Expertise

Dr. Sayanton Dibbo’s research mission is to identify and systematically study adversarial and privacy threats to AI/ML systems under different realistic setups/assumptions, including Generative AI models, and develop innovative defense frameworks/tools to mitigate AI/ML vulnerabilities. His primary objective is to improve the AI/ML systems’ robustness to ensure the AI/ML systems are more secure and trustworthy. AI/ML cyberattacks (i.e., adversarial and privacy attacks) aim to make the model/system vulnerable by generating incorrect predictions or allowing the AI/ML systems to leak/infer sensitive private training data.

Dr. Dibbo’s research integrates AI/ML and Security/Privacy domains. In particular, his research investigates the impact of different security and privacy threats on different data modalities, including images, texts, tabular, and audio data. His research vision is to develop novel tools that can mitigate adversarial and privacy attacks targeting AI/ML systems involving various data modalities. Dr. Dibbo’s outstanding research has been published in top-tier AI/ML and Cybersecurity conferences and journals, including USENIX Security, IEEE Computer Security Foundation (CSF), IEEE Secure and Trustworthy ML (SaTML), IEEE Transactions on Dependable and Secure Computing, ACM Conference on Computer and Communications Security (CCS), and European Conference on Computer Vision (ECCV). 

Research Areas:

  • Artificial Intelligence
  • Cyber Security 
  • Data Privacy
  • Generative AI & LLMs
  • Human-Computer Interaction
  • Intelligent Systems
  • Internet of Things (IoT)
  • Machine Learning
Degrees
PhD, Dartmouth College, Computer Science, 2025
MSc, University of California, Riverside, Computer Science, 2019
BS, University of Dhaka, Computer Science & Engineering, 2016