Leveraging Geospatial Data Gateways to Support the Operational Application of Deep Learning Models: Vision Paper

A. Soliman, J. Terstriep
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Abstract

Geospatial data providers have adopted a variety of science gateways as the primary method for accessing remote geospatial data. Early systems provided little more than a simple file transfer mechanism but over the past decade, advanced features were incorporated to allow users to retrieve data seamlessly without concern for native file formats, data resolution, or even spatial projections. However, the recent growth in Deep Learning models in the geospatial domains has exposed additional requirements for accessing geospatial repositories. In this paper we discussed the major data accessibility challenges faced by the Deep Learning community namely: (1) reproducibility of data preprocessing workflows, (2) optimizing data transfer between gateways and computational environments, and (3) minimizing local storage requirements using on-the-fly augmentation. In this paper, we present our vision of spatial data generators to act as middleware between geospatial data gateways and Deep Learning models. We propose advanced features for spatial data generators and describe how they could satisfy the data accessibility requirements of the geospatial Deep Learning community. Lastly, we argue that satisfying these data accessibility requirements will not only enhance the reproducibility of Deep Learning workflows and speed their development but will also improve the quality of training and prediction of operational Deep Learning models.
利用地理空间数据网关支持深度学习模型的操作应用:远景论文
地理空间数据提供者采用多种科学网关作为访问远程地理空间数据的主要方法。早期的系统只提供了一个简单的文件传输机制,但在过去的十年中,高级功能被纳入其中,允许用户无缝地检索数据,而不必担心本地文件格式、数据分辨率,甚至空间投影。然而,最近深度学习模型在地理空间领域的增长暴露了访问地理空间存储库的额外需求。在本文中,我们讨论了深度学习社区面临的主要数据可访问性挑战,即:(1)数据预处理工作流的再现性,(2)优化网关和计算环境之间的数据传输,以及(3)使用实时增强最小化本地存储需求。在本文中,我们提出了空间数据生成器作为地理空间数据网关和深度学习模型之间的中间件的愿景。我们提出了空间数据生成器的高级功能,并描述了它们如何满足地理空间深度学习社区的数据可访问性需求。最后,我们认为满足这些数据可访问性要求不仅可以增强深度学习工作流的可重复性并加快其开发速度,还可以提高可操作深度学习模型的训练和预测质量。
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