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交付高性能人工智能解决方案.pdf

上传人: 王** 编号:171093 2024-07-23 20页 1.60MB

1、Alex RamirezPlatforms performance Google DeepMindDelivering performant AI solutionsLarger ML models are better but larger models require more compute performanceDelivering more and more compute performance means deliver more accelerators which consume more power and do it fast!Compute capacity is ke

2、y to delivering the next wave of AI innovationsMaking the best use of the available compute resources mattersMake forward progress in the presence of more frequent failuresDistribute the compute budget:Model size vs.Training examplesScaling performance to the full system:Mapping the ML model to the

3、systemIn this presentation“To train the best model we can”that is not the same as“To train the largest ML model we can”but we will still take the best model,and make it as large as we canLarger models are better1960198020002020Deep Learning EraLarge Model EraTraining compute(FLOPs)Pre Deep Learning

4、EraImage source:Compute trends across three eras of machine learning.Jaime Sevilla et al.Performance demand grows faster than accelerator performanceThe number of accelerators per system is steadily increasingIncreasing number of acceleratorsTimeTimeDennard scaling is over More devices means more po

5、werProvisioning for that increasing number of accelerators becomes a critical part of performance deliveryMore accelerators means more powerNumber of devicesNumber of devicesTimeTimePower per devicePower per deviceTotal powerTotal powerDemand for higher compute performanceRequires larger systemsWith

6、 more accelerators which take more powerTwo options,both of them are challenging(and not exclusive):a)Keep constant power density Larger systems that need more spaceb)Increase power density Cooling and power delivery challengesPower provisioning becomes criticalDelivering more performance matters bu

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本文探讨了在人工智能领域,计算能力的重要性以及面临的挑战。随着机器学习模型的增大,对计算性能的需求也在增加。更大的模型需要更多的计算能力和加速器,这会导致功耗的增加和散热、供电等问题。因此,设计系统时需要优化性能,同时保证系统的可靠性和可部署性。在固定计算预算下,可以选择训练更大的模型或使用更多的训练数据。作者以Chinchilla和Gopher模型为例,说明了在相同计算预算下,选择合适模型参数和训练数据的重要性。此外,文章还讨论了并行计算的不同维度,如数据并行、模型并行和管道并行,以及它们在系统中的优化应用。最后,作者强调了在提供更多计算能力的同时,也需要关注系统的可靠性和可用性。
"如何平衡大型模型训练与计算性能需求?" "在有限计算预算下,如何选择模型大小和训练数据量?" "如何优化AI模型训练以适应不同规模的计算系统?"
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