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Faculty Dr Niladri Sett

Dr Niladri Sett

Assistant Professor

Department of Computer Science and Engineering

Contact Details

niladri.s@srmap.edu.in

Office Location

SR Block, Level 2, Cabin No: 17

Education

2017
IIT Guwahati
India
2009
M. Tech
NIT Durgapur
India
2005
B.E.
NIT Durgapur
India

Experience

  • September, 2020-November, 2020 | Assistant professor | IIIT Vadodara, Gandhinagar, India
  • October, 2017-August, 2020 | Post-doctoral Fellow | University College Dublin, Dublin, Ireland

Research Interest

  • Trustworthy Machine Learning (Interpretability, Fairness, Robustness, and Privacy)
  • Large Language Models
  • Complex Network Analysis
  • Intent Based Networking
  • Applications of AI/ML in Healthcare

Awards

No data available

Memberships

No data available

Publications

  • Reconciling Privacy and Explainability in High-Stakes: A Systematic Inquiry

    Dr Niladri Sett, Supriya Manna

    Source Title: Transactions on Machine Learning Research, Quartile: Q2, DOI Link

    View abstract ⏷

    The integration of deep learning into diverse high-stakes scientific applications demands a careful balance between Privacy and Explainability. This work explores the interplay between two essential requirements: Right-to-Privacy (RTP), enforced through differential privacy (DP)—the gold standard for privacy-preserving machine learning due to its rigorous guarantees—and Right-to-Explanation (RTE), facilitated by post-hoc explainers, the go-to tools for model auditing. We systematically assess how DP influences the applicability of widely used explanation methods, uncovering fundamental intricacies between privacy-preserving models and explainability objectives. Furthermore, our work throws light on how RTP and RTE can be reconciled in high-stakes. Our study, with the example of a wildly used use-case, concludes by outlining a novel software pipeline that upholds RTP and RTE requirements

Patents

Projects

Scholars

Doctoral Scholars

  • Ms Puligoru Joshna
  • Mr A Rama Prasad Mathi

Interests

  • Artificial Intelligence
  • Data Science
  • Machine Learning
  • Networking

Thought Leaderships

There are no Thought Leaderships associated with this faculty.

Top Achievements

Education
2005
B.E.
NIT Durgapur
India
2009
M. Tech
NIT Durgapur
India
2017
IIT Guwahati
India
Experience
  • September, 2020-November, 2020 | Assistant professor | IIIT Vadodara, Gandhinagar, India
  • October, 2017-August, 2020 | Post-doctoral Fellow | University College Dublin, Dublin, Ireland
Research Interests
  • Trustworthy Machine Learning (Interpretability, Fairness, Robustness, and Privacy)
  • Large Language Models
  • Complex Network Analysis
  • Intent Based Networking
  • Applications of AI/ML in Healthcare
Awards & Fellowships
No data available
Memberships
No data available
Publications
  • Reconciling Privacy and Explainability in High-Stakes: A Systematic Inquiry

    Dr Niladri Sett, Supriya Manna

    Source Title: Transactions on Machine Learning Research, Quartile: Q2, DOI Link

    View abstract ⏷

    The integration of deep learning into diverse high-stakes scientific applications demands a careful balance between Privacy and Explainability. This work explores the interplay between two essential requirements: Right-to-Privacy (RTP), enforced through differential privacy (DP)—the gold standard for privacy-preserving machine learning due to its rigorous guarantees—and Right-to-Explanation (RTE), facilitated by post-hoc explainers, the go-to tools for model auditing. We systematically assess how DP influences the applicability of widely used explanation methods, uncovering fundamental intricacies between privacy-preserving models and explainability objectives. Furthermore, our work throws light on how RTP and RTE can be reconciled in high-stakes. Our study, with the example of a wildly used use-case, concludes by outlining a novel software pipeline that upholds RTP and RTE requirements
Contact Details

niladri.s@srmap.edu.in

Scholars

Doctoral Scholars

  • Ms Puligoru Joshna
  • Mr A Rama Prasad Mathi

Interests

  • Artificial Intelligence
  • Data Science
  • Machine Learning
  • Networking

Education
2005
B.E.
NIT Durgapur
India
2009
M. Tech
NIT Durgapur
India
2017
IIT Guwahati
India
Experience
  • September, 2020-November, 2020 | Assistant professor | IIIT Vadodara, Gandhinagar, India
  • October, 2017-August, 2020 | Post-doctoral Fellow | University College Dublin, Dublin, Ireland
Research Interests
  • Trustworthy Machine Learning (Interpretability, Fairness, Robustness, and Privacy)
  • Large Language Models
  • Complex Network Analysis
  • Intent Based Networking
  • Applications of AI/ML in Healthcare
Awards & Fellowships
No data available
Memberships
No data available
Publications
  • Reconciling Privacy and Explainability in High-Stakes: A Systematic Inquiry

    Dr Niladri Sett, Supriya Manna

    Source Title: Transactions on Machine Learning Research, Quartile: Q2, DOI Link

    View abstract ⏷

    The integration of deep learning into diverse high-stakes scientific applications demands a careful balance between Privacy and Explainability. This work explores the interplay between two essential requirements: Right-to-Privacy (RTP), enforced through differential privacy (DP)—the gold standard for privacy-preserving machine learning due to its rigorous guarantees—and Right-to-Explanation (RTE), facilitated by post-hoc explainers, the go-to tools for model auditing. We systematically assess how DP influences the applicability of widely used explanation methods, uncovering fundamental intricacies between privacy-preserving models and explainability objectives. Furthermore, our work throws light on how RTP and RTE can be reconciled in high-stakes. Our study, with the example of a wildly used use-case, concludes by outlining a novel software pipeline that upholds RTP and RTE requirements
Contact Details

niladri.s@srmap.edu.in

Scholars

Doctoral Scholars

  • Ms Puligoru Joshna
  • Mr A Rama Prasad Mathi