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I am looking for a C++ library, and I am dealing with convex objective and constraint functions.

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closed as off-topic by Owen, Baum mit Augen, Mureinik, karthik, Zong Zheng Li Oct 20 '14 at 6:39

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Where did you last see it? – Hans Passant Dec 30 '09 at 6:55
Most LP solvers have their own way of defining problem sets. Programmatic interfaces for it is mostly sugar coating. – Ritesh M Nayak Dec 30 '09 at 7:00
I am using cvxopt, and to install I just downloaded the precompiled libraries from lfd.uci.edu/~gohlke/pythonlibs/#cvxopt, then did pip install (downloaded wheel), then made sure to import numpy before using it. – Danielle Ensign Nov 6 '15 at 21:55
up vote 9 down vote accepted

I am guessing your problem is non-linear. Where i work, we use SNOPT, Ipopt and another proprietary solver (not for sale). We have also tried and heard good things about Knitro.

As long as your problem is convex, all these solvers work well.

They all have their own API, but they all ask for the same information : values, first and second derivatives.

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Assuming your problems are nonlinear, you can use free and open-sourced OPT++, available from Sandia Lab. I have used it in one project in C++ and it was easy to use and worked well.

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From what I know, the CPLEX solver is the best convex optimization solver. Its the state of the art in LP solvers. Does convex optimization really well. While looking for it, I see that its IBM's software now. You can find it here : http://www-01.ibm.com/software/integration/optimization/cplex/

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You can find other open source solvers and their performance benchmarks here: plato.asu.edu/ftp/lpfree.html Also, dont forget to check out code.msdn.microsoft.com/solverfoundation – Ritesh M Nayak Dec 30 '09 at 6:59
Linear implies convex, not the other way around. – Benoît Dec 30 '09 at 9:19
cplex solves linearly or quadratically constrained convex problems. It's very fast, but it doesn't handle general convex problems. – David Nehme Nov 30 '10 at 1:14

You can use GSL (GNU Scientific Library) with the package NLopt which is a nonlinear optimization package with unconstrained, bound-constrained, and general nonlinear inequality constraints.

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Two comments: First, What do you mean that you can use GSL and NLOpt together (GSL with NLOpt)? They seem to be separate projects. They have the same spirit but they are independent. Second, the author of NLOpt doesn't recommend using NLOpt for convex problems, from the webpage: "NLopt includes only general methods that do not assume convexity; if you have a provably convex problem, you may be better off with a different software package, such as the CVX package from Stanford." ab-initio.mit.edu/wiki/index.php/… – alfC Nov 21 '14 at 6:57

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