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class:gradsec2026 [2026/05/17 08:55] jhj2004 [Agenda] |
class:gradsec2026 [2026/06/15 11:25] (current) hanwoo [Agenda] |
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| | ::: | Jo | [[https://www.usenix.org/system/files/sec21-schuster.pdf|You autocomplete me: Poisoning vulnerabilities in neural code completion]] | {{ :class:인공지능보안_03_11_조현준.pptx |}} | | | | ::: | Jo | [[https://www.usenix.org/system/files/sec21-schuster.pdf|You autocomplete me: Poisoning vulnerabilities in neural code completion]] | {{ :class:인공지능보안_03_11_조현준.pptx |}} | | | ||
| | 3/18 | Minho | | | | | | 3/18 | Minho | | | | | ||
| - | | ::: | Han | [[https://arxiv.org/pdf/2102.07995.pdf|D2a: A dataset built for ai-based vulnerability detection methods using differential analysis]] | {{ :class:d2a.pptx |}} | | | | + | | ::: | Han | [[https://arxiv.org/pdf/2102.07995.pdf|D2a: A dataset built for ai-based vulnerability detection methods using differential analysis]] | {{ :class:d2a.pptx |}} | | |
| | 3/27 | Minho | | | | | | 3/27 | Minho | | | | | ||
| | ::: | Kwak| [[https://www.mdpi.com/1424-8220/23/9/4403/pdf|A Deep Learning-Based Innovative Technique for Phishing Detection with URLs]] | {{ :class:현대_보안에서_url을_이용한_피싱_탐지를_위한_딥러닝_기반_혁신_기법.pdf |}} | | | | ::: | Kwak| [[https://www.mdpi.com/1424-8220/23/9/4403/pdf|A Deep Learning-Based Innovative Technique for Phishing Detection with URLs]] | {{ :class:현대_보안에서_url을_이용한_피싱_탐지를_위한_딥러닝_기반_혁신_기법.pdf |}} | | | ||
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| Learning for Malware Detection in Executables]] |{{ :class:dl_for_malware_detection_in_ex_인공지능보안_조현준.pptx |}} | | | Learning for Malware Detection in Executables]] |{{ :class:dl_for_malware_detection_in_ex_인공지능보안_조현준.pptx |}} | | | ||
| | 4/15 | Han | [[https://arxiv.org/pdf/1904.12843|Adversarial Training for Free!]] |{{ :class:adversarial_training_for_free_.pdf |}} | | | | 4/15 | Han | [[https://arxiv.org/pdf/1904.12843|Adversarial Training for Free!]] |{{ :class:adversarial_training_for_free_.pdf |}} | | | ||
| - | | ::: | Minho | LLM | {{ :class:ai-introduction.pdf |}} | | + | | ::: | Minho | LLM | {{ :class:ai-introduction.pdf |}} | | |
| | 4/24 | No class | | | | | | 4/24 | No class | | | | | ||
| | 4/29 | Kwak | Deep reinforcement learning for time series:playing idealized trading games |{{ :class:시계열_데이터를_이용한_강화학습_기반_이상화된_트레이딩_.pdf |}} | | | | 4/29 | Kwak | Deep reinforcement learning for time series:playing idealized trading games |{{ :class:시계열_데이터를_이용한_강화학습_기반_이상화된_트레이딩_.pdf |}} | | | ||
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| | 5/13 | Han | [[https://arxiv.org/pdf/2004.04692 |RETHINKING THE TRIGGER OF BACKDOOR ATTACK]] | {{ :class:rethinking_the_trigger_of_backdoor_attack.pdf |rethinking_the_trigger_of_backdoor_attack}} | | | | 5/13 | Han | [[https://arxiv.org/pdf/2004.04692 |RETHINKING THE TRIGGER OF BACKDOOR ATTACK]] | {{ :class:rethinking_the_trigger_of_backdoor_attack.pdf |rethinking_the_trigger_of_backdoor_attack}} | | | ||
| | ::: | Kwak | [[https://arxiv.org/pdf/1910.00033 |Hidden Trigger Backdoor Attacks]] | {{ :class:hidden_trigger_backdoor_attacks.pdf |}} | | | | ::: | Kwak | [[https://arxiv.org/pdf/1910.00033 |Hidden Trigger Backdoor Attacks]] | {{ :class:hidden_trigger_backdoor_attacks.pdf |}} | | | ||
| - | | 5/20 | Kwak | | | | | + | | 5/20 | Kwak | [[https://arxiv.org/pdf/2012.07805 |Extracting Training Data from Large Language Models]] | {{ :class:extracting_training_data_from_large_language_models_2_.pdf|pdf}} | | |
| - | | ::: | Jo | [[https://www.ndss-symposium.org/wp-content/uploads/2026-f797-paper.pdf]] | | | | + | | ::: | Jo | [[https://www.ndss-symposium.org/wp-content/uploads/2026-f797-paper.pdf]] |{{ :class:발표자료_조현준.pptx |}}| | |
| | 5/27 | Jo | | | | | | 5/27 | Jo | | | | | ||
| - | | ::: | Han | | | | | + | | ::: | Han | [[https://arxiv.org/pdf/2307.02483.pdf|Jailbroken-How Does LLM Safety Training Fail]] | {{ :class:jailbroken-how_does_llm_safety_training_fail.pdf |발표자료}} | | |
| - | | 6/5 | Kwak | | | | | + | | 6/5 | Kwak | [[https://arxiv.org/pdf/2010.08138.pdf|Input-Aware Dynamic Backdoor Attack ]] | {{ :class:input-aware_dynamic_backdoor_attack.pdf |}} | | |
| | 6/10 | No Class | | | | | | 6/10 | No Class | | | | | ||
| ====== Class Information ====== | ====== Class Information ====== | ||
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| ==== C4. LLM Security & Jailbreaking ==== | ==== C4. LLM Security & Jailbreaking ==== | ||
| - | - **Jailbroken: How Does LLM Safety Training Fail?** | + | - <fc red>(Han)</fc> **Jailbroken: How Does LLM Safety Training Fail?** |
| * Alexander Wei et al., NeurIPS 2023 | Pages: 34 | Difficulty: 3/5 | * Alexander Wei et al., NeurIPS 2023 | Pages: 34 | Difficulty: 3/5 | ||
| * Abstract: Analyzes why safety training in LLMs can be circumvented through jailbreaking. Identifies two fundamental failure modes: competing objectives during training and mismatched generalization between safety and capabilities. Provides theoretical framework for understanding jailbreak vulnerabilities and suggests that current alignment approaches have inherent limitations. | * Abstract: Analyzes why safety training in LLMs can be circumvented through jailbreaking. Identifies two fundamental failure modes: competing objectives during training and mismatched generalization between safety and capabilities. Provides theoretical framework for understanding jailbreak vulnerabilities and suggests that current alignment approaches have inherent limitations. | ||