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

Transparent Peer Review By Scholar9

Enhancing Data Reporting Efficiency Using Machine Learning Techniques in Real-Time Analytics

Abstract

The modern data-driven economy relies heavily on real-time analytics and seamless data reporting processes, which have become pivotal across sectors including finance, healthcare, e-commerce, and manufacturing. Efficient data reporting not only facilitates timely decision-making but also enhances the accuracy and relevance of organizational intelligence. This paper explores the intersection of advanced data reporting practices and machine learning techniques, focusing on how real-time data pipelines can be optimized for efficiency, accuracy, and scalability. With the exponential growth of data, traditional methods often fall short in processing and analyzing streaming data in real-time. Our research investigates the integration of machine learning algorithms into automated data reporting systems to improve data validation, anomaly detection, and reporting accuracy. We designed a hybrid research approach comprising both quantitative and qualitative methods, including analysis of operational data from industry leaders in retail, banking, and manufacturing sectors, as well as structured interviews with data engineers and analysts. Sampling covered large organizations with diverse data infrastructures, and analysis incorporated techniques such as regression analysis, clustering, and natural language processing (NLP) for real-time text summarization. Ethical considerations focused on data privacy, consent, and algorithmic fairness. Results show that integrating machine learning with real-time data reporting can reduce data processing errors by 37%, enhance anomaly detection accuracy by 42%, and accelerate report generation time by 63%. Our tables highlight comparisons across industries, system architectures, and error reduction techniques. These findings bridge key gaps in existing literature, which either focus on static data reporting or siloed machine learning implementations. This study’s implications extend to data governance policies, system design best practices, and future advancements in predictive analytics for proactive reporting enhancements. The paper also outlines limitations such as computational overhead, interpretability challenges, and data privacy concerns, all of which open avenues for further research into federated learning, edge analytics, and explainable AI in real-time reporting contexts. By advancing methodologies for data reporting, this research contributes directly to improving operational efficiency and analytical agility in data-intensive environments, particularly for data science teams tasked with balancing speed, accuracy, and compliance

Hemasundara Reddy Lanka Reviewer

badge Review Request Accepted

Hemasundara Reddy Lanka Reviewer

04 Apr 2025 09:14 PM

badge Approved

Relevance and Originality

Methodology

Validity & Reliability

Clarity and Structure

Results and Analysis

This paper provides a compelling and timely exploration of the integration of machine learning techniques into real-time data reporting pipelines. It addresses a critical gap in current literature by generalizing the use of ML beyond siloed domains, offering a cross-industry analysis backed by empirical data from prominent organizations. The research is methodologically sound and the quantitative results clearly support the hypotheses. Furthermore, the discussion on industry relevance, algorithmic performance, and data quality improvement adds significant practical value.

Nonetheless, a few areas could benefit from further elaboration to strengthen the academic rigor and generalizability of the findings.


Clarify the Sampling Strategy

  • The term “purposive sampling” is used—clarify the criteria used to select participating organizations and whether sample size may limit generalizability.


Table Enhancements

  • Tables are informative but could be accompanied by graphical representations to improve visual clarity, especially for trends over time or comparisons between ML models.


Terminology Consistency

  • Maintain consistency in referring to ML-enhanced systems (“ML-based reporting”, “ML-enhanced pipelines”, etc.) to avoid ambiguity.


Ethical Framework

  • The ethical section is commendable but could include bias detection methods used during algorithm selection and deployment.


Conclusion Suggestions

  • The conclusion could be strengthened by summarizing specific guidelines or best practices for practitioners aiming to adopt such systems.


avatar

IJ Publication Publisher

Respected Sir,

Thank you for the thoughtful and encouraging feedback. We will clarify the purposive sampling strategy, enhance tables with graphical visuals, ensure consistent terminology, expand on ethical considerations—especially bias detection—and enrich the conclusion with actionable best practices for practitioners.

Thank you once again for your valuable insights.

Publisher

User Profile

IJ Publication

Reviewer

User Profile

Hemasundara Reddy Lanka

More Detail

User Profile

Paper Category

Data Science

User Profile

Journal Name

JNRID - JOURNAL OF NOVEL RESEARCH AND INNOVATIVE DEVELOPMENT

User Profile

p-ISSN

User Profile

e-ISSN

2984-8687

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

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

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

whatsapp