PipeDream: Fast and Efficient Pipeline Parallel DNN Training
PipeDream is a Deep Neural Network(DNN) training system for GPUs that parallelizes computation by pipelining execution across multiple machines. Its pipeline parallel computing model avoids the slowdowns faced by data-parallel training when large models and/or limited network bandwidth induce high c...
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Zusammenfassung: | PipeDream is a Deep Neural Network(DNN) training system for GPUs that
parallelizes computation by pipelining execution across multiple machines. Its
pipeline parallel computing model avoids the slowdowns faced by data-parallel
training when large models and/or limited network bandwidth induce high
communication-to-computation ratios. PipeDream reduces communication by up to
95% for large DNNs relative to data-parallel training, and allows perfect
overlap of communication and computation. PipeDream keeps all available GPUs
productive by systematically partitioning DNN layers among them to balance work
and minimize communication, versions model parameters for backward pass
correctness, and schedules the forward and backward passes of different inputs
in round-robin fashion to optimize "time to target accuracy". Experiments with
five different DNNs on two different clusters show that PipeDream is up to 5x
faster in time-to-accuracy compared to data-parallel training. |
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DOI: | 10.48550/arxiv.1806.03377 |