3LC: Lightweight and Effective Traffic Compression for Distributed Machine Learning
February 21, 2018 ยท Declared Dead ยท ๐ USENIX workshop on Tackling computer systems problems with machine learning techniques
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Authors
Hyeontaek Lim, David G. Andersen, Michael Kaminsky
arXiv ID
1802.07389
Category
cs.LG: Machine Learning
Cross-listed
cs.DC,
stat.ML
Citations
78
Venue
USENIX workshop on Tackling computer systems problems with machine learning techniques
Last Checked
3 months ago
Abstract
The performance and efficiency of distributed machine learning (ML) depends significantly on how long it takes for nodes to exchange state changes. Overly-aggressive attempts to reduce communication often sacrifice final model accuracy and necessitate additional ML techniques to compensate for this loss, limiting their generality. Some attempts to reduce communication incur high computation overhead, which makes their performance benefits visible only over slow networks. We present 3LC, a lossy compression scheme for state change traffic that strikes balance between multiple goals: traffic reduction, accuracy, computation overhead, and generality. It combines three new techniques---3-value quantization with sparsity multiplication, quartic encoding, and zero-run encoding---to leverage strengths of quantization and sparsification techniques and avoid their drawbacks. It achieves a data compression ratio of up to 39--107X, almost the same test accuracy of trained models, and high compression speed. Distributed ML frameworks can employ 3LC without modifications to existing ML algorithms. Our experiments show that 3LC reduces wall-clock training time of ResNet-110--based image classifiers for CIFAR-10 on a 10-GPU cluster by up to 16--23X compared to TensorFlow's baseline design.
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