A Five-Layer MLOps Architecture for Connected Automated Driving
Bastian Lampe, Lutz Eckstein

TL;DR
This paper proposes a five-layer MLOps architecture to enhance safety and performance assurance in connected automated driving systems through collective learning and self-assessment.
Contribution
It introduces a novel five-layer architecture based on MLOps principles for collective learning in ADSs, guiding design and implementation.
Findings
The architecture supports continuous safety and performance assurance.
It enables detection and reduction of rare and unforeseen edge cases.
Multi-level self-assessments improve system reliability.
Abstract
The continual assurance of safety and performance of automated driving systems (ADSs) poses significant challenges. ADSs operate in complex, dynamic, open-world environments allowing a wide range of scenarios, including ones that are rare or not foreseen during initial development. While the incorporation of artificial intelligence (AI) and machine learning (ML) technology allows ADSs to learn from data gathered during operation and thus enables them to adapt over time, these approaches come with their own challenges. A key advantage of ADSs compared to human drivers is their greater ability to gather data collectively across a fleet of vehicles, or even across multiple fleets operated by different entities, and to learn from this data collectively. Vehicles can share and combine their data to identify additional learning opportunities otherwise missed by individual vehicles. This…
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