Where Do Flow Semantics Reside? A Protocol-Native Tabular Pretraining Paradigm for Encrypted Traffic Classification

This paper addresses the failure of byte-sequence-based masked modeling in encrypted traffic classification by identifying a mismatch in inductive bias and proposing FlowSem-MAE, a protocol-native tabular masked autoencoder that leverages field-specific semantics and temporal patterns to significantly outperform existing methods with substantially less labeled data.

Sizhe Huang, Shujie Yang2026-03-12🤖 cs.AI

SBOMs into Agentic AIBOMs: Schema Extensions, Agentic Orchestration, and Reproducibility Evaluation

This paper introduces Agentic AIBOMs, a multi-agent framework that extends static Software Bills of Materials (SBOMs) with autonomous, policy-constrained reasoning to dynamically capture runtime behavior and environmental drift, thereby enhancing supply-chain security through reproducible, context-aware vulnerability assessment and minimal schema extensions to existing standards.

Petar Radanliev, Carsten Maple, Omar Santos, Kayvan Atefi2026-03-12🤖 cs.AI

Multi-Agent Memory from a Computer Architecture Perspective: Visions and Challenges Ahead

This position paper reframes multi-agent memory as a computer architecture challenge by proposing a three-layer hierarchy and identifying critical protocol gaps, with a specific focus on resolving multi-agent memory consistency as the primary obstacle to building reliable and scalable collaborative systems.

Zhongming Yu, Naicheng Yu, Hejia Zhang, Wentao Ni, Mingrui Yin, Jiaying Yang, Yujie Zhao, Jishen Zhao2026-03-12🤖 cs.AI

Execution Is the New Attack Surface: Survivability-Aware Agentic Crypto Trading with OpenClaw-Style Local Executors

This paper proposes Survivability-Aware Execution (SAE), a middleware framework for OpenClaw-style agentic crypto trading systems that enforces non-bypassable invariants like exposure budgets and order-rate limits to mitigate execution-induced losses from untrusted prompts or compromised skills, demonstrating significant reductions in maximum drawdown and risk metrics through offline replay testing.

Ailiya Borjigin, Igor Stadnyk, Ben Bilski, Serhii Hovorov, Sofiia Pidturkina2026-03-12🤖 cs.AI

Equivariant Asynchronous Diffusion: An Adaptive Denoising Schedule for Accelerated Molecular Conformation Generation

This paper introduces Equivariant Asynchronous Diffusion (EAD), a novel model that combines the strengths of auto-regressive and synchronous approaches through an adaptive denoising schedule to effectively capture molecular hierarchy and achieve state-of-the-art 3D molecular conformation generation.

Junyi An, Chao Qu, Yun-Fei Shi, Zhijian Zhou, Fenglei Cao, Yuan Qi2026-03-12🧬 q-bio