Title
Varuna: scalable, low-cost training of massive deep learning models
Abstract
ABSTRACTSystems for training massive deep learning models (billions of parameters) today assume and require specialized "hyperclusters": hundreds or thousands of GPUs wired with specialized high-bandwidth interconnects such as NV-Link and Infiniband. Besides being expensive, such dependence on hyperclusters and custom high-speed inter-connects limits the size of such clusters, creating (a) scalability limits on job parallelism; (b) resource fragmentation across hyperclusters. In this paper, we present Varuna a new system that enables training massive deep learning models on commodity networking. Varuna makes thrifty use of networking resources and automatically configures the user's training job to efficiently use any given set of resources. Therefore, Varuna is able to leverage "low-priority" VMs that cost about 5x cheaper than dedicated GPUs, thus significantly reducing the cost of training massive models. We demonstrate the efficacy of Varuna by training massive models, including a 200 billion parameter model, on 5x cheaper "spot VMs", while maintaining high training throughput. Varuna improves end-to-end training time for language models like BERT and GPT-2 by up to 18x compared to other model-parallel approaches and up to 26% compared to other pipeline parallel approaches on commodity VMs. The code for Varuna is available at https://github.com/microsoft/varuna.
Year
DOI
Venue
2022
10.1145/3492321.3519584
European Conference on Computer Systems
DocType
Citations 
PageRank 
Conference
1
0.36
References 
Authors
0
5
Name
Order
Citations
PageRank
Sanjith Athlur110.36
Nitika Saran210.36
Muthian Sivathanu310.36
R. Ramjee43180299.73
Nipun Kwatra5132.22