Beholder Signatures

Completed

Developed Beholder Signatures, a novel cryptographic signature framework designed to enhance transaction verification security and privacy in decentralized ecosystems. This project investigates mathematical bounds and lightweight verification structures for multi-party signatures.

Duration 2024 - 2025
Team Members Stefan Dziembowski, Sebastian Faust, Pawel Kedzior, Marcin Mielniczuk, Susil Kumar Mohanty, Krzysztof Pietrzak
Status Completed

Universal Channel Rebalancing: Flexible Coin Shifting in Payment Channel Networks

Completed

Proposing a blockchain-agnostic, fully off-chain framework (UCRb) that enables flexible coin shifting (rebalancing) across multiple payment channels to solve liquidity management and channel depletion challenges in Payment Channel Networks.

Duration 2024 - 2025
Team Members Stefan Dziembowski, Shahriar Ebrahimi, Omkar Gavhane, Susil Kumar Mohanty
Status Completed

TrafficProof: Privacy-Preserving Reliable Traffic Information Sharing in Social Internet of Vehicles

Active

Designing a privacy-preserving and reliable traffic information sharing framework (TrafficProof) for the Social Internet of Vehicles (SIoV). The system protects the privacy of vehicular telemetry and route data while ensuring auditability and validation of shared traffic event alerts.

Duration 2024 - 2025
Team Members Stefan Dziembowski, Shahriar Ebrahimi, Parisa Hassanizadeh, Susil Kumar Mohanty
Status Active

Privacy-Preserving Scalable Framework for Decentralized Local Energy Market Trading

Active

The rapid growth of distributed renewable energy resources and smart grid technologies has accelerated the development of decentralized local energy markets, where prosumers and consumers can directly exchange electricity through peer-to-peer trading. While these markets offer improved energy efficiency, reduced transmission losses, and greater integration of renewable energy, they also introduce significant challenges related to data privacy, transaction security, scalability, and trust among participants. Privacy-preserving mechanisms are essential to protect sensitive user information, whereas scalable frameworks are required to efficiently support increasing numbers of users and transactions.

Duration 2025 - 2027
Team Members Susil Kumar Mohanty, Sonam Parashar
Status Active

Privacy-Preserving Verification Framework for Secure Healthcare Systems

Active

Privacy-preserving framework for secure verification in digital workflows. The goal is to design a system that can validate authenticity, authorization, and policy compliance while minimizing exposure of sensitive information. The work focuses on balancing security, privacy, and usability through a prototype implementation and performance evaluation. It also studies practical deployment considerations, including verification efficiency, data minimization, and scalability in real-world settings.

Duration 2026 - 2028
Team Members Satyam Krishna, Susil Kumar Mohanty, Shahriar Ebrahimi
Status Active

Privacy-Preserving RAG

Active

Investigating secure Retrieval-Augmented Generation (RAG) workflows and evaluated existing privacy-preserving methods through extensive literature review and implementation analysis.

Duration 2026 - 2028
Team Members Laxminarayan Sahu, Susil Kumar Mohanty
Status Active

Privacy-Preserving DeepFake Voice Detection

Active

Developing intelligent techniques for detecting AI-generated synthetic voices, with a focus on enhancing the security, reliability, and trustworthiness of modern voice-based systems.

Duration 2026 - 2028
Team Members Harshvardhan Pandey, Mahek Kureshi, Jeny Bhatt, Susil Kumar Mohanty
Status Active

Genomic Data Privacy

Active

Developing a privacy-preserving and verifiable CRISPR off-target analysis framework using zero-knowledge proofs. The system enables patients to prove that exhaustive genome-wide off-target searches and scoring were performed correctly without revealing their genomic data. It ensures both computational integrity and genomic privacy, making secure genome editing workflows practical and trustworthy.

Duration 2026 - 2027
Team Members Sunny K Sebu, Susil Kumar Mohanty, Anup Kumar Halder
Status Active

Secure UAV Aggregation with Federated Learning

Active

Employing federated learning in multi-UAV networks to facilitate decentralized intelligence through privacy-preserving collaborative training, secure model aggregation, robust communication, and protection against adversarial attacks without sharing sensitive local data.

