Suppose I have a `DataFrame`

like so,

```
df = pd.DataFrame([['x', 1, 2], ['x', 1, 3], ['y', 2, 2]],
columns=['a', 'b', 'c'])
```

To select all rows where `c == 2`

and `a == 'x'`

, I could do something like,

```
df[(df['a'] == 'x') & (df['c'] == 2)]
```

Or I could iterative refine by making temporary variables,

```
df1 = df[df['a'] == 'x']
df2 = df1[df1['c'] == 2]
```

Is there a way to iterative refine on rows?

```
(
df
.refine(lambda row: row['a'] == 'x') # this method doesn't exist
.refine(lambda row: row['c'] == 2)
)
```