I have the following DataFrame:
completeness | homogeneity | label_f1_score | label_precision | label_recall | mean_bbox_iou | mean_iou | px_accuracy | px_f1_score | px_iou | px_precision | px_recall | t_eval | v_score | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
mean | 0.1 | 1 | 0.92 | 0.92 | 0.92 | 0.729377 | 0.784934 | 0.843802 | 0.898138 | 0.774729 | 0.998674 | 0.832576 | 1.10854 | 0.1 |
std | 0.0707107 | 0 | 0.0447214 | 0.0447214 | 0.0447214 | 0.0574177 | 0.0313196 | 0.0341158 | 0.0224574 | 0.0299977 | 0.000432499 | 0.0327758 | 0.0588322 | 0.0707107 |
What I would like to obtain is a Series composed of completeness_mean
, completeness_std
, homogenety_mean
, homogenety_std
, ..., i.e. a label {column}_{index}
for every cell.
Does Pandas have a function for this or do I have to iterate over all cells myself to build the desired result?
EDIT: I mean a Series with {column}_{index}
as index and the corresponding values from the table.
(I believe this is not a duplicate of the other questions on SO related wide to long.)
stack
and flatten the MultiIndex