Research

My research explores how adaptive interfaces can reduce cognitive load for users across different ability levels. I lead the Adaptive Interfaces Lab at ETH Zürich, where our team of twelve researchers investigates real-time UI adaptation, gaze-driven interaction, and personalized information architecture.

Current projects include a system that dynamically adjusts interface complexity based on physiological stress indicators, and a framework for generating accessible alternatives to complex data visualizations.

Selected Publications

  • "Adaptive Complexity Reduction in Data-Dense Interfaces" — CHI 2026, Best Paper Award
  • "Gaze-Contingent UI Simplification for Cognitive Accessibility" — UIST 2025
  • "Beyond WCAG: Personalized Accessibility Through Real-Time Adaptation" — ASSETS 2025
  • "Measuring Cognitive Load in Enterprise Software" — IEEE TVCG, 2024

Teaching

I teach graduate courses on human-computer interaction and accessible design. My teaching philosophy centers on project-based learning — students work with real users and real constraints from day one.

Courses I currently teach:

  1. Advanced HCI — Research methods, prototyping, and evaluation
  2. Accessible Computing — Principles, standards, and emerging approaches
  3. Design Studio — Intensive hands-on design-build course with industry partners

The best interfaces don't just accommodate different users — they learn from them and evolve to meet them where they are.

Awards & Recognition

My work has been recognized with a CHI Best Paper Award (2026), an NSF CAREER Award (2024), and the ACM SIGCHI Outstanding Dissertation Award (2021). I serve on the program committees of CHI, UIST, and ASSETS.

Contact

I'm always interested in collaborations at the intersection of accessibility, adaptive systems, and real-world deployment. Reach out via email or connect with me on any of the platforms listed in the sidebar.