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This repository has been archived by the owner on Sep 9, 2024. It is now read-only.
For mathematical standpoint, provide convergence plot, A-stable, and so on for Runge-Kutta(explicit, implicit), multistep method will be a lot of helpful for beginners' numerical study.
And when I ran the test.jl, I found the codes seemed are not optimized, while I found adding @inbounds to turn off bound check only can provide very limited boost.
The text was updated successfully, but these errors were encountered:
I was actually thinking about adding some examples (and you can find some basic ones in #14 and #10). There is also (at least) one blog entry on the SIR model. However, I think we have to wait a little bit until the API is more stable.
What do you mean by "the codes seemed are not optimized" (compared to what)? There was a bug in ode45 (#15), which might have slowed down things. In #16 I added a very simple performance test, which you might want to try.
@GaZ3ll3 Most of the code you see in this repository now is older than the @inbounds macro. That macro should also only be applied when you are absolutely certain that no input can possibly cause a BoundsError. It has to be done with care.
Also, there is an unfortunate syntax collision between github @ mentions and Julia macros. That means that you should wrap macros in backticks "`" so that you do not ping/email random people.
@acroy Since this ODE.jl was for julia 0.2.0-, and I think there is a package called Devectorize (by Dahua Lin also for julia 0.2.0 -) which can work here. I can see there are some loops of vector operations in the code. But I haven't tested it yet. That package seemed deprecated long time ago.
@ivarne I ran @inbounds with for-loops on arrays for solvers ode45_dp, ode45_ck, ode45_fb, there is no significant improvement in performance, at most 5%... I will try to make a comparison with matlab and python w/o numpy/cython later. Has anyone run the comparison test for matlab/julia/python/c/c++/fortran/R?
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I think some examples like following will benefits a lot for new users and also can be used for education purposes.
And can provide multiple approaches, such as Runge-Kutta, and Sympletic method, even FMM are usually deployed.
And when I ran the test.jl, I found the codes seemed are not optimized, while I found adding
@inbounds
to turn off bound check only can provide very limited boost.The text was updated successfully, but these errors were encountered: