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AI-Research

Authors: Hai Victor Habi, Roy. H Jennings and Arnon Netzer.

Arxiv: https://arxiv.org/abs/2007.09952

Abstract: Recent work in network quantization produced state-of-the-art results using mixed precision quantization. An imperative requirement for many efficient edge device hardware implementations is that their quantizers are uniform and with power-of-two thresholds. In this work, we introduce the Hardware Friendly Mixed Precision Quantization Block (HMQ) in order to meet this requirement. The HMQ is a mixed precision quantization block that repurposes the Gumbel-Softmax estimator into a smooth estimator of a pair of quantization parameters, namely, bit-width and threshold. HMQs use this to search over a finite space of quantization schemes. Empirically, we apply HMQs to quantize classification models trained on CIFAR10 and ImageNet. For ImageNet, we quantize four different architectures and show that, in spite of the added restrictions to our quantization scheme, we achieve competitive and, in some cases, state-of-the-art results.

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ai-research's Issues

Quantization with BatchNorm

Thanks for your excellent work and open source.

Here BN is not quantization found in your code, is it fair to be compared with others methods?

The suitable lr for mobilenet_v2 and efficientNet

Hello, thank you for your amazing work! In practice, I find that the lr for mobilenet_v1 in the demo training command is not suitable for mobilenet_v2 and efficientNet, resulting in unstable training. Could you provide your lr choices for other backbones?

Thanks in advance.

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