Publication | Open Access
Caffe con Troll
46
Citations
15
References
2015
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningHardware AccelerationPopular Framework CaffeComputer EngineeringComputer ArchitectureComputer ScienceCaffe Con TrollComparative AnalysisDeep LearningNeural Architecture SearchCpu TrainingModel CompressionComputer Vision
We present Caffe con Troll (CcT), a fully compatible end-to-end version of the popular framework Caffe with rebuilt internals. We built CcT to examine the performance characteristics of training and deploying general-purpose convolutional neural networks across different hardware architectures. We find that, by employing standard batching optimizations for CPU training, we achieve a 4.5× throughput improvement over Caffe on popular networks like CaffeNet. Moreover, with these improvements, the end-to-end training time for CNNs is directly proportional to the FLOPS delivered by the CPU, which enables us to efficiently train hybrid CPU-GPU systems for CNNs.
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