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)
>>> df
Out[217]:
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

```
>>> df.count(axis=1)
Out[226]:
0 3
1 4
2 0
3 3
```

Applying `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()]
>>> foo
Out[246]:
[a 2
b 1
dtype: int64, b 2
a 1
dtype: int64, b 1
c 1
e 1
dtype: int64, d 1
dtype: int64]
```

`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)
>>> df2
Out[266]:
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
>>> test.sum(axis=0)
Out[264]:
a 3
b 4
c 1
d 1
e 1
dtype: float64
```

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.

`Series`

and`DataFrames`

aren't really meant to contain lists; you can do it, but you lose easy access to a lot of the nice features. – DSM Jun 4 '14 at 2:02