We demonstrate the feasibility of framing a classically learned deep neural network as an energy based model that can be processed on a one-step quantum annealer in order to exploit fast sampling times. We propose approaches to overcome two hurdles for high resolution image classification on a quantum processing unit (QPU): the required number and binary nature of the model states. With this novel method we successfully transfer a convolutional neural network to the QPU and show the potential for classification speedup of at least one order of magnitude.
翻译:我们展示了将古典学得的深神经网络设计成一种能源模型的可行性,这种模型可以用一个单步量子射线器进行处理,以便利用快速取样时间。我们提出了克服量子处理器高分辨率图像分类两个障碍的方法:模型状态所需的数字和二进制性质。通过这种新颖的方法,我们成功地将一个进化神经网络转移到了QPU,并展示了至少一个数量级的分类加速潜力。