Cloudless-Training proposes a two-layer serverless framework with elastic scheduling and two new synchronization strategies (ASGD-GA and inter-PS model averaging) that reports 9.2-24% cost reduction and up to 1.7x speedup for geo-distributed PS-based ML training.
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Cloudless-Training: A Framework to Improve Efficiency of Geo-Distributed ML Training
Cloudless-Training proposes a two-layer serverless framework with elastic scheduling and two new synchronization strategies (ASGD-GA and inter-PS model averaging) that reports 9.2-24% cost reduction and up to 1.7x speedup for geo-distributed PS-based ML training.