Sirvi Autor "Suvorau, Ihar" järgi
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listelement.badge.dso-type Kirje , Real-time visualization of parallel simulations in CERN material design(2021) Suvorau, IharThis work presents the implementation of the in situ visualization module for multiscale-multiphysics simulation code FEMOCS and demonstrates its behavior in the simulation of vacuum breakdown. The visualization module makes it possible to observe in real-time the course of the simulation in FEMOCS and makes it more straightforward to set up a new simulation or develop additional features into the code. The first and second chapters briefly introduce the vacuum breakdown phenomenon and describe general aspects of numerical simulations. The third chapter describes the in situ method as a way of improving FEMOCS. The fourth and fifth chapters present the final solution and the impact of the solution on the overall running time of the simulation.listelement.badge.dso-type Kirje , Scaling Out the Discovery of Business Process Simulation Models from Event Logs(Tartu Ülikool, 2023) Suvorau, Ihar; Dumas, Marlon, juhendaja; Chapela de la Campa, David, juhendaja; Tartu Ülikool. Loodus- ja täppisteaduste valdkond; Tartu Ülikool. Arvutiteaduse instituutBackground. The automated discovery of business process simulation (BPS) models has received considerable attention in the process mining community in the past decade. The main open question in this field is how to make such discovery accurate, fast and efficient to provide more value for the end-users. Aim. This thesis aims at re-architecting an existing tool for automated BPS model discovery, namely Simod, to manage varying workloads in a scalable and robust manner. Methods. Scalability and robustness are achieved through building a distributed event-based system using the integration with the Kubernetes API. An efficiency metric has been used to evaluate the scalability of the final solution. A robustnessunder- load experiment shows that the re-architected system remains available under high demand. Results. The results of the validation experiments showed the system is scalable for small-sized event logs and robust under high load. A limitation of the study is that the testing environment, based on kind-clusters of 1, 2, 3, and 4 worker nodes, is not suitable for large-scale load testing experiments. Conclusion. This thesis provides a framework for implementing scalable, robust, and resilient workflows on Kubernetes for BPS model discovery that can benefit the process mining community. Further work is needed to improve the Simod architecture by splitting it into smaller independent components to achieve higher scalability and resource utilisation.