LGAug 28, 2023Code
Edge Generation Scheduling for DAG Tasks Using Deep Reinforcement LearningBinqi Sun, Mirco Theile, Ziyuan Qin et al.
Directed acyclic graph (DAG) tasks are currently adopted in the real-time domain to model complex applications from the automotive, avionics, and industrial domains that implement their functionalities through chains of intercommunicating tasks. This paper studies the problem of scheduling real-time DAG tasks by presenting a novel schedulability test based on the concept of trivial schedulability. Using this schedulability test, we propose a new DAG scheduling framework (edge generation scheduling -- EGS) that attempts to minimize the DAG width by iteratively generating edges while guaranteeing the deadline constraint. We study how to efficiently solve the problem of generating edges by developing a deep reinforcement learning algorithm combined with a graph representation neural network to learn an efficient edge generation policy for EGS. We evaluate the effectiveness of the proposed algorithm by comparing it with state-of-the-art DAG scheduling heuristics and an optimal mixed-integer linear programming baseline. Experimental results show that the proposed algorithm outperforms the state-of-the-art by requiring fewer processors to schedule the same DAG tasks. The code is available at https://github.com/binqi-sun/egs.
59.7PFMar 18
ETM2: Empowering Traditional Memory Bandwidth Regulation using ETMAlexander Zuepke, Ashutosh Pradhan, Daniele Ottaviano et al.
The Embedded Trace Macrocell (ETM) is a standard component of Arm's CoreSight architecture, present in a wide range of platforms and primarily designed for tracing and debugging. In this work, we demonstrate that it can be repurposed to implement a novel hardware-assisted memory bandwidth regulator, providing a portable and effective solution to mitigate memory interference in real-time multicore systems. ETM2 requires minimal software intervention and bridges the gap between the fine-grained microsecond resolution of MemPol and the portability and reaction time of interrupt-based solutions, such as MemGuard. We assess the effectiveness and portability of our design with an evaluation on a large number of 64-bit Arm boards, and we compare ETM2 with previous works using a setup based on the San Diego Vision Benchmark Suite on the AMD Zynq UltraScale+. Our results show the scalability of the approach and highlight the design trade-offs it enables. ETM2 is effective in enforcing per-core memory bandwidth regulation and unlocks new regulation options that were infeasible under MemGuard and MemPol.