DCLGMLOct 21, 2018

Runtime Concurrency Control and Operation Scheduling for High Performance Neural Network Training

arXiv:1810.08955v23 citations
Originality Incremental advance
AI Analysis

This work addresses performance bottlenecks in machine learning frameworks for developers and researchers, though it is incremental as it builds on an existing runtime system.

The paper tackles the challenge of managing and scheduling fine-grained operations in neural network training by extending the TensorFlow runtime with automatic concurrency control and scheduling, achieving an average 33% performance improvement in execution time.

Training neural network often uses a machine learning framework such as TensorFlow and Caffe2. These frameworks employ a dataflow model where the NN training is modeled as a directed graph composed of a set of nodes. Operations in neural network training are typically implemented by the frameworks as primitives and represented as nodes in the dataflow graph. Training NN models in a dataflow-based machine learning framework involves a large number of fine-grained operations. Those operations have diverse memory access patterns and computation intensity. How to manage and schedule those operations is challenging, because we have to decide the number of threads to run each operation (concurrency control) and schedule those operations for good hardware utilization and system throughput. In this paper, we extend an existing runtime system (the TensorFlow runtime) to enable automatic concurrency control and scheduling of operations. We explore performance modeling to predict the performance of operations with various thread-level parallelism. Our performance model is highly accurate and lightweight. Leveraging the performance model, our runtime system employs a set of scheduling strategies that co-run operations to improve hardware utilization and system throughput. Our runtime system demonstrates a big performance benefit. Comparing with using the recommended configurations for concurrency control and operation scheduling in TensorFlow, our approach achieves 33% performance (execution time) improvement on average (up to 49%) for three neural network models, and achieves high performance closing to the optimal one manually obtained by the user.

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