Publication | Open Access
Adaptive Gradient Quantization for Data-Parallel SGD
29
Citations
25
References
2020
Year
Convolutional Neural NetworkEngineeringMachine LearningData ScienceParallel LearningCompression SchemesParametric DistributionAdaptive Gradient QuantizationParallel ProgrammingComputer ScienceAdaptive Quantization SchemesLarge Scale OptimizationParallel ComputingDeep LearningNeural Architecture SearchQuantization (Signal Processing)Model CompressionComputer Vision
Many communication-efficient variants of SGD use gradient quantization schemes. These schemes are often heuristic and fixed over the course of training. We empirically observe that the statistics of gradients of deep models change during the training. Motivated by this observation, we introduce two adaptive quantization schemes, ALQ and AMQ. In both schemes, processors update their compression schemes in parallel by efficiently computing sufficient statistics of a parametric distribution. We improve the validation accuracy by almost 2% on CIFAR-10 and 1% on ImageNet in challenging low-cost communication setups. Our adaptive methods are also significantly more robust to the choice of hyperparameters.
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