRE]

[2] Amazon. Amazon Kinesis. http://aws.amazon.com/kinesis/.

[3] Amazon. Amazon Kinesis Product Details. http://aws.amazon.com/kinesis/details/.

[4] Amazon. AWS Case Study: Supercell. http://aws.amazon.com/solutions/casestudies/supercell/.

[5] U. B. AMPLab. Spark Streaming. http://spark.incubator.apache.org/docs/latest/ streaming-programming-guide.html.

[6] H. Andrade, B. Gedik, K.-L. Wu, and P. Yu. Scale-up strategies for processing high-rate data streams in system s. In Data Engineering, 2009. ICDE '09. IEEE 25th International Conference on, pages 1375{1378, March 2009.

[7] Apache. Storm - Distributed and fault-tolerant realtime computation. http://storm.apache.org/.

[8] C. Ballard. IBM Infosphere Streams harnessing data in motion. Vervante, S.l, 2010.

[9] A. Biem, E. Bouillet, H. Feng, A. Ranganathan, A. Riabov, O. Verscheure, H. Koutsopoulos, and C. Moran. Ibm infosphere streams for scalable, real-time, intelligent transportation services. In Proceedings of the 2010 ACM SIGMOD International Conference on Management of Data, SIGMOD '10, pages 1093{1104, New York, NY, USA, 2010. ACM.

[10] A. Biem, B. Elmegreen, O. Verscheure, D. Turaga, H. Andrade, and T. Cornwell. A streaming approach to radio astronomy imaging. In Acoustics Speech and Signal Processing (ICASSP), 2010 IEEE International Conference on, pages 1654{1657, March 2010. [OpenAIRE]

[11] M. Blount, M. Ebling, J. Eklund, A. James, C. McGregor, N. Percival, K. Smith, and D. Sow. Real-time analysis for intensive care: Development and deployment of the artemis analytic system. Engineering in Medicine and Biology Magazine, IEEE, 29(2):110{118, March 2010.

[12] J. Chauhan, S. A. Chowdhury, and D. Makaro . Performance evaluation of yahoo! s4: A rst look. In Proceedings of the 2012 Seventh International Conference on P2P, Parallel, Grid, Cloud and Internet Computing, 3PGCIC '12, pages 58{65, Washington, DC, USA, 2012. IEEE Computer Society.

[13] L. Daldor , S. M. Mohammadi, J. Bergman, B. Thide, A. Biem, B. Elmegreen, D. Turaga, O. Verscheure, and W. Puccio. Novel data stream techniques for real time hf radio weather statistics and forecasting. In Ionospheric radio Systems and Techniques, 2009.(IRST 2009). The Institution of Engineering and Technology 11th International Conference on, pages 1{3. IET, 2009.

[14] C. Harrison, B. Eckman, R. Hamilton, P. Hartswick, J. Kalagnanam, J. Paraszczak, and P. Williams. Foundations for smarter cities. IBM Journal of Research and Development, 54(4):1{16, July 2010.

[15] J. M. Hernandez-Mun~oz, J. B. Vercher, L. Mun~oz, J. A. Galache, M. Presser, L. A. H. Gomez, and J. Pettersson. Smart cities at the forefront of the future internet. Springer, 2011. [OpenAIRE]

17 references, page 1 of 2
Powered by OpenAIRE Research Graph
Any information missing or wrong?Report an Issue