# Python Data Structure Recommendations for a 2D Grid

All -

I am looking to implement an Ant Colony Optimization algorithm in Python, though am new to both Python and Object Oriented Programming so the learning curve has been rather steep. At this point, I am stuck as to how to address the following situation:

• As ants walk around a 2D grid, they will encounter obstacles, pheromone deposits by other ants, food, etc. What data structure do I use to represent this 2D world and the aforementioned properties of each cell?

I had tried a 2D array, thinking that array[x-coord][y-coord] could point to a {} (dictionary) with the appropriate properties (Obstacle: 'Yes / 'No', Pheromone Level: X %, etc.). Unfortunately, though NumPy lets me create a 2D array, I cannot assign dictionary objects to the various coordinates.

``````from numpy import *

myArray = array([[1,2,3,4],
[5,6,7,8],
[9,10,11,12]])

myArray[2][2]={}
``````

Returns:

``````Traceback (most recent call last):
File "/Users/amormachine/Desktop/PythonTest.py", line 7, in <module>
myArray[2][2]={}
TypeError: long() argument must be a string or a number, not 'dict'
[Finished in 0.6s with exit code 1]
``````

I am not committed to either dictionaries or this paradigm for implementing this project and would certainly appreciate the wisdom of the group.

Thanks.

-
There are many different ways to represent this problem. The best way to represent the problem depends mostly on what you want to do with the representation. So we need some guidelines to help you: Do you expect any part of the data to be very large (e.g. the size of the 2d world, how many of the cells in this world would be populated with properties)? What operations do you want to be able to do fast (e.g. access the properties of a cell in the matrix, perform arithmetic on the matrix)? –  Bitwise Apr 9 '13 at 0:53
Thanks for the though provoking questions Bitwise. I will dig into more aspects of this as I get further along in the project. For now, simply being clear on the data structure helps immensely. –  amormachine Apr 9 '13 at 2:08

sure you can, you just cant if your dtype is int ... so make your array with objects and you can use objects...

``````In [43]: a = [[{},{},{}],[{},{},{}]]

In [44]: a = numpy.array(a)

In [45]: a[1][1] = {'hello':'world','something':5}

In [46]: a
Out[46]:
array([[{}, {}, {}],
[{}, {'hello': 'world', 'something': 5}, {}]], dtype=object)
``````

although not sure whay you will gain using numpy with objects, you may be better off just leaving it as a list of lists

-
One possible benefit of using the numpy array instead of Python's list of lists, is memory usage. If he has a truly huge 2D world, the numpy array will be less costly. –  ecline6 Apr 9 '13 at 0:14
Thanks Joran - You nailed it, this is exactly what I needed. –  amormachine Apr 9 '13 at 2:04

In plain Python I would be going for the list-of-dicts approach but with NumPy I find it more natural to work with separate arrays for different attributes rather than trying to keep things in one structure.

``````import numpy as np

grid_shape = (120,80)

# example of random initialization with this grid shape
pheremone_level = np.random.rand(*grid_shape)
obstacle = np.random.rand(*grid_shape) > 0.8
``````

As @bitwise says it entirely depends on what operations you want to perform. Generally the "correct" way in NumPy will be much closer to how you would write it in Matlab than non-NumPy Python. Unfortunately I'm not familiar with how Ant Colony Optimization works so I can't say what's more suitable.

-