Result: Enhancing Data Streaming Clustering Algorithms for AutoML in Cloud Environments: A Novel Design Approach

Title:
Enhancing Data Streaming Clustering Algorithms for AutoML in Cloud Environments: A Novel Design Approach
Source:
Engineering, Technology & Applied Science Research. 15:19380-19385
Publisher Information:
Engineering, Technology & Applied Science Research, 2025.
Publication Year:
2025
Document Type:
Academic journal Article
ISSN:
1792-8036
2241-4487
DOI:
10.48084/etasr.8806
Rights:
CC BY
Accession Number:
edsair.doi...........99025d4288a6a0f4a5bcbf7c37f02be0
Database:
OpenAIRE

Further Information

The objective of this revision is to enhance existing AutoCloud clustering technology, which demonstrates optimal performance when dealing with clusters of specific dimensions and arrangements. AutoCloud uses the TEDA framework to break down the clustering challenge into two smaller problems, called micro cluster and macro cluster. AutoCloud is an innovative method that eliminates the requirement for any pre-existing understanding of datasets, where clusters can develop and combine when new information and explanations are presented. This study proposes an experimental configuration to generate microclusters and data clouds without imposing a certain topology on static datasets. MLAutoCloud uses a modified distance-based technique, utilizing the big data framework and incorporating the adjusted random index value with the TEDA framework for streaming data. The MLAutoCloud technique yielded optimal cluster numbers and achieved excellent data collection results, as seen in the test results on different datasets. Estimating thickness despite changes in the underlying assumptions is a process that could modify the variables used to provide data. The MLAutoCloud method is an effective way to generate a cloud clustering algorithm in the data streaming section.