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MLAir (v1.0) – a tool to enable fast and flexible machine learning on air data time series

机译:MLAIR(v1.0) - 在空中数据时间序列上实现快速灵活的机器学习的工具

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With MLAir (Machine Learning on Air data) we created a software environment that simplifies and accelerates the exploration of new machine learning (ML) models, specifically shallow and deep neural networks, for the analysis and forecasting of meteorological and air quality time series. Thereby MLAir is not developed as an abstract workflow, but hand in hand with actual scientific questions. It thus addresses scientists with either a meteorological or an ML background. Due to their relative ease of use and spectacular results in other application areas, neural networks and other ML methods are also gaining enormous momentum in the weather and air quality research communities. Even though there are already many books and tutorials describing how to conduct an ML experiment, there are many stumbling blocks for a newcomer. In contrast, people familiar with ML concepts and technology often have difficulties understanding the nature of atmospheric data. With MLAir we have addressed a number of these pitfalls so that it becomes easier for scientists of both domains to rapidly start off their ML application. MLAir has been developed in such a way that it is easy to use and is designed from the very beginning as a stand-alone, fully functional experiment. Due to its flexible, modular code base, code modifications are easy and personal experiment schedules can be quickly derived. The package also includes a set of validation tools to facilitate the evaluation of ML results using standard meteorological statistics. MLAir can easily be ported onto different computing environments from desktop workstations to high-end supercomputers with or without graphics processing units (GPUs).
机译:利用MLAIR(空中数据的机器学习),我们创建了一种简化和加速新机器学习(ML)模型,特别是浅层神经网络的探索的软件环境,用于气象和空气质量时间序列的分析和预测。因此,MLAIR不会作为抽象的工作流制造,而是用实际的科学问题携手共进。因此,它与气象或ML背景定位了科学家。由于它们的相对易于使用和壮观的结果在其他应用领域,神经网络和其他ML方法也在天气和空气质量研究社区中获得巨大的动力。尽管已经有许多书籍和教程描述了如何进行ML实验,但新人有许多绊脚石。相比之下,熟悉ML概念和技术的人往往难以了解大气数据的性质。通过MLAIR,我们已经解决了许多这些陷阱,使两个域的科学家变得更容易快速开始他们的ML应用程序。 MLAIR已经开发出一种易于使用的方式,并从一开始就像独立,全功能实验一样设计。由于其灵活,模块化代码库,代码修改简单,可以快速派生个人实验计划。该包还包括一组验证工具,以便使用标准气象统计评估M1结果。 MLAIR可以轻松移植到具有或不具有图形处理单元(GPU)的高端超级计算机(GPU)的高端超级计算机上的不同计算环境。

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