Skip to main content
Loading...
Scholar9 logo True scholar network
  • Login/Sign up
  • Scholar9
    Publications ▼
    Article List Deposit Article
    Mentorship ▼
    Overview Sessions
    Q&A Institutions Network Journals
    Publications ▼
    Article List Deposit Article
    Mentorship ▼
    Overview Sessions
    Q&A Institutions Scholars Journals
  • Login/Sign up
  • Back to Top

    Transparent Peer Review By Scholar9

    Cloud Data Warehousing: Transforming Scalable Data Management and Analytics for Modern Enterprises

    Abstract

    Cloud data warehousing has emerged as a revolutionary solution addressing the ever-increasing needs of data management, real-time analytics, and scalable storage for businesses across industries. This research comprehensively investigates the paradigm shift from traditional on-premises data warehouses to cloud-based solutions, emphasizing their role in data science, machine learning workflows, and real-time decision-making. The objective of this paper is to assess the technical, operational, and economic benefits of cloud data warehouses and their direct impact on data-intensive applications in fields like e-commerce, finance, healthcare, and logistics. Through a mixed-methods approach involving primary data collection from enterprises using AWS Redshift, Google BigQuery, Snowflake, and Azure Synapse, supplemented with secondary literature, the study captures insights into deployment strategies, performance optimization techniques, and governance practices. Quantitative data is derived from performance benchmarks, while qualitative data reflects the perceptions of IT managers, data scientists, and infrastructure architects. Statistical methods including regression analysis, ANOVA, and clustering techniques provide insights into cost-performance trade-offs, latency patterns, and scalability factors. Ethical considerations such as data privacy, regulatory compliance, and responsible AI integration are also explored. Findings indicate that cloud data warehousing reduces infrastructure costs by up to 50%, enhances query performance by leveraging distributed architectures, and accelerates machine learning model training pipelines through seamless data access. The research contributes to the evolving discourse on hybrid and multi-cloud data strategies, emphasizing the importance of data integration, workload portability, and vendor lock-in mitigation. By presenting empirical data, case studies, and expert opinions, this paper provides a comprehensive understanding of how cloud data warehousing serves as a foundational pillar in modern data ecosystems, supporting both operational analytics and advanced data science initiatives. The study concludes with recommendations for optimizing data warehouse performance, improving data governance frameworks, and aligning cloud data strategies with business goals to maximize return on investment and competitive advantage.

    User Profile
    User Profile
    User Profile
    User Profile
    User Profile

    Vinodkumar Surasani Reviewer

    badge Review Request Accepted

    Vinodkumar Surasani Reviewer

    badge Approved

    Relevance and Originality

    Methodology

    Validity & Reliability

    Clarity and Structure

    Results and Analysis

    Relevance and originality

    I really appreciate the way the abstract was put together to get an in-depth understanding of the work. Tech stack and approach was quite to the point.


    Methodology

    The selection of the specific cloud provider (e.g., AWS Redshift, Google BigQuery, Snowflake) based on scalability, cost, or performance factors is quite great. There is some more space to consider novel cloud providers as well from the research standpoint.


    Final Comment

    Provide detailed steps on data ingestion, transformation, and querying to ensure reproducibility is quite to the point. I see that good portion of discussions on potential biases in data selection or preprocessing (e.g., reliance on specific cloud provider optimizations). Use of specific query optimization techniques, caching mechanisms, or distributed computing frameworks was clearly defined. I do see very detailed explanations on how data is sourced, cleaned, and structured before entering the warehouse.


    Very good work on Cloud Data Warehousing.

    IJ Publication Publisher

    Thank you, sir, for your valuable and encouraging feedback. It’s truly rewarding to know that the abstract, tech stack, and methodology provided the clarity and depth you were looking for.


    We also appreciate your suggestion to explore newer cloud providers, and we’ll certainly keep that in mind to enhance future research.


    Looking forward to continuing this collaborative journey.

    Publisher

    User Profile

    IJ Publication

    Reviewers

    User Profile

    Vinodkumar Surasani

    User Profile

    Hemasundara Reddy Lanka

    User Profile

    Rajesh Kumar kanji

    User Profile

    Raghuvaran Reddy Kalluri

    User Profile

    Geethanjali Sanikommu

    More Detail

    User Profile

    Paper Category

    Data Science

    User Profile

    Journal Name

    TIJER - Technix International Journal for Engineering Research

    User Profile

    p-ISSN

    User Profile

    e-ISSN

    2349-9249

    Subscribe us to get updated

    logo logo

    Scholar9 is aiming to empower the research community around the world with the help of technology & innovation. Scholar9 provides the required platform to Scholar for visibility & credibility.

    QUICKLINKS

    • What is Scholar9?
    • About Us
    • Mission Vision
    • Contact Us
    • Privacy Policy
    • Terms of Use
    • Blogs
    • FAQ

    CONTACT US

    • +91 82003 85143
    • hello@scholar9.com
    • www.scholar9.com

    © 2026 Sequence Research & Development Pvt Ltd. All Rights Reserved.

    whatsapp