Changes for page L2L - Hyper parameter optimization framework
Last modified by yegenogl on 2023/07/10 12:06
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... ... @@ -2,9 +2,7 @@ 2 2 ((( 3 3 (% class="container" %) 4 4 ((( 5 -= My Collab's Extended Title = 6 - 7 -My collab's subtitle 5 +== Vast parameter space exploration using L2L on EBRAINS == 8 8 ))) 9 9 ))) 10 10 ... ... @@ -14,13 +14,18 @@ 14 14 ((( 15 15 = What can I find here? = 16 16 17 -* Notice how the table of contents on the right 18 -* is automatically updated 19 -* to hold this page's headers 15 +* Notebooks with hands on examples running L2L local and remotely on HPC 16 +* Information on how to set up your own optimizee and selecting and optimizer 20 20 18 +This workshop features a session on a hyper-parameter optimization framework implementing the concept of Learning to Learn (L2L). This framework provides a selection of different optimization algorithms and makes use of multiple high-performance computing back-ends (multi nodes, GPUs) to do vast parameter space explorations in an automated and parallel fashion (Yegenoglu et al. 2022). During this session, you will learn about the installation and use of this framework within EBRAINS. A TVB (Sanz Leon et al. 2013) simulation used in a study for a scale-integrated understanding of conscious and unconscious brain states and their mechanisms (Goldman et al. 2021) will serve as an example. In this study a set of 5 model variables has been explored, to find optimal parametrization for synchronous and a-synchronous brain states. Participants will learn how to launch a TVB simulation on Fenix’s high performing compute GPU backends using Unicore. 19 + 20 +Please create a JuDoor account and register to this project: https:~/~/judoor.fz-juelich.de/login?show=/projects/join/training2301 21 + 21 21 = Who has access? = 22 22 23 -Describe the audience of this collab. 24 +Intended as the landing page for L2L workshops or tutorials on EBRAINS. 25 + 26 + 24 24 ))) 25 25 26 26