# Differences between Gurobi in python and Matlab [closed]

I am using Gurobi/python to solve linear programs of size ~10002. In most cases, this gives identical results to solving the same problem in Gurobi/Matlab. However, in ~1% of cases, python finds an optimal solution of 0, whilst Matlab finds a non-zero optimum. I thought that both implementations were simply wrappers to the same solver, but are there any differences, say in the default tolerances used?

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## closed as off-topic by Ali, Bas Swinckels, nkjt, Padma Kumar, msandifordApr 1 at 10:42

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Most likely the LP problem has numerical issues (ill-conditioned) and the different algorithmic implementations react differently. –  Ali Mar 31 at 22:14
When you say 'non-zero optimum', what magnitude are we talking about? More specifically, how does it relate to the stopping tolerance? –  Nitish Mar 31 at 23:14
Both implementations are wrappers to to the same solver. They should return the same results up to numerical precision. What's more likely is that your model in MATLAB differs slightly from your model in Python. You can test this by writing both models out in MPS format and performing a diff. In Python do: model.write('py.mps'). In MATLAB do: gurobi_write(model, 'mat.mps'). Then at the command-line do: diff mat.mps py.mps. If you see any differences, the models are not the same. Note you'll need to make sure that all variables and constraints have the same names in both models. –  codehippo Apr 3 at 21:54
@codehippo thanks, writing to text file (I used .lp format) revealed the small numerical differences that cropped up in the model building process. –  u003f Apr 4 at 9:02
@u003f when doing comparisons between models you should always use .MPS format. The .lp format doesn't always contains coefficients to full precision. Also the .lp format is a row wise format, which means it doesn't maintain the order of coefficients within a column. –  codehippo Apr 4 at 16:11