FLU-DYNLGJul 30, 2023

RoseNNa: A performant, portable library for neural network inference with application to computational fluid dynamics

arXiv:2307.16322v11 citationsh-index: 3
Originality Incremental advance
AI Analysis

This provides a performant and portable tool for CFD researchers to incorporate neural networks into their solvers, though it is incremental as it builds on existing inference methods.

The authors tackled the challenge of integrating neural network inference into computational fluid dynamics (CFD) solvers, which often use different programming languages, by developing the RoseNNa library. Results show that RoseNNa outperforms PyTorch and libtorch with speedups ranging from 2 to 10 times faster for networks with less than 100 hidden layers and 100 neurons per layer.

The rise of neural network-based machine learning ushered in high-level libraries, including TensorFlow and PyTorch, to support their functionality. Computational fluid dynamics (CFD) researchers have benefited from this trend and produced powerful neural networks that promise shorter simulation times. For example, multilayer perceptrons (MLPs) and Long Short Term Memory (LSTM) recurrent-based (RNN) architectures can represent sub-grid physical effects, like turbulence. Implementing neural networks in CFD solvers is challenging because the programming languages used for machine learning and CFD are mostly non-overlapping, We present the roseNNa library, which bridges the gap between neural network inference and CFD. RoseNNa is a non-invasive, lightweight (1000 lines), and performant tool for neural network inference, with focus on the smaller networks used to augment PDE solvers, like those of CFD, which are typically written in C/C++ or Fortran. RoseNNa accomplishes this by automatically converting trained models from typical neural network training packages into a high-performance Fortran library with C and Fortran APIs. This reduces the effort needed to access trained neural networks and maintains performance in the PDE solvers that CFD researchers build and rely upon. Results show that RoseNNa reliably outperforms PyTorch (Python) and libtorch (C++) on MLPs and LSTM RNNs with less than 100 hidden layers and 100 neurons per layer, even after removing the overhead cost of API calls. Speedups range from a factor of about 10 and 2 faster than these established libraries for the smaller and larger ends of the neural network size ranges tested.

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