利用边缘张量处理单元实现低资源环境下的跨越式医疗人工智能

Priyanshu Sinha, J. Gichoya, S. Purkayastha
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引用次数: 1

摘要

随着时间的推移,最先进的深度学习神经网络的规模越来越大,需要更多的计算和电力资源。这些大型网络所需的高计算资源正在疏远世界上大多数生活在资源匮乏环境中的人口,他们缺乏从医疗人工智能的这些进步中受益的基础设施。目前最先进的医疗人工智能,即使有云资源,也很难在没有良好互联网连接的偏远地区部署。我们展示了一种经济有效的方法来部署医疗人工智能,该方法可以使用边缘张量处理单元(TPU)在有限的资源设置中使用。我们使用INT8量化感知训练方法训练并优化了胸部x射线14数据集的分类模型和神经超声数据集的分割模型。之后,我们编译了Edge TPU执行的优化模型。我们发现边缘tpu上的推理性能比其他嵌入式设备快10倍。与全精度模型相比,优化后的模型在分类和分割上分别缩小了3倍和12倍。总之,我们展示了Edge tpu在两个医疗人工智能任务中的潜力,其推理时间更快,这可能会在低资源环境中用于基于医疗人工智能的诊断。最后,我们讨论了我们的方法在实际部署中的一些潜在挑战和限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leapfrogging Medical AI in Low-Resource Contexts Using Edge Tensor Processing Unit
With each passing year, the state-of-the-art deep learning neural networks grow larger in size, requiring larger computing and power resources. The high compute resources required by these large networks are alienating the majority of the world population that lives in low-resource settings and lacks the infrastructure to benefit from these advancements in medical AI. Current state-of-the-art medical AI, even with cloud resources, is a bit difficult to deploy in remote areas where we don’t have good internet connectivity. We demonstrate a cost-effective approach to deploying medical AI that could be used in limited resource settings using Edge Tensor Processing Unit (TPU). We trained and optimized a classification model on the Chest X-ray 14 dataset and a segmentation model on the Nerve ultrasound dataset using INT8 Quantization Aware Training. Thereafter, we compiled the optimized models for Edge TPU execution. We find that the inference performance on edge TPUs is 10x faster compared to other embedded devices. The optimized model is 3x and 12x smaller for the classification and segmentation respectively, compared to the full precision model. In summary, we show the potential of Edge TPUs for two medical AI tasks with faster inference times, which could potentially be used in low-resource settings for medical AI-based diagnostics. We finally discuss some potential challenges and limitations of our approach for real-world deployments.
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