Consider the following dataframe

```
df_test = pd.DataFrame( {'a' : [1, 2, 8], 'b' : [np.nan, np.nan, 5], 'c' : [np.nan, np.nan, 4]})
df_test.index = ['one', 'two', 'three']
```

which gives

```
a b c
one 1 NaN NaN
two 2 NaN NaN
three 8 5 4
```

I have a dictionary of row replacements for columns b and c. For example:

```
{ 'one': [3.1, 2.2], 'two' : [8.8, 4.4] }
```

where 3.1 and 8.8 replaces column b and 2.2 and 4.4 replaces column c, so that the result is

```
a b c
one 1 3.1 2.2
two 2 8.8 4.4
three 8 5 4
```

I know how to make these changes with a for loop:

```
index_list = ['one', 'two']
value_list_b = [3.1, 8.8]
value_list_c = [2.2, 4.4]
for i in range(len(index_list)):
df_test.ix[df_test.index == index_list[i], 'b'] = value_list_b[i]
df_test.ix[df_test.index == index_list[i], 'c'] = value_list_c[i]
```

but I'm sure there's a nicer and quicker way to use the dictionary!

I guess it can be done with the *DataFrame.replace* method, but I couldn't figure it out.

Thanks for the help,

cd