User: Guest  Login
Author(s):
Pazar, Abdulkadir
Title:
Optimizing Algorithm Selection in AutoPas with Decision Trees and Random Forests
Abstract:
AutoPas[Gra+22] is a high-performance, auto-tuned particle simulation software library for many-body particle systems, capable of dynamically switching between algorithms and data structures to achieve optimal performance during the simulation. This thesis explores a decision tree-based tuning strategy for AutoPas, allowing users to guide the tuning process by specifying custom decision tree or random forest models, which can be used to efficiently conclude the tuning phase and determine the bes...     »
Keywords:
AutoPas; Auto-tuning; Decision Trees; Algorithm Selection
Supervisor:
Bungartz, Hans-Joachim
Advisor:
Newcome, Samuel James
Year:
2024
Quarter:
4. Quartal
Year / month:
2024-11
Month:
Nov
Language:
en
University:
Technical University of Munich
Faculty:
TUM School of Computation, Information and Technology
 BibTeX