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A quick search on "python linear programming" turns up a lot of hits (e.g. this one). Looking through them, I see a fair number of complaints about outdated dependencies, poor documentation, etc.

Can anybody recommend a headache-free (e.g. fast, well-documented, easy-to-install, clean API) linear programming library for python?

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here's a few more ... – dfb Apr 26 '11 at 16:30

6 Answers 6

up vote 7 down vote accepted

I'd recommend looking at PULP and/or Pyomo.

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Are these suitable for large instances, lets say at least hundereds of variables and thousands of constraints. – Andreas Mueller Nov 7 '12 at 16:15
Good question. I'm not sure about how PULP and Pyomo scale for large problems. However, I can say that most of my friends who do huge optimization problems (mostly for integrated circuit layouts) use IBM CPLEX as their optimization solver. Based on a quick google search, there is a CPLEX API for Python. However, CPLEX isn't free for non-academic use. – solvingPuzzles Nov 8 '12 at 1:43
...I just checked your stackexchange profile, Andreas, and it looks like you're a graduate student. You can get a free CPLEX license. :) – solvingPuzzles Nov 8 '12 at 1:44
I'll give it a try, thanks :) – Andreas Mueller Nov 8 '12 at 15:06
@solvingPuzzles, would you know offhand if either of these has an API to NumPy arrays, along the lines lpmin( x, A, c, lo, hi ) ? – denis Jul 25 '13 at 15:20

cvxopt is written by Lieven Vandenberghe and some of his collaborators. (This is the same Vandenberghe of the widely used convex optimization textbook by Boyd and Vandenberghe.) It's a general convex conic programming solver, and uses an interior point method. On the plus side it's well-documented, has many examples, and is easy to use. I believe it scales fairly well, though not as well as commercial products like Xpress, Gurobi, or cplex.

Looks like there's a pull request to scipy containing a (pure python) linear programming implementation, though. So a linear programming solver could be in scipy in the future.

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For the record, here is that PR – Juanlu001 Jun 20 '13 at 15:31

I don't know what you are specifically trying to do, but NumPy/SciPy are the usually first places to look for anything math related in Python.

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Numpy is an array library, with some extra functionality tossed in for backwards compatibility. Scipy has some optimization routines, but as of now I think it's only general non-linear solvers. Scipy does not currently have a solver specialized for linear programs. – cjordan1 Jan 23 '13 at 17:43

You might look at PuLP from the coin-or set of libraries.

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You can also take a look at or-tools, which includes a wrapper around widely used linear solvers such as GLPK.

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As of 2015, scipy includes a method to solve linear programming models directly through scipy.optimize.linprog. It uses the Simplex algorithm.

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