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The Case for Learning-and-System Co-design

机译:学习与系统协同设计案例

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While decision-makings in systems are commonly solved with explicit rules and heuristics, machine learning (ML) and deep learning (DL) have been driving a paradigm shift in modern system design. Based on our decade of experience in operationalizing a large production cloud system, Web Search, learning fills the gap in comprehending and taming the system design and operation complexity. However, rather than just improving specific ML/DL algorithms or system features, we posit that the key to unlocking the full potential of learning-augmented systems is a principled methodology promoting learning-and-system co-design. On this basis, we present the AutoSys, a common framework for the development of learning-augmented systems.
机译:虽然通常使用明确的规则和启发式方法解决系统中的决策问题,但机器学习(ML)和深度学习(DL)一直在推动现代系统设计的范式转变。基于我们在大型生产云系统(Web搜索)上投入运营的十年经验,学习填补了对系统设计和操作复杂性的理解和驯服的空白。但是,我们认为不仅仅是释放特定的ML / DL算法或系统功能,我们还认为释放学习增强型系统的全部潜力的关键是促进学习与系统协同设计的原则方法。在此基础上,我们介绍了AutoSys,这是用于开发学习型系统的通用框架。

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