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1h
accepted NLopt SLSQP discards good solution in favour of older, worse solution
1h
comment NLopt SLSQP discards good solution in favour of older, worse solution
Really useful addendum and answer, many thanks, +1+Tick. One of the things that really confused me about this problem was that in my example with the suboptimal return value, the output flag was FTOL_REACHED. Am I right in thinking that is misleading? Sure, the algorithm satisfied FTOL_REACHED, but then it returns a totally different solution to the one that satisfies FTOL_REACHED. Perhaps there is scope here for an additional flag?
1d
comment NLopt SLSQP discards good solution in favour of older, worse solution
Thanks for responding. I'll investigate this thoroughly on Monday and report back here. Will hold off on upvotes and ticks till then, but what you've said does make sense - although it is a bit scary that such a tiny change in the initial values can have this effect!
2d
accepted How to pass parameters and data to objective function for optimization with NLopt
Feb
5
revised NLopt SLSQP discards good solution in favour of older, worse solution
added 152 characters in body
Feb
5
revised NLopt SLSQP discards good solution in favour of older, worse solution
added 191 characters in body
Feb
4
reviewed Reject NLopt SLSQP discards good solution in favour of older, worse solution
Feb
4
asked NLopt SLSQP discards good solution in favour of older, worse solution
Feb
1
comment How to construct a matrix in Julia sequentially?
If you don't know how many rows you need to add up front (and hence cannot pre-allocate), perhaps a Vector{Vector{T}} would be more efficient? You can dynamically add elements to each inner vector using push! with very little performance overhead.
Feb
1
comment convert MATLAB optimise function to julia
@f1wade I found the official docs to be well-written and comprehensive for the Base library. If they're a bit heavy going, this website gives a quick overview, although some of the material, e.g. dictionary syntax is now (I think) out of date. For available libraries, check here, but I would also strongly recommend joining the julia-users group, and just skim the daily updates. I pick up a lot of new stuff from there.
Feb
1
revised Julia compiler does not appear to optimize when a function is passed a function
added 235 characters in body
Feb
1
answered How to pass parameters and data to objective function for optimization with NLopt
Feb
1
comment What method did Julia use?
@GnimucK. "which(*, (Matrix{Float64},Matrix{Float64}))" -> yep, that does it. As amrods suggests, there's probably a neat little function that can be written here to iterate up the chain. Thanks for responding (both of you).
Feb
1
comment What method did Julia use?
Interesting. Is there a way to iteratively dig deeper? ie, the line referenced in your answer calls * again, but on two abstract matrices. Is there a way to get @which to also tell us which method was called next? (presumably in this case it was * for two Matrix{Float64}?)
Feb
1
comment What method did Julia use?
I'm not very good at interpreting the output, but @code_warntype (1:10) * ones(1,10) might tell you what you need to know. As near as I can tell (and I emphasize this is not something I know much about), ultimately * appears to be calling Base.LinAlg.generic_matmatmul! on two input Array{Float64, 2}. Hopefully someone a bit more knowledgeable can chip in.
Jan
29
comment How to correct the eigenvectors in julia for arbitrary complex matrices
Possible duplicate of Could we get different solutions for eigenVectors from a matrix?
Jan
29
revised How to correct the eigenvectors in julia for arbitrary complex matrices
added 125 characters in body
Jan
29
comment convert MATLAB optimise function to julia
Did my answer help? If so, please mark the question answered. Otherwise, let me know where you think it is lacking and I will try to improve it. Cheers.
Jan
29
comment Performance slowdown when using Julia's built-in functions
No probs, glad to help :-) Actually, one thing I should add to the above comment for future readers is that any calculation that can be done by BLAS should not be devectorized, as BLAS optimisations will trump additional temporary memory allocations almost every time.
Jan
29
awarded  Enlightened