I have two dataframes df1 and df2 with `key`

as index.

```
dict_1={'key':[1,1,1,2,2,3], 'col1':['a1','b1','c1','d1','e1','f1']}
df1 = pd.DataFrame(dict_1).set_index('key')
dict_2={'key':[1,1,2], 'col2':['a2','b2','c2']}
df2 = pd.DataFrame(dict_2).set_index('key')
```

df1:

```
col1
key
1 a1
1 b1
1 c1
2 d1
2 e1
3 f1
```

df2

```
col2
key
1 a2
1 b2
2 c2
```

Note that there are unequal rows for each index. I want to concatenate these two dataframes such that, I have the following dataframe (say df3).

df3

```
col1 col2
key
1 a1 a2
1 b1 b2
2 d1 c2
```

i.e. concatenate the two columns so that the new dataframe as the least (of df1 and df2) rows for each index.

I tried

```
pd.concat([df1,df2],axis=1)
```

but I get the following error:

```
Value Error: Shape of passed values is (2,17), indices imply (2,7)
```

My question: How can I concatentate `df1`

and `df2`

to get `df3`

? Should I use `DataFrame.merge`

instead? If so, how?