Hemasundara Reddy Lanka Reviewer
04 Apr 2025 09:14 PM

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.
Hemasundara Reddy Lanka Reviewer
04 Apr 2025 09:12 PM