HetSched: Quality-of-Mission Aware Scheduling for Autonomous Vehicle SoCs

03/25/2022
by   Aporva Amarnath, et al.
0

Systems-on-Chips (SoCs) that power autonomous vehicles (AVs) must meet stringent performance and safety requirements prior to deployment. With increasing complexity in AV applications, the system needs to meet these real-time demands of multiple safety-critical applications simultaneously. A typical AV-SoC is a heterogeneous multiprocessor consisting of accelerators supported by general-purpose cores. Such heterogeneity, while needed for power-performance efficiency, complicates the art of task scheduling. In this paper, we demonstrate that hardware heterogeneity impacts the scheduler's effectiveness and that optimizing for only the real-time aspect of applications is not sufficient in AVs. Therefore, a more holistic approach is required – one that considers global Quality-of-Mission (QoM) metrics, as defined in the paper. We then propose HetSched, a multi-step scheduler that leverages dynamic runtime information about the underlying heterogeneous hardware platform, along with the applications' real-time constraints and the task traffic in the system to optimize overall mission performance. HetSched proposes two scheduling policies: MSstat and MSdyn and scheduling optimizations like task pruning, hybrid heterogeneous ranking and rank update. HetSched improves overall mission performance on average by 4.6x, 2.6x and 2.6x when compared against CPATH, ADS and 2lvl-EDF (state-of-the-art real-time schedulers built for heterogeneous systems), respectively, and achieves an average of 53.3 real-world applications of autonomous vehicles. Furthermore, when used as part of an SoC design space exploration loop, in comparison to prior schedulers, HetSched reduces the number of processing elements required by an SoC to safely complete AV's missions by 35 energy-mission time product.

READ FULL TEXT

page 1

page 2

page 11

research
08/31/2021

Building Time-Triggered Schedules for typed-DAG Tasks with alternative implementations

Hard real-time systems like image processing, autonomous driving, etc. r...
research
06/29/2019

HTS: A Hardware Task Scheduler for Heterogeneous Systems

As the Moore's scaling era comes to an end, application specific hardwar...
research
08/20/2020

Heterogeneity-Aware Cluster Scheduling Policies for Deep Learning Workloads

Specialized accelerators such as GPUs, TPUs, FPGAs, and custom ASICs hav...
research
11/08/2021

Safety Validation of Autonomous Vehicles using Assertion-based Oracles

Safety and mission performance validation of autonomous vehicles is a ma...
research
08/02/2021

YASMIN: a Real-time Middleware for COTS Heterogeneous Platforms

Commercial-Off-The-Shelf heterogeneous platforms provide immense computa...
research
11/01/2018

Improving the Modularity of AUV Control Systems using Behaviour Trees

In this paper, we show how behaviour trees (BTs) can be used to design m...
research
08/30/2021

RoboRun: A Robot Runtime to Exploit Spatial Heterogeneity

The limited onboard energy of autonomous mobile robots poses a tremendou...

Please sign up or login with your details

Forgot password? Click here to reset