We consider distributed inference at the wireless edge, where multiple clients with an ensemble of models, each trained independently on a local dataset, are queried in parallel to make an accurate decision on a new sample. In addition to maximizing inference accuracy, we also want to maximize the privacy of local models. We exploit the superposition property of the air to implement bandwidth-efficient ensemble inference methods. We introduce different over-the-air ensemble methods and show that these schemes perform significantly better than their orthogonal counterparts, while using less resources and providing privacy guarantees. We also provide experimental results verifying the benefits of the proposed over-the-air inference approach, whose source code is shared publicly on Github.
翻译:在无线边缘,我们考虑分布式推论,在无线边缘,对拥有各种模型的多个客户进行同时询问,每个客户都经过独立的当地数据集培训,以便对新的样本作出准确的决定。除了最大限度地提高推论准确性之外,我们还希望最大限度地扩大本地模型的隐私。我们利用空气的叠加特性来实施带宽高效共推法。我们采用了不同的超高空共推法,并表明这些计划在使用较少的资源和提供隐私保障的同时,其效果大大优于其正统对口单位。我们还提供实验结果,核查拟议的超空推论方法的好处,在Github上公开分享其源代码。