Towards A Modular End-To-End Machine Learning Benchmarking Framework

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Abstract

Machine learning (ML) benchmarks are crucial for evaluating the performance, efficiency, and scalability of ML systems, especially as the adoption of complex ML pipelines, such as retrieval-augmented generation (RAG), continues to grow. These pipelines introduce intricate execution graphs that require more advanced benchmarking approaches. Additionally, collocating workloads can improve resource efficiency but may introduce contention challenges that must be carefully managed. Detailed insights into resource utilization are necessary for effective collocation and optimized edge deployments. However, existing benchmarking frameworks often fail to capture these critical aspects.We introduce a modular end-to-end ML benchmarking framework designed to address these gaps. Our framework emphasizes modularity and reusability by enabling reusable pipeline stages, facilitating flexible benchmarking across diverse ML workflows. It supports complex workloads and measures their end-to-end performance. The workloads can be collocated, with the framework providing insights into resource utilization and contention between the concurrent workloads.
OriginalsprogEngelsk
TidsskriftTDIS '25
Sider (fra-til)23–26
Antal sider4
DOI
StatusUdgivet - 30 mar. 2025
Begivenhed3rd International Workshop on Testing Distributed Internet of Things
Systems (TDIS ’25)
- Rotterdam, Netherlands, Rotterdam, Holland
Varighed: 30 mar. 20253 apr. 2025
https://dl.acm.org/doi/pdf/10.1145/3719159.3721223

Workshop

Workshop3rd International Workshop on Testing Distributed Internet of Things
Systems (TDIS ’25)
LokationRotterdam, Netherlands
Land/OmrådeHolland
ByRotterdam
Periode30/03/202503/04/2025
Internetadresse

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