Duration 2026 - 2027
Team Members Syed Mustafa Ali, Jeny Bhatt, Susil Kumar Mohanty, Moumita Patra
Status Active

Early-Stage APT Detection in IDS Using Semantic Network Traffic Analysis

Active

Developing a semantic network traffic analysis framework for early-stage Advanced Persistent Threat (APT) detection using deep learning and semantic feature extraction. The framework identifies APT activities across the seven stages of the MITRE ATT&CK lifecycle to support proactive cyber defense.

Duration 2026 - 2027
Team Members Aadarsh Nath, Susil Kumar Mohanty, Narendra Singh
Status Active

FL- Privacy Preserving Architecture

Active

Developing a Federated Learning (FL) architecture for training models while preserving privacy.

Duration 2026 - 2027
Team Members Harshvardhan Pandey, Mahek Kureshi, Susil Kumar Mohanty, Harsh Kashyap
Status Active

Privacy-Preserving Federated Learning for Early Depression Detection

Active

Developing a privacy-preserving federated learning framework for early-stage depression detection using passive behavioral sensing data (sleep, activity, phone usage, social interaction) from the StudentLife dataset. The framework combines clustered federated learning and Split Learning with local differential privacy, adaptive clipping, and DCT-based compression to protect sensitive mental health data while preserving model utility.

Duration 2026 - 2027
Team Members Lakshya Vashisth, Shashank Bhati, Susil Kumar Mohanty, Sucharita Khuntia
Status Active

Privacy-Preserving WiFi Sensing for Human Activity Recognition

Active

Investigating privacy-preserving WiFi sensing using Beamforming Feedback Information (BFI) for secure human activity recognition, with emphasis on attack analysis and defense mechanisms.

Duration 2026 - 2027
Team Members Tanush Lukha, Susil Kumar Mohanty
Status Active

Federated Unlearning While Preserving Privacy

Active

Investigating frameworks for federated unlearning to enable removing specific user data from trained machine learning models while maintaining the model's accuracy and ensuring rigorous privacy bounds.

Duration 2026 - 2027
Team Members Shashank Jaiswal, Susil Kumar Mohanty, Harsh Kashyap
Status Active

Neural Differential Equation Solver Using Differentiable Feature Grids for Scientific Machine Learning

Active

Developing a neural differential equation solver using differentiable feature grids for accurate, scalable, and efficient learning of scientific simulation and PDE-based problems.

Duration 2026 - 2027
Team Members Princy Pandey, Susil Kumar Mohanty, Debasish Pradhan
Status Active

Gradient-Augmented Hash Encoding for Efficient Learning of Partial Differential Equations

Active

Developing an efficient framework for solving Partial Differential Equations (PDE) using gradient-augmented hash encoding to improve learning, accuracy, convergence speed, and computational efficiency.

Duration 2026 - 2027
Team Members Akriti Mall, Susil Kumar Mohanty, Debasish Pradhan
Status Active

Early Crop Disease Detection

Active

Developing deep learning frameworks for early-stage detection and classification of crop diseases using computer vision and edge-based mobile sensing.

Duration 2026 - 2027
Team Members Janmejoy Raut, Susil Kumar Mohanty, Vivek Singh Baghel
Status Active

Federated Moderation in Cross Platform zk-Promises

Active

This project aims to address moderation architectures where moderators have absolute authority to issue state altering callbacks. Our work introduces a framework for federated threshold moderation to acheive cross platform accountability without sacrificing individual platform anonymity and user privacy. We propose a dual tier reputation architecture that reprimands malicious user activity. This project will actively research the tradeoffs of weighted trust thresholds to prevent malicious platform collusion, policy binding metadata to allow platforms to selectively filter global penalties and benchmark performance.

Duration 2026 - 2027
Team Members Ishaan Kulkarni, Susil Kumar Mohanty
Status Active

DeepFake Image Detection

Active

Investigating robust detection mechanisms for AI-generated deepfake images using advanced forensic analysis and deep learning techniques. This project focuses on developing generalizable classifiers capable of identifying subtle manipulation artifacts across diverse generative models, including GANs and diffusion-based architectures, to safeguard digital media integrity and counter misinformation threats.

Duration 2026 - 2027
Team Members Sanket Salunke, Susil Kumar Mohanty
Status Active