Skip to main content
AkademIndex

Products

For developers

AkademBasesoonOpen API for the ecosystem
Latin
English
Article

EFFICIENT PARALLEL DATA ANALYSIS: INTEGRATING MAPREDUCE WITH HADOOP DISTRIBUTED FILE SYSTEM

Shodiyev Usmon RamazonovichSharof Rashidov nomidagi Samarqand davlat universitetiMalikov Ziyodullo Abdurayim o'g'liSharof Rashidov nomidagi Samarqand davlat universiteti
ABI

Abstract

The necessity for effective algorithms for data processing in parallel databases has grown critical in the current era of big data. The purpose of this research is to build an effective algorithm for data analysis in parallel databases. To rapidly analyze massive data sets in parallel, the proposed approach integrates the MapReduce programming model with the Hadoop distributed file system. The algorithm was tested on a real-world dataset, and the findings indicated that it outperformed existing algorithms in terms of execution speed and scalability.

Topics

Identifiers

Citations and references

Cited by 00 references
Metrics — AkademScholar · Coming soon