Oct. 12, 2022, 1:11 a.m. | Zhuorong Li, Daiwei Yu

cs.LG updates on arXiv.org arxiv.org

There has been a recent surge in single-step adversarial training as it shows
robustness and efficiency. However, a phenomenon referred to as ``catastrophic
overfitting" has been observed, which is prevalent in single-step defenses and
may frustrate attempts to use FGSM adversarial training. To address this issue,
we propose a novel method, Stable and Efficient Adversarial Training (SEAT),
which mitigates catastrophic overfitting by harnessing on local properties that
distinguish a robust model from that of a catastrophic overfitted model. The
proposed …

arxiv linearization training

Software Engineer for AI Training Data (School Specific)

@ G2i Inc | Remote

Software Engineer for AI Training Data (Python)

@ G2i Inc | Remote

Software Engineer for AI Training Data (Tier 2)

@ G2i Inc | Remote

Data Engineer

@ Lemon.io | Remote: Europe, LATAM, Canada, UK, Asia, Oceania

Artificial Intelligence – Bioinformatic Expert

@ University of Texas Medical Branch | Galveston, TX

Lead Developer (AI)

@ Cere Network | San Francisco, US