H2Hadoop: Improving Hadoop Performance using the Metadata of Related Jobs

  • Unique Paper ID: 145489
  • PageNo: 533-537
  • Abstract:
  • Cloud Computing leverages Hadoop framework for process BigData in parallel. Hadoop has bound limitations that could be exploited to execute the work with efficiency. These limitations are largely as a result of knowledge vicinity within the cluster, jobs and tasks scheduling, and resource allocations in Hadoop. economical resource allocation remains a challenge in Cloud Computing MapReduce platforms. we propose H2Hadoop, that is an increased Hadoop design that reduces the computation price related to BigData analysis. The proposed architecture additionally addresses the difficulty of resource allocation in native Hadoop. H2Hadoop provides a better resolution for text data, like finding DNA sequence and also the motif of a DNA sequence. Also, H2Hadoop provides associate economical Data Mining approach for Cloud Computing environments. H2Hadoop design leverages on NameNode’s ability to assign jobs to the TaskTrakers (DataNodes) among the cluster. By adding management options to the NameNode, H2Hadoop will showing intelligence direct and assign tasks to the DataNodes that contain the desired knowledge while not causing the work to the complete cluster. Examination with native Hadoop, H2Hadoop reduces central processing unit time, range of browse operations, and another Hadoop factors.
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Copyright & License

Copyright © 2026 Authors retain the copyright of this article. This article is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

BibTeX

@article{145489,
        author = {C. PRASANTH and S. MUNI KUMAR},
        title = {H2Hadoop: Improving Hadoop Performance using the Metadata of Related Jobs},
        journal = {International Journal of Innovative Research in Technology},
        year = {},
        volume = {4},
        number = {10},
        pages = {533-537},
        issn = {2349-6002},
        url = {https://ijirt.org/article?manuscript=145489},
        abstract = {Cloud Computing leverages Hadoop framework for process BigData in parallel. Hadoop has bound limitations that could be exploited to execute the work with efficiency. These limitations are largely as a result of knowledge vicinity within the cluster, jobs and tasks scheduling, and resource allocations in Hadoop. economical resource allocation remains a challenge in Cloud Computing MapReduce platforms. we propose H2Hadoop, that is an increased Hadoop design that reduces the computation price related to BigData analysis. The proposed architecture additionally addresses the difficulty of resource allocation in native Hadoop. H2Hadoop provides a better resolution for text data, like finding DNA sequence and also the motif of a DNA sequence. Also, H2Hadoop provides associate economical Data Mining approach for Cloud Computing environments. H2Hadoop design leverages on NameNode’s ability to assign jobs to the TaskTrakers (DataNodes) among the cluster. By adding management options to the NameNode, H2Hadoop will showing intelligence direct and assign tasks to the DataNodes that contain the desired knowledge while not causing the work to the complete cluster. Examination with native Hadoop, H2Hadoop reduces central processing unit time, range of browse operations, and another Hadoop factors.},
        keywords = {H2Hadoop, MapReduce, Hadoop Performance, Data Mining},
        month = {},
        }

Cite This Article

PRASANTH, C., & KUMAR, S. M. (). H2Hadoop: Improving Hadoop Performance using the Metadata of Related Jobs. International Journal of Innovative Research in Technology (IJIRT), 4(10), 533–537.

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