I have two lists (which may or may not be the same length). In each list, are a series of tuples of two points (basically X, Y values).
I am comparing the two lists against each other to find two points with similar point values. I have tried list comprehension techniques, but it got really confusing with the nested tuples inside of the lists and I couldn't get it to work.
Is this the best (fastest) way of doing this? I feel like there might be a more Pythonic way of doing this.
Say I have two lists:
pointPairA = [(2,1), (4,8)] pointPairB = [(3,2), (10,2), (4,2)]
And then an empty list for storing the pairs and a tolerance value to store only matched pairs
matchedPairs =  tolerance = 2
And then this loop that unpacks the tuples, compares the difference, and adds them to the matchedPairs list to indicate a match.
for pointPairA in pointPairListA: for pointPairB in pointPairListB: ## Assign the current X,Y values for each pair pointPairA_x, pointPairA_y = pointPairA pointPairB_x, pointPairB_x = pointPairB ## Get the difference of each set of points xDiff = abs(pointPairA_x - pointPairB_x) yDiff = abs(pointPairA1_y - pointPairB_y) if xDiff < tolerance and yDiff < tolerance: matchedPairs.append((pointPairA, pointPairB))
That would result in matchedPairs looking like this, with tuples of both point tuples inside:
[( (2,1), (3,2) ), ( (2,1), (4,2) )]