NASimEmu: Network Attack Simulator & Emulator for Training Agents Generalizing to Novel Scenarios


연구 분야: Strategies



학회: European Symposium on Research in Computer Security


초록

Current frameworks for training offensive penetration testing agents with deep reinforcement learning struggle to produce agents that perform well in real-world scenarios, due to the reality gap in simulation-based frameworks and the lack of scalability in emulation-based frameworks. Additionally, existing frameworks often use an unrealistic metric that measures the agents’ performance on the training data. NASimEmu, a new framework introduced in this paper, addresses these issues by providing both a simulator and an emulator with a shared interface. This approach allows agents to be trained in simulation and deployed in the emulator, thus verifying the realism of the used abstraction. Our framework promotes the development of general agents that can transfer to novel scenarios unseen during their training. For the simulation part, we adopt an existing simulator NASim and enhance its realism. The emulator is implemented with industry-level tools, such as Vagrant, VirtualBox, and Metasploit. Experiments demonstrate that a simulation-trained agent can be deployed in emulation, and we show how to use the framework to train a general agent that transfers into novel, structurally different scenarios. NASimEmu is available as open-source.


Author Profile
Jaromír Janisch

Artificial Intelligence Center Department of Computer Science Faculty of Electrical Engineering Czech Technical University in Prague Prague Czech Republic

Czech Republic
Author Profile
Tomáš Pevný

Artificial Intelligence Center Department of Computer Science Faculty of Electrical Engineering Czech Technical University in Prague Prague Czech Republic

Czech Republic
Author Profile
Viliam Lisý

Artificial Intelligence Center Department of Computer Science Faculty of Electrical Engineering Czech Technical University in Prague Prague Czech Republic

Czech Republic

📄 논문 정보

발행 연도 2024년
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출판 국가 Czech Republic
사이트 Springer
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