EMA: Efficient Model Adaptation for Learning-based Systems
Daiyang Yu, Xinyu Chen, Yihan Zhang, Yan Liang, Yaqi Qiao, Fan Lai

TL;DR
EMA is a novel system that enables efficient adaptation of learning-based systems to dynamic environments, reducing training and labeling costs while improving performance.
Contribution
EMA introduces a system-driven, data-centric approach with state transformers and prioritized labeling to support environment adaptation with minimal overhead.
Findings
Reduces adaptation costs by up to 42.4%
Improves system performance by up to 31.3%
Supports diverse system and model designs
Abstract
Machine learning (ML) is increasingly applied to optimize system performance in tasks such as resource management and network simulation. Unlike traditional ML tasks (e.g., image classification), networked systems often operate in heterogeneous, long-running, and dynamic environment states, where input conditions (e.g., network loads) and operational objectives can shift over time and across settings. Existing learning-based systems offer little support for adaptation, resulting in costly model training, extensive data collection, degraded system performance, and slow responsiveness. This paper presents EMA, the first model adaptation system supporting learning-based systems to adapt to evolving environments with minimal operational overhead. EMA takes a system-driven, data-centric approach that accommodates diverse system and model designs while addressing two key deployment…
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