AOI: Turning Failed Trajectories into Training Signals for Autonomous Cloud Diagnosis

AOI is a secure, trainable multi-agent framework that automates Site Reliability Engineering by leveraging Group Relative Policy Optimization and a read-write separated architecture to distill expert knowledge into local models and convert failed trajectories into corrective signals, achieving state-of-the-art performance on the AIOpsLab benchmark while ensuring data privacy and safe execution.

Pei Yang, Wanyi Chen, Asuka Yuxi Zheng + 11 more2026-03-06💻 cs

Why Are Linear RNNs More Parallelizable?

This paper establishes a theoretical foundation for the superior parallelizability of linear RNNs by demonstrating that they correspond to log-depth arithmetic circuits (NC1\mathsf{NC}^1-complete), whereas nonlinear RNNs are fundamentally limited by their ability to solve L\mathsf{L}- and P\mathsf{P}-complete problems, thereby explaining why linear variants can be efficiently parallelized like transformers while traditional nonlinear RNNs cannot.

William Merrill, Hongjian Jiang, Yanhong Li + 2 more2026-03-06💻 cs

Lost in Translation: How Language Re-Aligns Vision for Cross-Species Pathology

This study demonstrates that introducing "Semantic Anchoring," a text-alignment mechanism, effectively resolves intrinsic embedding collapse and domain-locking in cross-species pathology models by using language as a stable coordinate system to re-align visual features, thereby significantly improving cancer detection performance across same-cancer, cross-cancer, and cross-species scenarios.

Ekansh Arora2026-03-06💻 cs

FedEMA-Distill: Exponential Moving Average Guided Knowledge Distillation for Robust Federated Learning

FedEMA-Distill is a robust and communication-efficient federated learning framework that leverages server-side exponential moving average smoothing and ensemble knowledge distillation from compressed client logits to achieve superior accuracy, faster convergence, and Byzantine resilience under non-IID data conditions without requiring client-side software modifications.

Hamza Reguieg, Mohamed El Kamili, Essaid Sabir2026-03-06💻 cs

Data-Driven Optimization of Multi-Generational Cellular Networks: A Performance Classification Framework for Strategic Infrastructure Management

This paper leverages a multi-generational cellular network dataset from OpenCelliD to analyze deployment patterns and utilization metrics, offering a strategic framework for Mobile Network Operators to optimize infrastructure, identify cost-saving opportunities, and guide targeted LTE upgrades in underserved regions.

Maryam Sabahat, M. Umar Khan2026-03-06💻 cs