AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY

In general situation, the high intensive tasks linked to computation can be provisioned either through dedicated servers or can be properly filtered in virtual platforms. The major constraint in such situation can be associated with obtaining decision in process initiated as well as in the cost of d...

Full description

Saved in:
Bibliographic Details
Main Authors: Jyoti Prakash MISHRA, Zdzislaw POLKOWSKI, Sambit Kumar MISHRA
Format: Article
Language:English
Published: University of Pitesti 2021-12-01
Series:Buletin ştiinţific: Universitatea din Piteşti. Seria Ştiinţe Economice
Subjects:
Online Access:http://economic.upit.ro/RePEc/pdf/2021_3_1.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850057730839019520
author Jyoti Prakash MISHRA
Zdzislaw POLKOWSKI
Sambit Kumar MISHRA
author_facet Jyoti Prakash MISHRA
Zdzislaw POLKOWSKI
Sambit Kumar MISHRA
author_sort Jyoti Prakash MISHRA
collection DOAJ
description In general situation, the high intensive tasks linked to computation can be provisioned either through dedicated servers or can be properly filtered in virtual platforms. The major constraint in such situation can be associated with obtaining decision in process initiated as well as in the cost of data transmission preserving security. Sometimes some specific issues are required to be resolved during utilization of Internet of Things in specified applications expecting feasible solutions. Often it has been observed that the traditional computing mechanisms linked with the devices like routers equipped with specific infrastructures as well as services may not be adequate for implementation due to lack of flexibilities. In such situation, it may be difficult for data acquisition and processing. In fact, this complexity can be due to constrain in operations linked to computational resources especially in distributed environments. Sometimes also it is required to focus on specific data retrieved from different IoT distributed components linked to virtual machines. Accordingly, the techniques should be enabled on proper accumulation of data with accurate prediction prioritizing the causal factors and data sharing mechanisms. Though it is equally important to handle large scaled data related to issues of multi domain applications, it is essential to enhance the modularity, flexibility as well as scalability of the data and to maintain the optimal accuracy. Also to address these issues, specific computational approaches especially ant colony optimization technique can be the support to make commonalities and obtain close association of the resources with the relevant data. The implementation mechanism in virtual machines also supports integration of complex data and provisions privacy with security.
format Article
id doaj-art-da0dd747ab574f22b2a657af67f72c32
institution DOAJ
issn 1583-1809
2344-4908
language English
publishDate 2021-12-01
publisher University of Pitesti
record_format Article
series Buletin ştiinţific: Universitatea din Piteşti. Seria Ştiinţe Economice
spelling doaj-art-da0dd747ab574f22b2a657af67f72c322025-08-20T02:51:20ZengUniversity of PitestiBuletin ştiinţific: Universitatea din Piteşti. Seria Ştiinţe Economice1583-18092344-49082021-12-0120338AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDYJyoti Prakash MISHRA0Zdzislaw POLKOWSKI1Sambit Kumar MISHRA2Gandhi Institute for Education and Technology, Banatangi, Bhubaneswar, affiliated to Biju Patnaik University of Technology, Rourkela, Odisha, IndiaWSG University, Bydgoszcz, PolandGandhi Institute for Education and Technology, Banatangi, Bhubaneswar, affiliated to Biju Patnaik University of Technology, Rourkela, Odisha, IndiaIn general situation, the high intensive tasks linked to computation can be provisioned either through dedicated servers or can be properly filtered in virtual platforms. The major constraint in such situation can be associated with obtaining decision in process initiated as well as in the cost of data transmission preserving security. Sometimes some specific issues are required to be resolved during utilization of Internet of Things in specified applications expecting feasible solutions. Often it has been observed that the traditional computing mechanisms linked with the devices like routers equipped with specific infrastructures as well as services may not be adequate for implementation due to lack of flexibilities. In such situation, it may be difficult for data acquisition and processing. In fact, this complexity can be due to constrain in operations linked to computational resources especially in distributed environments. Sometimes also it is required to focus on specific data retrieved from different IoT distributed components linked to virtual machines. Accordingly, the techniques should be enabled on proper accumulation of data with accurate prediction prioritizing the causal factors and data sharing mechanisms. Though it is equally important to handle large scaled data related to issues of multi domain applications, it is essential to enhance the modularity, flexibility as well as scalability of the data and to maintain the optimal accuracy. Also to address these issues, specific computational approaches especially ant colony optimization technique can be the support to make commonalities and obtain close association of the resources with the relevant data. The implementation mechanism in virtual machines also supports integration of complex data and provisions privacy with security.http://economic.upit.ro/RePEc/pdf/2021_3_1.pdfdistributed resourcesvirtualizationscalabilityquery term
spellingShingle Jyoti Prakash MISHRA
Zdzislaw POLKOWSKI
Sambit Kumar MISHRA
AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
Buletin ştiinţific: Universitatea din Piteşti. Seria Ştiinţe Economice
distributed resources
virtualization
scalability
query term
title AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
title_full AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
title_fullStr AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
title_full_unstemmed AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
title_short AN APPROACH PRIORITIZING THE CAUSAL FACTORS OF LARGE SCALED DATA USING SOFT COMPUTING: A CASE STUDY
title_sort approach prioritizing the causal factors of large scaled data using soft computing a case study
topic distributed resources
virtualization
scalability
query term
url http://economic.upit.ro/RePEc/pdf/2021_3_1.pdf
work_keys_str_mv AT jyotiprakashmishra anapproachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy
AT zdzislawpolkowski anapproachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy
AT sambitkumarmishra anapproachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy
AT jyotiprakashmishra approachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy
AT zdzislawpolkowski approachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy
AT sambitkumarmishra approachprioritizingthecausalfactorsoflargescaleddatausingsoftcomputingacasestudy