Enhancing the performance of decision tree-based packet classification algorithms using CPU cluster (original) (raw)

References

  1. Baboescu, F., Varghese, G.: Scalable packet classification. Netw. IEEE/ACM Trans. 13, 2–14 (2005)
    Article Google Scholar
  2. Gupta, P.: Algorithms for Routing Lookups and Packet Classification. Stanford University, Stanford (2000)
    Google Scholar
  3. Gupta, P., McKeown, N.: Packet classification on multiple fields. In: Proceedings of the ACM SIGCOMM Computer Communication Review, pp. 147–160 (1999)
  4. Gupta, P., McKeown, N.: Algorithms for packet classification. IEEE Netw. 15, 24–32 (2001)
    Article Google Scholar
  5. Norige, E., Liu, A.X., Torng, E., Torng, E., Norige, E., Liu, A.X.: A ternary unification framework for optimizing TCAM-based packet classification systems. IEEE/ACM Trans. Netw. (TON) 26, 657–670 (2018)
    Article Google Scholar
  6. Shen, R., Li, X., Li, H.: A space-and power-efficient multi-match packet classification technique combining TCAMs and SRAMs. J. Supercomput. 69, 673–692 (2014)
    Article Google Scholar
  7. Yu, W., Sivakumar, S., Pao, D.: Pseudo-TCAM: SRAM-based architecture for packet classification in one memory access. IEEE Netw. Lett. 1, 89–92 (2019)
    Article Google Scholar
  8. Zheng, K., Che, H., Wang, Z., Liu, B., Zhang, X.: DPPC-RE: TCAM-based distributed parallel packet classification with range encoding. IEEE Trans. Comput. 55, 947–961 (2006)
    Article Google Scholar
  9. Taylor, D.E., Turner, J.S.: ClassBench: a packet classification benchmark. In Proceedings IEEE 24th Annual Joint Conference of the IEEE Computer and Communications Societies, pp. 2068–2079 (2005)
  10. Dong, X., Qian, M., Jiang, R.: Packet classification based on the decision tree with information entropy. J. Supercomput. (2018). https://doi.org/10.1007/s11227-017-2227-z
    Article Google Scholar
  11. Li, W., Li, D., Bai, Y., Le, W., Li, H.: Memory-efficient recursive scheme for multi-field packet classification. IET Commun. 13, 1319–1325 (2019)
    Article Google Scholar
  12. Liang, E., Zhu, H., Jin, X., Stoica, I.: Neural packet classification. https://arxiv.org/abs/1902.10319, (2019)
  13. Suga, T., Okada, K., Esaki, H.: Toward real-time packet classification for preventing malicious traffic by machine learning. In: 2019 22nd Conference on Innovation in Clouds, Internet and Networks and Workshops (ICIN), pp. 106–111 (2019)
  14. Taylor, D.E.: Survey and taxonomy of packet classification techniques. ACM Comput. Surv. (CSUR) 37, 238–275 (2005)
    Article Google Scholar
  15. Lim, H., Chu, H.N., Yim, C.: Hierarchical binary search tree for packet classification. IEEE Commun. Lett. 11, 689–691 (2007)
    Article Google Scholar
  16. Gupta, P., McKeown, N.: Classifying packets with hierarchical intelligent cuttings. IEEE Micro 20, 34–41 (2000)
    Article Google Scholar
  17. Singh, S., Baboescu, F., Varghese, G., Wang, J.: Packet classification using multidimensional cutting. In: Proceedings of the 2003 Conference on Applications, Technologies, Architectures, and Protocols for Computer Communications, pp. 213–224 (2003)
  18. Lim, H., Kang, M.Y., Yim, C.: Two-dimensional packet classification algorithm using a quad-tree. Comput. Commun. 30, 1396–1405 (2007)
    Article Google Scholar
  19. Henty, D.S.: Performance of hybrid message-passing and shared-memory parallelism for discrete element modelling. In: Proceedings of the 2000 ACM/IEEE Conference on Supercomputing, p. 10 (2000)
  20. Pao, D., Liu, C.: Parallel tree search: An algorithmic approach for multi-field packet classification. Comput. Commun. 30, 302–314 (2007)
    Article Google Scholar
  21. Nottingham, A., Irwin, B.: Parallel packet classification using GPU co-processors. In: Proceedings of the 2010 Annual Research Conference of the South African Institute of Computer Scientists and Information Technologists, pp. 231–241 (2010)
  22. Hung, C.-L., Lin, Y.-L., Li, K.-C., Wang, H.-H., Guo, S.-W.: Efficient GPGPU-based parallel packet classification. Presented at the Trust, Security and Privacy in Computing and Communications (TrustCom), (2011)
  23. Hung, C.-L., Guo, S.-W.: Fast parallel network packet filter system based on CUDA. Int. J. Netw. Distrib. Comput. 2, 198–210 (2014)
    Article Google Scholar
  24. Hung, C.-L., Lin, C.-Y., Wang, H.-H.: An efficient parallel-network packet pattern-matching approach using GPUs. J. Syst. Architect. 60, 431–439 (2014)
    Article Google Scholar
  25. Wu, X., Li, W.: Performance models for scalable cluster computing. J. Syst. Archit. 44, 189–205 (1998)
    Article Google Scholar
  26. Talia, D.: Models and languages for high-performance computing. In: Ranganathan, S., Gribskov, M., Nakai, K., Schönbach, C. (eds.) Encyclopedia of Bioinformatics and Computational Biology, pp. 215–220. Academic Press, Oxford (2018)
    Google Scholar
