def MergeOnDiff(a, diff):
b = [a[0]]
for i in range(len(a)-1):
if a[i+1][0][0] - a[i][-1][0] < diff+1:
b[-1] += a[i+1]
else:
b.append(a[i+1])
return b
diff = 60
b = MergeOnDiff(chunk_i_water, diff)
print('merged with diff = ', diff, *b, sep='\n')
you should play around with it, maybe with a 2d array first:)
try M=np.arange(12).reshape(3,4) to get a simple 3x4 matrix
then look at M[0,:], M[:,2], M.sum(axis=0), M.sum(axis=1)
so a[:,:,1] takes the 2d subarray where the third index is 1, i.e. all the 135x2548 second elements of those tuples you had
and .sum(axis=1) will take the row-wise sum of this subarray, which should be a 135-element 1d array
the only problem is that you won't be able to concatenate this 135-element 1d array to your 135x2548x2-element 3d array, but this should still be better than using tuple-valued arrays/dataframes
@Gary of course there is, but you don't want to do that:P
why not loop over your native list-of-list-of-lists?
looping over the dataframe won't be any faster, I think
if your dataframe named df really is shaped what you're saying (I'm skeptical), you need something like df.applymap(lambda x: x[1]).sum(axis=1)
the applymap will pull out the second element of each of those tuples, and the resulting 2d dataframe gets summed with .sum()
but if numpy croaked on converting your original list, it's highly possible that your dataframe is corrupted as well, i.e. not all of its elements are 2-element tuples
which scenario should either lead to an error, or wrong result
I suspect that your program should first work as a python program, and then you should try to compile it into a standalone application (unless I'm misunderstanding your problem)