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Exploring Serverless Computing for Neural Network Training

机译:探索用于神经网络培训的无服务器计算

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Serverless or functions as a service runtimes have shown significant benefits to efficiency and cost for event-driven cloud applications. Although serverless runtimes are limited to applications requiring lightweight computation and memory, such as machine learning prediction and inference, they have shown improvements on these applications beyond other cloud runtimes. Training deep learning can be both compute and memory intensive. We investigate the use of serverless runtimes while leveraging data parallelism for large models, show the challenges and limitations due to the tightly coupled nature of such models, and propose modifications to the underlying runtime implementations that would mitigate them. For hyperparameter optimization of smaller deep learning models, we show that serverless runtimes can provide significant benefit.
机译:无服务器或作为服务运行时的功能在事件驱动的云应用程序的效率和成本方面已显示出显着优势。尽管无服务器运行时仅限于需要轻量级计算和内存的应用程序,例如机器学习预测和推理,但它们在这些应用程序方面已显示出超越其他云运行时的改进。训练深度学习可能需要大量的计算和内存。我们研究了无服务器运行时的使用,同时利用大型模型的数据并行性,显示了由于此类模型紧密耦合的性质而带来的挑战和局限性,并提出了对基础运行时实现的修改,以减轻它们的负担。对于较小的深度学习模型的超参数优化,我们证明了无服务器运行时可以提供显着的好处。

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