English

Efficient 8-Bit Quantization of Transformer Neural Machine Language Translation Model

Machine Learning 2019-06-10 v2

Abstract

In this work, we quantize a trained Transformer machine language translation model leveraging INT8/VNNI instructions in the latest Intel®^\circledR Xeon®^\circledR Cascade Lake processors to improve inference performance while maintaining less than 0.5%\% drop in accuracy. To the best of our knowledge, this is the first attempt in the industry to quantize the Transformer model. This has high impact as it clearly demonstrates the various complexities of quantizing the language translation model. We present novel quantization techniques directly in TensorFlow to opportunistically replace 32-bit floating point (FP32) computations with 8-bit integers (INT8) and transform the FP32 computational graph. We also present a bin-packing parallel batching technique to maximize CPU utilization. Overall, our optimizations with INT8/VNNI deliver 1.5X improvement over the best FP32 performance. Furthermore, it reveals the opportunities and challenges to boost performance of quantized deep learning inference and establishes best practices to run inference with high efficiency on Intel CPUs.

Keywords

Cite

@article{arxiv.1906.00532,
  title  = {Efficient 8-Bit Quantization of Transformer Neural Machine Language Translation Model},
  author = {Aishwarya Bhandare and Vamsi Sripathi and Deepthi Karkada and Vivek Menon and Sun Choi and Kushal Datta and Vikram Saletore},
  journal= {arXiv preprint arXiv:1906.00532},
  year   = {2019}
}

Comments

To appear at the Joint Workshop on On-Device Machine Learning & Compact Deep Neural Network Representations, 36th International Conference on Machine Learning, Long Beach, California, 2019

R2 v1 2026-06-23T09:37:58.132Z