Exploiting Symmetric Temporally Sparse BPTT for Efficient RNN Training

Authors

  • Xi Chen Institute of Neuroinformatics, UZH and ETH Zurich
  • Chang Gao Department of Microelectronics, Delft University of Technology
  • Zuowen Wang Institute of Neuroinformatics, UZH and ETH Zurich
  • Longbiao Cheng Institute of Neuroinformatics, UZH and ETH Zurich
  • Sheng Zhou Institute of Neuroinformatics, UZH and ETH Zurich
  • Shih-Chii Liu Institute of Neuroinformatics, UZH and ETH Zurich
  • Tobi Delbruck Institute of Neuroinformatics, UZH and ETH Zurich

DOI:

https://doi.org/10.1609/aaai.v38i10.29020

Keywords:

ML: Learning on the Edge & Model Compression

Abstract

Recurrent Neural Networks (RNNs) are useful in temporal sequence tasks. However, training RNNs involves dense matrix multiplications which require hardware that can support a large number of arithmetic operations and memory accesses. Implementing online training of RNNs on the edge calls for optimized algorithms for an efficient deployment on hardware. Inspired by the spiking neuron model, the Delta RNN exploits temporal sparsity during inference by skipping over the update of hidden states from those inactivated neurons whose change of activation across two timesteps is below a defined threshold. This work describes a training algorithm for Delta RNNs that exploits temporal sparsity in the backward propagation phase to reduce computational requirements for training on the edge. Due to the symmetric computation graphs of forward and backward propagation during training, the gradient computation of inactivated neurons can be skipped. Results show a reduction of ∼80% in matrix operations for training a 56k parameter Delta LSTM on the Fluent Speech Commands dataset with negligible accuracy loss. Logic simulations of a hardware accelerator designed for the training algorithm show 2-10X speedup in matrix computations for an activation sparsity range of 50%-90%. Additionally, we show that the proposed Delta RNN training will be useful for online incremental learning on edge devices with limited computing resources.

Published

2024-03-24

How to Cite

Chen, X., Gao, C., Wang, Z., Cheng, L., Zhou, S., Liu, S.-C., & Delbruck, T. (2024). Exploiting Symmetric Temporally Sparse BPTT for Efficient RNN Training. Proceedings of the AAAI Conference on Artificial Intelligence, 38(10), 11399-11406. https://doi.org/10.1609/aaai.v38i10.29020

Issue

Section

AAAI Technical Track on Machine Learning I