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EvoAl - codeless domain-optimisation
Publikationstyp
Conference Paper
Date Issued
2024-07-14
Sprache
English
Start Page
1640
End Page
1648
Citation
Genetic and Evolutionary Computation Conference Companion, GECCO 2024
Contribution to Conference
Publisher DOI
Scopus ID
Publisher
Association for Computing Machinery
ISBN
9798400704956
Applying optimisation techniques such as evolutionary computation to real-world tasks often requires significant adaptation. However, specific application domains do not typically demand major changes to existing optimisation methods. The decisive aspect is the inclusion of domain knowledge and configuration of established techniques to suit the problem. Separating the optimisation technique from the domain knowledge offers several advantages: First, it allows updating domain knowledge without necessitating reimplementation. Second, it improves identification and comparison of the optimisation methods employed. We present EvoAl, an open-source data-science research tool suite that focuses on optimisation research for real-world problems. EvoAl implements the separation of domain-knowledge and detaches implementation from configuration, facilitating optimisation with little programming effort, allowing direct comparability with other approaches (using EvoAl), and ensuring reproducibility. EvoAl also includes options for surrogate models, data models for complex search spaces, data validation, and benchmarking options for optimisation researchers.
DDC Class
004: Computer Sciences
005: Computer Programming, Programs, Data and Security