06
Dec
![Teaser image to AutoML for tabular datasets and tabular datasets for AutoML](/images/logos/stat-colloquium.png)
AutoML for tabular datasets and tabular datasets for AutoML
Matthias Feurer, Department of Statistics, LMU Munich
06.12.2023
4:15 pm - 5:45 pm
LMU Department of Statistics and via zoom
AutoML simplifies the usage of ML by domain experts and allows ML experts to outsource boring and repetitive tasks to computers. In this presentation Matthias Feurer will give a short introduction into AutoML and give an overview of the AutoML research at the Chair of Statistical Learning and Data Science.
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