Let's say I have the following DataFrame, where each row represents an event performed by a certain user on a certain time:

```
In [1]: df
Out[1]:
time event
user
a 1 x
a 2 y
a 3 z
b 1 x
b 2 x
b 3 z
b 4 z
c 1 y
c 2 y
c 3 z
d 1 z
```

I would like to reshape this such that it has the following structure:

```
In [2]: dfm
Out[2]:
x y z
user
a 1 2 3
b 1 NaN 3
b 1 NaN 4
b 2 NaN 3
b 2 NaN 4
c NaN 1 3
c NaN 2 3
d NaN NaN 1
```

I currently obtain this by first creating one DataFrame per event:

```
In [3]: dfs = [d[['time']].rename(columns={'time': k}) for k, d in df.groupby('event')]
In [4]: dfs
Out[4]:
[ x
user
a 1
b 1
b 2, y
user
a 2
c 1
c 2, z
user
a 3
b 3
b 4
c 3
d 1]
```

And then calling `pd.merge`

multiple times:

```
In [5]: dfm = dfs[0]
In [5]: for d in dfs[1:]:
...: dfm = pd.merge(dfm, d, left_index=True, right_index=True, how='outer')
```

This works fine, but I'm wondering whether there is a better way. It would not be the first time that pandas has surprised me with some nifty function! I have tried `pd.concat(dfs, axis=1)`

, but that produces the following error (only last line shown):

```
ValueError: Shape of passed values is (1, 5), indices imply (1, 4)
```

I have also looked into `pd.pivot_table`

, but that produces one row per user and averages the timestamps. Maybe I'm overlooking something. Any help is greatly appreciated!

`pd.pivot_table`

, but to no avail. Would you be so kind to share the correct one? – Jeroen Janssens Dec 6 '13 at 15:04