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Document type:
Bachelorarbeit
Author(s):
Laumeyer, Leonhard
Title:
Can Reinforcement Learning be used to improve the autotuning process within AutoPas?
Abstract:
This thesis presents a new tuning strategy for the node-level auto-tuned particle simulation library AutoPas. The strategy uses reinforcement learning to predict the best configuration for the simulation to use to achieve the fastest calculation time. An implementation of a modified version of the SARSA algorithm is shown. Furthermore, the hyperparameters: learning rate, discount factor, and exploration rate are fine-tuned trough grid search to produce the best possible results. The reinforcemen...     »
Keywords:
AutoPas, Reinforcement Learning
Subject:
ALL Allgemeines
Supervisor:
Bungartz, Hans-Joachim
Advisor:
Gratl, Fabio Alexander; Newcome, Samuel James
Year:
2022
Quarter:
3. Quartal
Year / month:
2022-09
Month:
Sep
Language:
en
University:
Technical University of Munich
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