Journal Article10.1007/978-3-031-30609-9_5
Final Evaluation
TL;DR: In this article , the challenges in the field of parallel SBO have been discussed and contributions to these challenges have been made by the authors of the research questions posed throughout this thesis.
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Abstract: At the beginning of this document, we expressed existing challenges in the field of parallel SBO. To conclude this document we will discuss our contributions to these challenges. For this purpose, we would like to reconsider the research questions posed throughout this thesis. For the presentation of the contributions we go back to the central research questions RQ-1 to RQ-3.
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References
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