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I have a problem of assigning 7 possible workers to 3 machines. There is a cost when a worker is assigned to a machine as well as when a worker is idle. It is required that all 3 machines are used. The cost matrices are

        M1  M2  M3
    W1 [72, 74, 74]         [64,
    W2 [48, 50, 50]          44,
C = W3 [52, 52, 52]     I =  52,
    W4 [40, 20, 18]          10,
    W5 [46, 48, 48]          42,
    W6 [40, 26, 26]          18,
    W7 [40, 20, 18]          12]

With matrix C being the cost of each worker being assigned to each machine. Matrix I represents the cost of each worker to be idle.

I'm currently using scipy.optimize.linear_sum_assignment to determine the minimum cost with a cost matrix

        M1  M2  M3 
    W1 [72, 74, 74,64,M,M,M,M,M,M]         
    W2 [48, 50, 50,M,44,M,M,M,M,M]         
C = W3 [52, 52, 52,M,M,52,M,M,M,M]     With M being very big.   
    W4 [40, 20, 18,M,M,M,10,M,M,M]         
    W5 [46, 48, 48,M,M,M,M,42,M,M]         
    W6 [40, 26, 26,M,M,M,M,M,18,M]         
    W7 [40, 20, 18,M,M,M,M,M,M,12]          

With the current cost matrix it sometimes happens that not all machines are assigned. To counter this I simply multiplied all the idle cost with 10 to ensure that the machines are selected first.

My python code however does not give me the optimal answer. Is there maybe a different function I could use that would solves this type of problems?

The code:

from scipy.optimize import linear_sum_assignment
C = [[72, 74, 74, 640, M, M, M, M, M, M],
    [48, 50, 50, M, 440, M, M, M, M, M],
    [52, 52, 52, M, M, 520, M, M, M, M],
    [40, 20, 18, M, M, M, 100, M, M, M],
    [46, 48, 48, M, M, M, M, 420, M, M],
    [40, 26, 26, M, M, M, M, M, 180, M],
    [40, 20, 18, M, M, M, M, M , M, 120]]

row_ind, col_ind = linear_sum_assignment(C)
print(row_ind)
print(col_ind )

I need a way to solve the assignment while forcing all three the machines to be assigned a worker. My way of defining the cost matrix seems to do it but doesn't give the wanted answer (obtained using a Tabu search). I'm not sure how to force scipy.optimize.linear_sum_assignment to always assign the three machines. Is this even possible to do in scipy.optimize.linear_sum_assignment or should I rather be for a different python package to use?

2
  • My python code however does not give me the optimal answer How can we possibly help if you don't show us the code? Aug 29, 2016 at 21:02
  • Welcome to StackOverflow. Please read and follow the posting guidelines in the help documentation. Minimal, complete, verifiable example applies here. We cannot effectively help you until you post your code and accurately describe the problem.
    – Prune
    Aug 29, 2016 at 21:09

1 Answer 1

0

Found what was wrong with it. I had to many dummy machines allowing workers to be assigned to them rather than to the machines. By changing the dimensions of the matrix to be square (7x7) and changing the cost matrix

        M1  M2  M3 
    W1 [72, 74, 74,64,64,64,64]         
    W2 [48, 50, 50,44,44,44,44]         
C = W3 [52, 52, 52,52,52,52,52]    
    W4 [40, 20, 18,10,10,10,10]         
    W5 [46, 48, 48,42,42,42,42]         
    W6 [40, 26, 26,18,18,18,18]         
    W7 [40, 20, 18,12,12,12,12]

scipy.optimize.linear_sum_assignment now gives me the correct assignment.

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