English

ESE: Efficient Speech Recognition Engine with Sparse LSTM on FPGA

Computation and Language 2017-02-21 v2

Abstract

Long Short-Term Memory (LSTM) is widely used in speech recognition. In order to achieve higher prediction accuracy, machine learning scientists have built larger and larger models. Such large model is both computation intensive and memory intensive. Deploying such bulky model results in high power consumption and leads to high total cost of ownership (TCO) of a data center. In order to speedup the prediction and make it energy efficient, we first propose a load-balance-aware pruning method that can compress the LSTM model size by 20x (10x from pruning and 2x from quantization) with negligible loss of the prediction accuracy. The pruned model is friendly for parallel processing. Next, we propose scheduler that encodes and partitions the compressed model to each PE for parallelism, and schedule the complicated LSTM data flow. Finally, we design the hardware architecture, named Efficient Speech Recognition Engine (ESE) that works directly on the compressed model. Implemented on Xilinx XCKU060 FPGA running at 200MHz, ESE has a performance of 282 GOPS working directly on the compressed LSTM network, corresponding to 2.52 TOPS on the uncompressed one, and processes a full LSTM for speech recognition with a power dissipation of 41 Watts. Evaluated on the LSTM for speech recognition benchmark, ESE is 43x and 3x faster than Core i7 5930k CPU and Pascal Titan X GPU implementations. It achieves 40x and 11.5x higher energy efficiency compared with the CPU and GPU respectively.

Keywords

Cite

@article{arxiv.1612.00694,
  title  = {ESE: Efficient Speech Recognition Engine with Sparse LSTM on FPGA},
  author = {Song Han and Junlong Kang and Huizi Mao and Yiming Hu and Xin Li and Yubin Li and Dongliang Xie and Hong Luo and Song Yao and Yu Wang and Huazhong Yang and William J. Dally},
  journal= {arXiv preprint arXiv:1612.00694},
  year   = {2017}
}

Comments

Accepted as full paper in FPGA'17, Monterey, CA; Also appeared at 1st International Workshop on Efficient Methods for Deep Neural Networks at NIPS 2016, Barcelona, Spain

R2 v1 2026-06-22T17:11:45.460Z