Latest research in robust machine learning, including adversarial/backdoor attack and defense, out-of-distribution (OOD) generalization, and safe transfer learning.
Hosted projects:
SpecFormer (ECCV 2024, #Adversarial Robustness)
NMtune (ICLR 2024, #Generalization, #OOD)
RiFT (ICCV 2023, #Adversarial Robustness, #Generalization, #OOD)
Diversify (ICLR 2023, #OOD):
DRM (KDD 2023, #OOD):
DDLearn (KDD 2023, #OOD):
SDMix (IMWUT 2022, #OOD):
MARC (ACML 2022, #Long-tail):
FedCLIP (IEEE Data Engineering Bulletin 2023, #OOD #LargeModel):
ChatGPT robustness (arXiv 2023, #OOD #Adversarial #LargeModel):
Stay tuned for more upcoming projects!
You can clone or download this repo. Then, go to the project folder that you are interested to run and develop your research.
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