Advertisement

Viper: Communication-Layer Determinism and Scaling in Low-Latency Stream Processing

  • Ivan Walulya
  • Yiannis Nikolakopoulos
  • Vincenzo Gulisano
  • Marina Papatriantafilou
  • Philippas Tsigas
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 10659)

Abstract

Stream Processing Engines (SPEs) process continuous streams of data and produce up-to-date results in a real-time fashion, typically through one-at-a-time tuple analysis. When looking into the vital SPE processing properties required from applications, determinism has a strong position besides scalability in throughput and low processing latency. SPEs scale in throughput and latency by relying on shared-nothing parallelism, deploying multiple copies of each operator to which tuples are distributed based on the semantics of the operator. The coordination of the asynchronous analysis of parallel operators required to enforce determinism is then carried out by additional dedicated sorting operators. In this work we shift such costly coordination to the communication layer of the SPE. Specifically, we extend earlier work on shared-memory implementations of deterministic operators and provide a communication module (Viper) which can be integrated in the SPE communication layer. Using Apache Storm and the Linear Road benchmark, we show the benefits that can be achieved by our approach in terms of throughput and energy efficiency of SPEs implementing one-at-a-time analysis.

Keywords

Data streaming Low-latency Shared-nothing and shared-memory parallelism Stream processing engines 

Notes

Acknowledgments

This work was supported by the Swedish Foundation for Strategic Research under the project “Future factories in the cloud (FiC)”, grant number GMT14-0032 and the Swedish Research Council (Vetenskapsrådet) projects “HARE: Self-deploying and Adaptive Data Streaming Analytics in Fog Architectures” Contract nr. 2016-03800 and “Models and Techniques for Energy-Efficient Concurrent Data Access Designs” Contract nr. 2016-05360.

