I'm working with data like this:
Sample Detector Cq P_1 106 23.53152 P_1 106 23.152458 P_1 106 23.685083 P_1 135 24.465698 P_1 135 23.86892 P_1 135 23.723469 P_1 17 22.524242 P_1 17 20.658733 P_1 17 21.146122
As suggested in this post, I'm handling that with a MultiIndex. However, I'm wondering how, with such a structure, do some additional checks. Let's explain better: each "Sample" column has a fixed number of repeated "Detector" elements, from 1 (no duplication) to several duplicated elements. I want to ensure that for each sample element, the number of detectors is always the same (i.e., if P_1 has 3 "106" detectors, P_2 should have 3 "106" detectors as well).
Currently I'm doing this rather crudely:
def replicate_counter(dataframe, name): subset = dataframe.ix[name] num_replicates = subset.index.size / subset.index.unique().size return num_replicates # Further down... # dataframe is a MultiIndex DataFrame like above counts = pandas.Series([replicate_counter(dataframe, item) for item in dataframe.index]).unique() if counts.size != 1: raise ValueError("Detectors not equal for all samples")
It seems very hacky to me and probably there are better ways to do this in pandas. How could this be accomplished?