Litcius/Paper detail

Harmony

Youjie Li, Amar Phanishayee, Derek Conrad Murray, Jakub Tarnawski, Nam Sung Kim

2022Proceedings of the VLDB Endowment18 citationsDOI

Abstract

Deep neural networks (DNNs) have grown exponentially in size over the past decade, leaving only those who have massive datacenter-based resources with the ability to develop and train such models. One of the main challenges for the long tail of researchers who might have only limited resources (e.g., a single multi-GPU server) is limited GPU memory capacity compared to model size. The problem is so acute that the memory requirement of training massive DNN models can often exceed the aggregate capacity of all available GPUs on a single server; this problem only gets worse with the trend of ever-growing model sizes. Current solutions that rely on virtualizing GPU memory (by swapping to/from CPU memory) incur excessive swapping overhead. In this paper, we present a new training framework, Harmony, and advocate rethinking how DNN frameworks schedule computation and move data to push the boundaries of training massive models efficiently on a single commodity server. Across various massive DNN models, Harmony is able to reduce swap load by up to two orders of magnitude and obtain a training throughput speedup of up to 7.6x over highly optimized baselines with virtualized memory.

Topics & Concepts

Computer scienceSpeedupParallel computingScheduleScheduling (production processes)Memory modelComputationDistributed computingComputer engineeringOperating systemShared memoryAlgorithmOperations managementEconomicsAdvanced Neural Network ApplicationsAdvanced Memory and Neural ComputingAdversarial Robustness in Machine Learning
Harmony | Litcius