We present a no-code Artificial Intelligence (AI) platform called Trinity with the main design goal of enabling both machine learning researchers and non-technical geospatial domain experts to experiment with domain-specific signals and datasets for solving a variety of complex problems on their own. This versatility to solve diverse problems is achieved by transforming complex Spatio-temporal datasets to make them consumable by standard deep learning models, in this case, Convolutional Neural Networks (CNNs), and giving the ability to formulate disparate problems in a standard way, eg. semantic segmentation. With an intuitive user interface, a feature store that hosts derivatives of complex feature engineering, a deep learning kernel, and a scalable data processing mechanism, Trinity provides a powerful platform for domain experts to share the stage with scientists and engineers in solving business-critical problems. It enables quick prototyping, rapid experimentation and reduces the time to production by standardizing model building and deployment. In this paper, we present our motivation behind Trinity and its design along with showcasing sample applications to motivate the idea of lowering the bar to using AI.
翻译:我们提出了一个名为Trinity的无规范人工智能(AI)平台,其主要设计目标是使机器学习研究人员和非技术地理空间领域专家能够实验特定领域的信号和数据集,自行解决各种复杂问题。这种解决各种问题的多功能性是通过改造复杂的Spatio时空数据集来实现的,使这些数据集能够被标准的深层次学习模型,即革命神经网络(Cultural Neal Networks)所吸收,并能够以标准的方式(例如语义分割)提出不同的问题。在本文中,我们用直观的用户界面,一个存储复杂地物工程衍生物、深层学习内核和可扩展数据处理机制的特征仓库,Trinity提供了一个强大的平台,让域专家与科学家和工程师分享解决商业关键问题的舞台。它能够快速地进行原型设计、快速实验,并通过标准化模型的建立和部署来缩短生产时间。在本文中,我们展示了特里尼特及其设计背后的动机,同时展示了展示样本应用,以激励降低AI值的想法。