2017
DOI: 10.24017/science.2017.3.8
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An Optimized Framework to Adopt Computer Laboratory Administrations for Operating System and Application Installations

Abstract: Nowadays, in most of the fields, task automation is area of interest and research due to that manual execution of a task is error prone, time consuming, involving more human resources and focus concerning. In the area of Computer laboratory administration, the old fashioned administration cannot run with today's growth, where the Operating System (OS) and required applications are installed on all the machines one by one. Therefore, a framework for automating Lab administration in regards of Operating Systems … Show more

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Cited by 13 publications
(8 citation statements)
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“…But still, there is room for others to work in improving our introduced algorithm as it can be hybridized with most recent swarm algorithms, such as backtracking search optimization algorithm [44,45], the variants of evolutionary clustering algorithm star [46][47][48][49], chaotic sine cosine firefly algorithm [50], and hybrid artificial intelligence algorithms [51]. Furthermore, DCNN-G-HHO can be applied to more complex and real-world applications to explore more deeply the advantages and drawbacks of the algorithm or improve its efficiencies, such as engineering application problems [50], laboratory management [52], e-organization and egovernment services [53], online analytical processing [54], web science [55], the Semantic Web ontology learning [56], cloud computing paradigms [57][58][59] [60], and evolutionary machine learning techniques [49,61,62].…”
Section: Discussionmentioning
confidence: 99%
“…But still, there is room for others to work in improving our introduced algorithm as it can be hybridized with most recent swarm algorithms, such as backtracking search optimization algorithm [44,45], the variants of evolutionary clustering algorithm star [46][47][48][49], chaotic sine cosine firefly algorithm [50], and hybrid artificial intelligence algorithms [51]. Furthermore, DCNN-G-HHO can be applied to more complex and real-world applications to explore more deeply the advantages and drawbacks of the algorithm or improve its efficiencies, such as engineering application problems [50], laboratory management [52], e-organization and egovernment services [53], online analytical processing [54], web science [55], the Semantic Web ontology learning [56], cloud computing paradigms [57][58][59] [60], and evolutionary machine learning techniques [49,61,62].…”
Section: Discussionmentioning
confidence: 99%
“…Accordingly, we intend to develop a proper fitness procedure to study combined multi-source datasets and a new analysis process. Finally, exploiting and adapting the ECA* for real-world applications is a vital possibility for future research, such as ontology learning in the Semantic Web, practical application problems [38], technical application problems [39], and e-government services [40].…”
Section: Discussionmentioning
confidence: 99%
“…Furthermore, an adaptive version of ECA* could be utilised for wound image clustering and analysis in telemedicine and patient monitoring [65,66]. Meanwhile, an improved ECA* could be also used in practical and engineering problems [67], library administration [68], e-government services [69], and multi-dimensional database systems [70], web science [71], and thesemantic Web [72]. On the other hand, the proposed frameworks can be adopted to learn concept hierarchies from other Latin alphabet-based text corpora.…”
Section: Discussionmentioning
confidence: 99%