Enwar 3.0: An Agentic Multi-Modal LLM Orchestrator for Situation-Aware Beamforming, Blockage Prediction, and Handover Management
Ahmad M. Nazar, Abdulkadir Celik, Asmaa Abdallah, Mohamed Y. Selim, Daji Qiao, and Ahmed M. Eltawil

TL;DR
Enwar 3.0 introduces an environment-aware framework combining multi-modal sensing, agentic LLMs, and context-driven model selection to enhance millimeter-wave vehicular connectivity through predictive beamforming, blockage detection, and handover management.
Contribution
It presents a novel architecture integrating sensor health assessment, synthetic degradation training, and LLM orchestration for real-time adaptive wireless communication.
Findings
Sensor degradation classifier achieves over 99% accuracy.
Beam selection accuracy exceeds 88%.
Blockage detection F1-score surpasses 98%.
Abstract
Maintaining robust millimeter-wave (mmWave) connectivity in vehicular networks requires real-time adaptation to environmental dynamics, sensor degradation, and link variability. This paper presents Enwar 3.0, an environment-aware reasoning framework that unifies multi-modal sensing, agentic large language models (LLMs), and context-driven model selection for predictive beamforming, blockage detection, and handover management. Building upon prior iterations of Enwar, the proposed architecture integrates a classifier-driven assessment of sensor health with a primed LLM that orchestrates multiple specialized agents through structured, task-aware prompting. A novel synthetic degradation pipeline enables the training of a sensor degradation classifier that detects real-time impairments across camera, radar, LiDAR, and GPS inputs, achieving over 99% accuracy. The LLM, trained via…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
