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Brad Richardson: Alright! Welcome everybody to the first monthly FUN office hours for 2024. Happy New Year everybody! Brad Richardson: Hope youamp;#39;re all doing well. This meeting. Codee, Manuel is gonna be giving a presentation from Codee about using their tools on WRF Brad Richardson: so excited to hear more about that, and see what they can do. Before that couple of things. Iamp;#39;m starting to think about putting together a training session late march Brad Richardson: on parallel programming. My idea is to kind of take a simplified example program thatamp;#39;s doing something like a 1D heat transfer calculation or something like that. And you know, show how itamp;#39;s done, you know, using traditional, just serial code and then transform that Brad Richardson: to do MPI or coarrays, and then also do a transformation that uses openmp or do concurrent. So kind of the mixture of you know, doing multi node parallel versus, you know, single node like Brad Richardson: thread le