Sylvester Kaczmarek (Imperial College London)

Static defenses are brittle against the non-stationary threats common in long-duration space missions. We propose a framework for self-organizing resilience where a Spiking Neural Network (SNN) dynamically adapts its own structure to counter novel adversarial tactics. Governed by an informationtheoretic objective that balances representational fidelity against computational cost, the network autonomously grows or prunes neural populations to specialize against previously unseen threat signatures. We present preliminary results from a cislunar gateway case study where the adaptive SNN is subjected to a low-rate data injection attack designed to evade static detectors. The adaptive model successfully learned the new threat pattern, reducing per-window inference time by over 40% compared to its static counterpart, with no degradation in nominal performance. We provide explicit triggers, a two-stage commit with rollback, and an audit log, treating online adaptation as a security control bounded by runtime envelopes.

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Kangaroo: A Private and Amortized Inference Framework over WAN...

Wei Xu (Xidian University), Hui Zhu (Xidian University), Yandong Zheng (Xidian University), Song Bian (Beihang University), Ning Sun (Xidian University), Yuan Hao (Xidian University), Dengguo Feng (School of Cyber Science and Technology), Hui Li (Xidian University)

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Anota: Identifying Business Logic Vulnerabilities via Annotation-Based Sanitization

Meng Wang (CISPA Helmholtz Center for Information Security), Philipp Görz (CISPA Helmholtz Center for Information Security), Joschua Schilling (CISPA Helmholtz Center for Information Security), Keno Hassler (CISPA Helmholtz Center for Information Security), Liwei Guo (University of Electronic Science and Technology), Thorsten Holz (Max Planck Institute for Security and Privacy), Ali Abbasi (CISPA Helmholtz Center for…

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Fast Pointer Nullification for Use-After-Free Prevention

Yubo Du (University of Pittsburgh), Youtao Zhang (University of Pittsburgh), Jun Yang (University of Pittsburgh)

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