National Repository of Grey Literature 4 records found  Search took 0.00 seconds. 
Machine Learning Optimization of KPI Prediction
Haris, Daniel ; Burget, Radek (referee) ; Bartík, Vladimír (advisor)
This thesis aims to optimize the machine learning algorithms for predicting KPI metrics for an organization. The organization is predicting whether projects meet planned deadlines of the last phase of development process using machine learning. The work focuses on the analysis of prediction models and sets the goal of selecting new candidate models for the prediction system. We have implemented a system that automatically selects the best feature variables for learning. Trained models were evaluated by several performance metrics and the best candidates were chosen for the prediction. Candidate models achieved higher accuracy, which means, that the prediction system provides more reliable responses. We suggested other improvements that could increase the accuracy of the forecast.
Application of SCRUM Methodology on a Software Development Project
Burzala, Matúš ; Doskočil, Radek (referee) ; Smolíková, Lenka (advisor)
Diplomová práca sa zaoberá porovnaním metodiky použitej na projekte vývoja software a metodiky SCRUM. V rámci práce sú zmapované všetky role, udalosti a artefakty projektu u ktorých sú následne identifikované ich odlišnosti od definície metodiky SCRUM. Práca ďalej obsahuje návrh toho, čo je potrebné upraviť, alebo zmeniť, aby sa dosiahla správna aplikácia metodiky SCRUM a tým pádom aj optimalizácia vývojového procesu.
Application of SCRUM Methodology on a Software Development Project
Burzala, Matúš ; Doskočil, Radek (referee) ; Smolíková, Lenka (advisor)
Diplomová práca sa zaoberá porovnaním metodiky použitej na projekte vývoja software a metodiky SCRUM. V rámci práce sú zmapované všetky role, udalosti a artefakty projektu u ktorých sú následne identifikované ich odlišnosti od definície metodiky SCRUM. Práca ďalej obsahuje návrh toho, čo je potrebné upraviť, alebo zmeniť, aby sa dosiahla správna aplikácia metodiky SCRUM a tým pádom aj optimalizácia vývojového procesu.
Machine Learning Optimization of KPI Prediction
Haris, Daniel ; Burget, Radek (referee) ; Bartík, Vladimír (advisor)
This thesis aims to optimize the machine learning algorithms for predicting KPI metrics for an organization. The organization is predicting whether projects meet planned deadlines of the last phase of development process using machine learning. The work focuses on the analysis of prediction models and sets the goal of selecting new candidate models for the prediction system. We have implemented a system that automatically selects the best feature variables for learning. Trained models were evaluated by several performance metrics and the best candidates were chosen for the prediction. Candidate models achieved higher accuracy, which means, that the prediction system provides more reliable responses. We suggested other improvements that could increase the accuracy of the forecast.

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