Mandarine Academy Professional Timetabling (MAPT) is a real-world dataset suggested to solve Professional Timetabling Problems (PTPs). A rather under-exploited category of the overall Timetabling Problems. However, we believe it can still be applied to traditional problems (education, health, etc.) as a helpful benchmark dataset to assist researchers in comparing different methods. Compared to conventional educational datasets such as (ITC2007), MAPT proposes richer features inspired by real-world data to provide insight into corporate training logistics and timetabling complexities.
We provide test files used in our experiments. To simulate different real-world scenarios, we created varying complexities (number of events and available time window). Rather than using synthetic data, we use historical data for experiments. Problem instances were created using a total of 152 different training. Table.1 offers an overview of our test instances. Note here that there are no duplicate courses inside each test instance.
In total, 3 different problem sizes (small, medium, and large) are provided. For each problem size, the number of sessions, training, and planning window is increased. This was implemented to simulate how the algorithms will behave when having a larger number of events to satisfy. Note that the duration is expressed in days and each size has 20 different test instances.
We provide final objectives and directions. We included NSGAII and NSGAIII results using only 3 Objectives.
When referring to the data, please cite the following paper:
@data{DVN/A4JU5E_2022,
author = {Hafsa, Mounir},
publisher = {Harvard Dataverse},
title = {{Mandarine Academy Professional Timetabling Dataset}},
UNF = {UNF:6:eE06QeDwLB06zCXDKuP1tQ==},
year = {2022},
version = {V1},
doi = {10.7910/DVN/A4JU5E},
url = {https://doi.org/10.7910/DVN/A4JU5E}
}
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