Divide and Deployment of Careers in Map Degradation for Different Multicore Processors

Authors(2) :-Dumpalagattu Babu, Kumbha Ramesh

To increase the performance of the applying we decide the digital computer supported its quicker execution and power hungry, power economical options of the cores. Here we have a tendency to area unit selecting a brand new hadoop hardware that is capable of process Heterogeneous cores among one Multi core processor for achieving the nice performance. This kind of Multi core processors area unit able to produce virtual resource pools supported the priority programming like "slow" and "fast" based mostly on the multi category priority schedules. In some cases same knowledge are often accessed with the opposite resources bestowed within the Resource pool with either "slow" or "fast" slots. Heterogeneous Multi core processors improve the capability of the Processors so turnout values are often increased.

Authors and Affiliations

Dumpalagattu Babu
M.Tech, Dept of Computer Science and Engineering, Priyadarshini Institute of Technology, Tirupati, India
Kumbha Ramesh
Associate Professor, Dept of Computer Science and Engineering, Priyadarshini Institute of Technology, Tirupati, India

Multicore Processor, Heterogeneous Cores, Resource Pool, Priority Programming.

  1. T. White, Hadoop: The Definitive Guide. Yahoo Press.
  2. F. Ahmad et al., "Tarazu: Optimizing Map cut back on Heterogeneous Clusters," in Proceedings of ASPLOS, 2012.
  3. J. Dean and S. Ghemawat, "Map Reduce: Simplified processing on massive clusters," Communications of the ACM, vol. 51, no. 1, 2008.
  4. M. Zaharia et al., "Delay scheduling: an easy technique for
  5. Achieving neck of the woods and fairness in cluster programming," in Proceedings of EuroSys, 2010.
  6. Apache, "Capacity hardware Guide," 2010. Online]. Available: http://hadoop.apache.org/common/docs/r0.20.1/ capability hardware.html
  7. Z. Zhang, L. Cherkasova, and B. T. Loo, "Benchmarking approach for coming up with a map cut back performance model," in ICPE, 2013, pp. 253-258.
  8. S. Rao et al., "Sailfish: A Framework for giant Scale processing," in Proceedings of SOCC, 2012.
  9. A. Gates, O. Natkovich, S. Chopra, P. Kamath, S. Narayanam, C. Olston, B. Reed, S. Srinivasan, and U. Srivastava, "Building a high-level dataflow system on prime of map reduce: The pig expertise," PVLDB, vol. 2, no. 2, pp. 1414-1425, 2009.
  10. A. Verma, L. Cherkasova, and R. H. Campbell, "ARIA: Automatic Resource illation and Allocation for Map Reduce Environments," in Proc. of ICAC, 2011.
  11. "Play It once more, SimMR!" in Proceedings of Intl. IEEE Cluster' 2011.
  12. S. Ren, Y. He, S. Elnikety, and S. McKinley, "Exploiting Processor heterogeneousness in Interactive Services," in Proceedings of ICAC, 2013.
  13. H. Esmaeilzadeh, T. Cao, X. Yang, S. M. Blackburn, and K. S. McKinley, "Looking back and looking out forward: power, performance, and upheaval," Commun. ACM, vol. 55, no. 7, 2012.
  14. C. Bienia, S. Kumar, J. Singh, and K. Li, "The secpar benchmark suite: Characterization and fine arts implications." in Technical Report TR-811-08, Princeton, 2008.
  15. "Pass Mark software package. C.P.U. Benchmarks," 2013. Online]. Available: http://www.cpubenchmark.net/cpu.php?cpu=Intel+ Xeon+E3-1240+%40+3.30GHz
  16. F. Yan, L. Cherkasova, Z. Zhang, and E. Smirni, "Optimizing power and performance trade-offs of map cut back job process with heterogeneous multi-core processors," in Proc. of the IEEE seventh International Conference on Cloud Computing (Cloud'2014), June, 2014.
  17. A. Verma et al., "Deadline-based employment management for map cut back environments: items of the performance puzzle," in Proc. of IEEE/IFIP NOMS, 2012.
