<?xml version="1.0" encoding="UTF-8"?>
<doi_batch version="4.4.2" xmlns="http://www.crossref.org/schema/4.4.2" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:jats="http://www.ncbi.nlm.nih.gov/JATS1" xsi:schemaLocation="http://www.crossref.org/schema/4.4.2 http://www.crossref.org/schema/deposit/crossref4.4.2.xsd">
<head>
<doi_batch_id>ba60f6118d1e33cbb5-1f48</doi_batch_id>
<timestamp>20240320062055490</timestamp>
<depositor>
  <depositor_name>beie:beie</depositor_name> 
  <email_address>director@blueeyesintelligence.org</email_address>
</depositor>
<registrant>WEB-FORM</registrant> 
</head>
<body>
<journal>
<journal_metadata>   <full_title>International Journal of Innovative Technology and Exploring Engineering</full_title>   <abbrev_title>IJITEE</abbrev_title>   <issn media_type='electronic'>22783075</issn>   <doi_data>     <doi>10.35940/ijitee</doi>     <resource>https://www.ijitee.org/</resource>   </doi_data> </journal_metadata> <journal_issue>  <publication_date media_type='online'>     <month>03</month>     <day>30</day>     <year>2024</year>   </publication_date>   <journal_volume>     <volume>13</volume>   </journal_volume>   <issue>4</issue> </journal_issue><!-- ============== --> <journal_article publication_type='full_text'>   <titles>     <title>Leveraging Cloud-Native Architectures for Enhanced Data Wrangling Efficiency: A Security and Performance Perspective</title>   </titles>   <contributors>      <organization sequence='first' contributor_role='author'>Department of Computer Science,  Northeastern University, San Francisco, California, United States of  America (USA).</organization>    <person_name sequence='first' contributor_role='author'>      <given_name>Prakash</given_name>      <surname>Somasundaram</surname>      <ORCID>https://orcid.org/0009-0009-4512-2339</ORCID>    </person_name>  </contributors>    <jats:abstract xml:lang='en'>         <jats:p>In the contemporary landscape of big data analytics, cloud computing environments have emerged as pivotal platforms for data-wrangling processes, catering to the ingestion and transformation of vast datasets. This research paper explores optimization strategies for data wrangling within cloud computing environments, a critical component in the realm of big data analytics. It addresses the significant security and performance challenges encountered during data pipeline execution in cloud platforms. By proposing a novel strategy that includes executing data pipelines within a customer's Virtual Private Cloud (VPC) and employing pushdown optimization for data transformation tasks in cloud data warehouses and databases, this approach seeks to enhance security and performance. The paper examines the theoretical underpinnings and practical applications of these strategies, conducting a comparative analysis with traditional data-wrangling methods to underscore the benefits of performance and security. Additionally, it assesses the implications of this approach on cost, scalability, and manageability within cloud architectures. The findings offer valuable insights and recommendations for deploying these optimization techniques in practical scenarios, setting the stage for future research in refining data-wrangling practices in cloud environments.</jats:p>     </jats:abstract>  <publication_date media_type='online'>     <month>03</month>     <day>30</day>     <year>2024</year>   </publication_date>   <pages>     <first_page>17</first_page>     <last_page>21</last_page>   </pages>   <crossmark>     <crossmark_version>CC BY-NC-ND 4.0</crossmark_version>     <crossmark_policy>10.35940/BEIESP.CrossMarkPolicy</crossmark_policy>     <crossmark_domains>       <crossmark_domain>          <domain>www.ijitee.org</domain>       </crossmark_domain>     </crossmark_domains>     <crossmark_domain_exclusive>true</crossmark_domain_exclusive>     <custom_metadata>       <assertion explanation='Journal Name' group_label='Journal Name' group_name='Journal' name='Declaration' order='0'>International Journal of Innovative Technology and Exploring Engineering (IJITEE)</assertion>       <assertion explanation='Funding' group_label='Funding' group_name='Funding' name='Declaration' order='1'>I did not receive any Funding.</assertion>       <assertion explanation='Conflicts of Interest' group_label='Conflicts of Interest' group_name='Conflicts-of-Interest' name='Declaration' order='2'>No conflicts of interest to the best of our knowledge.</assertion>       <assertion explanation='Ethical Approval and Consent to Participate' group_label='Ethical Approval and Consent to Participate' group_name='Ethical-Approval-and-Consent-to-Participate' name='Declaration' order='3'>No, the article does not require ethical approval and consent to participate with evidence.</assertion>       <assertion explanation='Availability of Data and Material' group_label='Availability of Data and Material' group_name='Availability-of-Data-and-Material' name='Declaration' order='4'>Not relevant.</assertion>       <assertion explanation='Authors Contributions' group_label='Authors Contributions' group_name='Authors-Contributions' name='Declaration' order='5'>I am only the sole author of the article.</assertion>     </custom_metadata>   </crossmark>   <doi_data>     <doi>10.35940/ijitee.D9821.13040324</doi>     <resource>https://www.ijitee.org/portfolio-item/D982113040324/</resource>   </doi_data> </journal_article>
</journal>
</body>
</doi_batch>
