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Document type:
IDP-Arbeit
Author(s):
Nguyen, Jan
Title:
AutoTuning using Bayesian Statistics in AutoPas
Translated title:
AutoTuning via Bayessche Statistik in AutoPas
Abstract:
In many cases, a program can have many configuration options. The choice can have a large impact on the performance, but may not always be trivial for the layman. It is possible to recommend options that are efficient in most cases. However, if the individual use case leads to significant differences in the optimal choice, automation is preferable. We have analyzed how Bayesian statistics can be applied here. Such an algorithm uses a probabilistic model to generate a good configuration by observ...     »
Keywords:
AutoPas
Supervisor:
Bungartz, Hans-Joachim
Advisor:
Gratl, Fabio Alexander
Year:
2020
Quarter:
1. Quartal
Year / month:
2020-02
Month:
Feb
Language:
en
University:
Technical University of Munich
Faculty:
Fakultät für Informatik
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