  18. R. Kumar, D. M. Tullsen, P. Ranganathan, N. P. Jouppi, and K. I. Farkas, "Single-is a heterogeneous multi-core architectures for multithreaded employment performance," in ACM SIGARCH pc design News, vol. 32, no. 2, 2004.
  19. K. Van Craeynest, A. Jaleel, L. Eeckhout, P. Narvaez, and J. Emer, "Scheduling heterogeneous multi-cores through performance impact estimation (pie)," in Proceedings of the thirty ninth International conferences on pc design, 2012.
  20. M. Becchi and P. Crowley, "Dynamic thread assignment on heterogeneous digital computer architectures," in Proceedings of the third conference on Computing frontiers, 2006.
  21. D. Shelepov and A. Fedorova, "Scheduling on heterogeneous multi core processors victimization fine arts signatures," in Proceedings of the Workshop on the Interaction between in operation Systems and pc design, 2008.
  22. K. Van Craeynest and L. Eeckhout, "Understanding basic style decisions in single-is a heterogeneous multicore architectures," ACM Transactions on design and Code optimization (TACO), vol. 9, no. 4, p. 32, 2013.
  23. M. Zaharia et al., "Improving map cut back performance in heterogeneous environments," in Proceedings of OSDI, 2008.
  24. Q. Chen, D. Zhang, M. Guo, Q. Deng, and S. Guo, "Samr: A self-adaptive map cut back programming algorithmic rule in heterogeneous atmosphere," in IEEE tenth International Conference on pc and data Technology (CIT), 2010.
  25. R. Gandhi, D. Xie, and Y. C. Hu, "Pikachu: the way to rebalance load in optimizing map cut back on heterogeneous clusters," in Proceedings of 2013 USENIX Annual Technical Conference. USENIX Association, 2013.
  26. J. Xie et al., "Improving map cut back performance through knowledge placement in heterogeneous hadoop clusters," in Proceedings of the IPDPS Workshops: heterogeneousness in Computing, 2010.
  27. G. Gupta, C. Fritz, B. Price, R. Hoover, J. DeKleer, and C. Witteveen, "Throughput Scheduler: Learning to Schedule on Heterogeneous Hadoop Clusters," in Proc. of ICAC, 2013.
  28. G. Lee, B.-G. Chun, and R. H. Katz, "Heterogeneity-aware resource allocation and programming within the cloud," in Proceedings of the third USENIX Workshop on Hot Topics in Cloud Computing, Hot Cloud, 2011.
  29. J. Polo et al., "Performance management of accelerated map cut back workloads in heterogeneous clusters," in Proceedings of the forty first Intl. Conf. on multiprocessing, 2010.
  30. W. Jiang and G. Agrawal, "Mate-cg: A map reduce-like framework for fast data-intensive computations on heterogeneous clusters," in Parallel Distributed process conference (IPDPS), 2012 IEEE twenty sixth International, May 2012, pp. 644-655.
  31. Apache, "Apache Hadoop Yarn," 2013. Online]. Available: http://hadoop.apache.org/docs/current/hadoop-yarn/ hadoop-yarn-site/YARN.html
  32. A. Verma, L. Cherkasova, and R. H. Campbell, "Resource Provisioning Framework for Map cut back Jobs with Performance Go als," Proc. of the twelfth ACM/IFIP/USENIX Middleware Conference, 2011.

Publication Details

Published in : Volume 2 | Issue 6 | November-December 2017
Date of Publication : 2017-12-31
License:  This work is licensed under a Creative Commons Attribution 4.0 International License.
Page(s) : 614-618
Manuscript Number : CSEIT1726160
Publisher : Technoscience Academy

ISSN : 2456-3307

Cite This Article :

Dumpalagattu Babu, Kumbha Ramesh, "Divide and Deployment of Careers in Map Degradation for Different Multicore Processors", International Journal of Scientific Research in Computer Science, Engineering and Information Technology (IJSRCSEIT), ISSN : 2456-3307, Volume 2, Issue 6, pp.614-618, November-December-2017.
Journal URL : http://ijsrcseit.com/CSEIT1726160

Article Preview