I work with significantly sized (48K rows, up to tens of columns) DataFrames. At a certain point in their manipulation, I need to do pair-wise subtractions of column values and I was wondering if there is a more efficient way to do so rather than the one I'm doing (see below).
My current code:
# Matrix is the pandas DataFrame containing all the data comparison_df = pandas.DataFrame(index=matrix.index) combinations = itertools.product(group1, group2) for observed, reference in combinations: observed_data = matrix[observed] reference_data = matrix[reference] comparison = observed_data - reference_data name = observed + "_" + reference comparison_df[name] = comparison
Since the data can be large (I'm using this piece of code also during a permutation test), I'm interested in knowing if it can be optimized a bit.
EDIT: As requested, here's a sample of a typical data set
ID A1 A2 A3 B1 B2 B3 Ku8QhfS0n_hIOABXuE 6.343 6.304 6.410 6.287 6.403 6.279 fqPEquJRRlSVSfL.8A 6.752 6.681 6.680 6.677 6.525 6.739 ckiehnugOno9d7vf1Q 6.297 6.248 6.524 6.382 6.316 6.453 x57Vw5B5Fbt5JUnQkI 6.268 6.451 6.379 6.371 6.458 6.333
And a typical result would be, if the "A" group is
group1 and "B"
group2, for each ID row, to have for each column a pair (e.g., A1_B1, A2_B1, A3_B1...) corresponding to the pairings generated above, containing the subtraction for each row ID.