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# linear programming in python?

I need to make a linear programming model. Here are the inequalities I'm using (for example):

``````6x + 4y <= 24
x + 2y <= 6
-x + y <= 1
y <= 2
``````

I need to find the area described by these inequalities, and shade it in a graph, as well as keep track of the vertices of the bounding lines of this area, and draw the bounding line in a different color. See the graph below for an example of what I'm looking for.

.

I'm using Python 3.2, numpy, and matplotlib. Are there better modules for linear programming in Python?

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Step one convert the system of inequalities into matrix form. – Dan D. May 22 '12 at 8:08
@izomorphius according to wikipedia, linear programming is mathematical optimization: en.wikipedia.org/wiki/Linear_programming – XORcist May 22 '12 at 8:21
@möter agreed -removing my comment. The mistake is mine not the Op's – Ivaylo Strandjev May 22 '12 at 8:30
Your third equation, `-x + x <= 1` is a no-op, since it simplifies to `0 <= 1`, which is true for all x and y. – Eric May 22 '12 at 8:59

UPDATE: The answer has become somewhat outdated in the past 4 years, here is an update. You have many options:

• If you do not have to do it Python then it is a lot more easier to do this in a modeling langage, see Any good tools to solve integer programs on linux?

• I personally use Gurobi these days through its Python API. It is a commercial, closed-source product but free for academic research.

• SciPy offers linear programming: scipy.optimize.linprog. (I have never tried this one.)

• With PuLP you can create MPS and LP files and then solve them with GLPK, COIN CLP/CBC, CPLEX, or XPRESS through their command-line interface. This approach has its advantages and disadvantages.

• Apparently, CVXOPT offers a Python interface to GLPK, I did not know that. I have been using GLPK for 8 years now and I can highly recommend GLPK. The examples and tutorial of CVXOPT seem really nice!

• You can find other possibilites at in the Wikibook under GLPK/Python. Note that many of these are not necessarily resticted to GLPK.

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+1 for "use the right tool." – djechlin May 22 '12 at 22:46
use PuLP, its an awesome python interface for GLPK, CPLEX or Gurobi – Tom Larkworthy Oct 7 '13 at 20:18
Anonymous downvotes aren't helping anybody. What is wrong with the answer? – Ali Nov 1 '14 at 20:47

I'd recommend the package cvxopt for solving convex optimization problems in Python. A short example with Python code for a linear program is in cvxopt's documentation here.

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The only time a graph is used to solve a linear program is for a homework problem. In all other cases, linear programming problems are solved through matrix linear algebra.

As for Python, while there are some pure-Python libraries, most people use a native library with Python bindings. There is a wide variety of free and commercial libraries for linear programming. For a detailed list, see Linear Programming in Wikipedia or the Linear Programming Software Survey in OR/MS Today.

Disclaimer: I currently work for Gurobi Optimization and formerly worked for ILOG, which provided CPLEX.

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Between homework and work there's also passion for learning - I think the first sentence you wrote is out of place... – nivwusquorum May 15 '14 at 4:42

For solving the linear programming problem, you can use the scipy.optimize.linprog module in SciPy, which uses the Simplex algorithm.

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I would recommend using the PuLP python package. It has a nice interface and you can use differenty types of algorithms to solve LP.

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lpsolve is the easiest to me. No need to install separate solver. It comes with in the package.

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