Big Data has proved to be vast and complex, without being efficiently manageable through traditional architectures, whereas data analysis is considered crucial for both technical and non-technical stakeholders. Current analytics platforms are siloed for specific domains, whereas the requirements to enhance their use and lower their technicalities are continuously increasing. This paper describes a domain-agnostic single access autoscaling Big Data analytics platform, namely Diastema, as a collection of efficient and scalable components, offering user-friendly analytics through graph data modelling, supporting technical and non-technical stakeholders. Diastema's applicability is evaluated in healthcare through a predicting classifier for a COVID19 dataset, considering real-world constraints.
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Kiourtis, A., Karamolegkos, P., Karabetian, A., Voulgaris, K., Poulakis, Y., Mavrogiorgou, A., & Kyriazis, D. (2022). An Autoscaling Platform Supporting Graph Data Modelling Big Data Analytics. In Studies in Health Technology and Informatics (Vol. 295, pp. 376–379). IOS Press BV. https://doi.org/10.3233/SHTI220743