
Vedant Nanda
Graduate student @ University of Maryland
evaluation
pruning
bias
fairness
optimization
quantization
matching
llm
peai: safety
robustness & trustworthiness
hai: other foundations of humans & ai
ml: evaluation and analysis (machine learning)
2
presentations
SHORT BIO
Vedant is a PhD student in the Computer Science Department at the University of Maryland, College Park and the Max Planck Institute for Software Systems (MPI-SWS), where he is part of the Maryland-Max Planck joint program. His research focuses on Trustworthy Machine Learning, and he has published on topics such as counterfactual explanations (ICML2019), fairness in image classification models (FAccT2021), and fairness issues in rideshare platforms (AAAI2020, AAAI2023). More recently, he has explored the invariances in deep neural networks (ICML2022, AAAI2023).
Presentations

Rawlsian Fairness in Online Bipartite Matching: Two-sided, Group, and Individual
Seyed Esmaeili and 5 other authors

Do Invariances in Deep Neural Networks Align with Human Perception?
Vedant Nanda and 6 other authors