HACE retrieval Technique Usage in Big data to get particular Pattern

Authors

  • Sandhya A Computer science, VTU Belgaum, India
  • T Hanumantha Reddy Computer science, VTU Belgaum, India

Keywords:

HACE, Big Data

Abstract

To take care of the directing void issue in geographic steering, high control overhead and transmission postponement are as a rule taken in remote sensor systems. Roused by the structure made out of edge hubs around which there is no steering void, a proficient bypassing void steering convention in light of virtual directions is proposed in this paper. The fundamental thought of the convention is to change an irregular structure made out of void edges into a general one by mapping edge hubs directions to a virtual circle. By using the virtual circle, the covetous sending can be kept from falling flat, so that there is no directing void in sending process from source to destination and control overhead can be lessened. Besides, the virtual circle is helpful to lessen normal length of steering ways and abatement transmission delay. Reproductions demonstrate the proposed convention has higher conveyance proportion, shorter way length, less control parcel overhead, and vitality utilization. Enormous Data concern huge volume, mind boggling, developing information sets with various, self-sufficient sources. With the quick improvement of systems administration, information stockpiling, and the information accumulation limit, Big Data are presently quickly growing in all science and building areas, including physical, organic and biomedical sciences. This paper shows a HACE hypothesis that portrays the components of the Big Data upheaval, and proposes a Big Data handling model, from the information mining point of view. This information driven model includes request driven accumulation of data sources, mining and investigation, client enthusiasm demonstrating, and security and protection contemplations. We investigate the testing issues in the information driven model furthermore in the Big Data unrest.

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Published

2025-11-11

How to Cite

[1]
A. Sandhya and T. Hanumantha Reddy, “HACE retrieval Technique Usage in Big data to get particular Pattern”, Int. J. Comp. Sci. Eng., vol. 4, no. 4, pp. 229–232, Nov. 2025.

Issue

Section

Review Article