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Matrix-based project dataset parsers. | LitMetric

Matrix-based project dataset parsers.

MethodsX

Continental Automotive Hungary Ltd., Házgyári str. 6-8., Veszprém, H-8200, Hungary.

Published: December 2024

AI Article Synopsis

  • Existing project datasets have varied data sources, making it challenging for researchers to apply algorithms consistently across different project types and structures.
  • A new parsing method allows for the integration of diverse project types and attributes, accommodating both simulated and real projects, as well as different project management approaches.
  • This method enables researchers to prioritize activities and understand dependencies, facilitating the creation of a comprehensive project database for algorithm testing and comparison.

Article Abstract

There are several existing project datasets, which involve separate data sources for simulated and real projects, individual and multiprojects, and single- and multimodal attributes. In addition, their file structures are heterogeneous; therefore, scholars can usually use only one dataset to test a proposed scheduling or resource allocation algorithm. Since the internal structures of these projects are also very different, it is difficult to ensure that an algorithm optimized for a given type of project will also perform well on projects with other structures. The proposed parsing method supports researchers in:•reading several types of projects: simulated, real, individual, and multiprojects, as well as single- and multimodal attributes;•considering the priorities of activities and the flexibility of their dependencies, which is essential for modeling the structural flexibility employed by agile, hybrid, and extreme project management approaches;•building a large project database for testing and comparing different scheduling and resource allocation algorithms.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11326930PMC
http://dx.doi.org/10.1016/j.mex.2024.102821DOI Listing

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