Neuro-symbolic artificial intelligence is a novel area of AI research which seeks to combine traditional rules-based AI approaches with modern deep learning techniques. Neuro-symbolic models have already demonstrated the capability to outperform state-of-the-art deep learning models in domains such as image and video reasoning. They have also been shown to obtain high accuracy with significantly less training data than traditional models. Due to the recency of the field's emergence and relative sparsity of published results, the performance characteristics of these models are not well understood. In this paper, we describe and analyze the performance characteristics of three recent neuro-symbolic models. We find that symbolic models have less potential parallelism than traditional neural models due to complex control flow and low-operational-intensity operations, such as scalar multiplication and tensor addition. However, the neural aspect of computation dominates the symbolic part in cases where they are clearly separable. We also find that data movement poses a potential bottleneck, as it does in many ML workloads.
翻译:Neuro-symplic 人工智能是AI研究的新领域,寻求将传统基于规则的AI方法与现代深层次学习技术相结合。神经-symbolic模型已经表明,在图像和视频推理等领域,它们能够超越最先进的深层次学习模式。它们还显示,它们获得的高度准确性比传统模型少得多的培训数据要低得多。由于实地的出现以及所公布的结果相对分散,因此这些模型的性能特征不甚为人熟知。我们本文描述了和分析最近三个神经-symboli模型的性能特征。我们发现,由于复杂的控制流程和低操作强度操作性操作性操作性操作,象征性模型比传统神经模型具有较少的潜在平行性,例如,变速和变速等。然而,在数据明显可分离的情况下,计算中的神经方面是象征性部分的主导部分。我们还发现,数据移动造成了潜在的瓶颈,正如许多 ML工作量一样。