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Look-ups are not (yet) all you need for deep learning inference

Proposed improvements to fast approximate matrix multiplication for deep learning inference show promise in speed but have limited impact on accuracy.

Year
2022
Venue
arXiv 2022
Authors
2
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arxiv.org/abs/2207.05808ARXIV-DEFAULT
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Abstract

Fast approximations to matrix multiplication have the potential to dramatically reduce the cost of neural network inference. Recent work on approximate matrix multiplication proposed to replace costly multiplications with table-lookups by fitting a fast hash function from training data. In this work, we propose improvements to this previous work, targeted to the deep learning inference setting, where one has access to both training data and fixed (already learned) model weight matrices. We further propose a fine-tuning procedure for accelerating entire neural networks while minimizing loss in accuracy. Finally, we analyze the proposed method on a simple image classification task. While we show improvements to prior work, overall classification accuracy remains substantially diminished compared to exact matrix multiplication. Our work, despite this negative result, points the way towards future efforts to accelerate inner products with fast nonlinear hashing methods.

Authors

2