RED: A Systematic Real-Time Scheduling Approach for Robotic Environmental Dynamics
Zexin Li, Tao Ren, Xiaoxi He, Cong Liu

TL;DR
RED is a real-time scheduling system that adaptively manages multi-task neural network workloads in robots navigating unpredictable environments, ensuring efficiency and adherence to strict timing constraints.
Contribution
It introduces a deadline-based scheduler with an intermediate deadline policy tailored for dynamic, multi-task neural workloads in resource-limited robotic systems.
Findings
Effective workload management in dynamic environments
Supports multi-input multi-output neural networks efficiently
Maintains real-time performance under environmental changes
Abstract
Intelligent robots are designed to effectively navigate dynamic and unpredictable environments laden with moving mechanical elements and objects. Such environment-induced dynamics, including moving obstacles, can readily alter the computational demand (e.g., the creation of new tasks) and the structure of workloads (e.g., precedence constraints among tasks) during runtime, thereby adversely affecting overall system performance. This challenge is amplified when multi-task inference is expected on robots operating under stringent resource and real-time constraints. To address such a challenge, we introduce RED, a systematic real-time scheduling approach designed to support multi-task deep neural network workloads in resource-limited robotic systems. It is designed to adaptively manage the Robotic Environmental Dynamics (RED) while adhering to real-time constraints. At the core of RED lies…
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.
Taxonomy
TopicsReal-Time Systems Scheduling · Advanced Neural Network Applications · Context-Aware Activity Recognition Systems