References

  1. 1.
    Abadi, D.J., Ahmad, Y., Balazinska, M., Cetintemel, U., Cherniack, M., Hwang, J.-H., Lindner, W., Maskey, A., Rasin, A., Ryvkina, E., et al.: The design of the borealis stream processing engine. In: CIDR, vol. 5, pp. 277–289 (2005)Google Scholar
  2. 2.
    Abadi, D.J., Carney, D., Çetintemel, U., Cherniack, M., Convey, C., Lee, S., Stonebraker, M., Tatbul, N., Zdonik, S.: Aurora: a new model and architecture for data stream management. VLDB J. Int. J. Very Large Data Bases 12(2), 120–139 (2003)CrossRefGoogle Scholar
  3. 3.
    Akram, S., Marazakis, M., Bilas, A.: Understanding and improving the cost of scaling distributed event processing. In: Proceedings of the 6th ACM International Conference on Distributed Event-Based Systems, pp. 290–301. ACM (2012)Google Scholar
  4. 4.
    Arasu, A., Cherniack, M., Galvez, E., Maier, D., Maskey, A.S., Ryvkina, E., Stonebraker, M., Tibbetts, R.: Linear road: a stream data management benchmark. In: Proceedings of the Thirtieth International Conference on Very Large Data Bases, vol. 30, pp. 480–491. VLDB Endowment (2004)Google Scholar
  5. 5.
    Balazinska, M., Balakrishnan, H., Madden, S.R., Stonebraker, M.: Fault-tolerance in the Borealis distributed stream processing system. In: ACM TODS (2008)Google Scholar
  6. 6.
    Cederman, D., Chatterjee, B., Nguyen, N., Nikolakopoulos, Y., Papatriantafilou, M., Tsigas, P.: A study of the behavior of synchronization methods in commonly used languages and systems. In: 2013 IEEE 27th International Symposium on Parallel and Distributed Processing (IPDPS), pp. 1309–1320. IEEE (2013)Google Scholar
  7. 7.
    Cederman, D., Gulisano, V., Nikolakopoulos, Y., Papatriantafilou, M., Tsigas, P.: Brief announcement: concurrent data structures for efficient streaming aggregation. In: Proceedings of the 26th ACM Symposium on Parallelism in Algorithms and Architectures, SPAA 2014, pp. 76–78. ACM (2014)Google Scholar
  8. 8.
    David, H., Gorbatov, E., Hanebutte, U.R., Khanna, R., Le, C.: RAPL: memory power estimation and capping. In: Proceedings of the 16th ACM/IEEE International Symposium on Low Power Electronics and Design, ISLPED 2010, pp. 189–194. ACM, New York (2010)Google Scholar
  9. 9.
    De Matteis, T., Mencagli, G.: Keep calm and react with foresight: strategies for low-latency and energy-efficient elastic data stream processing. In: Proceedings of the 21st ACM SIGPLAN Symposium on Principles and Practice of Parallel Programming, PPoPP 2016, pp. 13:1–13:12. ACM, New York (2016)Google Scholar
  10. 10.
  11. 11.
    Gedik, B., Bordawekar, R.R., Philip, S.Y.: CellJoin: a parallel stream join operator for the cell processor. VLDB J. 18(2), 501–519 (2009)CrossRefGoogle Scholar
  12. 12.
    Gulisano, V.: StreamCloud: an elastic parallel-distributed stream processing engine. Ph.D. thesis, Universidad Politécnica de Madrid (2012)Google Scholar
  13. 13.
    Gulisano, V., Jimenez-Peris, R., Patino-Martinez, M., Valduriez, P.: StreamCloud: a large scale data streaming system. In: 2010 IEEE 30th International Conference on Distributed Computing Systems (ICDCS), pp. 126–137. IEEE (2010)Google Scholar
  14. 14.
    Gulisano, V., Nikolakopoulos, Y., Cederman, D., Papatriantafilou, M., Tsigas, P.: Efficient data streaming multiway aggregation through concurrent algorithmic designs and new abstract data types. CoRR, abs/1606.04746 (2016)Google Scholar
  15. 15.
    Gulisano, V., Nikolakopoulos, Y., Papatriantafilou, M., Tsigas, P.: ScaleJoin: a deterministic, disjoint-parallel and skew-resilient stream join. IEEE Trans. Big Data (99) (2016)Google Scholar
  16. 16.
    Gulisano, V., Nikolakopoulos, Y., Walulya, I., Papatriantafilou, M., Tsigas, P.: Deterministic real-time analytics of geospatial data streams through ScaleGate objects. In: Proceedings of the 9th ACM International Conference on Distributed Event-Based Systems, DEBS 2015, pp. 316–317. ACM, New York (2015)Google Scholar
  17. 17.
    Johnson, T., Muthukrishnan, S., Shkapenyuk, V., Spatscheck, O.: A heartbeat mechanism and its application in gigascope. In: Proceedings of the 31st International Conference on Very Large Data Bases, VLDB 2005, pp. 1079–1088. VLDB Endowment (2005)Google Scholar
  18. 18.
    Kalyvianaki, E., Fiscato, M., Salonidis, T., Pietzuch, P.: THEMIS: fairness in federated stream processing under overload. In: Proceedings of the 2016 International Conference on Management of Data, pp. 541–553. ACM (2016)Google Scholar
  19. 19.
    Koliousis, A., Weidlich, M., Castro Fernandez, R., Wolf, A.L., Costa, P., Pietzuch, P.: SABER: window-based hybrid stream processing for heterogeneous architectures. In: Proceedings of the 2016 International Conference on Management of Data, pp. 555–569. ACM (2016)Google Scholar
  20. 20.
    LIKWID: Performance measurement and benchmark suite. https://github.com/RRZE-HPC/likwid
  21. 21.
    Roy, P., Teubner, J., Gemulla, R.: Low-latency handshake join. Proc. VLDB Endow. 7(9), 709–720 (2014)CrossRefGoogle Scholar
  22. 22.
    Sax, M.J., Castellanos, M., Chen, Q., Hsu, M.: Aeolus: an optimizer for distributed intra-node-parallel streaming systems. In: 2013 IEEE 29th International Conference on Data Engineering (ICDE), pp. 1280–1283. IEEE (2013)Google Scholar
  23. 23.
  24. 24.
    Schneidert, S., Andrade, H., Gedik, B., Wu, K.-L., Nikolopoulos, D.S.: Evaluation of streaming aggregation on parallel hardware architectures. In: Proceedings of the Fourth ACM International Conference on Distributed Event-Based Systems, pp. 248–257. ACM (2010)Google Scholar
  25. 25.
    Shah, M.A., Hellerstein, J.M., Chandrasekaran, S., Franklin, M.J.: Flux: an adaptive partitioning operator for continuous query systems. In: Proceedings of the 19th International Conference on Data Engineering, pp. 25–36. IEEE (2003)Google Scholar
  26. 26.
  27. 27.
    Teubner, J., Mueller, R.: How soccer players would do stream joins. In: Proceedings of the 2011 ACM SIGMOD International Conference on Management of Data (2011)Google Scholar

Copyright information

© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Chalmers University of TechnologyGothenburgSweden

Personalised recommendations