# ALWANN: Automatic Layer-Wise Approximation of Deep Neural Network   Accelerators without Retraining

**Authors:** Vojtech Mrazek, Zdenek Vasicek, Lukas Sekanina, Muhammad, Abdullah Hanif, Muhammad Shafique

arXiv: 1907.07229 · 2020-01-31

## TL;DR

ALWANN introduces a method to incorporate approximate multipliers into DNN accelerators without retraining, optimizing for energy efficiency while maintaining high accuracy.

## Contribution

It presents a novel approach to integrate approximate multipliers into DNNs without retraining, using multiobjective optimization and a simple weight update scheme.

## Key findings

- Saves 30% energy in convolutional layers of ResNet-50
- Degrades accuracy by only 0.6%
- Eliminates the need for retraining in approximate DNNs

## Abstract

The state-of-the-art approaches employ approximate computing to reduce the energy consumption of DNN hardware. Approximate DNNs then require extensive retraining afterwards to recover from the accuracy loss caused by the use of approximate operations. However, retraining of complex DNNs does not scale well. In this paper, we demonstrate that efficient approximations can be introduced into the computational path of DNN accelerators while retraining can completely be avoided. ALWANN provides highly optimized implementations of DNNs for custom low-power accelerators in which the number of computing units is lower than the number of DNN layers. First, a fully trained DNN is converted to operate with 8-bit weights and 8-bit multipliers in convolutional layers. A suitable approximate multiplier is then selected for each computing element from a library of approximate multipliers in such a way that (i) one approximate multiplier serves several layers, and (ii) the overall classification error and energy consumption are minimized. The optimizations including the multiplier selection problem are solved by means of a multiobjective optimization NSGA-II algorithm. In order to completely avoid the computationally expensive retraining of DNN, which is usually employed to improve the classification accuracy, we propose a simple weight updating scheme that compensates the inaccuracy introduced by employing approximate multipliers. The proposed approach is evaluated for two architectures of DNN accelerators with approximate multipliers from the open-source "EvoApprox" library. We report that the proposed approach saves 30% of energy needed for multiplication in convolutional layers of ResNet-50 while the accuracy is degraded by only 0.6%. The proposed technique and approximate layers are available as an open-source extension of TensorFlow at https://github.com/ehw-fit/tf-approximate.

## Full text

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## Figures

13 figures with captions in the complete paper: https://tomesphere.com/paper/1907.07229/full.md

## References

24 references — full list in the complete paper: https://tomesphere.com/paper/1907.07229/full.md

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Source: https://tomesphere.com/paper/1907.07229