A Tale of Two Systems: Characterizing Architectural Complexity on Machine Learning-Enabled Systems
A Tale of Two Systems: Characterizing Architectural Complexity on Machine Learning-Enabled Systems
How can the complexity of ML-enabled systems be managed effectively? The goal of this research is to investigate how complexity affects ML-Enabled Systems (MLES). To address this question, this research aims to introduce a metrics-based architectural model to characterize the complexity of MLES. The goal is to support architectural decisions, providing a guideline for the inception and growth of these systems. This paper brings, side-by-side, the architecture representation of two systems that can be used as case studies for creating the metrics-based architectural model: the SPIRA and the Ocean Guard MLES.
Renato Cordeiro Ferreira
University of S?o Paulo
计算技术、计算机技术
Renato Cordeiro Ferreira.A Tale of Two Systems: Characterizing Architectural Complexity on Machine Learning-Enabled Systems[EB/OL].(2025-06-12)[2025-06-27].https://arxiv.org/abs/2506.11295.点此复制
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