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All Changes

EU Regulatory Changes

1656 changes tracked across 24 compliance frameworks including DORA, NIS2, GDPR, EU AI Act, Cyber Resilience Act, and more.

All DORA NIS2 GDPR CSRD MaRisk ISO27001 EU_AI_ACT CRA DSA DMA eIDAS2 SOC2 PCI_DSS HIPAA ISO42001 AMLD6 PSD3 DATA_ACT GPSR CER EUDR CVE BREACH AI_SAFETY
arXiv: Giskard : Byzantine Robust and Confidential Aggregation for Large-Scale Decentralized Learning
This paper, published on arXiv, introduces Giskard, a new cryptographic protocol designed to secure large-scale decentralized machine learning systems. It addresses two critical vulnerabilities: By...
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arXiv: Quantifying Compromise Risk in Exceptional Access Architectures Under Sparse and Indirect Evidence
This paper, published on arXiv, introduces a novel quantitative framework for assessing the risk of compromise in exceptional access architectures, which are systems that allow law enforcement or o...
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arXiv: Compute-Budgeted Exploitability Evidence Graphs for Prospective Vulnerability Triage
This publication introduces a novel framework called Compute-Budgeted Exploitability Evidence Graphs, designed to improve how organizations prioritize software vulnerabilities based on their real-w...
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arXiv: PYPILINE: Malicious PyPI Package Detection via Suspicious API Knowledge and Agent Workflow
This publication introduces a new technical framework, PYPILINE, designed to detect malicious packages in the Python Package Index (PyPI) by analyzing suspicious API calls and employing an automate...
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arXiv: CHERI-D: Secure and efficient inline object ID for CHERI temporal memory safety
This publication from arXiv presents a technical proposal called CHERI-D, which introduces a method for improving temporal memory safety in CHERI-based hardware architectures. CHERI is a capability...
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arXiv: Lifecycle-Aware Dynamic Analysis for Secure ML Model Execution
This publication introduces a technical framework for lifecycle-aware dynamic analysis of machine learning models, aimed at detecting and mitigating security vulnerabilities during execution. The a...
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arXiv: TRAP: Benchmark for Task-completion and Resistance to Active Privacy-extraction
arXiv: A Composable CRDT Layer for Byzantine-Resilient Deterministic Reconstruction
arXiv: Structured lattices and their applications to security
arXiv: A Predictive Neural Network Architecture for Early Detection of Low-Rate Cyberattacks
arXiv: Image Prompt Reconstruction Attacks on Distributed MLLM Inference Frameworks
arXiv: Stealthy World Model Manipulation via Data Poisoning
arXiv: Understanding and Mitigating Prompt Leaking Attacks in Real-World LLM-Based Applications
arXiv: TGCM: Topic-Guided Generative Disentanglement of Interleaved APT Technique Sequences
arXiv: Code-Augur: Agentic Vulnerability Detection via Specification Inference
arXiv: MIDS: Detecting Stealthy Masquerade and Tampering Attacks on CAN Bus via Bidirectional Mamba
arXiv: The Gate Is Only as Honest as Its Contracts: ContractGuard for the Contract Layer of Risk-Aware Causal Gating
arXiv: Confident yet Concerned: Inconsistencies in Computing Students' Attitudes on Cybersecurity
arXiv: AI Sandboxes: A Threat Model, Taxonomy, and Measurement Framework
arXiv: Evaluating Prompting-Based Defenses Against Domain-Camouflaged Injection Attacks