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Abstract
The rapid evolution of cloud computing technologies and the increasing number
of cloud applications have provided numerous benefits in our daily lives.
However, the diversity and complexity of different components pose a
significant challenge to cloud security, especially when dealing with
sophisticated and advanced cyberattacks such as Denial of Service (DoS). Recent
advancements in the large language models (LLMs) offer promising solutions for
security intelligence. By exploiting the powerful capabilities in language
understanding, data analysis, task inference, action planning, and code
generation, we present LLM-PD, a novel defense architecture that proactively
mitigates various DoS threats in cloud networks. LLM-PD can efficiently make
decisions through comprehensive data analysis and sequential reasoning, as well
as dynamically create and deploy actionable defense mechanisms. Furthermore, it
can flexibly self-evolve based on experience learned from previous interactions
and adapt to new attack scenarios without additional training. Our case study
on three distinct DoS attacks demonstrates its remarkable ability in terms of
defense effectiveness and efficiency when compared with other existing methods.