  27. Cappello, F., Etiemble, D.: MPI versus MPI+ OpenMP on the IBM SP for the NAS Benchmarks. In: Supercomputing, ACM/IEEE 2000 Conference, pp. 12–12 (2000)
  28. Smith, L., Bull, M.: Development of mixed mode MPI/OpenMP applications. Sci. Program. 9, 83–98 (2001)
    Google Scholar
  29. Jost, G., Jin, H.-Q., anMey, D., Hatay, F.F.: Comparing the OpenMP, MPI, and hybrid programming paradigm on an SMP cluster (2003)
  30. Rabenseifner, R., Hager, G., Jost, G.: Hybrid MPI/OpenMP parallel programming on clusters of multi-core SMP nodes. In: 2009 17th Euromicro International Conference on Parallel, Distributed and Network-Based Processing, pp. 427–436 (2009)
  31. Grant, R.E., Olivier, S.L.: Chapter 6—Networks and MPI for cluster computing. In: Prasad, S.K., Gupta, A., Rosenberg, A.L., Sussman, A., Weems, C.C. (eds.) Topics in Parallel and Distributed Computing, pp. 117–153. Morgan Kaufmann, Boston (2015)
    Chapter Google Scholar
  32. Jeffers, J., Reinders, J., Sodani, A.: Chapter 15—MPI. In: Jeffers, J., Reinders, J., Sodani, A. (eds.) Intel Xeon Phi Processor High Performance Programming, 2nd edn, pp. 339–367. Morgan Kaufmann, Boston (2016)
    Chapter Google Scholar
  33. Sterling, T., Anderson, M., Brodowicz, M.: Chapter 8—the essential MPI. In: Sterling, T., Anderson, M., Brodowicz, M. (eds.) High Performance Computing, pp. 249–284. Morgan Kaufmann, Boston (2018)
    Chapter Google Scholar
  34. Adam, J., Kermarquer, M., Besnard, J.-B., Bautista-Gomez, L., Pérache, M., Carribault, P., et al.: Checkpoint/restart approaches for a thread-based MPI runtime. Parallel Comput. 85, 204–219 (2019)
    Article Google Scholar
  35. López-Gómez, J., Fernández Muñoz, J., del Rio Astorga, D., Dolz, M.F., Garcia, J.D.: Exploring stream parallel patterns in distributed MPI environments. Parallel Comput. 84, 24–36 (2019)
    Article Google Scholar
  36. Nottingham, A., Irwin, B.: GPU packet classification using OpenCL: a consideration of viable classification methods. In: Proceedings of the 2009 Annual Research Conference of the South African Institute of Computer Scientists and Information Technologists, pp. 160–169 (2009)
  37. Pong, F., Tzeng, N.-F.: HaRP: rapid packet classification via hashing round-down prefixes. IEEE Trans. Parallel Distrib. Syst. 22, 1105–1119 (2011)
    Article Google Scholar
  38. Kang, K., Deng, Y.S.: Scalable packet classification via GPU metaprogramming. Des. Autom. Test Eur. Conf. Exhib. (DATE) 2011, 1–4 (2011)
    Google Scholar
  39. Varvello, M., Laufer, R., Zhang, F., Lakshman, T.: Multi-layer packet classification with graphics processing units. In: Proceedings of the 10th ACM International on Conference on emerging Networking Experiments and Technologies, pp. 109–120 (2014)
  40. Rafiee, M., Abbasi, M., Nassiri, M.: An efficient method for parallel implementation of H-trie packet classification algorithm on GPU. Tabriz J. Electr. Eng. 3, 181–196 (2016)
    Google Scholar
  41. Zhou, S., Qu, Y.R., Prasanna, V.K.: Multi-core implementation of decomposition-based packet classification algorithms. Int. Conf. Parallel Comput. Technol. (2013). https://doi.org/10.1007/978-3-642-39958-9_9
    Article Google Scholar
  42. Qu, Y.R., Zhang, H.H., Zhou, S., Prasanna, V.K.: Optimizing many-field packet classification on fpga, multi-core general purpose processor, and gpu. In: Proceedings of the Eleventh ACM/IEEE Symposium on Architectures for networking and communications systems, pp. 87–98 (2015)
  43. Hutter, J., Curioni, A.: Dual-level parallelism for ab initio molecular dynamics: Reaching teraflop performance with the CPMD code. Parallel Comput. 31, 1–17 (2005)
    Article MathSciNet Google Scholar
  44. Ferretti, M., Santangelo, L.: Hybrid OpenMP-MPI parallelism: porting experiments from small to large clusters. In: 2018 26th Euromicro International Conference on Parallel, Distributed and Network-based Processing (PDP), pp. 297–301 (2018)
  45. Jiao, Y.-Y., Zhao, Q., Wang, L., Huang, G.-H., Tan, F.: A hybrid MPI/OpenMP parallel computing model for spherical discontinuous deformation analysis. Comput. Geotech. 106, 217–227 (2019)
    Article Google Scholar
  46. Katz, M.J., Papadopoulos, P.M., Bruno, G.: Leveraging standard core technologies to programmatically build linux cluster appliances. In: Proceedings IEEE International Conference on Cluster Computing, pp. 47–53 (2002)
  47. Zheng, J., Zhang, D., Li, Y., Li, G.: Accelerate packet classification using GPU: a case study on HiCuts. In: Park, J.J., Stojmenovic, I., Jeong, H.Y., Yi, G. (eds.) Computer Science and Its Applications: Ubiquitous Information Technologies, pp. 231–238. Springer, Berlin (2015)
    Chapter Google Scholar
  48. Zhou, S., Singapura, S.G., Prasanna, V.K.: High-performance packet classification on gpu. In: High Performance Extreme Computing Conference (HPEC), 2014 IEEE, pp. 1–6 (2014)

Download references