Climate change means coping directly or indirectly with extreme weather conditions for everybody. Therefore, analyzing meteorological data to create precise models is gaining more importance and might become inevitable. Meteorologists have extensive domain knowledge about meteorological data yet lack practical data analysis skills. This paper presents a method to bridge this gap by empowering the data knowledge carriers to analyze the data. The proposed system utilizes symbolic AI, a knowledge base created by experts, and a recommendation expert system to offer suiting data analysis methods or data pre-processing to meteorologists. This paper systematically analyzes the target user group of meteorologists and practical use cases to arrive at a conceptual and technical system design implemented in the CAMeRI prototype. The concepts in this paper are aligned with the AI2VIS4BigData Reference Model and comprise a novel first-order logic knowledge base that represents analysis methods and related pre-processings. The prototype implementation was qualitatively and quantitatively evaluated. This evaluation included recommendation validation for real-world data, a cognitive walkthrough, and measuring computation timings of the different system components.
Genomic data enable the development of new biomarkers in diagnostic laboratories. Examples include data from gene expression analyses or metagenomics. Artificial intelligence can help to analyze these data. However, diagnostic laboratories face various technical and regulatory challenges to harness these data. Existing software for genomic data is usually designed for research and does not meet the requirements for use as a diagnostic tool. To address these challenges, we recently proposed a conceptual architecture called “GenDAI”. An initial evaluation of “GenDAI” was conducted in collaboration with a small laboratory in the form of a preliminary study. The results of this pre-study highlight the requirement for and feasibility of the approach. The pre-study also yields detailed technical and regulatory requirements, use cases from laboratory practice, and a prototype called “PlateFlow” for exploring user interface concepts.
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