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Project description
2-Opt Search Algorithm
In optimization, 2-opt is a simple local search algorithm with special swapping mechanism that suits well to solve the traveling salesman problem. This algorithm is sensitive to the initial point of search, i.e., its final results get changed by different initial points. 2-opt runs very fast such that a tsp with 120 cities can be solved in less than 5 sec on the intel core i7. To get a more reliable result, you should run the 2-opt with different randomized initial points for enough number of times. One more thing, the travelling salesman problem has many applications in real world such as logistic planning or DNA sequencing. So, having a fast and simple method to solve the TSP is valuable.
Library
The library requires the following libraries:
- numpy
- math
- time
- random
- itertools
Install
It can be installed using pip:
pip install py2opt
Usage
To use this library, you must have a distance matrix showing the pair distance among all nodes. Then, the first thing to do is create an instance of the RouteFinder class.
nodes = ['A', 'B', 'C', 'D']
dist_mat = [[0, 2, 5, 3], [2, 0, 7, 2], [5, 7, 0, 1], [3, 9, 1, 0 ]]
route_finder = RouteFinder(dist_mat, nodes)
best_distance, best_route = route_finder.solve()
print(best_distance)
11
print(best_route)
['A', 'D', 'C', 'B']
The solver finds out the optimum order (re: minimum total distance traveled) in which the nodes must be visited along with the total distance traveled.
And that's pretty much it!
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