Deep reinforcement learning for autonomous cyber operation
In comparison to other sectors, there has been minimal development in incorporating Artificial Intelligence into cyber security. Current AI technologies in the industry primarily include AIpowered detection systems and automation. This project will focus on the development, training, and challenges...
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2024
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sg-ntu-dr.10356-1751832024-04-26T15:42:27Z Deep reinforcement learning for autonomous cyber operation Yong, Hou Zhong Jun Zhao School of Computer Science and Engineering junzhao@ntu.edu.sg Computer and Information Science Deep reinforcement learning Autonomous cyber operation In comparison to other sectors, there has been minimal development in incorporating Artificial Intelligence into cyber security. Current AI technologies in the industry primarily include AIpowered detection systems and automation. This project will focus on the development, training, and challenges of creating an autonomous cyber operator that can replace humans and take action to defend the network from attackers. Inspired by Reinforcement Learning applications from other fields, such as DeepMind, I trained two Reinforcement Learning agents to protect a simulated network in the Cyber Operations Research Gym environment. The two agents use different popular algorithms: one uses Deep Q-Network, while the other uses Advantage Actor-Critic. Different experimental setups were used to evaluate the impact of reducing the initial large observation space. Experimental results from the three different setups show minimum difference in results, which means that reducing the observation space alone will not increase the training efficiency of the agents. Many other factors can affect the training results and will also be discussed in this report. Bachelor's degree 2024-04-19T12:24:33Z 2024-04-19T12:24:33Z 2024 Final Year Project (FYP) Yong, H. Z. (2024). Deep reinforcement learning for autonomous cyber operation. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175183 https://hdl.handle.net/10356/175183 en SCSE23-0281 application/pdf Nanyang Technological University |
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Computer and Information Science Deep reinforcement learning Autonomous cyber operation Yong, Hou Zhong Deep reinforcement learning for autonomous cyber operation |
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In comparison to other sectors, there has been minimal development in incorporating Artificial
Intelligence into cyber security. Current AI technologies in the industry primarily include AIpowered detection systems and automation. This project will focus on the development, training, and challenges of creating an autonomous cyber operator that can replace humans and take action to defend the network from attackers. Inspired by Reinforcement Learning applications from other fields, such as DeepMind, I trained two Reinforcement Learning agents to protect a simulated network in the Cyber Operations Research Gym environment. The two agents use different popular algorithms: one uses Deep Q-Network, while the other uses Advantage Actor-Critic. Different experimental setups were used to evaluate the impact of reducing the initial large observation space. Experimental results from the three different setups show minimum difference in results, which means that reducing the observation space alone will not increase the training efficiency of the agents. Many other factors can affect the training results and will also be discussed in this report. |
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Jun Zhao |
author_facet |
Jun Zhao Yong, Hou Zhong |
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Final Year Project |
author |
Yong, Hou Zhong |
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Yong, Hou Zhong |
title |
Deep reinforcement learning for autonomous cyber operation |
title_short |
Deep reinforcement learning for autonomous cyber operation |
title_full |
Deep reinforcement learning for autonomous cyber operation |
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Deep reinforcement learning for autonomous cyber operation |
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Deep reinforcement learning for autonomous cyber operation |
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deep reinforcement learning for autonomous cyber operation |
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Nanyang Technological University |
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2024 |
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https://hdl.handle.net/10356/175183 |
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