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Projects
Training Secure and Robust DNNs
We explore novel methods for training robust Deep Neural Networks (DNNs) that are free from security violations.
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Improving trustworthiness and resilience of neural networks
This project, titled “Improving Trustworthiness and Resilience of Neural Networks through Robust Training and Safety Metrics” explores novel methods for training robust Deep Neural Networks (DNNs) that are free from security violations.
DNNs enable powerful machine learning applications, but how can we be sure they are secure and trustworthy? Our team is using advanced metric-informed training and certified adversarial training methods to address this question.
This work involves two tasks. The first is to improve strong data augmentation techniques to enhance the security and trustworthiness of neural networks in unknown environments. To accomplish this, we are developing novel data augmentation techniques based on interpolation and mixing with noise. By enhancing the security of neural networks with these new data augmentation methods, we can ensure that they perform optimally in unpredictable settings. Moreover, models can be entirely trained on virtual data points, created by the data augmentation methods, to drastically reduce the disclosure of sensitive information.
The second task focuses on developing new “safety metrics” that can predict and verify the safety and trustworthiness of neural networks. These metrics capture global and local aspects of DNNs, and are inspired by noise-response analysis, Hessian analysis for characterizing loss landscapes, and spectral analysis of weights. Our safety metrics also help to identify potential threats in training data.
Project Team
Associated ICSI Group
ICSI Research Team
Michael Mahoney
View BioMichael W. Mahoney, PhD, is Vice President, Principal Scientist, and Group Lead for the AI and Big Data group at ICSI.
Ben Erichson
View BioBen Erichson, PhD, is a Senior Research Scientist and Group Lead for Deep Learning at ICSI and Research Scientist at Lawrence Berkeley National Laboratory.
Serge Egelman
View BioSerge Egelman, PhD, is Senior Research Scientist and Group Lead for Usable Privacy and Security at ICSI, Research Scientist at UC Berkeley, and Co-founder and Chief Scientist of AppCensus, Inc.
Outcomes
Publications
- Wei, Zhipeng, Yuqi Liu, N. Benjamin Erichson. Emoji Attack: Enhancing Jailbreak Attacks Against Judge LLM Detection. In Forty-second International Conference on Machine Learning, 2025
About
Focus Areas
- Machine Learning (Supervised, Unsupervised, Reinforcement Learning)
Get in touch
Want to discuss opportunities to work with ICSI? We’d love to hear from you.
