Personally, I love having arrays in dataframes, for every single item a single column. It will give you much more functionality. So, here's my alternative approach
>>> raw = [['a', 'a', 'b'], ['b', 'b', 'c', 'd'], , ['a', 'b', 'e']]
>>> df = pd.DataFrame(raw)
0 1 2 3
0 a a b None
1 b b c d
2 None None None None
3 a b e None
Now, see how many values we have in each row
sum() here would give you what you wanted.
Second, what you mentioned in a comment: get the distribution. There may be a cleaner approach here, but I still prefer the following over the hint that was given you in the comment
>>> foo = [col.value_counts() for x, col in df.iteritems()]
dtype: int64, b 2
dtype: int64, b 1
dtype: int64, d 1
foo contains distribution for every column now. The interpretation of columns is still "xth value", such that column 0 contains the distribution of all the "first values" in your arrays.
Next step, "sum them up".
>>> df2 = pd.DataFrame(foo)
a b c d e
0 2 1 NaN NaN NaN
1 1 2 NaN NaN NaN
2 NaN 1 1 NaN 1
3 NaN NaN NaN 1 NaN
Note that for these very simple problems the difference between a series of lists and a dataframe with columns per item is not big, but once you want to do real data work, the latter gives you way more functionality. Moreover, it can potentially be more efficient, since you can use pandas internal methods.