AI_SAFETY
EU Regulatory Changes
571 changes tracked across 24 compliance frameworks including DORA, NIS2, GDPR, EU AI Act, Cyber Resilience Act, and more.
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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
This paper, published on arXiv, reveals a significant privacy vulnerability in federated learning for large language models. It demonstrates that while federated learning is designed to protect dat...
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This paper, published on arXiv, introduces a new technical framework called Sovereign Execution Brokers, which proposes a method for enforcing certificate-bound authority in AI agentic control plan...
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This publication introduces a novel probabilistic verification framework for AI agents, designed to formally assess the safety and reliability of autonomous decision-making systems. The authors pro...
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A new research paper published on arXiv, titled "Calibration Without Comprehension: Diagnosing the Limits of Fine-Tuning LLMs for Vulnerability Detection in Systems Software," raises significant co...
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This publication introduces A-COMPASS, a formal mathematical framework for analyzing anonymity in microdata, which is detailed, individual-level data often used in research and analytics. The paper...
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arXiv: Analyzing Defensive Misdirection Against Model-Guided Automated Attacks on Agentic AI Systems
This paper, published on arXiv, presents a new analysis of defensive techniques against automated attacks on agentic AI systems—AI that can autonomously take actions. It specifically examines how "...
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This publication from arXiv presents a novel image encryption algorithm that integrates convolutional neural networks with dynamic S-box generation. While not a regulatory change itself, it signals...
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This paper, published on arXiv, presents a novel technical approach for classifying malware using large language models (LLMs) through a process called multi-view decompilation. Rather than a regul...
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This paper, published on arXiv, presents a new framework for evaluating the safety of large language model (LLM) agents, specifically focusing on "multi-turn red-teaming" and adversarial robustness...
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This publication introduces bioETH-Beacon, a technical framework for running genomic data queries on a blockchain while preserving patient confidentiality. It uses a fully homomorphic encryption sc...
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