Raghuvaran Reddy Kalluri Reviewer
15 Apr 2025 10:29 AM

The manuscript provides a detailed examination of data management and machine learning (ML) integration within Indian financial institutions. Its relevance is undeniable, especially as the financial sector becomes increasingly data-centric. The comparative perspective across public banks, private institutions, fintechs, and insurance firms offers a valuable, real-world lens.
Key Strengths
- Sectoral Comparison: The paper effectively distinguishes the data maturity and innovation levels across different types of financial institutions in India.
- Practical Insights: Use cases, especially around ML in credit scoring, fraud detection, and portfolio optimization, are well-explained and grounded in current practice.
- Framework Contribution: The proposed data governance-maturity model tailored to the Indian financial landscape is both timely and meaningful.
- Use of Mixed Methods: Combining structured interviews with statistical/ML analysis adds depth to the findings.
Areas for Enhancement
- Visualization of the Proposed Model
- The PDM (data governance-maturity) framework is mentioned, but not clearly depicted. Including a visual diagram or layered model would improve clarity and engagement.
- More Detail on ML Validation
- While use cases and adoption levels are described, the evaluation methodology (e.g., how accuracy was measured, what datasets were used) could benefit from further elaboration.
- The lower compliance readiness of fintechs is noted—this section could be expanded with suggestions on how innovation and compliance can be balanced (e.g., via RegTech solutions or API-driven audit trails).
- Recent Literature Inclusion
Raghuvaran Reddy Kalluri Reviewer
04 Apr 2025 06:42 PM