Characterizing I/O in Machine Learning with MLPerf Storage

Oana Balmau
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Abstract

Data is the driving force behind machine learning (ML) algorithms. The way we ingest, store, and serve data can impact the performance of end-to-end training and inference significantly [11]. However, efficient storage and pre-processing of training data has received far less focus in ML compared to efforts in building specialized software frameworks and hardware accelerators. The amount of data that we produce is growing exponentially, making it expensive and difficult to keep entire training datasets in main memory. Increasingly, ML algorithms will need to access data from persistent storage in an efficient way.
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用MLPerf Storage表征机器学习中的I/O
数据是机器学习算法背后的驱动力。我们摄取、存储和提供数据的方式会显著影响端到端训练和推理的性能[11]。然而,与构建专门的软件框架和硬件加速器相比,高效存储和预处理训练数据在ML中受到的关注要少得多。我们产生的数据量呈指数级增长,这使得将整个训练数据集保存在主内存中变得昂贵和困难。ML算法将越来越需要以有效的方式从持久存储中访问数据。
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