I have a data set that's sort of like this (first lines shown):
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
Both "Sample" and "Detector" columns contain duplicated values ("Cq" is unique): to be precise, each "Detector" appears 3 times for each sample, because it's a replicate in the data.
What I need to do is to:
- Reshape the table so that the columns contain Samples and rows Detectors
- Rename the duplicate columns so that I know which replicate is it
I thought that
DataFrame.pivot would do the trick, but it fails because of the duplicate data. What would be the best approach? Rename the duplicates, then reshape, or is there a better option?
EDIT: I thought over it and I think it's better to state the purpose. I need to store for each "Sample" the mean and standard deviation of their "Detector".