Tomofumi Maruta

1paper

1 Paper

ACC-PHNov 11, 2022
Prior-mean-assisted Bayesian optimization application on FRIB Front-End tunning

Kilean Hwang, Tomofumi Maruta, Alexander Plastun et al.

Bayesian optimization~(BO) is often used for accelerator tuning due to its high sample efficiency. However, the computational scalability of training over large data-set can be problematic and the adoption of historical data in a computationally efficient way is not trivial. Here, we exploit a neural network model trained over historical data as a prior mean of BO for FRIB Front-End tuning.