I have a DataFrame that looks like (it's a set of combinations):
A B C a 1 1 3 b 1 2 4 c 2 1 5 d 2 2 6
Which I would like to transform into a matrix where the new columns and indexes are unique values of two of the columns (
B) and the cells are the join between these two unique values from a third column (
A as the index,
B as the columns and
C as the cell values I would have something like:
B A 1 2 1 3 4 2 5 6
To generate this new 'matrix' DataFrame I iteratively filter the original DF by the unique values in columns
A, then get the
C column as a Series, like:
for ind in unique_indexes: # made by using .drop_duplicates on the column rows = original_table[(original_table['A'] == ind)] new_series = rows['C']
I'm then trying to glue all of these Series together as rows in a new DataFrame, but can't get any of them to either
concat into the new DataFrame (following both the docs or similar questions on SO), e.g.
# with suitable placement in 'for' loop df = DataFrame() df.append(new_series) >>> print df Empty DataFrame
Is there a) a better way of doing this transformation, or b) a step that I'm missing in appending series to a DataFrame?