Defending against adversarial attacks is a challenge in deep learning. There are two approaches: limiting attack surface and making the model more robust. However, making the model smoother reduces performance. Current defenses are not highly effective. There is a fundamental trade-off between robustness and performance. Deploying non-robust models may become unwise due to risks. There is still much to learn about creating robust defenses. Exploiting the discrete nature of the task may offer hope. Overall, it is early in the research landscape of LLMs.

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